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Related Concept Videos

Gross Anatomy of Bone01:17

Gross Anatomy of Bone

The two main features of a long bone are the diaphysis and the epiphysis.
The diaphysis is the tubular shaft that runs between the proximal and distal ends of the bone. The walls of the diaphysis are composed of dense and hard compact bone made of numerous osteons — the functional unit of the compact bone. The hollow region in the diaphysis is called the medullary cavity, which harbors the bone marrow. In infants and children, this marrow cavity is filled with red marrow, whereas in adults, it...
Gross Anatomy of Skeletal Muscles01:12

Gross Anatomy of Skeletal Muscles

The connective tissues play a significant role in arranging the muscle fibers into a hierarchical structure that forms a complete muscle. Consider a muscle like the bicep brachii, commonly called the bicep. This muscle comprises thousands of muscle fibers enclosed by a protective layer of connective tissue called the endomysium. The endomysium is primarily composed of reticular fibers, a type of thin collagen fiber. It allows the exchange of nutrients and waste products at the fiber level,...
Microscopic Anatomy of Skeletal Muscles01:13

Microscopic Anatomy of Skeletal Muscles

Skeletal muscle cells, also called muscle fibers, are distinctly elongated, multi-nucleated, slender biological units. They are packed with specialized structures designed to facilitate their primary function, which is contraction.
The muscle sarcolemma is a plasma membrane enclosing each muscle cell that conducts electrical signals called action potentials. The sarcolemma extends into the cell to form T-tubules, ensuring the neural impulses are uniformly distributed across the entire muscle...
Anatomical Terminology01:20

Anatomical Terminology

Knowledge of anatomy is essential to understand human biology and medicine. Anatomists and health care professionals use standard terminology to describe the human body with more precision and no ambiguity. Anatomical terms have mostly Greek and Latin-derived roots. Because these languages are rarely used in conversation, the meaning of words remains the same. Each term is made up of a root in between the prefixes and suffixes. The root of a term often refers to an organ, tissue, or condition,...
Anatomical Positions01:11

Anatomical Positions

In anatomy, several standard anatomical positions are used as references for describing the position and orientation of different body parts. These positions help provide a common frame of reference when discussing anatomical structures. The anatomical position is the standard reference point for describing the body's position and orientation. In this position:
The body is upright, facing forward, and standing erect.
The feet are parallel and flat on the floor.
The arms are hanging by the...
Skeletal Muscle Anatomy00:55

Skeletal Muscle Anatomy

Skeletal muscle is the most abundant type of muscle in the body. Tendons are the connective tissue that attaches skeletal muscle to bones. Skeletal muscles pull on tendons, which in turn pull on bones to carry out voluntary movements.

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Scaled Anatomical Model Creation of Biomedical Tomographic Imaging Data and Associated Labels for Subsequent Sub-surface Laser Engraving (SSLE) of Glass Crystals
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Scaled Anatomical Model Creation of Biomedical Tomographic Imaging Data and Associated Labels for Subsequent Sub-surface Laser Engraving (SSLE) of Glass Crystals

Published on: April 25, 2017

Autodidactic dense anatomical models.

Mohammad Reza Hosseinzadeh Taher1, Michael B Gotway2, Jianming Liang3

  • 1School of Computing and Augmented Intelligence, Arizona State University, Tempe, AZ, 85281, United States.

Medical Image Analysis
|June 2, 2026
PubMed
Summary
This summary is machine-generated.

Adam-v2, a self-supervised learning framework, explicitly encodes part-whole anatomical hierarchies in medical images. This enables advanced anatomy understanding and robust performance in few-shot learning and anomaly detection.

Keywords:
Learning from anatomyPart-whole relationshipsSelf-supervised learning

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Area of Science:

  • Medical Imaging
  • Artificial Intelligence
  • Computer Vision

Background:

  • Humans naturally interpret images using part-whole hierarchies.
  • Deep learning models often struggle to explicitly encode these hierarchies, crucial for medical image analysis.
  • Anatomical structures in medical imaging possess inherent hierarchical relationships.

Purpose of the Study:

  • To introduce Adam-v2, a self-supervised learning framework designed to explicitly learn part-whole hierarchies in medical images.
  • To develop a method that enhances anatomy understanding within medical imaging data.
  • To create robust and generalizable representations for medical image analysis tasks.

Main Methods:

  • Adam-v2 framework utilizes three branches: localizability for distinguishing structures, composability for parts-to-whole learning, and decomposability for whole-to-parts comprehension.
  • The framework learns from unlabeled medical images, constructing explicit hierarchies for anatomical structures.
  • Embeddings generated by Adam-v2, termed Eve-v2, are evaluated for their anatomical understanding capabilities.

Main Results:

  • Eve-v2 embeddings demonstrate zero-shot anatomy understanding, preserving localizability and encoding part-whole relations.
  • Emergent properties include understanding anatomical layouts, dense semantic embeddings, symmetry recognition, scale consistency, and cross-image matching.
  • Adam-v2 representations show robustness and generalizability, excelling in few-shot learning, full-transfer learning, and anomaly detection.

Conclusions:

  • Adam-v2 effectively learns explicit part-whole anatomical hierarchies from unlabeled medical images.
  • The Eve-v2 embeddings offer advanced, zero-shot anatomy understanding with emergent properties beneficial for various medical imaging tasks.
  • The framework provides robust and generalizable representations, advancing medical image analysis through a novel anatomy learning strategy.