Revisiting the dynamic risk profile of cardiovascular/non‐cardiovascular multimorbidity in incident atrial fibrillation patients and five cardiovascular/non‐cardiovascular outcomes: A machine‐learning approach

Abstract Background Patients with atrial fibrillation (AF) usually have a heterogeneous co‐morbid history, with dynamic changes in risk factors impacting on multiple adverse outcomes. We investigated a large prospective cohort of patients with multimorbidity, using a machine‐learning approach, accou...

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Main Authors: Gregory Y. H. Lip, George Tran, Ash Genaidy, Patricia Marroquin, Cara Estes
Format: Article
Language:English
Published: Wiley 2021-08-01
Series:Journal of Arrhythmia
Subjects:
Online Access:https://doi.org/10.1002/joa3.12555
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spelling doaj-d0f2e8a7860c422fafa2a3e3f5d815e92021-08-05T03:29:46ZengWileyJournal of Arrhythmia1880-42761883-21482021-08-0137493194110.1002/joa3.12555Revisiting the dynamic risk profile of cardiovascular/non‐cardiovascular multimorbidity in incident atrial fibrillation patients and five cardiovascular/non‐cardiovascular outcomes: A machine‐learning approachGregory Y. H. Lip0George Tran1Ash Genaidy2Patricia Marroquin3Cara Estes4Liverpool Centre for Cardiovascular Science University of Liverpool and Liverpool Heart & Chest Hospital Liverpool UKIngenioRX Indianapolis IN USAAnthem Inc Indianapolis IN USAAnthem Inc Indianapolis IN USAAnthem Inc Indianapolis IN USAAbstract Background Patients with atrial fibrillation (AF) usually have a heterogeneous co‐morbid history, with dynamic changes in risk factors impacting on multiple adverse outcomes. We investigated a large prospective cohort of patients with multimorbidity, using a machine‐learning approach, accounting for the dynamic nature of comorbidity risks and incident AF. Methods Using machine‐learning, we studied a prospective US cohort using medical/pharmacy databases of 1 091 911 patients, with an incident AF cohort of 14 078 and non‐AF cohort of 1 077 833 enrolled in the 4‐year study. Five incident clinical outcomes (heart failure, stroke, myocardial infarction, major bleeding, and cognitive impairment) were examined in relationship to AF status (AF vs non‐AF), diverse multi‐morbid (conditions and medications) history, and demographic parameters (age and gender), with supervised machine‐learning techniques. Results Complex inter‐relationships of various comorbidities were uncovered for AF cases, leading to 6‐fold higher risk of heart failure relative to the non‐AF cohort (OR 6.02, 95% CI 5.72‐6.33), followed by myocardial infarction (OR=2.68), stroke (OR=2.19), and major bleeding (OR=1.36). Supervised machine learning algorithms on the original populations yielded comparable results for both neural network and logistic regression algorithms in terms of discriminant validity, with c‐indexes for incident adverse outcomes: heart failure (0.924, 95%CI 0.923‐0.925), stroke (0.871, 95%CI 0.869‐0.873), myocardial infarction (0.901, 95% CI 0.899‐0.903), major bleeding (0.700, 95%CI 0.697‐0.703), and cognitive impairment (0.919, 95% CI 0.9170.921). External calibration of all models demonstrated a good fit between the predicted probabilities and observed events. Decision curve analysis demonstrated that the obtained models were much more clinically useful than the “treat all” strategy. Conclusions Complex multimorbidity relationships uncovered using a machine learning approach for incident AF cases have major consequences for integrated care management, with implications for risk stratification and adverse clinical outcomes. This approach may facilitate automated approaches in the presence of multimorbidity, potentially helping decision making.https://doi.org/10.1002/joa3.12555atrial fibrillationcognitive impairmentcongestive heart failuremachine learningmajor bleedingmyocardial infarction
collection DOAJ
language English
format Article
sources DOAJ
author Gregory Y. H. Lip
George Tran
Ash Genaidy
Patricia Marroquin
Cara Estes
spellingShingle Gregory Y. H. Lip
George Tran
Ash Genaidy
Patricia Marroquin
Cara Estes
Revisiting the dynamic risk profile of cardiovascular/non‐cardiovascular multimorbidity in incident atrial fibrillation patients and five cardiovascular/non‐cardiovascular outcomes: A machine‐learning approach
Journal of Arrhythmia
atrial fibrillation
cognitive impairment
congestive heart failure
machine learning
major bleeding
myocardial infarction
author_facet Gregory Y. H. Lip
George Tran
Ash Genaidy
Patricia Marroquin
Cara Estes
author_sort Gregory Y. H. Lip
title Revisiting the dynamic risk profile of cardiovascular/non‐cardiovascular multimorbidity in incident atrial fibrillation patients and five cardiovascular/non‐cardiovascular outcomes: A machine‐learning approach
title_short Revisiting the dynamic risk profile of cardiovascular/non‐cardiovascular multimorbidity in incident atrial fibrillation patients and five cardiovascular/non‐cardiovascular outcomes: A machine‐learning approach
title_full Revisiting the dynamic risk profile of cardiovascular/non‐cardiovascular multimorbidity in incident atrial fibrillation patients and five cardiovascular/non‐cardiovascular outcomes: A machine‐learning approach
title_fullStr Revisiting the dynamic risk profile of cardiovascular/non‐cardiovascular multimorbidity in incident atrial fibrillation patients and five cardiovascular/non‐cardiovascular outcomes: A machine‐learning approach
title_full_unstemmed Revisiting the dynamic risk profile of cardiovascular/non‐cardiovascular multimorbidity in incident atrial fibrillation patients and five cardiovascular/non‐cardiovascular outcomes: A machine‐learning approach
title_sort revisiting the dynamic risk profile of cardiovascular/non‐cardiovascular multimorbidity in incident atrial fibrillation patients and five cardiovascular/non‐cardiovascular outcomes: a machine‐learning approach
publisher Wiley
series Journal of Arrhythmia
issn 1880-4276
1883-2148
publishDate 2021-08-01
description Abstract Background Patients with atrial fibrillation (AF) usually have a heterogeneous co‐morbid history, with dynamic changes in risk factors impacting on multiple adverse outcomes. We investigated a large prospective cohort of patients with multimorbidity, using a machine‐learning approach, accounting for the dynamic nature of comorbidity risks and incident AF. Methods Using machine‐learning, we studied a prospective US cohort using medical/pharmacy databases of 1 091 911 patients, with an incident AF cohort of 14 078 and non‐AF cohort of 1 077 833 enrolled in the 4‐year study. Five incident clinical outcomes (heart failure, stroke, myocardial infarction, major bleeding, and cognitive impairment) were examined in relationship to AF status (AF vs non‐AF), diverse multi‐morbid (conditions and medications) history, and demographic parameters (age and gender), with supervised machine‐learning techniques. Results Complex inter‐relationships of various comorbidities were uncovered for AF cases, leading to 6‐fold higher risk of heart failure relative to the non‐AF cohort (OR 6.02, 95% CI 5.72‐6.33), followed by myocardial infarction (OR=2.68), stroke (OR=2.19), and major bleeding (OR=1.36). Supervised machine learning algorithms on the original populations yielded comparable results for both neural network and logistic regression algorithms in terms of discriminant validity, with c‐indexes for incident adverse outcomes: heart failure (0.924, 95%CI 0.923‐0.925), stroke (0.871, 95%CI 0.869‐0.873), myocardial infarction (0.901, 95% CI 0.899‐0.903), major bleeding (0.700, 95%CI 0.697‐0.703), and cognitive impairment (0.919, 95% CI 0.9170.921). External calibration of all models demonstrated a good fit between the predicted probabilities and observed events. Decision curve analysis demonstrated that the obtained models were much more clinically useful than the “treat all” strategy. Conclusions Complex multimorbidity relationships uncovered using a machine learning approach for incident AF cases have major consequences for integrated care management, with implications for risk stratification and adverse clinical outcomes. This approach may facilitate automated approaches in the presence of multimorbidity, potentially helping decision making.
topic atrial fibrillation
cognitive impairment
congestive heart failure
machine learning
major bleeding
myocardial infarction
url https://doi.org/10.1002/joa3.12555
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