He Wen, Chen Song, Fu Xianghong, Xu Licong, Xie Jun, Wan Jinxing
Reproductive Medicine Center, Quzhou People's Hospital, The Quzhou Affiliated Hospital of Wenzhou Medical University, Quzhou, China.
Department of Orthopedics, Quzhou People's Hospital, The Quzhou Affiliated Hospital of Wenzhou Medical University, Quzhou, China.
Biomol Biomed. 2025 Jan 14;25(2):375-390. doi: 10.17305/bb.2024.10725.
Osteoporotic femoral neck fractures (OFNFs) pose a significant orthopedic challenge in the elderly population, accounting for up to 40% of all osteoporotic fractures and leading to considerable health deterioration and increased mortality. In addressing the critical need for early identification of osteoporosis through routine screening of femoral neck bone mineral density (FNBMD), this study developed a user-friendly prediction model aimed at men aged 50 years and older, a demographic often overlooked in osteoporosis screening. Utilizing data from the National Health and Nutrition Examination Survey (NHANES), the study involved outlier detection and handling, missing value imputation via the K nearest neighbor (KNN) algorithm, and data normalization and encoding. The dataset was split into training and test sets with a 7:3 ratio, followed by feature screening through the least absolute shrinkage and selection operator (LASSO) and the Boruta algorithm. Eight different machine learning algorithms were then employed to construct predictive models, with their performance evaluated through a comprehensive metric suite. The random forest regressor (RFR) emerged as the most effective model, characterized by key predictors such as age, body mass index (BMI), poverty income ratio (PIR), serum calcium, and race, achieving a coefficient of determination (R²) of 0.218 and maintaining robustness in sensitivity analyses. Notably, excluding race from the model resulted in sustained high performance, underscoring the model's adaptability. Interpretations using Shapley additive explanations (SHAP) highlighted the influence of each feature on FNBMD. These findings indicate that our predictive model effectively aids in the early detection of osteoporosis, potentially reducing the incidence of OFNFs in this high-risk population.
骨质疏松性股骨颈骨折(OFNFs)给老年人群带来了重大的骨科挑战,占所有骨质疏松性骨折的40%,导致健康状况显著恶化和死亡率上升。为了满足通过常规筛查股骨颈骨密度(FNBMD)早期识别骨质疏松症的迫切需求,本研究针对50岁及以上男性(这一在骨质疏松症筛查中常被忽视的人群)开发了一种用户友好的预测模型。该研究利用了国家健康与营养检查调查(NHANES)的数据,进行了异常值检测与处理、通过K近邻(KNN)算法进行缺失值插补以及数据归一化和编码。数据集按7:3的比例分为训练集和测试集,随后通过最小绝对收缩和选择算子(LASSO)和Boruta算法进行特征筛选。然后采用八种不同的机器学习算法构建预测模型,并通过一套综合指标对其性能进行评估。随机森林回归器(RFR)成为最有效的模型,其关键预测因素包括年龄、体重指数(BMI)、贫困收入比(PIR)、血清钙和种族,决定系数(R²)为0.218,且在敏感性分析中保持稳健性。值得注意的是,从模型中排除种族因素后,模型仍保持高性能,凸显了该模型的适应性。使用夏普利加性解释(SHAP)进行的解释突出了每个特征对FNBMD的影响。这些发现表明,我们的预测模型有效地有助于早期检测骨质疏松症,可能降低这一高危人群中OFNFs的发生率。