HarDNet-based deep learning model for osteoporosis screening and bone mineral density inference from hand radiographs

IF 3.5 2区 医学 Q2 ENDOCRINOLOGY & METABOLISM Bone Pub Date : 2024-11-03 DOI:10.1016/j.bone.2024.117317
Chan-Shien Ho , Tzuo-Yau Fan , Chang-Fu Kuo , Tzu-Yun Yen , Szu-Yi Chang , Yu-Cheng Pei , Yueh-Peng Chen
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Abstract

Purpose

Osteoporosis, affecting over 200 million individuals, often remains unrecognized and untreated, increasing the risk of fractures in older adults. Osteoporosis is typically diagnosed with bone mineral density (BMD) measured by dual-energy X-ray absorptiometry (DXA). This study aims to develop DeepDXA-Hand, a deep learning model using the efficient CNN-based deep learning architecture, for opportunistic osteoporosis screening from hand radiographs.

Methods

DeepDXA-Hand utilizes a CNN-based, HarDNet, approach to predict BMD non-invasively. A total of 10,351 hand radiographs and DXA pairs were used for model training and validation. The model's interpretability was enhanced using GradCAM for hotspot analysis to determine the model's attention areas.

Results

The predicted and ground truth BMD were significantly correlated with a correlation coefficient of 0.745. For binary classification of osteoporosis, DeepDXA-Hand demonstrated a sensitivity of 0.73, specificity of 0.83, and accuracy of 0.80, indicating its clinical potential. The model mainly focused on the carpal bones, such as the capitate, trapezoid, hamate, triquetrum, and the head of the second metacarpal bone, suggesting these areas provide radiological features for inferring BMD.

Conclusion

DeepDXA-Hand shows potential for the early detection of osteoporosis with high sensitivity and specificity. Further studies should explore its utility in predicting fracture risks.

Mini abstract

Osteoporosis affects millions and often goes undetected and untreated. DeepDXA-Hand, a HarDNet-based deep learning model, predicted bone mineral density with a correlation of 0.745 and classified osteoporosis with 0.80 accuracy. This model enhances early detection and has significant clinical potential as osteoporosis opportunistic screening tool.

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基于 HarDNet 的深度学习模型,用于骨质疏松症筛查和手部 X 光片骨矿密度推断。
目的:骨质疏松症影响着 2 亿多人,常常不被认识和治疗,增加了老年人骨折的风险。骨质疏松症通常是通过双能 X 射线吸收测量法(DXA)测量骨矿密度(BMD)来诊断的。本研究旨在开发一种深度学习模型 DeepDXA-Hand,该模型采用基于 CNN 的高效深度学习架构,用于通过手部 X 光片进行骨质疏松症的机会性筛查:方法:DeepDXA-Hand 采用基于 CNN 的 HarDNet 方法,无创预测 BMD。共有 10351 张手部 X 光片和 DXA 对用于模型训练和验证。使用 GradCAM 进行热点分析以确定模型的关注区域,从而增强了模型的可解释性:结果:预测的 BMD 与地面真实 BMD 显著相关,相关系数为 0.745。对于骨质疏松症的二元分类,DeepDXA-Hand 的灵敏度为 0.73,特异度为 0.83,准确度为 0.80,显示了其临床潜力。该模型主要集中在腕骨,如头骨、梯形骨、锤骨、三槌骨和第二掌骨的头部,这表明这些部位为推断 BMD 提供了放射学特征:结论:DeepDXA-Hand 具有早期检测骨质疏松症的潜力,灵敏度和特异性都很高。微型摘要:骨质疏松症影响着数百万人,而且经常未被发现和治疗。基于 HarDNet 的深度学习模型 DeepDXA-Hand 预测骨矿密度的相关性为 0.745,骨质疏松症分类的准确性为 0.80。该模型提高了早期检测能力,作为骨质疏松症机会性筛查工具具有巨大的临床潜力。
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来源期刊
Bone
Bone 医学-内分泌学与代谢
CiteScore
8.90
自引率
4.90%
发文量
264
审稿时长
30 days
期刊介绍: BONE is an interdisciplinary forum for the rapid publication of original articles and reviews on basic, translational, and clinical aspects of bone and mineral metabolism. The Journal also encourages submissions related to interactions of bone with other organ systems, including cartilage, endocrine, muscle, fat, neural, vascular, gastrointestinal, hematopoietic, and immune systems. Particular attention is placed on the application of experimental studies to clinical practice.
期刊最新文献
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