Mortality prediction in hemodialysis patients using heart rate variability and skin sympathetic nerve activity.
Xinyi Fu, Yaoyu Huang, Yujun Qian, Shuang Su, Yike Zhang, Zhenye Chen, Hongwu Chen, Ming Zeng, Jing Wang, Huijuan Mao
Abstract
Open AccessPatients undergoing maintenance hemodialysis (HD) face a substantially elevated risk of all-cause mortality, yet robust tools for individualized risk stratification remain limited. This multicenter study developed a predictive model integrating dynamic autonomic nervous system (ANS) markers - heart rate variability (HRV) and skin sympathetic nerve activity (SKNA) - with clinical factors to assess mortality risk. We enrolled 198 HD patients from two Chinese centers between 2021 and 2023, recording HRV/SKNA parameters at baseline, 30 min, and 240 min into dialysis. Over a median follow-up of 34 months, the all-cause mortality rate was 17.7%. Ninety-one baseline features were included in the LASSO-regression model. The final multivariable logistic regression model incorporated six variables (diabetes mellitus, DBP2h, RMSSD240, ΔNnmean30, ΔApEn30 and ΔaSKNA240) into the nomogram. The AUC of the nomogram for predicting one-year, two-year, and three-year survival rates was 0.764, 0.749, and 0.805, respectively. The Kaplan-Meier curves for overall survival stratified by nomogram model showed a significant difference between high- and low- risk groups. Internal validation via bootstrap resampling confirmed model robustness, with optimism-corrected AUCs of 0.758, 0.736, and 0.788 for one-, two-, and three-year mortality, respectively. The model demonstrated superior predictive accuracy for cardiovascular mortality (C-index = 0.881) and consistent performance across age and sex subgroups. The proposed model has the potential to predict all-cause mortality in HD patients and may enable earlier intervention and personalized management.