Classification of Fracture Risk in Fallers Using Dual-Energy X-Ray Absorptiometry (DXA) Images and Deep Learning-Based Feature Extraction
Damith Senanayake, Sachith Seneviratne, Mahdi Imani, Christel Harijanto, Myrla Sales, Peter Lee, Gustavo Duque, David C. Ackland
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引用次数: 0
Abstract
Dual-energy X-ray absorptiometry (DXA) scans are one of the most frequently used imaging techniques for calculating bone mineral density, yet calculating fracture risk using DXA image features is rarely performed. The objective of this study was to combine deep neural networks, together with DXA images and patient clinical information, to evaluate fracture risk in a cohort of adults with at least one known fall and age-matched healthy controls. DXA images of the entire body as, well as isolated images of the hip, forearm, and spine (1488 total), were obtained from 478 fallers and 48 non-faller controls. A modeling pipeline was developed for fracture risk prediction using the DXA images and clinical data. First, self-supervised pretraining of feature extractors was performed using a small vision transformer (ViT-S) and a convolutional neural network model (VGG-16 and Resnet-50). After pretraining, the feature extractors were then paired with a multilayer perceptron model, which was used for fracture risk classification. Classification was achieved with an average area under the receiver-operating characteristic curve (AUROC) score of 74.3%. This study demonstrates ViT-S as a promising neural network technique for fracture risk classification using DXA scans. The findings have future application as a fracture risk screening tool for older adults at risk of falls. © 2023 The Authors. JBMR Plus published by Wiley Periodicals LLC on behalf of American Society for Bone and Mineral Research.
利用双能量 X 射线吸收测量(DXA)图像和基于深度学习的特征提取对跌倒者的骨折风险进行分类
双能 X 射线吸收测量(DXA)扫描是计算骨矿密度最常用的成像技术之一,但利用 DXA 图像特征计算骨折风险的方法却很少使用。本研究的目的是将深度神经网络与 DXA 图像和患者临床信息相结合,评估至少有一次已知跌倒的成年人和年龄匹配的健康对照组的骨折风险。研究人员从 478 名跌倒者和 48 名非跌倒者对照组中获取了全身的 DXA 图像,以及髋部、前臂和脊柱的单独图像(共 1488 张)。利用 DXA 图像和临床数据开发了一个用于预测骨折风险的建模管道。首先,使用小型视觉转换器(ViT-S)和卷积神经网络模型(VGG-16 和 Resnet-50)对特征提取器进行自监督预训练。经过预训练后,特征提取器与多层感知器模型配对,用于骨折风险分类。分类的平均接收者工作特征曲线下面积 (AUROC) 得分为 74.3%。这项研究表明,ViT-S 是利用 DXA 扫描进行骨折风险分类的一种很有前途的神经网络技术。研究结果未来可作为骨折风险筛查工具应用于有跌倒风险的老年人。© 2023 作者。JBMR Plus 由 Wiley Periodicals LLC 代表美国骨与矿物质研究学会出版。
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