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Diuretic Resistance Prediction and Risk Factor Analysis of Patients with Heart Failure During Hospitalization

OBJECTIVES: This study performed a prediction and risk factor analysis of diuretic resistance (DR) in patients with decompensated heart failure during hospitalization. METHODS: The data of patients with decompensated heart failure treated in 2010–2018 with DR (n = 3,383) or without DR (n = 15,444) w...

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Autores principales: Lu, Xiao, Xin, Yi, Zhu, Jiang, Dong, Wei, Guan, Tong-Peng, Li, Jia-Yue, Li, Qin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Ubiquity Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9138715/
https://www.ncbi.nlm.nih.gov/pubmed/35837353
http://dx.doi.org/10.5334/gh.1113
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author Lu, Xiao
Xin, Yi
Zhu, Jiang
Dong, Wei
Guan, Tong-Peng
Li, Jia-Yue
Li, Qin
author_facet Lu, Xiao
Xin, Yi
Zhu, Jiang
Dong, Wei
Guan, Tong-Peng
Li, Jia-Yue
Li, Qin
author_sort Lu, Xiao
collection PubMed
description OBJECTIVES: This study performed a prediction and risk factor analysis of diuretic resistance (DR) in patients with decompensated heart failure during hospitalization. METHODS: The data of patients with decompensated heart failure treated in 2010–2018 with DR (n = 3,383) or without DR (n = 15,444) were retrospectively collected from Chinese PLA General Hospital medical records. Statistical analysis of baseline was performed on two groups of people, and the risk factor of DR was analyzed through logic regression. Six machine learning models were built accordingly, and the adjustment of model super parameters was performed by using Bayesian optimization method. Finally, the optimal algorithm was selected according to prediction efficiency. RESULTS: The preliminary analysis of variance showed significant differences in the incidence of DR among patients with lung infection, hyperlipidemia, type 2 diabetes, and kidney disease. There were significant differences in estimated glomerular filtration rate (eGFR) (P < 0.001). In addition, some physical indicators like BMI were different, the laboratory results like mean red blood cell volume or C-reactive protein assay were also significantly different. The optimal classification model indicated that the best cutoff points for risk factors were vein carbon dioxide, 21 mmol/L and 29 mmol/L; total protein, 64 g/L; pro-brain natriuretic peptide (pro-BNP), 7,600 pg/mL; eGFR, 50 mL/(min ∙ 1.73 m(2)); serum albumin, 33 g/L; hematocrit, 0.32% and 0.56%; red blood cell volume distribution width, 13; and age, 59 years. The optimal area under the curve was 0.9512. The ranked features derived from the model were age, abnormal sodium level, pro-BNP level, serum albumin level, D-dimer level, direct bilirubin level, and eGFR. CONCLUSIONS: The DR risk prediction model based on a gradient boosting decision tree created here identified its important risk factors. The model made very accurate predictions using simple indicators and simultaneously calculated cutoff values to help doctors predict the occurrence of DR.
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spelling pubmed-91387152022-07-13 Diuretic Resistance Prediction and Risk Factor Analysis of Patients with Heart Failure During Hospitalization Lu, Xiao Xin, Yi Zhu, Jiang Dong, Wei Guan, Tong-Peng Li, Jia-Yue Li, Qin Glob Heart Original Research OBJECTIVES: This study performed a prediction and risk factor analysis of diuretic resistance (DR) in patients with decompensated heart failure during hospitalization. METHODS: The data of patients with decompensated heart failure treated in 2010–2018 with DR (n = 3,383) or without DR (n = 15,444) were retrospectively collected from Chinese PLA General Hospital medical records. Statistical analysis of baseline was performed on two groups of people, and the risk factor of DR was analyzed through logic regression. Six machine learning models were built accordingly, and the adjustment of model super parameters was performed by using Bayesian optimization method. Finally, the optimal algorithm was selected according to prediction efficiency. RESULTS: The preliminary analysis of variance showed significant differences in the incidence of DR among patients with lung infection, hyperlipidemia, type 2 diabetes, and kidney disease. There were significant differences in estimated glomerular filtration rate (eGFR) (P < 0.001). In addition, some physical indicators like BMI were different, the laboratory results like mean red blood cell volume or C-reactive protein assay were also significantly different. The optimal classification model indicated that the best cutoff points for risk factors were vein carbon dioxide, 21 mmol/L and 29 mmol/L; total protein, 64 g/L; pro-brain natriuretic peptide (pro-BNP), 7,600 pg/mL; eGFR, 50 mL/(min ∙ 1.73 m(2)); serum albumin, 33 g/L; hematocrit, 0.32% and 0.56%; red blood cell volume distribution width, 13; and age, 59 years. The optimal area under the curve was 0.9512. The ranked features derived from the model were age, abnormal sodium level, pro-BNP level, serum albumin level, D-dimer level, direct bilirubin level, and eGFR. CONCLUSIONS: The DR risk prediction model based on a gradient boosting decision tree created here identified its important risk factors. The model made very accurate predictions using simple indicators and simultaneously calculated cutoff values to help doctors predict the occurrence of DR. Ubiquity Press 2022-05-27 /pmc/articles/PMC9138715/ /pubmed/35837353 http://dx.doi.org/10.5334/gh.1113 Text en Copyright: © 2022 The Author(s) https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International License (CC-BY 4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. See http://creativecommons.org/licenses/by/4.0/.
spellingShingle Original Research
Lu, Xiao
Xin, Yi
Zhu, Jiang
Dong, Wei
Guan, Tong-Peng
Li, Jia-Yue
Li, Qin
Diuretic Resistance Prediction and Risk Factor Analysis of Patients with Heart Failure During Hospitalization
title Diuretic Resistance Prediction and Risk Factor Analysis of Patients with Heart Failure During Hospitalization
title_full Diuretic Resistance Prediction and Risk Factor Analysis of Patients with Heart Failure During Hospitalization
title_fullStr Diuretic Resistance Prediction and Risk Factor Analysis of Patients with Heart Failure During Hospitalization
title_full_unstemmed Diuretic Resistance Prediction and Risk Factor Analysis of Patients with Heart Failure During Hospitalization
title_short Diuretic Resistance Prediction and Risk Factor Analysis of Patients with Heart Failure During Hospitalization
title_sort diuretic resistance prediction and risk factor analysis of patients with heart failure during hospitalization
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9138715/
https://www.ncbi.nlm.nih.gov/pubmed/35837353
http://dx.doi.org/10.5334/gh.1113
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