Dorraki Mohsen, Muratovic Dzenita, Fouladzadeh Anahita, Verjans Johan W, Allison Andrew, Findlay David M, Abbott Derek
South Australian Health and Medical Research Institute (SAHMRI), Adelaide, SA 5000, Australia.
Australian Institute for Machine Learning (AIML), The University of Adelaide, Adelaide, SA 5000, Australia.
PNAS Nexus. 2022 Nov 21;1(5):pgac258. doi: 10.1093/pnasnexus/pgac258. eCollection 2022 Nov.
Hip osteoarthritis (HOA) is a degenerative joint disease that leads to the progressive destruction of subchondral bone and cartilage at the hip joint. Development of effective treatments for HOA remains an open problem, primarily due to the lack of knowledge of its pathogenesis and a typically late-stage diagnosis. We describe a novel network analysis methodology for microcomputed tomography (micro-CT) images of human trabecular bone. We explored differences between the trabecular bone microstructure of femoral heads with and without HOA. Large-scale automated extraction of the network formed by trabecular bone revealed significant network properties not previously reported for bone. Profound differences were discovered, particularly in the proximal third of the femoral head, where HOA networks demonstrated elevated numbers of edges, vertices, and graph components. When further differentiating healthy joint and HOA networks, the latter showed fewer small-world network properties, due to decreased clustering coefficient and increased characteristic path length. Furthermore, we found that HOA networks had reduced length of edges, indicating the formation of compressed trabecular structures. In order to assess our network approach, we developed a deep learning model for classifying HOA and control cases, and we fed it with two separate inputs: (i) micro-CT images of the trabecular bone, and (ii) the network extracted from them. The model with plain micro-CT images achieves 74.6% overall accuracy while the trained model with extracted networks attains 96.5% accuracy. We anticipate our findings to be a starting point for a novel description of bone microstructure in HOA, by considering the phenomenon from a graph theory viewpoint.
髋骨关节炎(HOA)是一种退行性关节疾病,会导致髋关节软骨下骨和软骨的渐进性破坏。由于对其发病机制缺乏了解且通常诊断较晚,开发有效的HOA治疗方法仍然是一个悬而未决的问题。我们描述了一种用于人体小梁骨微计算机断层扫描(micro-CT)图像的新型网络分析方法。我们探索了患有和未患有HOA的股骨头小梁骨微观结构之间的差异。对由小梁骨形成的网络进行大规模自动提取,揭示了以前未在骨中报道过的显著网络特性。发现了显著差异,特别是在股骨头的近端三分之一处,HOA网络的边、顶点和图组件数量增加。在进一步区分健康关节和HOA网络时,由于聚类系数降低和特征路径长度增加,后者显示出较少的小世界网络特性。此外,我们发现HOA网络的边长度缩短,表明形成了压缩的小梁结构。为了评估我们的网络方法,我们开发了一个用于对HOA和对照病例进行分类的深度学习模型,并为其提供了两个单独的输入:(i)小梁骨的micro-CT图像,以及(ii)从这些图像中提取的网络。使用普通micro-CT图像的模型总体准确率达到74.6%,而使用提取网络的训练模型准确率达到96.5%。我们预计我们的发现将成为从图论角度考虑这一现象,对HOA中骨微观结构进行新描述的起点。