Echocardiography-based machine learning algorithm for distinguishing ischemic cardiomyopathy from dilated cardiomyopathy

被引:10
作者
Zhou, Mei [1 ]
Deng, Yongjian [1 ]
Liu, Yi [1 ]
Su, Xiaolin [2 ]
Zeng, Xiaocong [1 ,3 ,4 ,5 ]
机构
[1] Guangxi Med Univ, Dept Cardiol, Affiliated Hosp 1, 6 Shuangyong Rd, Nanning 530021, Guangxi, Peoples R China
[2] Minzu Hosp Guangxi Zhuang Autonomous Reg, Dept Cardiol, Nanning, Guangxi, Peoples R China
[3] Guangxi Key Lab Base Precis Med Cardiocerebrovasc, Nanning, Guangxi, Peoples R China
[4] Guangxi Clin Res Ctr Cardiocerebrovasc Dis, Nanning, Guangxi, Peoples R China
[5] Guangxi Med Univ, Sch Basic Med Sci, Nanning, Guangxi, Peoples R China
关键词
Machine learning; Heart failure; Ischemic cardiomyopathy; Dilated cardiomyopathy; Echocardiography; CORONARY-ARTERY-DISEASE; COMPUTED-TOMOGRAPHY; HEART-FAILURE; DEFINITION; MANAGEMENT; VIABILITY; DIAGNOSIS;
D O I
10.1186/s12872-023-03520-4
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BackgroundMachine learning (ML) can identify and integrate connections among data and has the potential to predict events. Heart failure is primarily caused by cardiomyopathy, and different etiologies require different treatments. The present study examined the diagnostic value of a ML algorithm that combines echocardiographic data to automatically differentiate ischemic cardiomyopathy (ICM) from dilated cardiomyopathy (DCM).MethodsWe retrospectively collected the echocardiographic data of 200 DCM patients and 199 ICM patients treated in the First Affiliated Hospital of Guangxi Medical University between July 2016 and March 2022. All patients underwent invasive coronary angiography for diagnosis of ICM or DCM. The data were randomly divided into a training set and a test set via 10-fold cross-validation. Four ML algorithms (random forest, logistic regression, neural network, and XGBoost [ML algorithm under gradient boosting framework]) were used to generate a training model for the optimal subset, and the parameters were optimized. Finally, model performance was independently evaluated on the test set, and external validation was performed on 79 patients from another center.ResultsCompared with the logistic regression model (area under the curve [AUC] = 0.925), neural network model (AUC = 0.893), and random forest model (AUC = 0.900), the XGBoost model had the best identification rate, with an average sensitivity of 72% and average specificity of 78%. The average accuracy was 75%, and the AUC of the optimal subset was 0.934. External validation produced an AUC of 0.804, accuracy of 78%, sensitivity of 64% and specificity of 93%.ConclusionsWe demonstrate that utilizing advanced ML algorithms can help to differentiate ICM from DCM and provide appreciable precision for etiological diagnosis and individualized treatment of heart failure patients.
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页数:10
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