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Probability of atrial fibrillation after ablation: Using a parametric nonlinear temporal decomposition mixed effects model.


ABSTRACT: Atrial fibrillation is an arrhythmic disorder where the electrical signals of the heart become irregular. The probability of atrial fibrillation (binary response) is often time varying in a structured fashion, as is the influence of associated risk factors. A generalized nonlinear mixed effects model is presented to estimate the time-related probability of atrial fibrillation using a temporal decomposition approach to reveal the pattern of the probability of atrial fibrillation and their determinants. This methodology generalizes to patient-specific analysis of longitudinal binary data with possibly time-varying effects of covariates and with different patient-specific random effects influencing different temporal phases. The motivation and application of this model is illustrated using longitudinally measured atrial fibrillation data obtained through weekly trans-telephonic monitoring from an NIH sponsored clinical trial being conducted by the Cardiothoracic Surgery Clinical Trials Network.

SUBMITTER: Rajeswaran J 

PROVIDER: S-EPMC5633490 | biostudies-literature | 2018 Jan

REPOSITORIES: biostudies-literature

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Probability of atrial fibrillation after ablation: Using a parametric nonlinear temporal decomposition mixed effects model.

Rajeswaran Jeevanantham J   Blackstone Eugene H EH   Ehrlinger John J   Li Liang L   Ishwaran Hemant H   Parides Michael K MK  

Statistical methods in medical research 20160105 1


Atrial fibrillation is an arrhythmic disorder where the electrical signals of the heart become irregular. The probability of atrial fibrillation (binary response) is often time varying in a structured fashion, as is the influence of associated risk factors. A generalized nonlinear mixed effects model is presented to estimate the time-related probability of atrial fibrillation using a temporal decomposition approach to reveal the pattern of the probability of atrial fibrillation and their determi  ...[more]

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