Yoshida Akifumi, Sato Yoichi, Kai Chiharu, Hirono Yuta, Sato Ikumi, Kasai Satoshi
Department of Radiological Technology, Faculty of Medical Technology, Niigata University of Health and Welfare, Niigata. Japan.
Nagoya University Graduate School of Medicine, Aichi, Japan.
Front Med (Lausanne). 2025 Mar 26;12:1499670. doi: 10.3389/fmed.2025.1499670. eCollection 2025.
Osteoporosis increases the risk of fragility fractures, especially of the lumbar spine and femur. As fractures affect life expectancy, it is crucial to detect the early stages of osteoporosis. Dual X-ray absorptiometry (DXA) is the gold standard for bone mineral density (BMD) measurement and the diagnosis of osteoporosis; however, its low screening usage is problematic. The accurate estimation of BMD using chest radiographs (CXR) could expand screening opportunities. This study aimed to indicate the clinical utility of osteoporosis screening using deep-learning-based estimation of BMD using bidirectional CXRs.
This study included 1,624 patients aged ≥ 20 years who underwent DXA and bidirectional (frontal and lateral) chest radiography at a medical facility. A dataset was created using BMD and bidirectional CXR images. Inception-ResNet-V2-based models were trained using three CXR input types (frontal, lateral, and bidirectional). We compared and evaluated the BMD estimation performances of the models with different input information.
In the comparison of models, the model with bidirectional CXR showed the highest accuracy. The correlation coefficients between the model estimates and DXA measurements were 0.766 and 0.683 for the lumbar spine and femoral BMD, respectively. Osteoporosis detection based on bidirectional CXR showed higher sensitivity and specificity than the models with single-view CXR input, especially for osteoporosis based on T-score ≤ -2.5, with 92.8% sensitivity at 50.0% specificity.
These results suggest that bidirectional CXR contributes to improved accuracy of BMD estimation and osteoporosis screening compared with single-view CXR. This study proposes a new approach for early detection of osteoporosis using a deep learning model with frontal and lateral CXR inputs. BMD estimation using bidirectional CXR showed improved detection performance for low bone mass and osteoporosis, and has the potential to be used as a clinical decision criterion. The proposed method shows potential for more appropriate screening decisions, suggesting its usefulness in clinical practice.
骨质疏松症会增加脆性骨折的风险,尤其是腰椎和股骨骨折。由于骨折会影响预期寿命,因此检测骨质疏松症的早期阶段至关重要。双能X线吸收法(DXA)是测量骨密度(BMD)和诊断骨质疏松症的金标准;然而,其筛查使用率较低是个问题。使用胸部X线片(CXR)准确估计骨密度可以扩大筛查机会。本研究旨在表明基于深度学习的双向胸部X线片骨密度估计在骨质疏松症筛查中的临床应用价值。
本研究纳入了1624名年龄≥20岁的患者,这些患者在一家医疗机构接受了DXA和双向(正位和侧位)胸部X线检查。使用骨密度和双向胸部X线图像创建了一个数据集。基于Inception-ResNet-V2的模型使用三种胸部X线输入类型(正位、侧位和双向)进行训练。我们比较并评估了具有不同输入信息的模型的骨密度估计性能。
在模型比较中,双向胸部X线片模型显示出最高的准确性。模型估计值与DXA测量值之间的腰椎和股骨骨密度相关系数分别为0.766和0.683。基于双向胸部X线片的骨质疏松症检测比单视图胸部X线片输入模型具有更高的敏感性和特异性,特别是对于T值≤-2.5的骨质疏松症,在特异性为50.0%时敏感性为92.8%。
这些结果表明,与单视图胸部X线片相比,双向胸部X线片有助于提高骨密度估计和骨质疏松症筛查的准确性。本研究提出了一种使用具有正位和侧位胸部X线输入的深度学习模型早期检测骨质疏松症的新方法。使用双向胸部X线片进行骨密度估计显示出对低骨量和骨质疏松症的检测性能有所提高,并且有可能用作临床决策标准。所提出的方法显示出在做出更合适的筛查决策方面的潜力,表明其在临床实践中的有用性。