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

被引:1
作者
Segar, Matthew W. [1 ]
Usman, Muhammad Shariq [2 ]
Patel, Kershaw V. [3 ]
Khan, Muhammad Shahzeb [4 ]
Butler, Javed [5 ,6 ]
Manjunath, Lakshman [7 ]
Lam, Carolyn S. P. [8 ,9 ]
Verma, Subodh [10 ]
Willett, DuWayne [2 ]
Kao, David [11 ]
Januzzi, James L. [12 ]
Pandey, Ambarish [2 ]
机构
[1] Texas Heart Inst, Dept Cardiol, Houston, TX USA
[2] Univ Texas Southwestern Med Ctr, Dept Internal Med, Div Cardiol, Dallas, TX USA
[3] Houston Methodist DeBakey Heart & Vasc Ctr, Dept Cardiol, Houston, TX USA
[4] Duke Univ, Dept Cardiol, Durham, NC USA
[5] Univ Mississippi, Med Ctr, Dept Med, Jackson, MS USA
[6] Baylor Scott & White Hlth Syst, Baylor Scott & White Res Inst, Dallas, TX USA
[7] Baylor Scott & White Med Ctr, Dept Cardiol, Dallas, TX USA
[8] Natl Heart Ctr Singapore, Singapore, Singapore
[9] Duke Natl Univ Singapore, Singapore, Singapore
[10] Univ Toronto, St Michaels Hosp, Toronto, ON, Canada
[11] Univ Colorado, Sch Med, Dept Internal Med, Div Cardiol, Denver, CO USA
[12] Harvard Med Sch, Massachusetts Gen Hosp, Baim Inst Clin Res, Boston, MA USA
关键词
Diabetic cardiomyopathy; Heart failure; Type 2 diabetes mellitus; HEART-FAILURE RISK; ATHEROSCLEROSIS RISK; ARTIFICIAL-INTELLIGENCE; EUROPEAN ASSOCIATION; NATRIURETIC PEPTIDE; AMERICAN SOCIETY; OUTCOMES; UPDATE; ECHOCARDIOGRAPHY; RECOMMENDATIONS;
D O I
10.1002/ejhf.3443
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
AimsAbnormalities 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 resultsAmong 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).ConclusionMachine 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. Development and validation of a machine-learning approach to identify diabetic cardiomyopathy. A, A velocity; ARIC, Atherosclerosis Risk in Communities; CHS, Cardiovascular Health Study; CVD, cardiovascular disease; DbCM, diabetic cardiomyopathy; DeepNN, deep neural network; E, E velocity; EHR, electronic health record; HF, heart failure; LA, left atrial; LVEDV, left ventricular end-diastolic volume; LV, left ventricular; NT-proBNP, N-terminal pro-B-type natriuretic peptide; T2D, type 2 diabetes; UTSW, University of Texas Southwestern. image
引用
收藏
页码:2183 / 2192
页数:10
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