Opportunistic Bone-Loss Screening from Routine Knee Radiographs Using a Multi-Task Deep Learning Framework with Sensitivity-Constrained Threshold Optimization
Zhaochen Li, Xinghao Yan, Runni Zhou, Xiaoyang Li, Chenjie Zhu, Gege Wang, Yu Shi, Lixin Zhang, Rongrong Fu, Liehao Yan, Yuan Chai

TL;DR
This study presents STR-Net, a multi-task deep learning framework that opportunistically screens for bone loss, stratifies severity, and estimates T-scores from routine knee radiographs, potentially improving osteoporosis detection.
Contribution
The paper introduces a novel multi-task deep learning system with sensitivity-constrained threshold optimization for bone-loss screening from knee radiographs, without additional imaging.
Findings
Achieved AUROC of 0.933 for binary screening.
Sensitivity of 0.904 and specificity of 0.773 on test set.
Pearson correlation of 0.801 for T-score regression.
Abstract
Background: Osteoporosis and osteopenia are often undiagnosed until fragility fractures occur. Dual-energy X-ray absorptiometry (DXA) is the reference standard for bone mineral density (BMD) assessment, but access remains limited. Knee radiographs are obtained at high volume for osteoarthritis evaluation and may offer an opportunity for opportunistic bone-loss screening. Objective: To develop and evaluate a multi-task deep learning system for opportunistic bone-loss screening from routine knee radiographs without additional imaging or patient visits. Methods: We developed STR-Net, a multi-task framework for single-channel grayscale knee radiographs. The model includes a shared backbone, global average pooling feature aggregation, a shared neck, and a task-aware representation routing module connected to three task-specific heads: binary screening (Normal vs. Bone Loss), severity…
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