Prediction of Elastic Behavior of Human Trabecular Bone Using A DXA Image-Based Deep Learning Model

JOM(2021)

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摘要
Inspired by the recent advancement in deep learning (DL) techniques, this study intended to confirm whether DL models could be trained to predict the elastic behavior of trabecular bone, a highly hierarchical biological material, using its dual-energy x-ray absorptiometry (DXA) images. The convolutional neural network, the most successful DL model in imaging-based predictions, was trained using simulated DXA images of trabecular bone samples as input and their apparent elastic modulus ( E apparent ) determined using microCT-based finite element simulations as output (label). The results showed that the DL model achieved high fidelity in predicting E apparent of trabecular bone samples ( R 2 > 0.86), and its performance appeared to be better than that of histomorphometric parameter-based regression models built using the same bone samples. The outcome of this study suggests that DXA image-based DL techniques can be used for multiscale modeling of trabecular bone to predict its elastic behavior.
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