A novel approach to dry weight adjustments for dialysis patients using machine learning

PLoS One. 2021 Apr 23;16(4):e0250467. doi: 10.1371/journal.pone.0250467. eCollection 2021.

Abstract

Background and aims: Knowledge of the proper dry weight plays a critical role in the efficiency of dialysis and the survival of hemodialysis patients. Recently, bioimpedance spectroscopy(BIS) has been widely used for set dry weight in hemodialysis patients. However, BIS is often misrepresented in clinical healthy weight. In this study, we tried to predict the clinically proper dry weight (DWCP) using machine learning for patient's clinical information including BIS. We then analyze the factors that influence the prediction of the clinical dry weight.

Methods: As a retrospective, single center study, data of 1672 hemodialysis patients were reviewed. DWCP data were collected when the dry weight was measured using the BIS (DWBIS). The gap between the two (GapDW) was calculated and then grouped and analyzed based on gaps of 1 kg and 2 kg.

Results: Based on the gap between DWBIS and DWCP, 972, 303, and 384 patients were placed in groups with gaps of <1 kg, ≧1kg and <2 kg, and ≧2 kg, respectively. For less than 1 kg and 2 kg of GapDW, It can be seen that the average accuracies for the two groups are 83% and 72%, respectively, in usign XGBoost machine learning. As GapDW increases, it is more difficult to predict the target property. As GapDW increase, the mean values of hemoglobin, total protein, serum albumin, creatinine, phosphorus, potassium, and the fat tissue index tended to decrease. However, the height, total body water, extracellular water (ECW), and ECW to intracellular water ratio tended to increase.

Conclusions: Machine learning made it slightly easier to predict DWCP based on DWBIS under limited conditions and gave better insights into predicting DWCP. Malnutrition-related factors and ECW were important in reflecting the differences between DWBIS and DWCP.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Adipose Tissue / metabolism
  • Adipose Tissue / pathology
  • Aged
  • Body Water / metabolism*
  • Body Weight / physiology
  • Creatinine / blood
  • Electric Impedance
  • Extracellular Space
  • Female
  • Hemoglobins / metabolism
  • Humans
  • Kidney Failure, Chronic / blood
  • Kidney Failure, Chronic / diagnosis
  • Kidney Failure, Chronic / metabolism*
  • Kidney Failure, Chronic / pathology
  • Machine Learning*
  • Male
  • Middle Aged
  • Renal Dialysis*
  • Serum Albumin / metabolism

Substances

  • Hemoglobins
  • Serum Albumin
  • Creatinine

Grants and funding

This research was supported by National Institute for Mathematical Sciences (NIMS) grant funded by the Korea government, 2021 (No. NIMS-B21910000) and Basic Science Research Program through the National Research Foundation of Korea (NRF) funded by the Ministry of Education (NRF-2017R1D1AB03035061). However, the funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.