Cargando…
Derivation of an electronic frailty index for predicting short‐term mortality in heart failure: a machine learning approach
AIMS: Frailty may be found in heart failure patients especially in the elderly and is associated with a poor prognosis. However, assessment of frailty status is time‐consuming, and the electronic frailty indices developed using health records have served as useful surrogates. We hypothesized that an...
Autores principales: | , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
John Wiley and Sons Inc.
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8318426/ https://www.ncbi.nlm.nih.gov/pubmed/34080784 http://dx.doi.org/10.1002/ehf2.13358 |
_version_ | 1783730241546485760 |
---|---|
author | Ju, Chengsheng Zhou, Jiandong Lee, Sharen Tan, Martin Sebastian Liu, Tong Bazoukis, George Jeevaratnam, Kamalan Chan, Esther W.Y. Wong, Ian Chi Kei Wei, Li Zhang, Qingpeng Tse, Gary |
author_facet | Ju, Chengsheng Zhou, Jiandong Lee, Sharen Tan, Martin Sebastian Liu, Tong Bazoukis, George Jeevaratnam, Kamalan Chan, Esther W.Y. Wong, Ian Chi Kei Wei, Li Zhang, Qingpeng Tse, Gary |
author_sort | Ju, Chengsheng |
collection | PubMed |
description | AIMS: Frailty may be found in heart failure patients especially in the elderly and is associated with a poor prognosis. However, assessment of frailty status is time‐consuming, and the electronic frailty indices developed using health records have served as useful surrogates. We hypothesized that an electronic frailty index developed using machine learning can improve short‐term mortality prediction in patients with heart failure. METHODS AND RESULTS: This was a retrospective observational study that included patients admitted to nine public hospitals for heart failure from Hong Kong between 2013 and 2017. Age, sex, variables in the modified frailty index, Deyo's Charlson co‐morbidity index (≥2), neutrophil‐to‐lymphocyte ratio (NLR), and prognostic nutritional index at baseline were analysed. Gradient boosting, which is a supervised sequential ensemble learning algorithm with weak prediction submodels (typically decision trees), was applied to predict mortality. Variables were ranked in the order of importance with a total score of 100 and used to build the frailty models. Comparisons were made with decision tree and multivariable logistic regression. A total of 8893 patients (median: age 81, Q1–Q3: 71–87 years old) were included, in whom 9% had 30 day mortality and 17% had 90 day mortality. Prognostic nutritional index, age, and NLR were the most important variables predicting 30 day mortality (importance score: 37.4, 32.1, and 20.5, respectively) and 90 day mortality (importance score: 35.3, 36.3, and 14.6, respectively). Gradient boosting significantly outperformed decision tree and multivariable logistic regression. The area under the curve from a five‐fold cross validation was 0.90 for gradient boosting and 0.87 and 0.86 for decision tree and logistic regression in predicting 30 day mortality. For the prediction of 90 day mortality, the area under the curve was 0.92, 0.89, and 0.86 for gradient boosting, decision tree, and logistic regression, respectively. CONCLUSIONS: The electronic frailty index based on co‐morbidities, inflammation, and nutrition information can readily predict mortality outcomes. Their predictive performances were significantly improved by gradient boosting techniques. |
format | Online Article Text |
id | pubmed-8318426 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | John Wiley and Sons Inc. |
record_format | MEDLINE/PubMed |
spelling | pubmed-83184262021-07-31 Derivation of an electronic frailty index for predicting short‐term mortality in heart failure: a machine learning approach Ju, Chengsheng Zhou, Jiandong Lee, Sharen Tan, Martin Sebastian Liu, Tong Bazoukis, George Jeevaratnam, Kamalan Chan, Esther W.Y. Wong, Ian Chi Kei Wei, Li Zhang, Qingpeng Tse, Gary ESC Heart Fail Original Research Articles AIMS: Frailty may be found in heart failure patients especially in the elderly and is associated with a poor prognosis. However, assessment of frailty status is time‐consuming, and the electronic frailty indices developed using health records have served as useful surrogates. We hypothesized that an electronic frailty index developed using machine learning can improve short‐term mortality prediction in patients with heart failure. METHODS AND RESULTS: This was a retrospective observational study that included patients admitted to nine public hospitals for heart failure from Hong Kong between 2013 and 2017. Age, sex, variables in the modified frailty index, Deyo's Charlson co‐morbidity index (≥2), neutrophil‐to‐lymphocyte ratio (NLR), and prognostic nutritional index at baseline were analysed. Gradient boosting, which is a supervised sequential ensemble learning algorithm with weak prediction submodels (typically decision trees), was applied to predict mortality. Variables were ranked in the order of importance with a total score of 100 and used to build the frailty models. Comparisons were made with decision tree and multivariable logistic regression. A total of 8893 patients (median: age 81, Q1–Q3: 71–87 years old) were included, in whom 9% had 30 day mortality and 17% had 90 day mortality. Prognostic nutritional index, age, and NLR were the most important variables predicting 30 day mortality (importance score: 37.4, 32.1, and 20.5, respectively) and 90 day mortality (importance score: 35.3, 36.3, and 14.6, respectively). Gradient boosting significantly outperformed decision tree and multivariable logistic regression. The area under the curve from a five‐fold cross validation was 0.90 for gradient boosting and 0.87 and 0.86 for decision tree and logistic regression in predicting 30 day mortality. For the prediction of 90 day mortality, the area under the curve was 0.92, 0.89, and 0.86 for gradient boosting, decision tree, and logistic regression, respectively. CONCLUSIONS: The electronic frailty index based on co‐morbidities, inflammation, and nutrition information can readily predict mortality outcomes. Their predictive performances were significantly improved by gradient boosting techniques. John Wiley and Sons Inc. 2021-06-03 /pmc/articles/PMC8318426/ /pubmed/34080784 http://dx.doi.org/10.1002/ehf2.13358 Text en © 2021 The Authors. ESC Heart Failure published by John Wiley & Sons Ltd on behalf of the European Society of Cardiology. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited. |
spellingShingle | Original Research Articles Ju, Chengsheng Zhou, Jiandong Lee, Sharen Tan, Martin Sebastian Liu, Tong Bazoukis, George Jeevaratnam, Kamalan Chan, Esther W.Y. Wong, Ian Chi Kei Wei, Li Zhang, Qingpeng Tse, Gary Derivation of an electronic frailty index for predicting short‐term mortality in heart failure: a machine learning approach |
title | Derivation of an electronic frailty index for predicting short‐term mortality in heart failure: a machine learning approach |
title_full | Derivation of an electronic frailty index for predicting short‐term mortality in heart failure: a machine learning approach |
title_fullStr | Derivation of an electronic frailty index for predicting short‐term mortality in heart failure: a machine learning approach |
title_full_unstemmed | Derivation of an electronic frailty index for predicting short‐term mortality in heart failure: a machine learning approach |
title_short | Derivation of an electronic frailty index for predicting short‐term mortality in heart failure: a machine learning approach |
title_sort | derivation of an electronic frailty index for predicting short‐term mortality in heart failure: a machine learning approach |
topic | Original Research Articles |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8318426/ https://www.ncbi.nlm.nih.gov/pubmed/34080784 http://dx.doi.org/10.1002/ehf2.13358 |
work_keys_str_mv | AT juchengsheng derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT zhoujiandong derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT leesharen derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT tanmartinsebastian derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT liutong derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT bazoukisgeorge derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT jeevaratnamkamalan derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT chanestherwy derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT wongianchikei derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT weili derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT zhangqingpeng derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach AT tsegary derivationofanelectronicfrailtyindexforpredictingshorttermmortalityinheartfailureamachinelearningapproach |