School of Management, Guangxi Minzu Univeristy, Nanning, China.
School of Medicine, College of Medicine, Nursing and Health Sciences, University of Galway, Ireland; Department of Rheumatology, Galway University Hospitals, Galway, Ireland.
Bone. 2024 Oct;187:117178. doi: 10.1016/j.bone.2024.117178. Epub 2024 Jul 5.
Osteoporotic fractures are a major global public health issue, leading to patient suffering and death, and considerable healthcare costs. Bone mineral density (BMD) measurement is important to identify those with osteoporosis and assess their risk of fracture. Both the absolute BMD and the change in BMD over time contribute to fracture risk. Predicting future fracture in individual patients is challenging and impacts clinical decisions such as when to intervene or repeat BMD measurement. Although the importance of BMD change is recognised, an effective way to incorporate this marginal effect into clinical algorithms is lacking.
We compared two methods using longitudinal DXA data generated from subjects with two or more hip DXA scans on the same machine between 2000 and 2018. A simpler statistical method (ZBM) was used to predict an individual's future BMD based on the mean BMD and the standard deviation of the reference group and their BMD measured in the latest scan. A more complex deep learning (DL)-based method was developed to cope with multidimensional longitudinal data, variables extracted from patients' historical DXA scan(s), as well as features drawn from the ZBM method. Sensitivity analyses of several subgroups was conducted to evaluate the performance of the derived models.
2948 white adults aged 40-90 years met our study inclusion: 2652 (90 %) females and 296 (10 %) males. Our DL-based models performed significantly better than the ZBM models in women, particularly our Hybrid-DL model. In contrast, the ZBM-based models performed as well or better than DL-based models in men.
Deep learning-based and statistical models have potential to forecast future BMD using longitudinal clinical data. These methods have the potential to augment clinical decisions regarding when to repeat BMD testing in the assessment of osteoporosis.
骨质疏松性骨折是一个全球性的重大公共卫生问题,导致患者痛苦和死亡,并带来大量的医疗保健成本。骨密度(BMD)测量对于识别骨质疏松症患者和评估其骨折风险非常重要。绝对 BMD 和随时间变化的 BMD 变化都与骨折风险有关。预测个体患者的未来骨折具有挑战性,并影响临床决策,例如何时进行干预或重复 BMD 测量。尽管认识到 BMD 变化的重要性,但缺乏将这种边缘效应有效纳入临床算法的方法。
我们比较了两种方法,一种是使用 2000 年至 2018 年期间在同一台机器上对 2 个或更多髋部 DXA 扫描的受试者生成的纵向 DXA 数据的简单统计方法(ZBM),另一种是开发了一种更复杂的基于深度学习(DL)的方法,以处理多维纵向数据、从患者历史 DXA 扫描中提取的变量,以及从 ZBM 方法中提取的特征。对几个亚组进行了敏感性分析,以评估所得到模型的性能。
2948 名年龄在 40-90 岁的白人成年人符合我们的研究纳入标准:2652 名(90%)女性和 296 名(10%)男性。我们的基于 DL 的模型在女性中比 ZBM 模型表现得更好,尤其是我们的 Hybrid-DL 模型。相比之下,基于 ZBM 的模型在男性中的表现与基于 DL 的模型一样好或更好。
基于深度学习和统计的模型具有使用纵向临床数据预测未来 BMD 的潜力。这些方法有可能在评估骨质疏松症时补充关于何时重复 BMD 测试的临床决策。