Abstract

BackgroundThe first-year survival rate among patients undergoing hemodialysis remains poor. Current mortality risk scores for patients undergoing hemodialysis employ regression techniques and have limited applicability and robustness.ObjectiveWe aimed to develop a machine learning model utilizing clinical factors to predict first-year mortality in patients undergoing hemodialysis that could assist physicians in classifying high-risk patients.MethodsTraining and testing cohorts consisted of 5351 patients from a single center and 5828 patients from 97 renal centers undergoing hemodialysis (incident only). The outcome was all-cause mortality during the first year of dialysis. Extreme gradient boosting was used for algorithm training and validation. Two models were established based on the data obtained at dialysis initiation (model 1) and data 0-3 months after dialysis initiation (model 2), and 10-fold cross-validation was applied to each model. The area under the curve (AUC), sensitivity (recall), specificity, precision, balanced accuracy, and F1 score were used to assess the predictive ability of the models.ResultsIn the training and testing cohorts, 585 (10.93%) and 764 (13.11%) patients, respectively, died during the first-year follow-up. Of 42 candidate features, the 15 most important features were selected. The performance of model 1 (AUC 0.83, 95% CI 0.78-0.84) was similar to that of model 2 (AUC 0.85, 95% CI 0.81-0.86).ConclusionsWe developed and validated 2 machine learning models to predict first-year mortality in patients undergoing hemodialysis. Both models could be used to stratify high-risk patients at the early stages of dialysis.

Highlights

  • BackgroundThe overall prevalence of chronic kidney disease is 10.8% in China and 15% in the United States, which has brought significant economic, social, and medical burdens on patients and society [1,2,3]

  • The mean ages at dialysis initiation were 51.67 years (SD 16.48) in the training cohort and 62.53 years (SD 16.20) in the testing cohort; 61.58% of the patients (3295/5351) in the training cohort and 60.47% of the patients (3524/5828) in the testing cohort were men; out of 5351 patients, 585 (10.93%) deaths were reported in the training cohort, and out of 5828 patients, 764 (13.11%) deaths were reported in the testing cohort

  • We developed 2 models that were based on the data obtained at dialysis initiation and data 0-3 months after dialysis

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Summary

Introduction

BackgroundThe overall prevalence of chronic kidney disease is 10.8% in China and 15% in the United States, which has brought significant economic, social, and medical burdens on patients and society [1,2,3]. According to the United States Renal Data System, there are approximately 120,000 patients with end-stage renal disease starting chronic renal replacement therapy every year [2]. Survival among incident hemodialysis patients remains poor, especially in the first year of the initiation of dialysis [4,5]. It is essential to stratify the risk of mortality according to clinical and laboratory findings of patients undergoing hemodialysis; the identification of patients undergoing hemodialysis who are at high risk of first-year mortality is of great clinical significance. Current mortality risk scores for patients undergoing hemodialysis employ regression techniques and have limited applicability and robustness

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