Machine-Learning Algorithms to Automate Morphological and Functional Assessments in 2D Echocardiography

被引:281
作者
Narula, Sukrit [1 ]
Shameer, Khader [2 ]
Omar, Alaa Mabrouk Salem [1 ,3 ]
Dudley, Joel T. [2 ]
Sengupta, Partho P. [1 ]
机构
[1] Icahn Sch Med Mt Sinai, Zena & Michael A Weiner Cardiovasc Inst, New York, NY 10029 USA
[2] Mt Sinai Hlth Syst, Dept Genet & Genom Sci, Inst Next Generat Healthcare, New York, NY USA
[3] Natl Res Ctr, Div Med, Dept Internal Med, Cairo, Egypt
基金
美国国家卫生研究院;
关键词
cardiomyopathy; decision; support systems; left ventricular; hypertrophy; speckle-tracking echocardiography; LEFT-VENTRICULAR HYPERTROPHY; PROTEIN-SEQUENCE; HEART-FAILURE; CARDIOMYOPATHY; ASSOCIATION; DIAGNOSIS; TRACKING; FEATURES;
D O I
10.1016/j.jacc.2016.08.062
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BACKGROUND Machine-learning models may aid cardiac phenotypic recognition by using features of cardiac tissue deformation. OBJECTIVES This study investigated the diagnostic value of a machine-learning framework that incorporates speckle-tracking echocardiographic data for automated discrimination of hypertrophic cardiomyopathy (HCM) from physiological hypertrophy seen in athletes (ATH). METHODS Expert-annotated speckle-tracking echocardiographic datasets obtained from 77 ATH and 62 HCM patients were used for developing an automated system. An ensemble machine-learning model with 3 different machine-learning algorithms (support vector machines, random forests, and artificial neural networks) was developed and a majority voting method was used for conclusive predictions with further K-fold cross-validation. RESULTS Feature selection using an information gain (IG) algorithm revealed that volume was the best predictor for differentiating between HCM ands. ATH (IG = 0.24) followed by mid-left ventricular segmental (IG = 0.134) and average longitudinal strain (IG = 0.131). The ensemble machine-learning model showed increased sensitivity and specificity compared with early-to-late diastolic transmitral velocity ratio (p < 0.01), average early diastolic tissue velocity (e') (p < 0.01), and strain (p = 0.04). Because ATH were younger, adjusted analysis was undertaken in younger HCM patients and compared with ATH with left ventricular wall thickness >13 mm. In this subgroup analysis, the automated model continued to show equal sensitivity, but increased specificity relative to early-to-late diastolic transmitral velocity ratio, e', and strain. CONCLUSIONS Our results suggested that machine-learning algorithms can assist in the discrimination of physiological versus pathological patterns of hypertrophic remodeling. This effort represents a step toward the development of a real-time, machine-learning-based system for automated interpretation of echocardiographic images, which may help novice readers with limited experience. (C) 2016 by the American College of Cardiology Foundation.
引用
收藏
页码:2287 / 2295
页数:9
相关论文
共 31 条
[1]  
[Anonymous], 2016, CIRC CARDIOVASC IMAG
[2]   Support vector machine-based arrhythmia classification using reduced features of heart rate variability signal [J].
Asl, Babak Mohammadzadeh ;
Setarehdan, Seyed Kamaledin ;
Mohebbi, Maryam .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2008, 44 (01) :51-64
[3]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[4]   Sudden Cardiac Death in Young Athletes [J].
Chandra, Navin ;
Bastiaenen, Rachel ;
Papadakis, Michael ;
Sharma, Sanjay .
JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 2013, 61 (10) :1027-1040
[5]   Machine Learning and the Profession of Medicine [J].
Darcy, Alison M. ;
Louie, Alan K. ;
Roberts, Laura Weiss .
JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2016, 315 (06) :551-552
[6]   Data mining in bioinformatics using Weka [J].
Frank, E ;
Hall, M ;
Trigg, L ;
Holmes, G ;
Witten, IH .
BIOINFORMATICS, 2004, 20 (15) :2479-2481
[7]   2011 ACCF/AHA Guideline for the Diagnosis and Treatment of Hypertrophic Cardiomyopathy: Executive Summary: A Report of the American College of Cardiology Foundation/American Heart Association Task Force on Practice Guidelines [J].
Gersh, Bernard J. ;
Maron, Barry J. ;
Bonow, Robert O. ;
Dearani, Joseph A. ;
Fifer, Michael A. ;
Link, Mark S. ;
Naidu, Srihari S. ;
Nishimura, Rick A. ;
Ommen, Steve R. ;
Rakowski, Harry ;
Seidman, Christine E. ;
Towbin, Jeffrey A. ;
Udelson, James E. ;
Yancy, Clyde W. .
JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 2011, 58 (25) :2703-2738
[8]  
Hall M., 2009, SIGKDD EXPLORATIONS, V11, P10, DOI [DOI 10.1145/1656274.1656278, 10.1145/1656274.1656278]
[9]  
Haykin S., 1998, Neural Networks: A. Comprehensive Foundation
[10]   Forecasting the Impact of Heart Failure in the United States A Policy Statement From the American Heart Association [J].
Heidenreich, Paul A. ;
Albert, Nancy M. ;
Allen, Larry A. ;
Bluemke, David A. ;
Butler, Javed ;
Fonarow, Gregg C. ;
Ikonomidis, John S. ;
Khavjou, Olga ;
Konstam, Marvin A. ;
Maddox, Thomas M. ;
Nichol, Graham ;
Pham, Michael ;
Pina, Ileana L. ;
Trogdon, Justin G. .
CIRCULATION-HEART FAILURE, 2013, 6 (03) :606-619