Harris Chelsea E, Liu Lingling, Almeida Luiz, Kassick Carolina, Makrogiannis Sokratis
Division of Physics, Engineering, Mathematics, and Computer Science, Delaware State University, 1200 N. Dupont Hwy., Dover, 19901, DE, USA.
Department of Orthopaedic Surgery, Duke University, 2080 Duke University Road, Durham, 27710, NC, USA.
Bone Rep. 2025 Apr 23;25:101845. doi: 10.1016/j.bonr.2025.101845. eCollection 2025 Jun.
Osteopenia is a bone disorder that causes low bone density and affects millions of people worldwide. Diagnosis of this condition is commonly achieved through clinical assessment of bone mineral density (BMD). State of the art machine learning (ML) techniques, such as convolutional neural networks (CNNs) and transformer models, have gained increasing popularity in medicine. In this work, we employ six deep networks for osteopenia vs. healthy bone classification using X-ray imaging from the pediatric wrist dataset GRAZPEDWRI-DX. We apply two explainable AI techniques to analyze and interpret visual explanations for network decisions. Experimental results show that deep networks are able to effectively learn osteopenic and healthy bone features, achieving high classification accuracy rates. Among the six evaluated networks, DenseNet201 with transfer learning yielded the top classification accuracy at 95.2 %. Furthermore, visual explanations of CNN decisions provide valuable insight into the blackbox inner workings and present interpretable results. Our evaluation of deep network classification results highlights their capability to accurately differentiate between osteopenic and healthy bones in pediatric wrist X-rays. The combination of high classification accuracy and interpretable visual explanations underscores the promise of incorporating machine learning techniques into clinical workflows for the early and accurate diagnosis of osteopenia.
骨质减少是一种导致骨密度降低的骨骼疾病,影响着全球数百万人。这种疾病的诊断通常通过骨矿物质密度(BMD)的临床评估来实现。诸如卷积神经网络(CNN)和Transformer模型等先进的机器学习(ML)技术在医学领域越来越受欢迎。在这项工作中,我们使用来自儿科手腕数据集GRAZPEDWRI-DX的X射线成像,采用六个深度网络对骨质减少与健康骨骼进行分类。我们应用两种可解释的人工智能技术来分析和解释网络决策的视觉解释。实验结果表明,深度网络能够有效地学习骨质减少和健康骨骼的特征,实现较高的分类准确率。在评估的六个网络中,采用迁移学习的DenseNet201获得了最高的分类准确率,为95.2%。此外,CNN决策的视觉解释为黑箱内部工作原理提供了有价值的见解,并呈现出可解释的结果。我们对深度网络分类结果的评估突出了它们在儿科手腕X射线中准确区分骨质减少和健康骨骼的能力。高分类准确率和可解释的视觉解释相结合,凸显了将机器学习技术纳入临床工作流程以早期准确诊断骨质减少的前景。