Prognostic assessment of osteolytic lesions and mechanical properties of bones bearing breast cancer using neural network and finite element analysis☆

Shubo Wang , Tiankuo Chu , Murtaza Wasi , Rosa M. Guerra , Xu Yuan , Liyun Wang
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Abstract

The management of skeletal-related events (SREs), particularly the prevention of pathological fractures, is crucial for cancer patients. Current clinical assessment of fracture risk is mostly based on medical images, but incorporating sequential images in the assessment remains challenging. This study addressed this issue by leveraging a comprehensive dataset consisting of 260 longitudinal micro-computed tomography (μCT) scans acquired in normal and breast cancer bearing mice. A machine learning (ML) model based on a spatial–temporal neural network was built to forecast bone structures from previous μCT scans, which were found to have an overall similarity coefficient (Dice) of 0.814 with ground truths. Despite the predicted lesion volumes (18.5 ​% ​± ​15.3 ​%) being underestimated by ∼21 ​% than the ground truths’ (22.1 ​% ​± ​14.8 ​%), the time course of the lesion growth was better represented in the predicted images than the preceding scans (10.8 ​% ​± ​6.5 ​%). Under virtual biomechanical testing using finite element analysis (FEA), the predicted bone structures recapitulated the loading carrying behaviors of the ground truth structures with a positive correlation (y ​= ​0.863x) and a high coefficient of determination (R2 ​= ​0.955). Interestingly, the compliances of the predicted and ground truth structures demonstrated nearly identical linear relationships with the lesion volumes. In summary, we have demonstrated that bone deterioration could be proficiently predicted using machine learning in our preclinical dataset, suggesting the importance of large longitudinal clinical imaging datasets in fracture risk assessment for cancer bone metastasis.

Abstract Image

基于神经网络和有限元分析的乳腺癌骨溶解病变和力学特性预后评估
骨骼相关事件(SREs)的管理,特别是病理性骨折的预防,对癌症患者至关重要。目前对骨折风险的临床评估主要基于医学图像,但将序列图像纳入评估仍然具有挑战性。本研究利用260个纵向微计算机断层扫描(μCT)数据集解决了这个问题,这些数据集来自正常小鼠和乳腺癌小鼠。建立了基于时空神经网络的机器学习(ML)模型来预测μCT扫描的骨结构,发现其与ground truth的总体相似系数(Dice)为0.814。尽管预测的病变体积(18.5%±15.3%)比实际情况(22.1%±14.8%)低估了约21%,但预测图像比之前的扫描(10.8%±6.5%)更好地反映了病变生长的时间过程。采用有限元分析(FEA)进行虚拟生物力学测试,预测骨结构再现了地基真实结构的承载行为,且具有正相关(y = 0.863 3x)和高决定系数(R2 = 0.955)。有趣的是,预测和基础真值结构的顺应性与病变体积表现出几乎相同的线性关系。总之,我们已经证明,在我们的临床前数据集中,使用机器学习可以熟练地预测骨退化,这表明大型纵向临床成像数据集在癌症骨转移的骨折风险评估中的重要性。
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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