Incident atrial fibrillation and its risk prediction in patients
developing COVID-19: A machine learning based algorithm approach
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. 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 complex
dynamic relationships. Methods We studied a prospective elderly US
cohort of 280592 patients from medical databases in a 8-month
investigation of new 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 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 approach accounting for dynamic multimorbidity
changes had good prediction for incident AF amongst incident COVID19
cases.