An Informative Machine-Learning Tool for Diagnosis of Osteoporosis using Routine Femoral Neck Radiographs

Talia Yeshua, Sarah Rebibo, Keren Jacobson, O. Safran, M. Liebergall, I. Leichter
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引用次数: 1

Abstract

Aim/Purpose: The aim of the study was to analyze the structure of the bone tissue by using texture analysis of the bone trabeculae, as visualized in a routine radiograph of the proximal femur . This could provide objective information regarding both the mineral content and the spatial structure of bone tissue. Therefore, machine-learning tools were applied to explore the use of texture analysis for obtaining information on the bone strength. Background: One in three women in the world develops osteoporosis, which weakens the bones, causes atraumatic fractures and lowers the quality of life. The damage to the bones can be minimized by early diagnosis of the disease and preventive treatment, including appropriate nutrition, bone-building exercise and medications. Osteoporosis is currently diagnosed primarily by DEXA (Dual Energy X-ray Absorptiometry), which measures the bone mineral density alone. However, bone strength is determined not only by its mineral density but also by the spatial structure of bone trabeculae. In order to obtain valuable information regarding the bone strength, the mineral content and the spatial structure of the bone tissue should be objectively assessed. Methodology: The study includes 17 radiographs of in-vitro femurs without soft tissue and 44 routine proximal femur radiographs (15 subjects with osteoporotic fractures and 29 without a fracture). The critical force required to fracture the in-vitro femurs was measured and the bones were divided into two groups: 11 solid bones with critical fracture force higher than 4.9kN and 6 fragile bones with critical fracture force lower than 4.9kN. All the radiographs included an aluminum step-wedge for calibrating the gray-levels values (See Figure 3). An algorithm was developed to automatically adjust the gray levels in order to yield equal brightness and contrast. Findings: The algorithm characterized the in-vitro bones with as fragile or solid with an accuracy of 88%. For the radiographs of the patients, the algorithm characterized the bones as osteoporotic or non-osteoporotic with an accuracy of 86%. The most prominent features for estimating the bone strength were the mean gray-level, which is related to bone density, and the smoothness, uniformity and entropy, which are related to the spatial distribution of the bone trabeculae. Impact on Society: Analysis of bone tissue structure, using machine-learning tools will provide a significant information on the bone strength, for the early diagnosis of osteoporosis. The structure analysis can be performed on routine radiographs of the proximal femur, with high accuracy. Future Research: The algorithm for automatic structure analysis of bone tissue as visualized on a routine femoral radiograph should be further trained on a larger dataset of routine radiographs in order to improve the accuracy of assessing the bone strength.
利用常规股骨颈x线片诊断骨质疏松症的信息机器学习工具
目的:本研究的目的是通过骨小梁的纹理分析来分析骨组织的结构,如股骨近端常规x线片所示。这可以提供关于骨组织的矿物质含量和空间结构的客观信息。因此,机器学习工具被应用于探索使用纹理分析来获取骨强度信息。背景:世界上三分之一的女性患有骨质疏松症,骨质疏松症会使骨骼变弱,导致非创伤性骨折,降低生活质量。通过疾病的早期诊断和预防性治疗,包括适当的营养、增骨运动和药物治疗,可以将对骨骼的损害降到最低。目前,骨质疏松症的诊断主要通过DEXA(双能x线吸收仪),它可以单独测量骨矿物质密度。然而,骨强度不仅取决于其矿物质密度,还取决于骨小梁的空间结构。为了获得有关骨强度的有价值的信息,应该客观地评估骨组织的矿物质含量和空间结构。方法:本研究包括17张无软组织的体外股骨x线片和44张常规股骨近端x线片(骨质疏松性骨折15例,无骨折29例)。测量体外股骨骨折所需的临界力,将骨分为两组:11块临界骨折力大于4.9kN的实心骨和6块临界骨折力小于4.9kN的脆性骨。所有的x光片都包括一个铝制阶梯楔,用于校准灰度值(见图3)。开发了一种算法来自动调整灰度级,以产生相同的亮度和对比度。结果:该算法将体外骨定性为脆弱或坚固,准确率为88%。对于患者的x光片,该算法将骨骼特征描述为骨质疏松或非骨质疏松,准确率为86%。估计骨强度最突出的特征是与骨密度相关的平均灰度,以及与骨小梁空间分布相关的平滑度、均匀度和熵。对社会的影响:利用机器学习工具分析骨组织结构,将为骨质疏松症的早期诊断提供重要的骨强度信息。结构分析可在股骨近端常规x线片上进行,准确度高。未来研究:为了提高骨强度评估的准确性,应该在更大的常规x线片数据集上进一步训练常规股骨x线片显示的骨组织结构自动分析算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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