开发并验证基于机器学习的高风险糖尿病心肌病表型识别方法。

IF 16.9 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS European Journal of Heart Failure Pub Date : 2024-09-06 DOI:10.1002/ejhf.3443
Matthew W. Segar, Muhammad Shariq Usman, Kershaw V. Patel, Muhammad Shahzeb Khan, Javed Butler, Lakshman Manjunath, Carolyn S.P. Lam, Subodh Verma, DuWayne Willett, David Kao, James L. Januzzi, Ambarish Pandey
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引用次数: 0

摘要

目的:据报道,糖尿病患者的特定超声心动图参数和心脏生物标志物存在异常。然而,糖尿病心肌病(DbCM)是心肌异常的亚临床阶段,发生于临床心力衰竭(HF)之前,目前还缺乏对其综合特征的描述。在这项研究中,我们开发并验证了一种基于机器学习的聚类方法,该方法可根据超声心动图和心脏生物标志物参数识别高风险 DbCM 表型:在社区动脉粥样硬化风险(ARIC)队列中没有心血管疾病和其他潜在心肌病病因的糖尿病患者中(训练,n = 1199),使用超声心动图参数和神经激素应激和慢性心肌损伤的心脏生物标志物(共 25 个变量)进行无监督分层聚类。根据随访中心房颤动的发生率确定了高风险 DbCM 表型。开发了一种深度神经网络(DeepNN)分类器来预测ARIC训练队列中的DbCM,并在外部社区队列(心血管健康研究[CHS];n = 802)和电子健康记录(EHR)队列(n = 5071)中进行了验证。在衍生队列中,聚类确定了三个表型组。表型组 3(n = 324,占队列的 27%)的 5 年房颤发病率明显高于其他表型组(12.1% vs. 4.6% [表型组 2] vs. 3.1% [表型组 1]),被确定为高风险 DbCM 表型。高风险 DbCM 表型的主要超声心动图预测指标是较高的 NT-proBNP 水平、左室质量和左房大小增加以及舒张功能变差。在 CHS 和德克萨斯大学 (UT) Southwestern EHR 验证队列中,DeepNN 分类器分别识别出了 16% 和 29% 的 DbCM 患者。外部验证队列中具有(与不具有)高风险 DbCM 表型的参与者的心房颤动发病率明显更高(CHS 的危险比 [95% 置信区间] 为 1.61 [1.18-2.19],UT Southwestern EHR 队列的危险比为 1.34 [1.08-1.65]):基于机器学习的技术可以识别出 16% 到 29% 的糖尿病患者具有高风险 DbCM 表型,他们可能会从更积极地实施高血压预防策略中获益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Development and validation of a machine learning-based approach to identify high-risk diabetic cardiomyopathy phenotype

Aims

Abnormalities in specific echocardiographic parameters and cardiac biomarkers have been reported among individuals with diabetes. However, a comprehensive characterization of diabetic cardiomyopathy (DbCM), a subclinical stage of myocardial abnormalities that precede the development of clinical heart failure (HF), is lacking. In this study, we developed and validated a machine learning-based clustering approach to identify the high-risk DbCM phenotype based on echocardiographic and cardiac biomarker parameters.

Methods and results

Among individuals with diabetes from the Atherosclerosis Risk in Communities (ARIC) cohort who were free of cardiovascular disease and other potential aetiologies of cardiomyopathy (training, n = 1199), unsupervised hierarchical clustering was performed using echocardiographic parameters and cardiac biomarkers of neurohormonal stress and chronic myocardial injury (total 25 variables). The high-risk DbCM phenotype was identified based on the incidence of HF on follow-up. A deep neural network (DeepNN) classifier was developed to predict DbCM in the ARIC training cohort and validated in an external community-based cohort (Cardiovascular Health Study [CHS]; n = 802) and an electronic health record (EHR) cohort (n = 5071). Clustering identified three phenogroups in the derivation cohort. Phenogroup-3 (n = 324, 27% of the cohort) had significantly higher 5-year HF incidence than other phenogroups (12.1% vs. 4.6% [phenogroup 2] vs. 3.1% [phenogroup 1]) and was identified as the high-risk DbCM phenotype. The key echocardiographic predictors of high-risk DbCM phenotype were higher NT-proBNP levels, increased left ventricular mass and left atrial size, and worse diastolic function. In the CHS and University of Texas (UT) Southwestern EHR validation cohorts, the DeepNN classifier identified 16% and 29% of participants with DbCM, respectively. Participants with (vs. without) high-risk DbCM phenotype in the external validation cohorts had a significantly higher incidence of HF (hazard ratio [95% confidence interval] 1.61 [1.18–2.19] in CHS and 1.34 [1.08–1.65] in the UT Southwestern EHR cohort).

Conclusion

Machine learning-based techniques may identify 16% to 29% of individuals with diabetes as having a high-risk DbCM phenotype who may benefit from more aggressive implementation of HF preventive strategies.

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来源期刊
European Journal of Heart Failure
European Journal of Heart Failure 医学-心血管系统
CiteScore
27.30
自引率
11.50%
发文量
365
审稿时长
1 months
期刊介绍: European Journal of Heart Failure is an international journal dedicated to advancing knowledge in the field of heart failure management. The journal publishes reviews and editorials aimed at improving understanding, prevention, investigation, and treatment of heart failure. It covers various disciplines such as molecular and cellular biology, pathology, physiology, electrophysiology, pharmacology, clinical sciences, social sciences, and population sciences. The journal welcomes submissions of manuscripts on basic, clinical, and population sciences, as well as original contributions on nursing, care of the elderly, primary care, health economics, and other related specialist fields. It is published monthly and has a readership that includes cardiologists, emergency room physicians, intensivists, internists, general physicians, cardiac nurses, diabetologists, epidemiologists, basic scientists focusing on cardiovascular research, and those working in rehabilitation. The journal is abstracted and indexed in various databases such as Academic Search, Embase, MEDLINE/PubMed, and Science Citation Index.
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