Machine-learning-derived phenotypes of hypertensive patients using multidimensional clinical and echocardiographic data including strain imaging
  • Hwang, In-Chang
  • Kim, Hyue Mee
  • Park, Jiesuck
  • Choi, Hong-Mi
  • Yoon, Yeonyee E.
  • 외 1명
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Aims We applied unsupervised machine learning clustering to a large cohort of hypertensive patients undergoing echocardiography with strain imaging to identify phenotypes with distinct clinical profiles, comorbidities, remodelling trajectories, and outcomes. Methods and results We analysed 1607 patients from the STRATS-HHD registry who underwent echocardiography at baseline and after 6–18 months of therapy. Twenty clinical, laboratory, and echocardiographic variables—including left atrial and left ventricular strain—underwent principal component analysis and K-means clustering (K = 4). Clusters were derived in the SNUBH cohort (n = 1204) and validated in the CAUH cohort (n = 403), two institutional subsets of the registry. Remodelling trajectories were assessed using baseline-adjusted models, and associations with outcomes were evaluated using multivariable Cox regression. Four clusters emerged: (i) atrial fibrillation-predominant, with advanced remodelling and the highest event risk; (ii) elderly, with metabolic–renal comorbidities but preserved function; (iii) middle-aged, with prevalent coronary disease and relatively preserved function; and (iv) younger, with severe hypertension, marked strain impairment, and the greatest remodelling regression with therapy. Prognosis varied: cluster 1 had the highest risk of cardiovascular death, heart failure hospitalization, stroke, and major adverse cardiovascular events (MACE); cluster 2 exhibited increased cardiovascular death and intermediate heart failure hospitalization risk; cluster 3 showed elevated coronary risk; and cluster 4 the most favourable outcomes. Associations between medication and remodelling varied, with renin–angiotensin blockade linked to LV mass regression in cluster 4. Conclusion Machine learning -based clustering incorporating strain identified four distinct HHD phenotypes with divergent remodelling, therapeutic responses, and outcomes. Data-driven phenotyping may improve risk stratification and enable tailored management in hypertension.

키워드

HypertensionHypertensive heart diseaseMachine-learningPhenotype clusteringUnsupervised clusteringEUROPEAN ASSOCIATIONAMERICAN SOCIETYRECOMMENDATIONS
제목
Machine-learning-derived phenotypes of hypertensive patients using multidimensional clinical and echocardiographic data including strain imaging
저자
Hwang, In-ChangKim, Hyue MeePark, JiesuckChoi, Hong-MiYoon, Yeonyee E.Cho, Goo-Yeong
DOI
10.1093/ehjdh/ztag027
발행일
2026-03
유형
Article
저널명
European Heart Journal - Digital Health
7
2

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