Atrial fibrillation symptom profiles associated with healthcare utilization: A latent class regression analysis

Background Symptoms drive healthcare use among adults with atrial fibrillation, but limited data are available regarding which symptoms are most problematic and which patients are most at‐risk. The purpose of this study was to: (1) identify clusters of patients with similar symptom profiles, (2) cha...

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Bibliographic Details
Published inPacing and clinical electrophysiology Vol. 41; no. 7; pp. 741 - 749
Main Authors Streur, Megan M., Ratcliffe, Sarah J., Callans, David J., Shoemaker, M. Benjamin, Riegel, Barbara J.
Format Journal Article
LanguageEnglish
Published United States Wiley Subscription Services, Inc 01.07.2018
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Summary:Background Symptoms drive healthcare use among adults with atrial fibrillation, but limited data are available regarding which symptoms are most problematic and which patients are most at‐risk. The purpose of this study was to: (1) identify clusters of patients with similar symptom profiles, (2) characterize the individuals within each cluster, and (3) determine whether specific symptom profiles are associated with healthcare utilization. Methods We conducted a cross‐sectional secondary data analysis of 1,501 adults from the Vanderbilt Atrial Fibrillation Registry. Participants were recruited from Vanderbilt cardiology clinics, emergency department, and in‐patient services. Subjects included in our analysis had clinically verified atrial fibrillation and a completed symptom survey. Symptom and healthcare utilization data were collected with the University of Toronto Atrial Fibrillation Severity Scale. Latent class regression analysis was used to identify symptom clusters, with clinical and demographic variables included as covariates. We used Poisson regression to examine the association between latent class membership and healthcare utilization. Results Participants were predominantly male (67%) with a mean age of 58.4 years (±11.9). Four latent classes were evident, including an Asymptomatic cluster (N = 487, 38%), Highly Symptomatic cluster (N = 142, 11%), With Activity cluster (N = 326, 25%), and Mild Diffuse cluster (N = 336, 26%). Highly Symptomatic membership was associated with the greatest rate of emergency department visits and hospitalizations (incident rate ratio 2.4, P < 0.001). Conclusions Clinically meaningful atrial fibrillation symptom profiles were identified that were associated with increased rates of emergency department visits and hospitalizations.
Bibliography:Megan Streur was supported by the National Institute of Nursing Research (F31 NR015687 and T32 NR014833). M. Benjamin Shoemaker was supported in part by the National Institutes of Health grant K23 HL127704. The registry was supported by CTSA award UL1TR000445 from the National Center for Advancing Translational Sciences. The content of this manuscript is solely the responsibility of the authors and does not necessarily represent official views of the National Center for Advancing Translational Sciences or the National Institutes of Health.
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ISSN:0147-8389
1540-8159
1540-8159
DOI:10.1111/pace.13356