Li Xuwen, Lian Penghu, Chen Hongyan, Zhang Liangzhe, Zhang Zhe, Wang Jing, Xing Nianzeng, Jiang Tao, Chen Ziwei, Zhang Xinlei, Ye Xiongjun
Department of Urology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
Peking Union Medical College Hospital, Chinese Academy of Medical Sciences & Peking Union Medical College, Beijing, China.
Geroscience. 2025 Sep 11. doi: 10.1007/s11357-025-01846-9.
This study aims to investigate the predictive value of combined phenotypic age and phenotypic age acceleration (PhenoAgeAccel) for benign prostatic hyperplasia (BPH) and develop a machine learning-based risk prediction model to inform precision prevention and clinical management strategies. The study analyzed data from 784 male participants in the US National Health and Nutrition Examination Survey (NHANES, 2001-2008). Phenotypic age was derived from chronological age and nine serum biomarkers. PhenoAgeAccel, representing biological aging acceleration, was calculated as the residual from regressing phenotypic age on chronological age. Recursive Feature Elimination (RFE) identified 34 BPH-associated features, which were integrated into an XGBoost prediction model. Logistic regression evaluated PhenoAgeAccel-BPH associations, while SHapley Additive exPlanations (SHAP) quantified feature contributions to enhance model interpretability. The XGBoost model achieved an area under the curve (AUC) of 0.833 in the test set. Phenotypic age was strongly correlated with chronological age (r = 0.833), and individuals with PhenoAgeAccel exhibited a significantly elevated risk of BPH (p < 0.001). Adjusting the model with phenotypic age improved predictive performance (AUC = 0.853). SHAP analysis identified phenotypic age as the third most influential predictor (after trailing cancer history and lead exposure), highlighting its clinical relevance. Chronological age and serum biomarkers are critical predictors of BPH, while PhenoAgeAccel independently contributes to risk stratification. Integrating phenotypic age with machine learning provides a robust framework for the early detection of BPH and personalized risk assessment, aligning with advancements in aging biomarker research. This approach supports targeted interventions to mitigate BPH progression in aging populations.
本研究旨在探讨联合表型年龄和表型年龄加速(PhenoAgeAccel)对良性前列腺增生(BPH)的预测价值,并开发一种基于机器学习的风险预测模型,为精准预防和临床管理策略提供依据。该研究分析了美国国家健康与营养检查调查(NHANES,2001 - 2008年)中784名男性参与者的数据。表型年龄由实足年龄和九种血清生物标志物得出。PhenoAgeAccel代表生物衰老加速,计算为表型年龄对实足年龄回归的残差。递归特征消除(RFE)确定了34个与BPH相关的特征,这些特征被整合到一个XGBoost预测模型中。逻辑回归评估PhenoAgeAccel与BPH的关联,而SHapley加法解释(SHAP)量化特征贡献以增强模型的可解释性。XGBoost模型在测试集中的曲线下面积(AUC)为0.833。表型年龄与实足年龄高度相关(r = 0.833),且具有PhenoAgeAccel的个体患BPH的风险显著升高(p < 0.001)。用表型年龄调整模型可提高预测性能(AUC = 0.853)。SHAP分析确定表型年龄是第三大最具影响力的预测因子(仅次于既往癌症病史和铅暴露),突出了其临床相关性。实足年龄和血清生物标志物是BPH的关键预测因子,而PhenoAgeAccel独立地有助于风险分层。将表型年龄与机器学习相结合,为BPH的早期检测和个性化风险评估提供了一个强大的框架,与衰老生物标志物研究的进展相一致。这种方法支持有针对性的干预措施,以减轻老年人群中BPH的进展。