Synek, A., Benca, E., Licandro, R., Hirtler, L., & Pahr, D. H. (2025). Predicting strength of femora with metastatic lesions from single 2D radiographic projections using convolutional neural networks. Computer Methods and Programs in Biomedicine, 265, Article 108724. https://doi.org/10.1016/j.cmpb.2025.108724
Humans; tomography; Finite Element Analysis; Femoral Fractures; Convolutional Neural Networks; Bone lesions; Femur strength; Finite element; Machine learning; Metastatic bone disease; Radiograph; Neural Networks, Computer; Femur; Bone Neoplasms; Biomechanics; Simulation; Bone; X-ray computed tomography
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Abstract:
Patients with metastatic bone disease are at risk of pathological femoral fractures and may require prophylactic surgical fixation. Current clinical decision support tools often overestimate fracture risk, leading to overtreatment. While novel scores integrating femoral strength assessment via finite element (FE) models show promise, they require 3D imaging, extensive computation, and are difficult to automate. Predicting femoral strength directly from single 2D radiographic projections using convolutional neural networks (CNNs) could address these limitations, but this approach has not yet been explored for femora with metastatic lesions. This study aimed to test whether CNNs can accurately predict strength of femora with metastatic lesions from single 2D radiographic projections.
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Research Areas:
Biological and Bioactive Materials: 40% Modeling and Simulation: 60%