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Related Concept Videos

Bone Structure01:55

Bone Structure

Within the skeletal system, the structure of a bone, or osseous tissue, can be exemplified in a long bone, like the femur, where there are two types of osseous tissue: cortical and cancellous.
Bone Remodeling01:40

Bone Remodeling

Bone remodeling is a continuous and balanced process of bone resorption by osteoclasts and bone formation by osteoblasts. In adults, it helps maintain bone mass and calcium homeostasis. While mechanical stress can stimulate turnover as part of the normal maintenance and reparative process, several hormones also regulate bone remodeling.
Classification of Bones01:18

Classification of Bones

The bones of the human skeletal system are of varied shapes, sizes, and functions. They can be classified based on their shape and function into four major classes: long bones, short bones, flat bones, and irregular bones. Some classifications include a fifth type, the sesamoid bones, as a separate class, whereas others categorize them under short bones.
Long and Short Bones
The appendicular skeleton, particularly the upper and lower limbs, is primarily made of long and short bones. The long...
Compact Bone01:27

Compact Bone

Most bones contain compact and spongy osseous tissue, but their distribution and concentration vary based on the bone's overall function.
Compact bone, also called cortical bone, is the denser, stronger of the two types of bone tissue. It is found under the periosteum and in the diaphyses of long bones, where it provides support and protection. The microscopic structural unit of compact bone is called an osteon, or haversian system. Each osteon is composed of concentric rings of calcified...
Bone Remodeling and Repair01:31

Bone Remodeling and Repair

Osteoclasts are cells responsible for bone resorption and remodeling. They originate from hematopoietic progenitor cells present in the bone marrow. Numerous progenitor cells fuse to form multinucleated cells, each with 10-20 nuclei. A single osteoclast has a diameter of 150 to 200 µM. These cells have ruffled borders that break down the underlying bone tissue and release minerals such as calcium into the blood in bone resorption. Osteoclasts cling to bones with their ruffled edges during bone...

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BAE-ViT: An Efficient Multimodal Vision Transformer for Bone Age Estimation.

Jinnian Zhang1, Weijie Chen1, Tanmayee Joshi1

  • 1Department of Electrical and Computer Engineering, University of Wisconsin-Madison, Madison, WI 53706, USA.

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|December 27, 2024
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Summary
This summary is machine-generated.

This study introduces BAE-ViT, a novel vision transformer for bone age estimation (BAE). It effectively merges image and sex data, outperforming existing models, especially with image distortions.

Keywords:
bone age regressiongender embeddingmachine learningmultimodal datavision transformer

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Area of Science:

  • Medical Imaging
  • Artificial Intelligence
  • Pediatric Radiology

Background:

  • Traditional Convolutional Neural Networks (CNNs) lack the ability to efficiently merge image and non-image data for Bone Age Estimation (BAE).
  • Integrating multimodal data, such as patient sex, is crucial for accurate BAE.

Purpose of the Study:

  • To introduce BAE-ViT, a specialized vision transformer model for enhanced Bone Age Estimation (BAE).
  • To develop a novel data fusion method for integrating visual and non-visual data in medical imaging.

Main Methods:

  • Developed BAE-ViT, a vision transformer model for BAE.
  • Implemented a novel data fusion technique by tokenizing non-visual data (e.g., sex) and concatenating it with image tokens.
  • Trained the model on a large-scale dataset from the 2017 RSNA Pediatric Bone Age Machine Learning Challenge.

Main Results:

  • BAE-ViT demonstrated commendable performance in Bone Age Estimation.
  • The model showed superior performance in handling image distortions compared to existing models.
  • Statistical analysis confirmed a strong correlation between BAE-ViT predictions and ground-truth labels.

Conclusions:

  • Vision transformers offer a viable approach for integrating multimodal data in medical imaging.
  • The proposed tokenization method enables effective incorporation of non-visual elements like sex into BAE.
  • BAE-ViT provides a versatile framework for multimodal data integration in medical AI applications.