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Predicting Long-Term Clinical Outcomes of Patients With Recurrent Pericarditis.

Authors :
Yesilyaprak A
Kumar AK
Agrawal A
Furqan MM
Verma BR
Syed AB
Majid M
Akyuz K
Rayes DL
Chen D
Kai Ming Wang T
Cremer PC
Klein AL
Source :
Journal of the American College of Cardiology [J Am Coll Cardiol] 2024 Sep 24; Vol. 84 (13), pp. 1193-1204. Date of Electronic Publication: 2024 Aug 31.
Publication Year :
2024

Abstract

Background: Recurrent pericarditis (RP) is a complex condition associated with significant morbidity. Prior studies have evaluated which variables are associated with clinical remission. However, there is currently no established risk-stratification model for predicting outcomes in these patients.<br />Objectives: We developed a risk stratification model that can predict long-term outcomes in patients with RP and enable identification of patients with characteristics that portend poor outcomes.<br />Methods: We retrospectively studied a total of 365 consecutive patients with RP from 2012 to 2019. The primary outcome was clinical remission (CR), defined as cessation of all anti-inflammatory therapy with complete resolution of symptoms. Five machine learning survival models were used to calculate the likelihood of CR within 5 years and stratify patients into high-risk, intermediate-risk, and low-risk groups.<br />Results: Among the cohort, the mean age was 46 ± 15 years, and 205 (56%) were women. CR was achieved in 118 (32%) patients. The final model included steroid dependency, total number of recurrences, pericardial late gadolinium enhancement, age, etiology, sex, ejection fraction, and heart rate as the most important parameters. The model predicted the outcome with a C-index of 0.800 on the test set and exhibited a significant ability in stratification of patients into low-risk, intermediate-risk, and high-risk groups (log-rank test; P < 0.0001).<br />Conclusions: We developed a novel risk-stratification model for predicting CR in RP. Our model can also aid in stratifying patients, with high discriminative ability. The use of an explainable machine learning model can aid physicians in making individualized treatment decision in RP patients.<br />Competing Interests: Funding Support and Author Disclosures Dr Cremer has served on the scientific advisory board of Kiniksa Pharmaceuticals and Cardiol Therapeutics. Dr Klein has received a research grant from Kiniksa Pharmaceuticals, Ltd, and Cardiol Therapeutics; and has served on the scientific advisory board of Kiniksa Pharmaceuticals, Ltd, Pfizer, Inc, and Cardiol Therapeutics. All other authors have reported that they have no relationships relevant to the contents of this paper to disclose.<br /> (Copyright © 2024 American College of Cardiology Foundation. Published by Elsevier Inc. All rights reserved.)

Details

Language :
English
ISSN :
1558-3597
Volume :
84
Issue :
13
Database :
MEDLINE
Journal :
Journal of the American College of Cardiology
Publication Type :
Academic Journal
Accession number :
39217549
Full Text :
https://doi.org/10.1016/j.jacc.2024.05.072