Thursday, November 13, 2025

Vision Revolution: How Deep Learning Transforms Image Recognition and Object Detection in Modern AI Systems

Beyond Human Sight: The Power of Deep Learning in Advanced Computer Vision Technologies

The field of computer vision has undergone a revolutionary transformation with the advent of deep learning, fundamentally altering how machines perceive and interpret visual information. At the core of this revolution lies the ability of deep neural networks to automatically learn hierarchical representations from raw pixel data, eliminating the need for manual feature engineering that dominated traditional computer vision approaches. This paradigm shift began gaining momentum in 2012 when Alex Krizhevsky's AlexNet demonstrated unprecedented performance in the ImageNet Large Scale Visual Recognition Challenge, outperforming traditional computer vision methods by a significant margin. 

11+ Thousand Computer Vision Ai Royalty-Free Images, Stock Photos &  Pictures | Shutterstock

The success was attributed to the network's ability to learn increasingly complex features through its deep architecture—simple edges and textures in early layers, progressing to complex object parts and complete objects in deeper layers. This hierarchical feature learning capability mirrors the information processing in the mammalian visual cortex, where visual stimuli are processed through successive cortical areas, each extracting more sophisticated features than the previous one.

Modern deep learning models for computer vision build upon this foundational principle but have evolved dramatically in architectural sophistication and performance. Contemporary systems can process high-resolution images in real-time, recognize thousands of object categories with human-level accuracy, and precisely localize multiple objects within complex scenes. These capabilities are powered by specialized neural network architectures that have been optimized for visual data, particularly convolutional neural networks (CNNs) and their more advanced successors. The computational requirements of these models are substantial, often requiring specialized hardware like GPUs and TPUs to perform the billions of mathematical operations needed to process a single image. However, the results justify these requirements—state-of-the-art models now surpass human performance on certain constrained visual recognition tasks and continue to improve at a rapid pace, driven by advances in architecture design, training techniques, and the availability of large-scale annotated datasets.

Convolutional Neural Networks: The Architectural Backbone

Convolutional Neural Networks (CNNs) represent the fundamental architectural innovation that enabled deep learning's success in computer vision. Unlike traditional fully-connected neural networks that treat input images as flat feature vectors, CNNs preserve the spatial structure of images through their unique architectural properties. The key innovation lies in the convolutional layers that apply learned filters across the entire image, detecting local patterns regardless of their position—a property known as translation invariance. Each convolutional layer consists of multiple filters that slide across the input image, computing dot products between the filter weights and local image patches. These filters learn to detect increasingly complex visual features as we move deeper into the network, with early layers typically learning edge detectors, color contrast sensors, and basic texture analyzers, while deeper layers combine these primitive features to detect complex object parts and complete objects.

The computational efficiency of CNNs stems from two critical properties: local connectivity and parameter sharing. Unlike fully-connected layers where each neuron connects to all inputs, convolutional layers only connect to small local regions of the input, dramatically reducing the number of parameters while preserving the ability to detect local patterns. Parameter sharing means the same filter is applied across the entire image, recognizing that a feature (like an edge or texture) is useful regardless of its position. Modern CNN architectures like ResNet, EfficientNet, and ConvNeXt have introduced numerous refinements to this basic formula—residual connections that enable training of much deeper networks, efficient channel attention mechanisms that improve feature discriminability, and sophisticated normalization techniques that stabilize training. These architectures routinely employ hundreds of layers while maintaining computational efficiency through careful design choices, enabling them to learn extraordinarily rich visual representations from vast amounts of training data.

The training process for CNNs involves learning these hierarchical feature representations through exposure to labeled examples, using backpropagation to adjust the filter weights to minimize classification or detection errors. The optimization process is facilitated by specialized techniques like batch normalization, which maintains stable activation distributions across layers, and data augmentation, which artificially expands the training set by applying realistic transformations to images (rotations, crops, color adjustments). Modern training regimens also employ sophisticated learning rate schedules and optimization algorithms that adapt to the curvature of the loss landscape, enabling effective training of networks with hundreds of millions of parameters. The result is visual recognition systems that can generalize to unseen images with remarkable accuracy, powering applications from medical diagnosis to autonomous driving.

Image Classification: From Pixels to Semantic Categories

Image classification represents the most fundamental computer vision task where deep learning has demonstrated transformative impact—assigning semantic labels (like "cat," "dog," or "car") to entire images. The deep learning approach to this problem involves training CNNs to map raw pixel values to category probabilities through a series of nonlinear transformations. The network's final layer typically uses a softmax activation to produce a probability distribution over possible classes, with the entire system trained end-to-end using categorical cross-entropy loss that penalizes incorrect classifications. Modern classification networks achieve astounding accuracy on benchmarks like ImageNet, with top models surpassing 90% accuracy on the challenging ImageNet-1k dataset containing 1000 object categories.

The success of deep learning in image classification stems from several key advantages over traditional computer vision approaches. First, the hierarchical feature learning allows networks to automatically discover relevant visual features without manual specification—the network learns which features are important for discrimination directly from data. Second, the distributed representations learned by deep networks exhibit remarkable generalization capabilities, recognizing objects under varying viewpoints, lighting conditions, occlusions, and deformations. Third, the end-to-end training paradigm allows all components of the system to be jointly optimized for the final task, unlike traditional pipelines where each processing stage was optimized separately. Contemporary classification architectures incorporate numerous refinements that boost performance: attention mechanisms that focus computation on salient image regions, multi-scale processing that combines information across different resolutions, and efficient network designs that maximize accuracy per computational operation.

The practical applications of deep learning-based image classification are vast and growing. In healthcare, CNNs analyze medical images to detect pathologies like tumors or hemorrhages with accuracy rivaling expert radiologists. In agriculture, classification models monitor crop health from aerial imagery. Retail systems automatically categorize products, while social media platforms use them for content moderation. These applications often employ transfer learning, where networks pre-trained on large general-purpose datasets like ImageNet are fine-tuned on smaller domain-specific collections, leveraging the general visual knowledge learned from diverse images to boost performance on specialized tasks. The continued progress in classification accuracy, efficiency, and robustness ensures deep learning will remain the dominant approach for image recognition across industries.

Object Detection: Localization and Recognition in Unison

Object detection represents a more complex challenge than image classification, requiring systems to not only recognize objects but also precisely localize them within images by drawing bounding boxes around each instance. Deep learning has revolutionized this field through architectures that unify these traditionally separate tasks into end-to-end trainable systems. Modern object detectors can process complex scenes containing dozens of objects at various scales and orientations, achieving real-time performance on consumer hardware. The evolution of these systems has progressed through several generations, from early region proposal-based methods like R-CNN to contemporary single-shot detectors like YOLOv8 and DiffusionDet that achieve unprecedented speed and accuracy.

Two-stage detectors like Faster R-CNN dominated early deep learning approaches to object detection. These systems first generate region proposals—potential areas in the image that might contain objects—then classify and refine these proposals in a second stage. The region proposal network (RPN) in Faster R-CNN uses anchor boxes of various aspect ratios and scales to efficiently scan the image for potential objects, sharing convolutional features with the downstream classification and bounding box regression heads. This architecture achieves high accuracy but at significant computational cost due to its sequential nature. In contrast, single-shot detectors like YOLO (You Only Look Once) and SSD (Single Shot MultiBox Detector) perform classification and localization in a single pass, trading some accuracy for dramatically improved speed that enables real-time applications. These systems divide the image into a grid and predict bounding boxes and class probabilities directly from each grid cell, using carefully designed anchor boxes to handle objects of different sizes.

Recent advances in object detection have introduced several key innovations. Feature pyramid networks (FPNs) address the challenge of scale variation by combining features from different levels of the CNN hierarchy, allowing detection at multiple resolutions. Attention mechanisms help focus computation on relevant image regions while suppressing background clutter. Transformers, originally developed for natural language processing, have been adapted to vision tasks in architectures like DETR (Detection Transformer), which replaces traditional region proposal and non-maximum suppression steps with direct set prediction. The latest models also incorporate temporal information for video object detection, leverage 3D information for scene understanding, and employ self-supervised pre-training to reduce reliance on expensive bounding box annotations. These technical advances have enabled applications ranging from autonomous vehicle perception to retail inventory management to surveillance systems, where accurate, real-time object detection is critical.

Semantic Segmentation: Pixel-Level Understanding

Semantic segmentation represents an even finer-grained visual understanding task, requiring each pixel in an image to be classified according to the object category it belongs to. Deep learning approaches to this problem have evolved from early patch classification methods to sophisticated fully convolutional networks (FCNs) that process entire images at once. Modern architectures like U-Net, DeepLab, and Mask R-CNN achieve remarkable precision in delineating object boundaries while maintaining efficient computation, enabling applications in medical imaging, autonomous driving, and augmented reality.

The key innovation enabling deep learning's success in semantic segmentation is the combination of hierarchical feature extraction with precise spatial localization. Traditional CNNs reduce spatial resolution through pooling and strided convolutions to increase receptive field and computational efficiency, but this poses challenges for dense pixel prediction. Segmentation networks address this through encoder-decoder architectures where the encoder (typically a standard CNN backbone) extracts high-level features while the decoder gradually recovers spatial resolution through transposed convolutions or interpolation. Skip connections between corresponding encoder and decoder layers help preserve fine spatial details that would otherwise be lost in the downsampling process. The most advanced systems now employ atrous (dilated) convolutions that expand receptive fields without sacrificing resolution, pyramid pooling modules that capture context at multiple scales, and attention mechanisms that model long-range dependencies across the image.

Recent breakthroughs in segmentation have pushed performance boundaries in several directions. Vision transformers adapted for segmentation tasks like Segment Anything Model (SAM) demonstrate exceptional generalization to unseen objects through promptable segmentation. Real-time architectures like BiSeNet optimize the speed/accuracy tradeoff for applications requiring high frame rates. Interactive segmentation systems incorporate user inputs to refine predictions, while weakly supervised methods reduce annotation burden by learning from cheaper bounding box or image-level labels. The practical impact of these advances is profound—medical imaging systems can precisely outline tumors and organs, autonomous vehicles understand drivable surfaces and obstacles at pixel level, and photo editing tools allow effortless object selection and manipulation. As segmentation models continue improving in accuracy, speed, and sample efficiency, they enable increasingly sophisticated visual understanding applications across industries.

Instance Segmentation: Distinguishing Individual Objects

Instance segmentation extends semantic segmentation by not only classifying pixels by category but also distinguishing between different instances of the same category—crucial for applications requiring precise object delineation and counting. Deep learning approaches to this challenging task typically combine object detection with segmentation, first identifying individual objects then precisely outlining them. The Mask R-CNN architecture exemplifies this paradigm, extending Faster R-CNN with a parallel segmentation branch that predicts pixel-level masks for each detected object. This two-stage approach achieves high accuracy but at increased computational cost, prompting development of single-stage alternatives like YOLACT and SOLO that trade some precision for real-time performance.

The technical challenges in instance segmentation are substantial, requiring models to simultaneously solve several subproblems: object detection to identify and localize instances, semantic segmentation to classify pixels, and instance differentiation to separate touching or occluded objects. Modern architectures address these challenges through various innovations. Feature pyramid networks handle scale variation by processing images at multiple resolutions. RoI (Region of Interest) align operations precisely crop features for each detected object while preserving spatial fidelity. Attention mechanisms help resolve ambiguities in crowded scenes by modeling relationships between objects. More recently, transformer-based architectures like Mask2Former have unified instance and semantic segmentation through mask classification paradigms that predict sets of binary masks with associated class labels.

The applications of instance segmentation are numerous and growing. In robotics, it enables precise manipulation of individual objects in cluttered environments. In medical imaging, it allows counting and analysis of individual cells or lesions. Retail systems use it for fine-grained inventory tracking, while autonomous vehicles rely on it to understand complex traffic scenes. The field continues to advance rapidly, with current research focusing on reducing annotation requirements through weakly supervised learning, improving generalization to unseen object categories, and enhancing real-time performance for time-sensitive applications. As these techniques mature, instance segmentation will play an increasingly central role in advanced computer vision systems requiring both precise localization and detailed shape understanding.

Object Tracking: Following Objects Through Time

Object tracking extends detection capabilities across video sequences, maintaining consistent identities for objects as they move and interact over time. Deep learning has revolutionized this field through sophisticated appearance models and data association algorithms that handle occlusions, viewpoint changes, and similar-looking distractors. Modern tracking systems combine the complementary strengths of convolutional networks for spatial feature extraction and recurrent networks or transformers for temporal modeling, achieving robust performance in challenging real-world conditions.

The deep learning approach to object tracking typically involves two components: an appearance model that learns to recognize the target object despite changes in viewpoint, lighting, and partial occlusions, and a motion model that predicts plausible trajectories to maintain identity through temporary disappearances. Discriminative correlation filter (DCF) based trackers like ECO integrate deep features with efficient online learning, adapting to target appearance changes while running in real-time. Siamese network-based trackers like SiamRPN learn similarity metrics that compare candidate image regions to the target template, enabling tracking by localization. More recent transformer-based trackers like TransT model long-range dependencies in both spatial and temporal dimensions, improving handling of occlusions and similar distractors.

Multi-object tracking (MOT) presents additional challenges of data association—correctly linking detections across frames while maintaining distinct identities. Deep learning enhances traditional approaches like Kalman filtering and Hungarian algorithm matching through learned affinity metrics that better predict whether detections in different frames represent the same object. The Joint Detection and Embedding (JDE) paradigm unifies detection and appearance embedding learning in a single network, while transformer-based approaches like TrackFormer model tracking as a direct set prediction problem. These advances power applications ranging from surveillance and sports analytics to autonomous driving and human-computer interaction, where understanding object motion is as crucial as recognizing objects themselves.

Current research frontiers in object tracking include exploiting 3D information for more robust motion modeling, developing unified frameworks for diverse tracking scenarios (single-object, multi-object, video object segmentation), and improving computational efficiency for edge deployment. Self-supervised and unsupervised approaches are reducing reliance on expensive labeled tracking sequences, while meta-learning techniques aim to improve adaptability to novel object categories. As these techniques mature, they will enable increasingly sophisticated video understanding capabilities that bridge the gap between static image analysis and true dynamic scene understanding.

3D Computer Vision: Extending into the Third Dimension

Deep learning has dramatically advanced 3D computer vision, enabling machines to perceive and understand the three-dimensional structure of scenes from various sensor inputs. While 2D CNNs process flat image arrays, 3D vision requires architectures that can handle point clouds, voxel grids, or multi-view geometry. The resulting capabilities—including 3D object detection, point cloud segmentation, and depth estimation—are critical for applications like autonomous robotics, augmented reality, and architectural modeling.

Point cloud processing represents a core challenge in 3D vision, with deep learning offering several solutions. PointNet pioneered direct processing of irregular point sets using symmetric functions to achieve permutation invariance, while subsequent work like PointNet++ and Dynamic Graph CNNs introduced hierarchical feature learning and local neighborhood processing. Voxel-based methods like VoxNet and SECOND convert points into regular 3D grids for processing with 3D CNNs, trading some geometric precision for computational regularity. Sparse convolutional networks optimize this approach by skipping empty voxels, dramatically improving efficiency for typical sparse 3D scenes. More recently, transformer architectures like Point Transformer have adapted self-attention mechanisms to point clouds, capturing long-range dependencies while respecting geometric structure.

Depth estimation from single or multiple 2D images is another crucial 3D vision task addressed by deep learning. Stereo matching networks learn to compute disparity by comparing features across two or more views, while monocular depth estimation networks predict absolute depth from single images using geometric priors learned from training data. Recent self-supervised approaches like MonoDepth eliminate the need for ground truth depth measurements by using view synthesis as training signal, while transformer-based architectures improve generalization across diverse scenes. These techniques enable 3D scene reconstruction from ordinary cameras, powering applications in robotics navigation, 3D content creation, and augmented reality occlusion handling.

The practical applications of 3D deep learning are rapidly expanding. Autonomous vehicles combine LiDAR point cloud processing with camera-based depth estimation to construct detailed 3D representations of their surroundings. Augmented reality systems use simultaneous localization and mapping (SLAM) enhanced with deep learning for robust tracking and surface understanding. In manufacturing, 3D vision systems guide robotic manipulation of irregular parts, while in construction they monitor progress against BIM models. As 3D sensors become more affordable and algorithms more efficient, these applications will proliferate across industries, enabled by deep learning's ability to extract rich 3D understanding from visual data.

Emerging Architectures and Future Directions

The field of deep learning for computer vision continues to evolve rapidly, with several emerging architectures and paradigms pushing performance boundaries while addressing current limitations. Vision transformers (ViTs) represent one of the most significant recent developments, adapting the self-attention mechanisms from natural language processing to visual data. Unlike CNNs that process images through local receptive fields, ViTs divide images into patches processed through global attention mechanisms that dynamically weight all other patches based on their relevance. This approach captures long-range dependencies more effectively than traditional CNNs and demonstrates superior scaling behavior with increased model size and training data. Hybrid architectures like Convolutional Vision Transformers (CvTs) combine the strengths of both approaches, using convolutions for local feature extraction and attention for global reasoning.

Another promising direction is neural architecture search (NAS), which automates the design of optimal network architectures for specific vision tasks. Rather than relying on human intuition, NAS algorithms explore vast spaces of possible architectures, evaluating candidates through efficient proxy tasks. The resulting networks often discover unconventional but highly effective design patterns, achieving state-of-the-art performance with optimized efficiency. MobileNetV3 and EfficientNet are prominent examples of NAS-derived architectures that deliver exceptional accuracy with minimal computational resources, enabling deployment on edge devices.

Self-supervised learning is revolutionizing how deep vision models acquire foundational visual knowledge. Techniques like contrastive learning (e.g., SimCLR, MoCo) train networks to recognize when two augmented views originate from the same image versus different images, learning robust representations without manual labels. Masked autoencoders (MAEs) extend the successful "masked language modeling" approach from NLP to vision, predicting missing image regions from context. These methods dramatically reduce reliance on expensive labeled data while learning more generalizable features, particularly beneficial for domains with limited annotations like medical imaging.

The future of deep learning in computer vision points toward increasingly unified, general-purpose visual understanding systems. Models like Flamingo and GPT-4V demonstrate emerging capabilities in multimodal reasoning across vision and language, while robotics systems integrate perception with action through end-to-end trainable policies. As these technologies mature, they promise to bridge the gap between narrow computer vision systems and more general visual intelligence, capable of flexible understanding and reasoning about the visual world in human-like ways. The continued progression will be driven by scaling laws, architectural innovations, and ever-larger diverse datasets, pushing computer vision capabilities into new domains and applications.

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Puli Dog Breed: The Energetic, Corded Hungarian Sheepdog with Intelligence, Loyalty, and Charm

The Puli Dog Breed: A Comprehensive Portrait of the Hungarian Herding Wonder

In the rich tapestry of dog breeds shaped by centuries of human-animal cooperation, the Puli stands out as a curious and captivating thread. This Hungarian sheepdog, instantly recognizable for its unique corded coat that falls like dreadlocks from head to toe, is more than just a living mop. The Puli is an ancient, intelligent, and agile herder with a vibrant personality and a fiercely loyal spirit. Steeped in tradition yet adaptable to modern life, the Puli is a fascinating blend of form and function, history and heart.

400+ Puli Dog Stock Photos, Pictures & Royalty-Free Images ...

Origins and Historical Background

The story of the Puli begins in the sweeping plains of the Carpathian Basin, in what is now Hungary. It is widely believed that the ancestors of the Puli arrived in the region more than a thousand years ago with the Magyars, a nomadic tribe of Finno-Ugric origin who settled in the area in the 9th century. These early dogs, descendants of Asian herding breeds, found themselves in a land well-suited for pastoralism.

Hungary's vast open pastures, known as the Puszta, became the perfect backdrop for herding sheep and cattle. The need for nimble, intelligent, and highly trainable dogs was paramount, and the Puli rose to the challenge. While the larger Komondor—another corded Hungarian breed—was used for guarding flocks, the smaller, quicker Puli was the agile manager, darting back and forth to control the herd with astonishing precision and speed.

Historical records from as early as the 13th century make references to sheepdogs with characteristics that mirror today’s Puli. By the 17th and 18th centuries, the breed was deeply entrenched in Hungarian culture. Their value was so great that a well-trained Puli often cost more than a sheep or even a horse.

In the 20th century, especially after the world wars, the Puli breed faced significant challenges. Efforts were made to restore and standardize the breed, thanks in large part to the efforts of Dr. Emil Raitsits, a Hungarian professor of veterinary medicine. By the 1920s, the Puli had become recognized as a formal breed, and the first breed standard was developed. In 1934, the American Kennel Club (AKC) recognized the Puli, though the breed remains relatively rare outside Hungary.

400+ Puli Stock Photos, Pictures & Royalty-Free Images - iStock | Puli dog,  Puli township, Hungarian puli

Physical Characteristics

The Puli is a medium-sized dog, compact and square in build. Males typically stand between 16 to 17 inches at the shoulder and weigh around 25 to 35 pounds, while females may be slightly smaller. Despite their moderate size, they possess a substantial presence, in part due to their profuse, corded coat.

The most striking feature of the Puli is undoubtedly its coat. It is double-layered, with a dense, woolly undercoat and a coarser outer coat. As the dog matures, these two layers intertwine and naturally form cords or dreadlocks. These cords can range from thin and tight to broader, flatter mats, depending on the dog's genetics and grooming. This coat serves a functional purpose: in the open fields of Hungary, it provided protection against harsh weather and predator bites.

Pulis are most commonly black, which historically helped distinguish them from the livestock they herded. However, other recognized colors include white, gray, and a unique shade called fako, a kind of buff or pale brown.

Their eyes are dark and intelligent, always alert. Underneath the coat lies a muscular and agile body built for endurance and swift movement. The tail curls tightly over the back, often disappearing into the cords of the coat.

Personality and Temperament

A Puli is more than a pretty mop; it's a dynamic, spirited, and highly intelligent dog. True to their herding origins, Pulis are agile thinkers who thrive when given tasks and mental challenges. They are fiercely loyal to their family and typically form strong attachments to one particular person in the household.

Their alert nature makes them excellent watchdogs. Pulis are vocal and unafraid to express themselves, particularly if they sense something amiss. However, their protective streak can make them reserved or even suspicious around strangers. Early socialization is essential to prevent undue wariness or overprotectiveness.

One of the most delightful traits of the Puli is its boundless energy. These dogs are natural athletes, quick on their feet, and full of zest. They exhibit a bouncy gait and an exuberant nature, often appearing to dance when they move. Their sense of humor and love for play make them wonderful companions for active families.

That said, the Puli is not a breed for everyone. Their intelligence and drive can manifest as stubbornness if not properly channeled. They require consistent, firm, yet positive training. Harsh methods will only alienate them, while reward-based techniques and engaging challenges will bring out their best.

90+ Puli Puppy Stock Photos, Pictures & Royalty-Free Images - iStock

Exercise and Activity Needs

Pulis have high energy levels and demand regular physical and mental stimulation. Their herding lineage means they are happiest when they have a job to do. This doesn’t necessarily mean sheep herding—though they excel at it—but it could be as simple as participating in agility sports, learning tricks, or playing structured games.

A bored Puli is a mischievous Puli. Without sufficient outlets, they may become destructive or develop behavioral issues. A long walk once a day is not enough. Ideally, a Puli should be given at least an hour or two of vigorous exercise each day, along with mental tasks.

They thrive in environments where they can run, jump, and explore. Though they can adapt to urban life with a dedicated owner, they are best suited to homes with a yard or regular access to open space.

Trainability and Intelligence

Training a Puli can be both a joy and a challenge. They are whip-smart and learn quickly, sometimes quicker than their owners anticipate. However, their independent thinking can lead them to question commands if they don't see the point.

To keep a Puli engaged in training, it’s important to make learning fun and varied. They respond well to positive reinforcement and love being praised. Consistency, clarity, and patience are crucial. Obedience classes from an early age can provide structure and a foundation for good manners.

Many Pulis excel in dog sports, including obedience, agility, rally, herding trials, and even scent work. Their agility and speed, combined with their ability to think on their feet, make them formidable competitors.

Grooming and Coat Maintenance

The Puli's iconic corded coat is a thing of beauty but also a significant grooming commitment. Puppies are born with a fluffy, soft coat that begins to mat and form cords at around 9 to 12 months of age. This process can take up to two years to fully mature.

Owners must help the cords form properly by separating and shaping them regularly to prevent matting into large, unmanageable clumps. Once formed, cords must still be maintained to ensure they don’t trap debris or moisture, which can lead to odor or skin problems.

Bathing a Puli is a unique experience. The cords absorb water like a sponge, making the dog heavy and requiring thorough rinsing and drying—often with the help of fans or blow dryers. Drying can take several hours.

Some owners choose to trim or shear their Puli’s coat for ease of maintenance, especially if the dog is not being shown in conformation competitions. However, many prefer to preserve the natural cords for their beauty and authenticity.

Despite the maintenance, the Puli does not shed in the traditional sense. This makes them a potential option for people with allergies, though their coat can still trap allergens from the environment.

Health and Longevity

The Puli is generally a healthy and robust breed, with a life expectancy of 12 to 16 years. Their traditional working role and relatively limited breeding pool have contributed to a hardy constitution. However, like all breeds, they are prone to certain hereditary conditions.

Common health concerns include:

  • Hip Dysplasia: A malformation of the hip joint that can lead to arthritis and pain.

  • Progressive Retinal Atrophy (PRA): A degenerative eye disease that can result in blindness.

  • Cataracts: Especially as they age, Pulis can develop cloudiness in the eyes.

  • Patellar Luxation: A condition in which the kneecap slips out of place.

  • Allergies and Skin Conditions: Due to their heavy coat, skin health must be monitored, particularly if the cords remain damp for too long.

Responsible breeders test for these conditions and maintain breeding programs focused on long-term health and temperament.

Diet and Nutrition

A well-balanced diet is essential to support the Puli’s energy levels and overall health. As a medium-sized, active breed, they require high-quality protein sources, healthy fats, and a good mix of vitamins and minerals.

Feeding schedules should reflect the dog’s age, weight, and activity level. Puppies need more frequent meals, while adults usually thrive on two meals per day. Treats can be useful for training but should be given in moderation to prevent obesity.

Hydration is also crucial, especially during warm months, as the thick coat can lead to overheating.

Living with a Puli

Bringing a Puli into your life is a decision that promises joy, companionship, and a good amount of work. These dogs are happiest in active households where they are included in daily activities. They are good with children, especially when raised with them, but their herding instinct might prompt them to "round up" running kids.

They can coexist well with other dogs and even cats, though their assertive personality means they like to be in charge. Early introductions and proper socialization are key.

Apartment living is possible for a Puli with proper exercise and engagement, though a house with a fenced yard is ideal. They are not outdoor-only dogs, despite their weather-resistant coats, and they thrive when close to their humans.

Cultural Significance and Modern Roles

In Hungary, the Puli is a national treasure, symbolizing a proud pastoral heritage. It has been featured in literature, stamps, and national celebrations. The breed is even mentioned in Hungarian folklore, where its intelligence and bravery are highlighted.

In modern times, Pulis have found new roles beyond the pasture. They serve as therapy dogs, participate in dog sports, and even act as search-and-rescue animals due to their agility and sharp senses. In 2002, a Puli named Hobo was credited with saving a family from a house fire in Oregon, USA—testimony to their loyalty and intelligence.

A famous advocate of the breed was Mark Zuckerberg, the founder of Facebook, who owned a white Puli named Beast. This gave the breed a moment of internet fame and sparked new interest among dog lovers worldwide.

Choosing a Puli

Prospective owners should seek reputable breeders who prioritize health, temperament, and ethical breeding practices. Meeting the parents of a litter and reviewing health clearances can prevent future problems.

Adoption is also a noble route. Pulis occasionally appear in breed-specific rescues or shelters. Those with experience in grooming and active lifestyles may find that a rescued Puli becomes a deeply loyal and grateful companion.

Conclusion

The Puli is more than just a quirky-looking herding dog. It is a living artifact of human history, a marvel of natural adaptation, and a joyful companion wrapped in a coat of cords. For those who can meet their needs for activity, grooming, and companionship, Pulis offer an incredibly rewarding relationship—one full of laughter, agility, and love.

Whether bounding across a field, curling at your feet, or charming strangers with its mop-like charm, the Puli remains a dog like no other: ancient in lineage, lively in spirit, and endlessly captivating in form.

Photo from iStock

Frozen Custard: History, Ingredients, Recipe, Variations, Cultural Significance, Nutritional Facts, and How It Differs from Ice Cream

Frozen Custard: History, Ingredients, Recipes, Production, Differences from Ice Cream, and More

Frozen custard, often regarded as the richer, creamier cousin of ice cream, holds a beloved place in the hearts of dessert enthusiasts. With its silky texture and deep flavor, frozen custard is more than just a frozen treat—it’s an artisanal experience that has transcended generations. Unlike regular ice cream, frozen custard contains egg yolks in its base, contributing to its luxurious mouthfeel and dense, velvety consistency. It is churned at a slower speed, minimizing the air content and amplifying its dense texture.

Page 10 | Frozen Custard Images - Free Download on Freepik

Often associated with roadside stands and nostalgia-inducing ice cream parlors across the United States, particularly in the Midwest, frozen custard is not merely a dessert but a cultural icon. From family-owned custard stands in Wisconsin to gourmet shops experimenting with exotic flavors, frozen custard’s charm continues to evolve while staying rooted in its rich history.

The Origins and History of Frozen Custard

Custard: A Dessert as Old as Time

The concept of custard dates back centuries, tracing its roots to medieval Europe. The term "custard" derives from the French word croustade, which originally referred to a tart filled with egg-thickened cream. The earliest custard recipes were not frozen, of course, but were soft, baked mixtures of milk or cream and egg yolks, often sweetened and flavored with vanilla or nutmeg.

Custard was considered a luxurious delicacy, reserved for royalty and the upper classes due to the expense of sugar and dairy products. Over time, custard recipes evolved across Europe, appearing in forms such as crème anglaise in France, flan in Spain, and zabaione in Italy.

The Birth of Frozen Custard in the United States

The fusion of custard and frozen desserts likely occurred in the late 19th century, coinciding with innovations in ice cream production. However, it wasn’t until the early 20th century that frozen custard as we know it today emerged.

The first known frozen custard machine was invented by Archie and Elton Kohr, two brothers from Coney Island, New York, in 1919. Seeking to create a smoother, creamier ice cream, they experimented by adding egg yolks to the mix. The result was a dessert that melted slower and offered a richer taste experience. Their invention was an immediate hit; on the first weekend, they reportedly sold over 18,000 cones on the Coney Island boardwalk.

From the 1920s onward, frozen custard’s popularity spread beyond the East Coast, finding a fervent audience in the Midwestern United States, especially in Milwaukee, Wisconsin, which would eventually earn the unofficial title of "Frozen Custard Capital of the World."

The Rise of the Frozen Custard Stand

The 1930s and 1940s witnessed a boom in roadside custard stands. Entrepreneurs capitalized on the growing demand for quick, yet premium desserts. Frozen custard stands became summertime fixtures in towns and cities across the Midwest, offering a community-centric alternative to ice cream parlors. Classic chains like Ted Drewes in St. Louis (established in 1929) and Leon’s Frozen Custard in Milwaukee (opened in 1942) became legendary establishments, attracting both locals and tourists alike.

Ingredients of Frozen Custard

What sets frozen custard apart from ice cream is its ingredient profile and the manner in which it is produced. The basic ingredients include:

1. Milk

Whole milk provides the necessary liquid base and contributes to the creamy consistency of the custard.

2. Cream

Heavy cream adds richness and boosts the butterfat content, enhancing flavor and mouthfeel.

3. Egg Yolks

Egg yolks are the defining ingredient of frozen custard. They act as emulsifiers, giving the dessert a smooth, dense texture while also adding depth of flavor.

4. Sugar

Granulated sugar is used to sweeten the custard base, balancing the richness of the dairy and egg yolks.

5. Flavorings

The most common flavoring is vanilla extract, but other flavorings like chocolate, coffee, fruit purees, or spices can be incorporated depending on the desired end product.

6. Stabilizers and Emulsifiers (Optional)

Commercially produced frozen custard may include natural or artificial stabilizers such as guar gum, carrageenan, or mono- and diglycerides to improve texture, shelf-life, and freeze-thaw stability.

How is Frozen Custard Made? (Traditional Recipe & Process)

Traditional Frozen Custard Recipe (Base)

Ingredients:

  • 2 cups whole milk

  • 2 cups heavy cream

  • 6 large egg yolks

  • ¾ cup granulated sugar

  • 1 tablespoon pure vanilla extract (or paste)

  • A pinch of salt

Step-by-Step Preparation Method:

Step 1: Heating the Dairy

In a heavy-bottomed saucepan, combine whole milk and cream. Gently heat the mixture over medium heat until it reaches about 170°F (77°C), just below a simmer. Do not let it boil.

Step 2: Whisking the Egg Yolks and Sugar

In a separate bowl, whisk together the egg yolks, sugar, and a pinch of salt until the mixture becomes pale and thickened.

Step 3: Tempering the Eggs

Slowly pour a small amount of the hot milk-cream mixture into the yolk-sugar blend while whisking constantly. This step is crucial to prevent the eggs from scrambling. Gradually incorporate more of the hot liquid until the mixture is fully tempered.

Step 4: Cooking the Custard Base

Pour the tempered egg mixture back into the saucepan with the remaining dairy. Continue cooking over medium heat, stirring constantly with a wooden spoon or spatula, until the custard thickens and reaches about 180°F (82°C). The custard should coat the back of the spoon.

Step 5: Adding Vanilla and Chilling

Remove the saucepan from heat. Stir in the vanilla extract. Strain the custard through a fine-mesh sieve into a clean bowl to remove any coagulated bits. Cover the surface of the custard with plastic wrap to prevent a skin from forming. Chill in the refrigerator for at least 4 hours or overnight.

Step 6: Churning the Custard

Once thoroughly chilled, churn the custard in an ice cream maker designed for low overrun (air incorporation). Frozen custard machines typically churn at a slower speed than ice cream makers, resulting in minimal air content (about 20% overrun compared to up to 100% in regular ice cream).

Step 7: Serving

Frozen custard is traditionally served directly from the machine at a temperature of around 18-20°F (-7 to -6°C), slightly warmer than hard-packed ice cream. This "soft-serve" consistency highlights its dense and creamy nature.

Key Differences: Frozen Custard vs. Ice Cream vs. Gelato

AttributeFrozen CustardIce CreamGelato
Egg Yolk ContentMust contain at least 1.4% by weightUsually contains fewer or no yolksContains yolks but less cream
Butterfat Content10-18%Minimum 10% (can go higher)4-8%
Air Incorporation (Overrun)15-20% (dense)30-100% (light and airy)20-30% (dense)
Serving TemperatureWarmer (-7°C)Colder (-12°C)Slightly warmer (-10°C)
TextureRich, smooth, velvetyLight, airy, creamyDense, elastic, creamy

Though not a “health” food, frozen custard offers more protein and richness than regular ice cream due to the egg content and higher butterfat.

Frozen Custard in the Commercial Market

In addition to local stands, frozen custard has made significant inroads into the commercial dessert market. Fast-casual chains like Culver’s, Shake Shack, and Freddy’s Frozen Custard & Steakburgers have helped expand its presence across the United States.

Pre-packaged frozen custard is also produced by brands like Anderson’s Frozen Custard, Tillamook, and Kemps, though the texture may differ from fresh, soft-serve varieties due to packaging and storage conditions.

Custard-specific machines, designed to maintain low overrun and warm serving temperatures, have become a niche yet essential equipment in commercial dessert production.

The Science Behind Frozen Custard's Texture

What truly differentiates frozen custard is its emulsion of fat, protein, and air. Egg yolks contain lecithin, a powerful emulsifier that binds fat and water, ensuring a stable and creamy consistency. The slower churn rate minimizes air pockets, resulting in a dense yet soft texture.

The serving temperature also plays a vital role; at 18-20°F, frozen custard maintains its semi-soft consistency, which enhances the perception of richness compared to colder, harder ice creams.

Fun Facts About Frozen Custard

  • The U.S. Food and Drug Administration (FDA) mandates that for a product to be labeled “frozen custard,” it must contain at least 10% butterfat and 1.4% egg yolk solids by weight.

  • Milwaukee hosts The Great Custard Debate, with locals passionately defending their favorite custard stand.

  • In many regions, “concrete” refers to a frozen custard blended with mix-ins so dense that a spoon placed upside-down won’t fall out.

  • Elvis Presley was a known fan of Leon’s Frozen Custard in Milwaukee.

Conclusion: A Timeless Frozen Tradition

Frozen custard has managed to carve out its own niche in the crowded world of frozen desserts by delivering an unparalleled texture and flavor experience. It represents a perfect marriage of culinary tradition and scientific precision. Whether enjoyed at a local roadside stand, a bustling city parlor, or from a specialty chain, frozen custard continues to delight palates and create sweet memories.

As the artisanal food movement grows, frozen custard is finding renewed interest among chefs and dessert innovators who are pushing its boundaries with bold flavors and modern techniques. Yet, at its core, the simple pleasure of a freshly churned vanilla cone on a summer’s day remains unbeatable.

Photo from: Freepik

The Pioneering Genetic Journey of Svante Pääbo: Decoding Our Extinct Hominin Ancestors to Win the 2022 Nobel Prize

The 2022 Nobel Prize in Physiology or Medicine was awarded to Svante Pääbo for his pioneering discoveries in human evolution through the analysis of ancient DNA.

On October 3, 2022, the Nobel Assembly at the Karolinska Institutet awarded the Nobel Prize in Physiology or Medicine to Svante Pääbo, a Swedish geneticist, for his groundbreaking discoveries concerning the genomes of extinct hominins and human evolution . This award recognized a body of work that seemed to border on science fiction: sequencing the genome of our long-extinct relatives, the Neanderthals, discovering a previously unknown human ancestor called the Denisovan, and revealing that these archaic species live on within the DNA of modern humans. Through his pioneering research, Pääbo not only illuminated previously unknown chapters of our evolutionary past but also founded an entirely new scientific discipline—paleogenomics. This field, dedicated to the reconstruction and analysis of genomic information from extinct species, has fundamentally transformed our understanding of what makes us uniquely human and continues to reveal the profound physiological legacy our archaic ancestors have left within us.

Svante Pääbo – Facts – 2022 - NobelPrize.org

The Historical and Scientific Context

The question of human origins has perpetually intrigued humanity. Paleontology and archaeology have long been the primary tools for probing our evolutionary history, providing crucial evidence through the analysis of ancient bones and artifacts. These disciplines established that anatomically modern humans, Homo sapiens, first appeared in Africa approximately 300,000 years ago . Our closest known relatives, the Neanderthals (Homo neanderthalensis), developed outside of Africa and populated vast areas of Europe and Western Asia from around 400,000 years ago until their sudden extinction about 30,000 years ago . A pivotal moment in human prehistory occurred around 70,000 years ago when groups of Homo sapiens migrated from Africa into the Middle East and subsequently spread across the rest of the Eurasian continent . This meant that for tens of thousands of years, Homo sapiens and Neanderthals coexisted in large parts of Eurasia. For decades, the nature of their interactions was a subject of intense debate among scientists. Did our ancestors simply replace the Neanderthals, or was there some form of interaction, perhaps even interbreeding? The fossil record alone could not provide definitive answers, and it became increasingly clear that genetic analysis would be required to shed light on the intricate relationship between modern humans and our extinct cousins.

The scientific journey toward understanding human evolution through genetics had foundational roots in the work of researchers like Allan Wilson. In a landmark study, Wilson and his team analyzed mitochondrial DNA (mtDNA) from contemporary human populations. Mitochondrial DNA, inherited solely from the mother and present in high copy numbers within cells, is more easily accessible than nuclear DNA. Their results pointed to a common African origin for all modern human populations, providing crucial genetic support for the "Out of Africa" theory of human evolution . However, mtDNA represents only a tiny fraction of our total genetic makeup, and to truly understand our relationship with extinct hominins, scientists would need to go a step further. They would need to extract and sequence genomic DNA from the archaic specimens themselves. This, however, was considered a monumental, if not impossible, task at the time.

The Seemingly Impossible Task of Studying Ancient DNA

The immense technical challenges of studying ancient DNA are what made Svante Pääbo's achievements so extraordinary. Early in his career, while still a graduate student at Uppsala University, Pääbo nurtured a strong fascination with Egyptology and the possibility of applying modern genetic methods to study ancient specimens. In a clandestine side project from his main PhD research, he managed to isolate DNA from a 2,400-year-old Egyptian mummy . Although this initial foray was groundbreaking, Pääbo soon realized that working with ancient DNA was plagued by extreme technical challenges. He later acknowledged that his first publication likely suffered from contamination from contemporary human DNA, a problem that would haunt the field for years.

The fundamental obstacles are profound. After an organism dies, its DNA begins to degrade immediately, breaking down into short fragments over thousands of years . Chemical modifications, such as the deamination of cytosine bases to uracil, further damage the genetic material . The result is that only trace amounts of endogenous DNA remain in ancient bones, and this minute quantity is overwhelmingly contaminated with DNA from microbes in the soil and, even more problematically, from contemporary humans who have handled the specimens . As Pääbo himself described, the process is akin to trying to reconstruct a complex jigsaw puzzle where most of the pieces are missing or damaged.

Undeterred, Pääbo dedicated his career to solving these problems. During his postdoctoral work in Allan Wilson's laboratory at the University of California, Berkeley, and later as a professor at the University of Munich and director at the Max Planck Institute for Evolutionary Anthropology in Leipzig, he tirelessly developed and refined methods for ancient DNA analysis . He instituted rigorous standards, including specialized clean-room facilities to minimize contamination, and emphasized the necessity of independent replication of results by other laboratories . His group also developed sophisticated silica-based methods for purifying DNA from ancient bones and devised techniques to identify the characteristic damage patterns of ancient DNA, thereby distinguishing true endogenous sequences from modern contaminants. These meticulous and innovative methodologies provided the essential toolkit that would make the unthinkable possible.

The Pioneering Discoveries in Hominin Genetics

The First Breakthrough: Neanderthal Mitochondrial DNA

Pääbo's first major target was the Neanderthal. He began his investigation with mitochondrial DNA (mtDNA). Given that each cell contains hundreds to thousands of copies of mtDNA compared to just two copies of nuclear DNA, the likelihood of retrieving mtDNA from ancient remains was significantly higher . He obtained a precious sample from the original Neanderthal type specimen found in the Feldhofer Cave in Germany. Using polymerase chain reaction (PCR) primers to amplify a short segment of mtDNA, his team successfully sequenced a 105-base pair region. To ensure authenticity, they implemented extensive control experiments and, crucially, sent a separate bone sample to an independent laboratory at Pennsylvania State University, which replicated the finding.

The results, published in 1997, were stunning. The Neanderthal mtDNA sequence was distinctly different from that of any modern human. On average, the Feldhofer sequence differed from modern human sequences at 27 positions, whereas modern human sequences from around the globe differed from each other at only eight positions on average . This clearly indicated that Neanderthals were a genetically distinct lineage and, at least based on mtDNA, had not contributed to the modern human gene pool . This initial success provided the first direct genetic glimpse into an extinct hominin and proved that DNA could survive long enough to be studied. However, the mtDNA was just the beginning; it represented only a tiny fraction of the total genetic information and was inherited only through the maternal line. To gain a comprehensive understanding, Pääbo set his sights on an even more ambitious goal: sequencing the entire Neanderthal nuclear genome.

Sequencing the Neanderthal Nuclear Genome

Sequencing the nuclear genome was a task of Herculean proportions. The nuclear genome is 3 billion base pairs long, and the technical challenges of retrieving minute, degraded fragments of DNA and piecing them together were immense . At his newly founded Max Planck Institute in Leipzig, Pääbo and his team leveraged revolutionary advances in high-throughput DNA sequencing technology. They developed sophisticated computational methods to sort the precious fragments of endogenous Neanderthal DNA from a overwhelming background of microbial contamination.

Their decades of relentless effort culminated in 2010 with the publication of the first draft sequence of the Neanderthal genome . This was a landmark achievement in science. Comparative analysis of this genome with those of modern humans from different continents yielded a sensational discovery. Contrary to the earlier conclusion from mtDNA, the nuclear genome revealed that Neanderthals had interbred with Homo sapiens. The evidence was that modern humans of non-African descent—from Europe and Asia—shared more genetic variants with Neanderthals than did modern humans from Africa . This could only be explained by gene flow from Neanderthals into the ancestors of modern non-Africans during their coexistence in Eurasia. The research showed that approximately 1-4% of the DNA in modern-day people of European and Asian ancestry originates from Neanderthals. Pääbo had solved one long-standing mystery while simultaneously uncovering a profound new truth about our own biological heritage.

A Sensational Discovery: The Denisovans

Even as the Neanderthal genome was being completed, another extraordinary discovery was emerging from a small, seemingly insignificant fragment of a finger bone. This bone, dating to about 40,000 years ago, had been discovered in the Denisova Cave in the Altai Mountains of southern Siberia . When Pääbo's team sequenced its DNA, they expected to find either a Neanderthal or an early modern human. Instead, the genetic sequence was unique, unlike anything known to science . Pääbo had discovered an entirely new hominin, which was named the Denisovan.

This was a monumental achievement in paleoanthropology; it was the first time a new hominin species had been identified solely through genetic analysis, without any prior knowledge from the fossil record . Subsequent comparisons showed that the Denisovans were a sister group to the Neanderthals, having diverged from a common ancestor several hundred thousand years earlier . Just as with Neanderthals, Pääbo's team investigated whether Denisovans had left a genetic mark on modern humans. The answer was yes, but in a different part of the world. They found that Denisovan DNA is present in modern-day populations in Melanesia and parts of Southeast Asia, with individuals in these regions carrying up to 6% Denisovan ancestry. This pattern suggested that Denisovans had once been widespread across Asia and had interbred with the ancestors of modern Melanesians and Australians as they migrated through the continent.

The Birth of Paleogenomics and Its Physiological Relevance

Through his seminal research, Svante Pääbo established an entirely new scientific discipline: paleogenomics . This field focuses on the reconstruction and analysis of genomic information from extinct species, and it has fundamentally transformed studies of human evolution and migration. Following the initial discoveries, Pääbo's group and numerous other researchers worldwide have completed analyses of many additional genome sequences from extinct hominins, creating a unique and invaluable resource for the scientific community . This new field has revealed a complex, intertwined evolutionary history where mixing and gene flow between different hominin groups were common occurrences. For instance, genetic evidence has even revealed the existence of an individual from Denisova Cave who was a first-generation hybrid, with a Neanderthal mother and a Denisovan father.

Beyond satisfying our curiosity about our origins, paleogenomics has profound relevance for human physiology and medicine today. The archaic gene variants that modern humans acquired through interbreeding were not merely passive souvenirs; some conferred significant survival advantages in new environments, a process known as adaptive introgression . Striking examples have been identified that continue to influence human biology:

High-Altitude Adaptation: The Denisovan version of the EPAS1 gene, which plays a crucial role in the body's response to low oxygen levels, is common among present-day Tibetans. This gene variant provides a survival advantage at high altitudes, demonstrating how archaic DNA helped modern humans adapt to new environmental challenges .

Immune System Function: Neanderthal genes have been found to affect how our immune system responds to infections. Variants inherited from Neanderthals influence the function of genes involved in our innate immune defense, potentially shaping how different populations respond to pathogens

Disease Susceptibility and Severity: Archaic ancestry can also have negative implications. Research led by Pääbo and others identified a haplotype on chromosome 3, inherited from Neanderthals, that significantly increases the risk of developing severe COVID-19 and requiring mechanical ventilation . Other studies have linked Neanderthal DNA to increased susceptibility to conditions like diabetes, Crohn's disease, and lupus.

Other Physiological Traits: Studies have explored the potential influence of archaic genes on traits ranging from pain perception and skin physiology to metabolism and even the risk of preterm birth .

The Father of Paleogenomics

Svante Pääbo's journey to the Nobel Prize was one of extraordinary perseverance and intellectual vision. The son of a Nobel laureate himself (his father, Sune Bergström, won the Nobel Prize in Physiology or Medicine in 1982), Pääbo has been recognized with numerous prestigious awards throughout his career, including the Gruber Genetics Prize, the Breakthrough Prize in Life Sciences, and the Lasker Award . His work has been supported for over a decade by the European Research Council, which recognized his "blue sky" research as exactly the kind of high-risk, high-reward science that leads to paradigm-changing discoveries . In 2018, he was also awarded the HFSP Nakasone Award, which has previously honored other scientists who later went on to win Nobel Prizes.

The Nobel Prize in Physiology or Medicine 2022 not only honors Svante Pääbo's specific discoveries but also validates the entire field of paleogenomics. By accomplishing what was once deemed impossible, he has opened a completely new window into our past. His research has provided definitive answers to long-standing questions about our relationship with other hominins while simultaneously raising new and equally profound questions. It has revealed that our evolutionary history was not a simple linear progression but a complex tapestry of divergence, coexistence, and interbreeding. Most importantly, Pääbo's work continues to provide the basis for exploring the ultimate biological question: What, at the genetic level, makes us uniquely human? The identification of the handful of genetic differences between modern humans and our extinct relatives now provides a roadmap for scientists to investigate the biological foundations of our complex culture, creativity, and ability to adapt and conquer every corner of the globe. Through his work, we have gained not only a deeper understanding of where we came from but also new tools to understand the functioning of our own bodies in health and disease.