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In-hospital Outcomes of Infective Endocarditis from 1978 to 2015: Analysis Through Machine-Learning Techniques

BACKGROUND: Early identification of patients with infective endocarditis (IE) at higher risk for in-hospital mortality is essential to guide management and improve prognosis. METHODS: A retrospective analysis was conducted of a cohort of patients followed up from 1978 to 2015, classified according t...

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Autores principales: Resende, Plinio, Fortes, Claudio Querido, do Nascimento, Emilia Matos, Sousa, Catarina, Querido Fortes, Natalia Rodrigues, Thomaz, Diego Centenaro, de Bragança Pereira, Basilio, Pinto, Fausto J., de Oliveira, Glaucia Maria Moraes
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8843990/
https://www.ncbi.nlm.nih.gov/pubmed/35198933
http://dx.doi.org/10.1016/j.cjco.2021.08.017
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author Resende, Plinio
Fortes, Claudio Querido
do Nascimento, Emilia Matos
Sousa, Catarina
Querido Fortes, Natalia Rodrigues
Thomaz, Diego Centenaro
de Bragança Pereira, Basilio
Pinto, Fausto J.
de Oliveira, Glaucia Maria Moraes
author_facet Resende, Plinio
Fortes, Claudio Querido
do Nascimento, Emilia Matos
Sousa, Catarina
Querido Fortes, Natalia Rodrigues
Thomaz, Diego Centenaro
de Bragança Pereira, Basilio
Pinto, Fausto J.
de Oliveira, Glaucia Maria Moraes
author_sort Resende, Plinio
collection PubMed
description BACKGROUND: Early identification of patients with infective endocarditis (IE) at higher risk for in-hospital mortality is essential to guide management and improve prognosis. METHODS: A retrospective analysis was conducted of a cohort of patients followed up from 1978 to 2015, classified according to the modified Duke criteria. Clinical parameters, echocardiographic data, and blood cultures were assessed. Techniques of machine learning, such as the classification tree, were used to explain the association between clinical characteristics and in-hospital mortality. Additionally, the log-linear model and graphical random forests (GRaFo) representation were used to assess the degree of dependence among in-hospital outcomes of IE. RESULTS: This study analyzed 653 patients: 449 (69.0%) with definite IE; 204 (31.0%) with possible IE; mean age, 41.3 ± 19.2 years; 420 (64%) men. Mode of IE acquisition: community-acquired (67.6%), nosocomial (17.0%), undetermined (15.4%). Complications occurred in 547 patients (83.7%), the most frequent being heart failure (47.0%), neurologic complications (30.7%), and dialysis-dependent renal failure (6.5%). In-hospital mortality was 36.0%. The classification tree analysis identified subgroups with higher in-hospital mortality: patients with community-acquired IE and peripheral stigmata on admission; and patients with nosocomial IE. The log-linear model showed that surgical treatment was related to higher in-hospital mortality in patients with neurologic complications. CONCLUSIONS: The use of a machine-learning model allowed identification of subgroups of patients at higher risk for in-hospital mortality. Peripheral stigmata, nosocomial IE, absence of vegetation, and surgery in the presence of neurologic complications are predictors of fatal outcomes in machine learning–based analysis.
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spelling pubmed-88439902022-02-22 In-hospital Outcomes of Infective Endocarditis from 1978 to 2015: Analysis Through Machine-Learning Techniques Resende, Plinio Fortes, Claudio Querido do Nascimento, Emilia Matos Sousa, Catarina Querido Fortes, Natalia Rodrigues Thomaz, Diego Centenaro de Bragança Pereira, Basilio Pinto, Fausto J. de Oliveira, Glaucia Maria Moraes CJC Open Original Article BACKGROUND: Early identification of patients with infective endocarditis (IE) at higher risk for in-hospital mortality is essential to guide management and improve prognosis. METHODS: A retrospective analysis was conducted of a cohort of patients followed up from 1978 to 2015, classified according to the modified Duke criteria. Clinical parameters, echocardiographic data, and blood cultures were assessed. Techniques of machine learning, such as the classification tree, were used to explain the association between clinical characteristics and in-hospital mortality. Additionally, the log-linear model and graphical random forests (GRaFo) representation were used to assess the degree of dependence among in-hospital outcomes of IE. RESULTS: This study analyzed 653 patients: 449 (69.0%) with definite IE; 204 (31.0%) with possible IE; mean age, 41.3 ± 19.2 years; 420 (64%) men. Mode of IE acquisition: community-acquired (67.6%), nosocomial (17.0%), undetermined (15.4%). Complications occurred in 547 patients (83.7%), the most frequent being heart failure (47.0%), neurologic complications (30.7%), and dialysis-dependent renal failure (6.5%). In-hospital mortality was 36.0%. The classification tree analysis identified subgroups with higher in-hospital mortality: patients with community-acquired IE and peripheral stigmata on admission; and patients with nosocomial IE. The log-linear model showed that surgical treatment was related to higher in-hospital mortality in patients with neurologic complications. CONCLUSIONS: The use of a machine-learning model allowed identification of subgroups of patients at higher risk for in-hospital mortality. Peripheral stigmata, nosocomial IE, absence of vegetation, and surgery in the presence of neurologic complications are predictors of fatal outcomes in machine learning–based analysis. Elsevier 2021-09-11 /pmc/articles/PMC8843990/ /pubmed/35198933 http://dx.doi.org/10.1016/j.cjco.2021.08.017 Text en © 2021 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Article
Resende, Plinio
Fortes, Claudio Querido
do Nascimento, Emilia Matos
Sousa, Catarina
Querido Fortes, Natalia Rodrigues
Thomaz, Diego Centenaro
de Bragança Pereira, Basilio
Pinto, Fausto J.
de Oliveira, Glaucia Maria Moraes
In-hospital Outcomes of Infective Endocarditis from 1978 to 2015: Analysis Through Machine-Learning Techniques
title In-hospital Outcomes of Infective Endocarditis from 1978 to 2015: Analysis Through Machine-Learning Techniques
title_full In-hospital Outcomes of Infective Endocarditis from 1978 to 2015: Analysis Through Machine-Learning Techniques
title_fullStr In-hospital Outcomes of Infective Endocarditis from 1978 to 2015: Analysis Through Machine-Learning Techniques
title_full_unstemmed In-hospital Outcomes of Infective Endocarditis from 1978 to 2015: Analysis Through Machine-Learning Techniques
title_short In-hospital Outcomes of Infective Endocarditis from 1978 to 2015: Analysis Through Machine-Learning Techniques
title_sort in-hospital outcomes of infective endocarditis from 1978 to 2015: analysis through machine-learning techniques
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8843990/
https://www.ncbi.nlm.nih.gov/pubmed/35198933
http://dx.doi.org/10.1016/j.cjco.2021.08.017
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