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Incident atrial fibrillation and its risk prediction in patients developing COVID-19: A machine learning based algorithm approach.
Lip, Gregory Y H; Genaidy, Ash; Tran, George; Marroquin, Patricia; Estes, Cara.
  • Lip GYH; Liverpool Centre for Cardiovascular Science, University of Liverpool and Liverpool Heart & Chest Hospital, Liverpool, United Kingdom. Electronic address: gregory.lip@liverpool.ac.uk.
  • Genaidy A; Anthem Inc., Indianapolis, IN, USA. Electronic address: ashraf.genaidy@anthem.com.
  • Tran G; IngenioRX, Indianapolis, IN, USA.
  • Marroquin P; Anthem Inc., Indianapolis, IN, USA.
  • Estes C; Anthem Inc., Indianapolis, IN, USA.
Eur J Intern Med ; 91: 53-58, 2021 09.
Article in English | MEDLINE | ID: covidwho-1375935
ABSTRACT

BACKGROUND:

The elderly multi-morbid patient is at high risk of adverse outcomes with COVID-19 complications, and in the general population, the development of incident AF is associated with worse outcomes in such patients. There is therefore the need to identify those patients with COVID-19 who are at highest risk of developing incident AF. We therefore investigated incident AF risks in a large prospective population of elderly patients with/without incident COVID-19 cases and baseline cardiovascular/non-cardiovascular multi-morbidities. We used two approaches main effect modeling and secondly, a machine-learning (ML) approach, accounting for the complex dynamic relationships among comorbidity variables.

METHODS:

We studied a prospective elderly US cohort of 280,592 patients from medical databases in an 8-month investigation of with/without newly incident COVID19 cases. Incident AF outcomes were examined in relationship to diverse multi-morbid conditions, COVID-19 status and demographic variables, with ML accounting for the dynamic nature of changing multimorbidity risk factors.

RESULTS:

Multi-morbidity contributed to the onset of confirmed COVID-19 cases with cognitive impairment (OR 1.69; 95%CI 1.52-1.88), anemia (OR 1.41; 95%CI 1.32-1.50), diabetes mellitus (OR 1.35; 95%CI 1.27-1.44) and vascular disease (OR 1.30; 95%CI 1.21-1.39) having the highest associations. A main effect model (C-index value 0.718) showed that COVID-19 had the highest association with incident AF cases (OR 3.12; 95%CI 2.61-3.710, followed by congestive heart failure (1.72; 95%CI 1.50-1.96), then coronary artery disease (OR 1.43; 95%CI 1.27-1.60) and valvular disease (1.42; 95%CI 1.26-1.60). The ML algorithm demonstrated improved discriminatory validity incrementally over the statistical main effect model (training C-index 0.729, 95%CI 0.718-0.740; validation C-index 0.704, 95%CI 0.687-0.72). Calibration of the ML based formulation was satisfactory and better than the main-effect model. Decision curve analysis demonstrated that the clinical utility for the ML based formulation was better than the 'treat all' strategy and the main effect model.

CONCLUSION:

COVID-19 status has major implications for incident AF in a cohort with diverse cardiovascular/non-cardiovascular multi-morbidities. Our ML approach accounting for dynamic multimorbidity changes had good prediction for new onset AF amongst incident COVID19 cases.
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Full text: Available Collection: International databases Database: MEDLINE Main subject: Atrial Fibrillation / COVID-19 Type of study: Cohort study / Observational study / Prognostic study Limits: Aged / Humans Language: English Journal: Eur J Intern Med Journal subject: Internal Medicine Year: 2021 Document Type: Article

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Full text: Available Collection: International databases Database: MEDLINE Main subject: Atrial Fibrillation / COVID-19 Type of study: Cohort study / Observational study / Prognostic study Limits: Aged / Humans Language: English Journal: Eur J Intern Med Journal subject: Internal Medicine Year: 2021 Document Type: Article