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基于人工智能的聚类分析能够对左心室质量增加的患者的预后进行预测。

AI-based cluster analysis enables outcomes prediction among patients with increased LVM.

作者信息

Loutati Ranel, Kolben Yotam, Luria David, Amir Offer, Biton Yitschak

机构信息

Heart Institute, Hadassah Medical Center and The Faculty of Medicine, Hebrew University of Jerusalem, Jerusalem, Israel.

出版信息

Front Cardiovasc Med. 2024 Sep 2;11:1357305. doi: 10.3389/fcvm.2024.1357305. eCollection 2024.

Abstract

BACKGROUND

The traditional classification of left ventricular hypertrophy (LVH), which relies on left ventricular geometry, fails to correlate with outcomes among patients with increased LV mass (LVM).

OBJECTIVES

To identify unique clinical phenotypes of increased LVM patients using unsupervised cluster analysis, and to explore their association with clinical outcomes.

METHODS

Among the UK Biobank participants, increased LVM was defined as LVM index ≥72 g/m for men, and LVM index ≥55 g/m for women. Baseline demographic, clinical, and laboratory data were collected from the database. Using Ward's minimum variance method, patients were clustered based on 27 variables. The primary outcome was a composite of all-cause mortality with heart failure (HF) admissions, ventricular arrhythmia, and atrial fibrillation (AF). Cox proportional hazard model and Kaplan-Meier survival analysis were applied.

RESULTS

Increased LVM was found in 4,255 individuals, with an average age of 64 ± 7 years. Of these patients, 2,447 (58%) were women. Through cluster analysis, four distinct subgroups were identified. Over a median follow-up period of 5 years (IQR: 4-6), 100 patients (2%) died, 118 (2.8%) were admissioned due to HF, 29 (0.7%) were admissioned due to VA, and 208 (5%) were admissioned due to AF. Univariate Cox analysis demonstrated significantly elevated risks of major events for patients in the 2nd (HR = 1.6; 95% CI 1.2-2.16;  < .001), 3rd (HR = 2.04; 95% CI 1.49-2.78;  < .001), and 4th (HR = 2.64; 95% CI 1.92-3.62;  < .001) clusters compared to the 1st cluster. Further exploration of each cluster revealed unique clinical phenotypes: Cluster 2 comprised mostly overweight women with a high prevalence of chronic lung disease; Cluster 3 consisted mostly of men with a heightened burden of comorbidities; and Cluster 4, mostly men, exhibited the most abnormal cardiac measures.

CONCLUSIONS

Unsupervised cluster analysis identified four outcomes-correlated clusters among patients with increased LVM. This phenotypic classification holds promise in offering valuable insights regarding clinical course and outcomes of patients with increased LVM.

摘要

背景

传统的左心室肥厚(LVH)分类依赖于左心室几何形状,与左心室质量(LVM)增加的患者的预后不相关。

目的

使用无监督聚类分析识别LVM增加患者的独特临床表型,并探讨它们与临床结局的关联。

方法

在英国生物银行参与者中,LVM增加定义为男性LVM指数≥72 g/m,女性LVM指数≥55 g/m。从数据库中收集基线人口统计学、临床和实验室数据。使用沃德最小方差法,根据27个变量对患者进行聚类。主要结局是全因死亡率与心力衰竭(HF)住院、室性心律失常和心房颤动(AF)的综合结果。应用Cox比例风险模型和Kaplan-Meier生存分析。

结果

在4255名个体中发现LVM增加,平均年龄为64±7岁。这些患者中,2447名(58%)为女性。通过聚类分析,识别出四个不同的亚组。在中位随访期5年(四分位间距:4-6年)内,100名患者(2%)死亡,118名(2.8%)因HF住院,29名(0.7%)因室性心律失常住院,208名(5%)因AF住院。单因素Cox分析显示,与第1组相比,第2组(HR=1.6;95%CI 1.2-2.16;P<0.001)、第3组(HR=2.04;95%CI 1.49-2.78;P<0.001)和第4组(HR=2.64;95%CI 1.92-3.62;P<0.001)患者发生主要事件的风险显著升高。对每个亚组的进一步探索揭示了独特的临床表型:第2组主要由超重女性组成,慢性肺病患病率高;第3组主要由合并症负担较重的男性组成;第4组主要是男性,表现出最异常的心脏指标。

结论

无监督聚类分析在LVM增加患者中识别出四个与结局相关的亚组。这种表型分类有望为LVM增加患者的临床病程和结局提供有价值的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/94ad/11402694/afbbc0794bdf/fcvm-11-1357305-g001.jpg

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