Prediction analytics of myocardial infarction through model-driven deep deterministic learning

被引:0
作者
Uzair Iqbal
Teh Ying Wah
Muhammad Habib ur Rehman
Jamal Hussain Shah
机构
[1] National University of Modern Languages,Department of Software Engineering
[2] University of Malaya,Department of Information Systems, Faculty of Computer Science and Information Technology
[3] National University of Computer and Emerging Sciences,Department of Computer Science
[4] COMSATS University Islamabad (Wah Campus),Department of Computer Science
来源
Neural Computing and Applications | 2020年 / 32卷
关键词
Deep learning; Deep deterministic learning; Electrocardiography; Myocardial infarction; Prediction analysis; Artificial neural network;
D O I
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中图分类号
学科分类号
摘要
Electrocardiography is the primary diagnostic tool for measuring the malfunction of different heart activities in the form of various cardiac diseases. Some cardiac diseases require special attention due to the urgency and risk factors involved. Myocardial infarction (MI) is one of the cardiac diseases that require robust identification. Early prediction in MI cases without prior history remains to be an ongoing challenge. This article delivers a major novel contribution in the context of predictive classification of flattened T-wave MI cases. Therefore, a novel model-driven deep deterministic learning (MDDDL) approach is proposed. In MDDDL, two different data sets are used for the execution of operational activities in terms of flattened T-wave predictive classification. The first data set is the publicly available Physikalisch-Technische Bundesanstalt (PTB), and the second data set is exclusively obtained from the University of Malaya Medical Centre (UMMC). Firstly, the systematic behaviour of MDDDL is defined in terms of pattern recognition of extracted features between T-wave alternans and flattened T-wave subjects, and then both data sets are merged considering data fusion approach and pre-defined conditions. Afterwards, the empirical approach is adopted in MDDDL evaluation in relation to global acceptance and state-of-the-art comparison. Finally, some qualitative improvements, such as inclusion of a backtracking factor for rapid prediction of flattened anomalies and increasing the number of features along with enhancement of fusion processes to reduce complexity, are required by the MDDDL and should be covered in future works.
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页码:15909 / 15928
页数:19
相关论文
共 101 条
[1]  
Li B(2017)Applications of artificial intelligence in intelligent manufacturing: a review Front Inf Technol Electron Eng 18 86-96
[2]  
Hou B(2018)HERMIT: a benchmark suite for the internet of medical things IEEE Internet Things J 5 4212-4222
[3]  
Yu W(2017)Deep learning for healthcare: review, opportunities and challenges Brief Bioinform 19 1236-1246
[4]  
Lu X(2017)Deep learning for health informatics IEEE J Biomed Health Inform 21 4-21
[5]  
Yang C(2017)Effective feature extraction of ECG for biometric application Procedia Comput Sci 115 296-306
[6]  
Limaye A(2018)Usage of model driven environment for the classification of ECG features: a systematic review IEEE Access 6 23120-23136
[7]  
Adegbija T(2015)Air versus oxygen in ST-segment elevation myocardial infarction Circulation 131 2143-2150
[8]  
Miotto R(2017)Benchmarking of a T-wave alternans detection method based on empirical mode decomposition Comput Methods Programs Biomed 145 147-155
[9]  
Wang F(2018)Special topic: machine learning Natl Sci Rev 5 22-24
[10]  
Wang S(2018)Deep deterministic learning for pattern recognition of different cardiac diseases through the internet of medical things J Med Syst 42 252-198