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

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 cl...

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Autores principales: Kim, Hae Ri, Bae, Hong Jin, Jeon, Jae Wan, Ham, Young Rok, Na, Ki Ryang, Lee, Kang Wook, Hyon, Yun Kyong, Choi, Dae Eun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8064601/
https://www.ncbi.nlm.nih.gov/pubmed/33891656
http://dx.doi.org/10.1371/journal.pone.0250467
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author Kim, Hae Ri
Bae, Hong Jin
Jeon, Jae Wan
Ham, Young Rok
Na, Ki Ryang
Lee, Kang Wook
Hyon, Yun Kyong
Choi, Dae Eun
author_facet Kim, Hae Ri
Bae, Hong Jin
Jeon, Jae Wan
Ham, Young Rok
Na, Ki Ryang
Lee, Kang Wook
Hyon, Yun Kyong
Choi, Dae Eun
author_sort Kim, Hae Ri
collection PubMed
description 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 (DW(CP)) 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. DW(CP) data were collected when the dry weight was measured using the BIS (DW(BIS)). The gap between the two (Gap(DW)) was calculated and then grouped and analyzed based on gaps of 1 kg and 2 kg. RESULTS: Based on the gap between DW(BIS) and DW(CP), 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 Gap(DW) increases, it is more difficult to predict the target property. As Gap(DW) 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 DW(CP) based on DW(BIS) under limited conditions and gave better insights into predicting DW(CP). Malnutrition-related factors and ECW were important in reflecting the differences between DW(BIS) and DW(CP).
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spelling pubmed-80646012021-05-04 A novel approach to dry weight adjustments for dialysis patients using machine learning Kim, Hae Ri Bae, Hong Jin Jeon, Jae Wan Ham, Young Rok Na, Ki Ryang Lee, Kang Wook Hyon, Yun Kyong Choi, Dae Eun PLoS One Research Article 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 (DW(CP)) 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. DW(CP) data were collected when the dry weight was measured using the BIS (DW(BIS)). The gap between the two (Gap(DW)) was calculated and then grouped and analyzed based on gaps of 1 kg and 2 kg. RESULTS: Based on the gap between DW(BIS) and DW(CP), 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 Gap(DW) increases, it is more difficult to predict the target property. As Gap(DW) 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 DW(CP) based on DW(BIS) under limited conditions and gave better insights into predicting DW(CP). Malnutrition-related factors and ECW were important in reflecting the differences between DW(BIS) and DW(CP). Public Library of Science 2021-04-23 /pmc/articles/PMC8064601/ /pubmed/33891656 http://dx.doi.org/10.1371/journal.pone.0250467 Text en © 2021 Kim et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Kim, Hae Ri
Bae, Hong Jin
Jeon, Jae Wan
Ham, Young Rok
Na, Ki Ryang
Lee, Kang Wook
Hyon, Yun Kyong
Choi, Dae Eun
A novel approach to dry weight adjustments for dialysis patients using machine learning
title A novel approach to dry weight adjustments for dialysis patients using machine learning
title_full A novel approach to dry weight adjustments for dialysis patients using machine learning
title_fullStr A novel approach to dry weight adjustments for dialysis patients using machine learning
title_full_unstemmed A novel approach to dry weight adjustments for dialysis patients using machine learning
title_short A novel approach to dry weight adjustments for dialysis patients using machine learning
title_sort novel approach to dry weight adjustments for dialysis patients using machine learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8064601/
https://www.ncbi.nlm.nih.gov/pubmed/33891656
http://dx.doi.org/10.1371/journal.pone.0250467
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