Chen Chen, Liu Guanzhi, Chu Chao, Zheng Wenling, Ma Qiong, Liao Yueyuan, Yan Yu, Sun Yue, Wang Dan, Mu Jianjun
Department of Cardiovascular Medicine, First Affiliated Hospital of Xi'an Jiaotong University, Xi'an 710061, China.
Key Laboratory of Molecular Cardiology of Shaanxi Province, Xi'an 710061, China.
Bioengineering (Basel). 2023 Feb 15;10(2):257. doi: 10.3390/bioengineering10020257.
This study aimed to develop a noninvasive, economical and effective subclinical renal damage (SRD) risk assessment tool to identify high-risk asymptomatic people from a large-scale population and improve current clinical SRD screening strategies. Based on the Hanzhong Adolescent Hypertension Cohort, SRD-associated variables were identified and the SRD risk assessment score model was established and further validated with machine learning algorithms. Longitudinal follow-up data were used to identify child-to-adult SRD risk score trajectories and to investigate the relationship between different trajectory groups and the incidence of SRD in middle age. Systolic blood pressure, diastolic blood pressure and body mass index were identified as SRD-associated variables. Based on these three variables, an SRD risk assessment score was developed, with excellent classification ability (AUC value of ROC curve: 0.778 for SRD estimation, 0.729 for 4-year SRD risk prediction), calibration (Hosmer-Lemeshow goodness-of-fit test = 0.62 for SRD estimation, = 0.34 for 4-year SRD risk prediction) and more potential clinical benefits. In addition, three child-to-adult SRD risk assessment score trajectories were identified: increasing, increasing-stable and stable. Further difference analysis and logistic regression analysis showed that these SRD risk assessment score trajectories were highly associated with the incidence of SRD in middle age. In brief, we constructed a novel and noninvasive SRD risk assessment tool with excellent performance to help identify high-risk asymptomatic people from a large-scale population and assist in SRD screening.
本研究旨在开发一种无创、经济且有效的亚临床肾损伤(SRD)风险评估工具,以从大规模人群中识别出高危无症状个体,并改进当前的临床SRD筛查策略。基于汉中青少年高血压队列,确定了与SRD相关的变量,建立了SRD风险评估评分模型,并使用机器学习算法进行了进一步验证。利用纵向随访数据确定儿童到成人的SRD风险评分轨迹,并研究不同轨迹组与中年SRD发病率之间的关系。收缩压、舒张压和体重指数被确定为与SRD相关的变量。基于这三个变量,开发了一个SRD风险评估评分,具有出色的分类能力(ROC曲线的AUC值:SRD估计为0.778,4年SRD风险预测为0.729)、校准能力(Hosmer-Lemeshow拟合优度检验:SRD估计为0.62,4年SRD风险预测为0.34)以及更多潜在的临床益处。此外,确定了三种儿童到成人的SRD风险评估评分轨迹:上升型、上升-稳定型和稳定型。进一步的差异分析和逻辑回归分析表明,这些SRD风险评估评分轨迹与中年SRD发病率高度相关。简而言之,我们构建了一种性能优异的新型无创SRD风险评估工具,以帮助从大规模人群中识别高危无症状个体,并协助进行SRD筛查。