Skip to main content
Journal cover image

Machine Learning Identification of Patient Phenoclusters in Aortic Regurgitation.

Publication ,  Journal Article
Malahfji, M; Tan, X; Kaolawanich, Y; Saeed, M; Guta, A; Reardon, MJ; Zoghbi, WA; Polsani, V; Elliott, M; Kim, R; Li, M; Shah, DJ
Published in: JACC Cardiovasc Imaging
May 2025

BACKGROUND: Current treatment paradigms assume aortic regurgitation (AR) patients to be a homogenous population, but varied courses of disease progression and outcomes are observed clinically. OBJECTIVES: The aim of this study was to first use unsupervised machine learning to identify unique patient phenoclusters in AR, and subsequently evaluate their prognostic relevance. METHODS: Clinical and cardiac magnetic resonance (CMR) characterization of moderate or severe AR patients was performed across 4 U.S. CENTERS: Data from 2 centers were used for derivation of phenoclusters and validation was performed in the other 2. The outcome was all-cause death. An unsupervised clustering pipeline, Partition Around Medoids, used 23 clinical and CMR variables to derive patient clusters independent of outcomes. RESULTS: Included were 972 patients with mean age 62 ± 23.2 years, 754 (78%) male, 680 (70%) trileaflet valve, and 330 (34%) underwent valve surgery. Over a median follow-up of 2.58 years (Q1-Q3: 1.03-5.50 years), the overall mortality rate was 12%. Four clusters were derived: 1) a younger predominantly male phenotype with majority of bicuspid aortic valve and high extent of left ventricular (LV) remodeling (1% mortality); 2) older male patients with predominantly tricuspid valves and intermediate outcomes (10% mortality); 3) older predominantly male patients with the highest burden of comorbidities, LV scarring, and dysfunction (22% mortality); and 4) a phenotype of predominantly female patients with high mortality and relatively higher symptoms burden, relatively lower extent of LV remodeling, and rate of aortic valve replacement (20% mortality). The clustering algorithm was independently associated with survival after adjustment for time-dependent aortic valve replacement and traditional risk markers of prognosis in patients with AR (C statistic 0.77 vs 0.75; P = 0.009 in the validation cohort). CONCLUSIONS: Unique patient phenoclusters of AR are described using a machine learning approach leveraging comprehensive CMR and clinical characterization. This approach may be an opportunity for a precision medicine approach to enhance risk stratification of patients with AR. Female patients with AR pose a unique phenotype with high mortality, which deserves greater attention.

Duke Scholars

Published In

JACC Cardiovasc Imaging

DOI

EISSN

1876-7591

Publication Date

May 2025

Volume

18

Issue

5

Start / End Page

557 / 568

Location

United States

Related Subject Headings

  • Ventricular Function, Left
  • Unsupervised Machine Learning
  • United States
  • Time Factors
  • Sex Factors
  • Severity of Illness Index
  • Risk Factors
  • Risk Assessment
  • Retrospective Studies
  • Reproducibility of Results
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Malahfji, M., Tan, X., Kaolawanich, Y., Saeed, M., Guta, A., Reardon, M. J., … Shah, D. J. (2025). Machine Learning Identification of Patient Phenoclusters in Aortic Regurgitation. JACC Cardiovasc Imaging, 18(5), 557–568. https://doi.org/10.1016/j.jcmg.2025.01.006
Malahfji, Maan, Xin Tan, Yodying Kaolawanich, Mujtaba Saeed, Andrada Guta, Michael J. Reardon, William A. Zoghbi, et al. “Machine Learning Identification of Patient Phenoclusters in Aortic Regurgitation.JACC Cardiovasc Imaging 18, no. 5 (May 2025): 557–68. https://doi.org/10.1016/j.jcmg.2025.01.006.
Malahfji M, Tan X, Kaolawanich Y, Saeed M, Guta A, Reardon MJ, et al. Machine Learning Identification of Patient Phenoclusters in Aortic Regurgitation. JACC Cardiovasc Imaging. 2025 May;18(5):557–68.
Malahfji, Maan, et al. “Machine Learning Identification of Patient Phenoclusters in Aortic Regurgitation.JACC Cardiovasc Imaging, vol. 18, no. 5, May 2025, pp. 557–68. Pubmed, doi:10.1016/j.jcmg.2025.01.006.
Malahfji M, Tan X, Kaolawanich Y, Saeed M, Guta A, Reardon MJ, Zoghbi WA, Polsani V, Elliott M, Kim R, Li M, Shah DJ. Machine Learning Identification of Patient Phenoclusters in Aortic Regurgitation. JACC Cardiovasc Imaging. 2025 May;18(5):557–568.
Journal cover image

Published In

JACC Cardiovasc Imaging

DOI

EISSN

1876-7591

Publication Date

May 2025

Volume

18

Issue

5

Start / End Page

557 / 568

Location

United States

Related Subject Headings

  • Ventricular Function, Left
  • Unsupervised Machine Learning
  • United States
  • Time Factors
  • Sex Factors
  • Severity of Illness Index
  • Risk Factors
  • Risk Assessment
  • Retrospective Studies
  • Reproducibility of Results