Interpretable machine learning models for the prediction of all-cause mortality and time to death in hemodialysis patients

被引:1
|
作者
Chen, Minjie [1 ]
Zeng, Youbing [2 ]
Liu, Mengting [2 ]
Li, Zhenghui [1 ]
Wu, Jiazhen [3 ]
Tian, Xuan [1 ]
Wang, Yunuo [1 ]
Xu, Yuanwen [1 ]
机构
[1] Sun Yat Sen Univ, Affiliated Hosp 1, Dept Nephrol, Guangzhou, Peoples R China
[2] Sun Yat Sen Univ, Sch Biomed Engn, Shenzhen, Peoples R China
[3] Shantou Univ, Dept Elect Engn, Shantou, Peoples R China
关键词
hemodialysis; interpretability; machine learning; mortality; prediction models; RANDOM FOREST REGRESSION; CHRONIC KIDNEY-DISEASE; SUDDEN CARDIAC DEATH; VASCULAR ACCESS; RISK; HOSPITALIZATION; COMPLICATIONS; INFECTIONS; RATES;
D O I
10.1111/1744-9987.14212
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
IntroductionThe elevated mortality and hospitalization rates among hemodialysis (HD) patients underscore the necessity for the development of accurate predictive tools. This study developed two models for predicting all-cause mortality and time to death-one using a comprehensive database and another simpler model based on demographic and clinical data without laboratory tests.MethodA retrospective cohort study was conducted from January 2017 to June 2023. Two models were created: Model A with 85 variables and Model B with 22 variables. We assessed the models using random forest (RF), support vector machine, and logistic regression, comparing their performance via the AU-ROC. The RF regression model was used to predict time to death. To identify the most relevant factors for prediction, the Shapley value method was used.ResultsAmong 359 HD patients, the RF model provided the most reliable prediction. The optimized Model A showed an AU-ROC of 0.86 +/- 0.07, a sensitivity of 0.86, and a specificity of 0.75 for predicting all-cause mortality. It also had an R2 of 0.59 for predicting time to death. The optimized Model B had an AU-ROC of 0.80 +/- 0.06, a sensitivity of 0.81, and a specificity of 0.70 for predicting all-cause mortality. In addition, it had an R2 of 0.81 for predicting time to death.ConclusionTwo new interpretable clinical tools have been proposed to predict all-cause mortality and time to death in HD patients using machine learning models. The minimal and readily accessible data on which Model B is based makes it a valuable tool for integrating into clinical decision-making processes.
引用
收藏
页码:220 / 232
页数:13
相关论文
共 50 条
  • [41] Development and validation of a nomogram for predicting all-cause mortality in patients with hemodialysis having pulmonary hypertension
    Wu, Huimin
    Huan, Chunyan
    Hu, Yue
    Xiao, Shengjue
    Xu, Tao
    Guo, Minjia
    Wang, Xiaotong
    Liu, Ailin
    Sun, Jiayi
    Wang, Chunqing
    Wang, Jia
    Zhu, Hong
    Pan, Defeng
    CARDIORENAL MEDICINE, 2023, 13 (01) : 282 - 291
  • [42] Interdialytic home systolic blood pressure variability increases all-cause mortality in hemodialysis patients
    Dong, Liping
    Tian, Ming
    Li, Hua
    Dong, Junwu
    Song, Xiaohong
    CLINICAL CARDIOLOGY, 2024, 47 (04)
  • [43] The association of home blood pressure with all-cause mortality in hemodialysis patients: A prospective observational study
    Kontogiorgos, Ioannis
    Georgianos, Panagiotis I.
    Tsikliras, Nikolaos C.
    Leonidou, Kallistheni
    Vaios, Vasilios
    Roumeliotis, Stefanos
    Karpetas, Antonios
    Kantartzi, Konstantia
    Panagoutsos, Stylianos
    Liakopoulos, Vassilios
    THERAPEUTIC APHERESIS AND DIALYSIS, 2024, 28 (05) : 697 - 705
  • [44] Red Blood Cell Distribution Width Is Associated With All-Cause and Cardiovascular Mortality in Hemodialysis Patients
    Fukasawa, Hirotaka
    Ishibuchi, Kento
    Kaneko, Mai
    Niwa, Hiroki
    Yasuda, Hideo
    Kumagai, Hiromichi
    Furuya, Ryuichi
    THERAPEUTIC APHERESIS AND DIALYSIS, 2017, 21 (06) : 565 - 571
  • [45] Cognitive Domain Impairment and All-Cause Mortality in Older Patients Undergoing Hemodialysis
    Guo, Yidan
    Tian, Ru
    Ye, Pengpeng
    Li, Xin
    Li, Guogang
    Lu, Fangping
    Ma, Yingchun
    Sun, Yi
    Wang, Yuzhu
    Xiao, Yuefei
    Zhang, Qimeng
    Zhao, Xuefeng
    Zhao, Haidan
    Luo, Yang
    FRONTIERS IN ENDOCRINOLOGY, 2022, 13
  • [46] Association of trimethylamineN-Oxide with cardiovascular and all-cause mortality in hemodialysis patients
    Zhang, Pan
    Zou, Jian-Zhou
    Chen, Jun
    Tan, Xiao
    Xiang, Fang-Fang
    Shen, Bo
    Hu, Jia-Chang
    Wang, Jia-Lin
    Wang, Ya-Qiong
    Yu, Jin-Bo
    Nie, Yu-Xin
    Chen, Xiao-Hong
    Yu, Jia-Wei
    Zhang, Zhen
    Lv, Wen-Lv
    Xie, Ye-Qing
    Cao, Xue-Sen
    Ding, Xiao-Qiang
    RENAL FAILURE, 2020, 42 (01) : 1004 - 1014
  • [47] Stress hyperglycemia ratio and machine learning model for prediction of all-cause mortality in patients undergoing cardiac surgery
    Pei, Yingjian
    Ma, Yajun
    Xiang, Ying
    Zhang, Guitao
    Feng, Yao
    Li, Wenbo
    Zhou, Yinghua
    Li, Shujuan
    CARDIOVASCULAR DIABETOLOGY, 2025, 24 (01)
  • [48] External validation of a 2-year all-cause mortality prediction tool developed using machine learning in patients with stage 4-5 chronic kidney disease
    Tran, Dung N. T.
    Ducher, Michel
    Fouque, Denis
    Fauvel, Jean-Pierre
    JOURNAL OF NEPHROLOGY, 2024, 37 (08) : 2267 - 2274
  • [49] Variability of Serum Phosphate in Incident Hemodialysis Patients: Association with All-Cause Mortality
    ter Meulen, Karlien J.
    Ye, Xiaoling
    Wang, Yuedong
    Usvyat, Len A.
    van der Sande, Frank M.
    Konings, Constantijn J.
    Kotanko, Peter
    Kooman, Jeroen P.
    Maddux, Franklin W.
    KIDNEY360, 2023, 4 (03): : 374 - 380
  • [50] Machine learning and statistical models to predict all-cause mortality in type 2 diabetes: Results from the UK Biobank study
    Zhang, Tingjing
    Huang, Mingyu
    Chen, Liangkai
    Xia, Yang
    Min, Weiqing
    Jiang, Shuqiang
    DIABETES & METABOLIC SYNDROME-CLINICAL RESEARCH & REVIEWS, 2024, 18 (09)