Abstract

Dialysis adequacy is an important survival indicator in patients with chronic hemodialysis. However, there are inconveniences and disadvantages to measuring dialysis adequacy by blood samples. This study used machine learning models to predict dialysis adequacy in chronic hemodialysis patients using repeatedly measured data during hemodialysis. This study included 1333 hemodialysis sessions corresponding to the monthly examination dates of 61 patients. Patient demographics and clinical parameters were continuously measured from the hemodialysis machine; 240 measurements were collected from each hemodialysis session. Machine learning models (random forest and extreme gradient boosting [XGBoost]) and deep learning models (convolutional neural network and gated recurrent unit) were compared with multivariable linear regression models. The mean absolute percentage error (MAPE), root mean square error (RMSE), and Spearman’s rank correlation coefficient (Corr) for each model using fivefold cross-validation were calculated as performance measurements. The XGBoost model had the best performance among all methods (MAPE = 2.500; RMSE = 2.906; Corr = 0.873). The deep learning models with convolutional neural network (MAPE = 2.835; RMSE = 3.125; Corr = 0.833) and gated recurrent unit (MAPE = 2.974; RMSE = 3.230; Corr = 0.824) had similar performances. The linear regression models had the lowest performance (MAPE = 3.284; RMSE = 3.586; Corr = 0.770) compared with other models. Machine learning methods can accurately infer hemodialysis adequacy using continuously measured data from hemodialysis machines.

Highlights

  • Dialysis adequacy is an important survival indicator in patients with chronic hemodialysis

  • This study included 1333 hemodialysis sessions corresponding to the monthly examination dates of 61 patients where urea reduction ratio (URR) was measured

  • The linear regression model with all covariates had the best performance among the linear regression models (MAPE = 3.284; root mean square error (RMSE) = 3.586; Corr = 0.770)

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Summary

Introduction

Dialysis adequacy is an important survival indicator in patients with chronic hemodialysis. This study used machine learning models to predict dialysis adequacy in chronic hemodialysis patients using repeatedly measured data during hemodialysis. Several clinical parameters such as blood flow, ultrafiltration and dialysate flow rates, vessel pressure, temperature, and bicarbonate and sodium levels are continuously generated. Monitoring and recording these parameters in real-time is possible with the commercial software provided with the hemodialysis machine. We hypothesized that the ML technique could predict dialysis adequacy in chronic hemodialysis patients using clinical demographics and repeated measurements obtained during hemodialysis sessions. Characteristics Female Age, year Pre-dialysis weight, kg Height, cm Dialyzer surface area, ­m2 Pre-dialysis BUN, mg/dL Total ultrafiltration volume, mL Type of hemodialysis Conventional HD HDF Blood flow rate, mL/min Intercept Coefficient MSE Mean SD Dialysate flow rate, mL/min Intercept Coefficient MSE Mean SD Ultrafiltration volume, mL Intercept Coefficient MSE Mean SD Urea reduction ratio (%)

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