Kang Su Jeong, Kim Moon Jong, Hur Yang-Im, Haam Ji-Hee, Kim Young-Sang
Department of Family Medicine, CHA Bundang Medical Center, CHA University, Seongnam, Korea.
Korean J Fam Med. 2024 May;45(3):144-148. doi: 10.4082/kjfm.23.0186. Epub 2024 Jan 29.
Predicting the risk of osteoporotic fractures is vital for prevention. Traditional methods such as the Fracture Risk Assessment Tool (FRAX) model use clinical factors. This study examined the predictive power of the FRAX score and machine-learning algorithms trained on FRAX parameters.
We analyzed the data of 2,147 female participants from the Ansan cohort study. The FRAX parameters employed in this study included age, sex (female), height and weight, current smoking status, excessive alcohol consumption (>3 units/d of alcohol), and diagnosis of rheumatoid arthritis. Osteoporotic fracture was defined as one or more fractures of the hip, spine, or wrist during a 10-year observation period. Machine-learning algorithms, such as gradient boosting, random forest, decision tree, and logistic regression, were employed to predict osteoporotic fractures with a 70:30 training-to-test set ratio. We evaluated the area under the receiver operating characteristic curve (AUROC) scores to assess and compare the performance of these algorithms with the FRAX score.
Of the 2,147 participants, 3.5% experienced osteoporotic fractures. Those with fractures were older, shorter in height, and had a higher prevalence of rheumatoid arthritis, as well as higher FRAX scores. The AUROC for the FRAX was 0.617. The machine-learning algorithms showed AUROC values of 0.662, 0.652, 0.648, and 0.637 for gradient boosting, logistic regression, decision tree, and random forest, respectively.
This study highlighted the immense potential of machine-learning algorithms to improve osteoporotic fracture risk prediction in women when complete FRAX parameter information is unavailable.
预测骨质疏松性骨折的风险对于预防至关重要。传统方法如骨折风险评估工具(FRAX)模型使用临床因素。本研究考察了FRAX评分以及基于FRAX参数训练的机器学习算法的预测能力。
我们分析了来自安山队列研究的2147名女性参与者的数据。本研究采用的FRAX参数包括年龄、性别(女性)、身高和体重、当前吸烟状况、过量饮酒(>3单位/天酒精)以及类风湿关节炎诊断。骨质疏松性骨折定义为在10年观察期内髋部、脊柱或腕部一处或多处骨折。采用梯度提升、随机森林、决策树和逻辑回归等机器学习算法,以70:30的训练集与测试集比例预测骨质疏松性骨折。我们评估了受试者工作特征曲线下面积(AUROC)评分,以评估和比较这些算法与FRAX评分的性能。
在2147名参与者中,3.5%经历了骨质疏松性骨折。骨折患者年龄更大、身高更矮、类风湿关节炎患病率更高,FRAX评分也更高。FRAX评分对应的AUROC为0.617。对于梯度提升、逻辑回归、决策树和随机森林,机器学习算法的AUROC值分别为0.662、0.652、0.648和0.637。
本研究强调了在无法获得完整FRAX参数信息时,机器学习算法在改善女性骨质疏松性骨折风险预测方面的巨大潜力。