Cargando…

Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study

BACKGROUND: With the prevalence of cardiovascular diseases increasing worldwide, early prediction and accurate assessment of heart failure (HF) risk are crucial to meet the clinical demand. OBJECTIVE: Our study objective was to develop machine learning (ML) models based on real-world electronic heal...

Descripción completa

Detalles Bibliográficos
Autores principales: Lv, Haichen, Yang, Xiaolei, Wang, Bingyi, Wang, Shaobo, Du, Xiaoyan, Tan, Qian, Hao, Zhujing, Liu, Ying, Yan, Jun, Xia, Yunlong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8094022/
https://www.ncbi.nlm.nih.gov/pubmed/33871375
http://dx.doi.org/10.2196/24996
_version_ 1783687936844234752
author Lv, Haichen
Yang, Xiaolei
Wang, Bingyi
Wang, Shaobo
Du, Xiaoyan
Tan, Qian
Hao, Zhujing
Liu, Ying
Yan, Jun
Xia, Yunlong
author_facet Lv, Haichen
Yang, Xiaolei
Wang, Bingyi
Wang, Shaobo
Du, Xiaoyan
Tan, Qian
Hao, Zhujing
Liu, Ying
Yan, Jun
Xia, Yunlong
author_sort Lv, Haichen
collection PubMed
description BACKGROUND: With the prevalence of cardiovascular diseases increasing worldwide, early prediction and accurate assessment of heart failure (HF) risk are crucial to meet the clinical demand. OBJECTIVE: Our study objective was to develop machine learning (ML) models based on real-world electronic health records to predict 1-year in-hospital mortality, use of positive inotropic agents, and 1-year all-cause readmission rate. METHODS: For this single-center study, we recruited patients with newly diagnosed HF hospitalized between December 2010 and August 2018 at the First Affiliated Hospital of Dalian Medical University (Liaoning Province, China). The models were constructed for a population set (90:10 split of data set into training and test sets) using 79 variables during the first hospitalization. Logistic regression, support vector machine, artificial neural network, random forest, and extreme gradient boosting models were investigated for outcome predictions. RESULTS: Of the 13,602 patients with HF enrolled in the study, 537 (3.95%) died within 1 year and 2779 patients (20.43%) had a history of use of positive inotropic agents. ML algorithms improved the performance of predictive models for 1-year in-hospital mortality (areas under the curve [AUCs] 0.92-1.00), use of positive inotropic medication (AUCs 0.85-0.96), and 1-year readmission rates (AUCs 0.63-0.96). A decision tree of mortality risk was created and stratified by single variables at levels of high-sensitivity cardiac troponin I (<0.068 μg/L), followed by percentage of lymphocytes (<14.688%) and neutrophil count (4.870×10(9)/L). CONCLUSIONS: ML techniques based on a large scale of clinical variables can improve outcome predictions for patients with HF. The mortality decision tree may contribute to guiding better clinical risk assessment and decision making.
format Online
Article
Text
id pubmed-8094022
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-80940222021-05-07 Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study Lv, Haichen Yang, Xiaolei Wang, Bingyi Wang, Shaobo Du, Xiaoyan Tan, Qian Hao, Zhujing Liu, Ying Yan, Jun Xia, Yunlong J Med Internet Res Original Paper BACKGROUND: With the prevalence of cardiovascular diseases increasing worldwide, early prediction and accurate assessment of heart failure (HF) risk are crucial to meet the clinical demand. OBJECTIVE: Our study objective was to develop machine learning (ML) models based on real-world electronic health records to predict 1-year in-hospital mortality, use of positive inotropic agents, and 1-year all-cause readmission rate. METHODS: For this single-center study, we recruited patients with newly diagnosed HF hospitalized between December 2010 and August 2018 at the First Affiliated Hospital of Dalian Medical University (Liaoning Province, China). The models were constructed for a population set (90:10 split of data set into training and test sets) using 79 variables during the first hospitalization. Logistic regression, support vector machine, artificial neural network, random forest, and extreme gradient boosting models were investigated for outcome predictions. RESULTS: Of the 13,602 patients with HF enrolled in the study, 537 (3.95%) died within 1 year and 2779 patients (20.43%) had a history of use of positive inotropic agents. ML algorithms improved the performance of predictive models for 1-year in-hospital mortality (areas under the curve [AUCs] 0.92-1.00), use of positive inotropic medication (AUCs 0.85-0.96), and 1-year readmission rates (AUCs 0.63-0.96). A decision tree of mortality risk was created and stratified by single variables at levels of high-sensitivity cardiac troponin I (<0.068 μg/L), followed by percentage of lymphocytes (<14.688%) and neutrophil count (4.870×10(9)/L). CONCLUSIONS: ML techniques based on a large scale of clinical variables can improve outcome predictions for patients with HF. The mortality decision tree may contribute to guiding better clinical risk assessment and decision making. JMIR Publications 2021-04-19 /pmc/articles/PMC8094022/ /pubmed/33871375 http://dx.doi.org/10.2196/24996 Text en ©Haichen Lv, Xiaolei Yang, Bingyi Wang, Shaobo Wang, Xiaoyan Du, Qian Tan, Zhujing Hao, Ying Liu, Jun Yan, Yunlong Xia. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 19.04.2021. 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 work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on http://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Lv, Haichen
Yang, Xiaolei
Wang, Bingyi
Wang, Shaobo
Du, Xiaoyan
Tan, Qian
Hao, Zhujing
Liu, Ying
Yan, Jun
Xia, Yunlong
Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study
title Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study
title_full Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study
title_fullStr Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study
title_full_unstemmed Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study
title_short Machine Learning–Driven Models to Predict Prognostic Outcomes in Patients Hospitalized With Heart Failure Using Electronic Health Records: Retrospective Study
title_sort machine learning–driven models to predict prognostic outcomes in patients hospitalized with heart failure using electronic health records: retrospective study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8094022/
https://www.ncbi.nlm.nih.gov/pubmed/33871375
http://dx.doi.org/10.2196/24996
work_keys_str_mv AT lvhaichen machinelearningdrivenmodelstopredictprognosticoutcomesinpatientshospitalizedwithheartfailureusingelectronichealthrecordsretrospectivestudy
AT yangxiaolei machinelearningdrivenmodelstopredictprognosticoutcomesinpatientshospitalizedwithheartfailureusingelectronichealthrecordsretrospectivestudy
AT wangbingyi machinelearningdrivenmodelstopredictprognosticoutcomesinpatientshospitalizedwithheartfailureusingelectronichealthrecordsretrospectivestudy
AT wangshaobo machinelearningdrivenmodelstopredictprognosticoutcomesinpatientshospitalizedwithheartfailureusingelectronichealthrecordsretrospectivestudy
AT duxiaoyan machinelearningdrivenmodelstopredictprognosticoutcomesinpatientshospitalizedwithheartfailureusingelectronichealthrecordsretrospectivestudy
AT tanqian machinelearningdrivenmodelstopredictprognosticoutcomesinpatientshospitalizedwithheartfailureusingelectronichealthrecordsretrospectivestudy
AT haozhujing machinelearningdrivenmodelstopredictprognosticoutcomesinpatientshospitalizedwithheartfailureusingelectronichealthrecordsretrospectivestudy
AT liuying machinelearningdrivenmodelstopredictprognosticoutcomesinpatientshospitalizedwithheartfailureusingelectronichealthrecordsretrospectivestudy
AT yanjun machinelearningdrivenmodelstopredictprognosticoutcomesinpatientshospitalizedwithheartfailureusingelectronichealthrecordsretrospectivestudy
AT xiayunlong machinelearningdrivenmodelstopredictprognosticoutcomesinpatientshospitalizedwithheartfailureusingelectronichealthrecordsretrospectivestudy