Explainable machine‐learning‐based prediction of QCT/FEA‐calculated femoral strength under stance loading configuration using radiomics features
Shuyu Liu,
Meng Zhang,
He Gong
et al.
Abstract:Finite element analysis can provide precise femoral strength assessment. However, its modeling procedures were complex and time‐consuming. This study aimed to develop a model to evaluate femoral strength calculated by quantitative computed tomography‐based finite element analysis (QCT/FEA) under stance loading configuration, offering an effective, simple, and explainable method. One hundred participants with hip QCT images were selected from the Hong Kong part of the Osteoporotic fractures in men cohort. Radio… Show more
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