Publication: Predicting mortality in hemodialysis patients using machine learning analysis
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Identifiers
Date
2021
Authors
Garcia-Montemayor, Victoria
Martin-Malo, Alejandro
Barbieri, Carlo
Bellocchio, Francesco
Soriano, Sagrario
Pendon-Ruiz de Mier, Victoria
Molina, Ignacio R.
Aljama, Pedro
Rodriguez, Mariano
Advisors
Journal Title
Journal ISSN
Volume Title
Publisher
Oxford University Press on behalf of ERA-EDTA
Abstract
Background. Besides the classic logistic regression analysis, non-parametric methods based on machine learning techniques such as random forest are presently used to generate predictive models. The aim of this study was to evaluate random forest mortality prediction models in haemodialysis patients. Methods. Data were acquired from incident haemodialysis patients between 1995 and 2015. Prediction of mortality at 6 months, 1 year and 2 years of haemodialysis was calculated using random forest and the accuracy was compared with logistic regression. Baseline data were constructed with the information obtained during the initial period of regular haemodialysis. Aiming to increase accuracy concerning baseline information of each patient, the period of time used to collect data was set at 30, 60 and 90 days after the first haemodialysis session.
Results. There were 1571 incident haemodialysis patients included. The mean age was 62.3 years and the average Charlson comorbidity index was 5.99. The mortality prediction models obtained by random forest appear to be adequate in terms of accuracy [area under the curve (AUC) 0.68–0.73] and superior to logistic regression models (DAUC 0.007–0.046). Results indicate that both random forest and logistic regression develop mortality prediction models using different variables. Conclusions. Random forest is an adequate method, and superior to logistic regression, to generate mortality prediction models in haemodialysis patients.
Description
MeSH Terms
Medical Subject Headings::Organisms::Eukaryota::Animals::Chordata::Vertebrates::Mammals::Primates::Haplorhini::Catarrhini::Hominidae::Humans
Medical Subject Headings::Analytical, Diagnostic and Therapeutic Techniques and Equipment::Investigative Techniques::Models, Theoretical::Models, Statistical::Logistic Models
Medical Subject Headings::Analytical, Diagnostic and Therapeutic Techniques and Equipment::Investigative Techniques::Epidemiologic Methods::Statistics as Topic::Area Under Curve
Medical Subject Headings::Analytical, Diagnostic and Therapeutic Techniques and Equipment::Therapeutics::Renal Replacement Therapy::Renal Dialysis
Medical Subject Headings::Health Care::Health Care Quality, Access, and Evaluation::Quality of Health Care::Epidemiologic Factors::Comorbidity
Medical Subject Headings::Analytical, Diagnostic and Therapeutic Techniques and Equipment::Investigative Techniques::Epidemiologic Methods::Data Collection::Vital Statistics::Mortality
Medical Subject Headings::Anatomy::Urogenital System::Urinary Tract::Kidney
Medical Subject Headings::Analytical, Diagnostic and Therapeutic Techniques and Equipment::Therapeutics::Renal Replacement Therapy::Renal Dialysis
Medical Subject Headings::Anthropology, Education, Sociology and Social Phenomena::Social Sciences::Forecasting
Medical Subject Headings::Analytical, Diagnostic and Therapeutic Techniques and Equipment::Investigative Techniques::Models, Theoretical::Models, Statistical::Logistic Models
Medical Subject Headings::Analytical, Diagnostic and Therapeutic Techniques and Equipment::Investigative Techniques::Epidemiologic Methods::Statistics as Topic::Area Under Curve
Medical Subject Headings::Analytical, Diagnostic and Therapeutic Techniques and Equipment::Therapeutics::Renal Replacement Therapy::Renal Dialysis
Medical Subject Headings::Health Care::Health Care Quality, Access, and Evaluation::Quality of Health Care::Epidemiologic Factors::Comorbidity
Medical Subject Headings::Analytical, Diagnostic and Therapeutic Techniques and Equipment::Investigative Techniques::Epidemiologic Methods::Data Collection::Vital Statistics::Mortality
Medical Subject Headings::Anatomy::Urogenital System::Urinary Tract::Kidney
Medical Subject Headings::Analytical, Diagnostic and Therapeutic Techniques and Equipment::Therapeutics::Renal Replacement Therapy::Renal Dialysis
Medical Subject Headings::Anthropology, Education, Sociology and Social Phenomena::Social Sciences::Forecasting
DeCS Terms
CIE Terms
Keywords
Haemodialysis, Machine learning, Mortality, Predictive models, Random forest, Diálisis renal, Aprendizaje automático, Mortalidad, Predicción
Citation
Garcia-Montemayor V, Martin-Malo A, Barbieri C, Bellocchio F, Soriano S, Pendon-Ruiz de Mier V, et al. Predicting mortality in hemodialysis patients using machine learning analysis. Clin Kidney J. 2020 Aug 11;14(5):1388-1395