Multi-class 12-lead ECG automatic diagnosis based on a novel subdomain adaptive deep network  被引量:4

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作  者:JIN YanRui LI ZhiYuan LIU YunQing LIU JinLei QIN Chengjin ZHAO LiQun LIU ChengLiang 

机构地区:[1]State Key Laboratory of Mechanical System and Vibration,School of Mechanical Engineering,Shanghai Jiao Tong University,Shanghai 200240,China [2]Department of Cardiology Shanghai First People's Hospital Afiliated to Shanghai Jiao Tong University,Shanghai 200080,China

出  处:《Science China(Technological Sciences)》2022年第11期2617-2630,共14页中国科学(技术科学英文版)

基  金:supported by the National Key R&D Program of China(Grant No.2018YFB1307005);the State Key Laboratory of Mechanical System and Vibration(Grant No.MSVZD202103);Shanghai Municipal Science and Technology Major Project(Grant No.2021SHZDZX0102)。

摘  要:Arrhythmia is a common type of cardiovascular disease,which has become the leading cause of global deaths.Recently,the automatic 12-lead ECG diagnosis system based on numerous labelled data has attracted increasing attention.However,labelling 12-lead ECG recordings is a complex and time-consuming task for clinicians.And then,the existence of data distribution differences limits the direct cross domain use of the trained model.Enlighted by subdomain adaptation methods,this paper designs a novel subdomain adaptative deep network(SADN)for excavating diagnosis knowledge from source domain datasets.Firstly,the convolutional layer,residual blocks and SE-Residual blocks are utilized for extracting meaningful deep features automatically.Additionally,the feature classifier uses these deep features for obtaining the final diagnosis predictions.Further,designing a novel loss function with local maximum mean discrepancy is utilized for restricting data distribution discrepancy from different datasets.Finally,the Clinical Outcomes in Digital ECG and 1st China Physiological Signal Challenge datasets are utilized for evaluating the superiority of SADN,which presents that SADN enhances algorithm performance on the unlabelled target domain dataset.Further,compared with the existing methods,the proposed network structure acquires better performance with a F1-macro of 89.43%and a F1-macro1 of 87.09%.Besides,among the 4 kinds of ECG abnormalities,the diagnostic effect of the SADN is better than that of cardiology residents.Thus,SADN has promising potential as an auxiliary diagnostic tool for the clinical environment.

关 键 词:arrhythmia detection subdomainadaptation deep network 12-lead ECG 

分 类 号:R540.41[医药卫生—心血管疾病] TN911.7[医药卫生—内科学]

 

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