Machine learning may personalize care for patients with severe cardiomyopathy

2019-06-14




Machine learning trained on heart imaging data can effectively predict one-year cardiovascular events in patients with a severe form of cardiomyopathy, according to a latest study completed by scientists of SCUT and their colleagues.

The research was published by the European Journal of Radiology this week, listing Yu Zhuliang of SCUT’s School of Automation Science and Engineering and Liu Hui of SCUT’s Affiliated Guangdong General Hospital (GGH) as correspondence authors, and Chen Rui of the GGH as the lead author.

Dilated cardiomyopathy (DCM) is associated with a 5-year mortality rate as high as 20%, and machine learning (ML) has been used to predict events in patients with coronary artery disease, acute myocardial infarction and pulmonary hypertension.

With this in mind, the above researchers created and performed 10-fold cross-validation on a ML-based risk model using features taken from baseline, laboratory, electrocardiography (ECG), echocardiography and cardiovascular resonance (CMR) imaging data to predict 1-year outcomes in patients with severe DCM.

The ML model was created based on data from 98 patients (18 years or older) who were diagnosed with severe DCM (left ventricular ejection fraction greater than 35%) at one of two hospitals between October 2014 and March 2017.

In total, 32 clinical data features were input, with those highly relevant to the cardiovascular events chosen by information gain (IG), which measures how much information a feature provides for classification.

Twenty-two patients met the one-year end-point criteria—defined as any cardiovascular events—and the machine learning platform performed well, according to the researchers, achieving an area under the curve (AUC) of the receiver operating characteristics of 0.887. The top features selected by the IG included left atrial size, QRS duration and systolic blood pressure.

In fact, ML recorded a higher AUC score than left ventricular ejection fraction (0.504) and Meta-analysis Global Group in Chronic Heart Failure (MAGGIC) score (0.599), also used to predict mortality in patients with DCM, the authors noted.

Machine learning also had a higher specificity and sensitivity compared to both LVEF and MAGGIC.

“A new (DCM) risk-predicting system with better predictive performance is still needed. To build such a system, ML is a useful tool, because it can handle a large number of features and better focus on predicting events in each individual,” the authors wrote. “Indeed, it achieved better performance than LVEF and MAGGIC Score in the present study.”

They also believe their model will be easy to apply to other institutions and may help clinicians with risk stratification and individual patient management, they concluded.


Reproduced from Health Imaging
Compiled by Xu Peimu
Edited by Xu Peimu and Wang Manjie
From the SCUT News Network

返回原图
/