CORONARY HEART DISEASE CLASSIFICATION USING IMPROVED PENGUIN EMPEROR OPTIMIZATION-BASED LONG SHORT TERM MEMORY NETWORK

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY IIUM Engineering Journal Pub Date : 2023-07-04 DOI:10.31436/iiumej.v24i2.2698
Rajeshwari Maramgere Ramaiah, Kavitha Kuntaegowdanalli Srikantegowda
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Abstract

Ventricular fibrillation (VF) is the most life-threatening and dangerous type of Cardiac Arrhythmia (CA), with a mortality rate of 10-15% in a year. Therefore, early detection of cardiac arrhythmia is important to reduce the mortality rate. Many machine learning algorithms have been proposed and have proven their usefulness in the classification and detection of heart problems. In this research manuscript, a novel Long Short Term Memory (LSTM) classifier with Improved Penguin Optimization (IPEO) is implemented for VF classification. The IPEO is used in finding optimal hyperparameters that overcome the overfitting problem. The presented model is tested, trained, and validated using two standard datasets that are available publicly: Massachusetts Institute of Technology-Beth Israel Hospital (MIT-BIH) and the China Physiological Signal Challenge (CPSC) 2018 dataset. Both of them consist of ECG recordings for five seconds of coronary heart disease (CHD) patients. Furthermore, Fuzzy C-Means and Enhanced Fuzzy Rough Set method (FCM-ETIFRST) are used for feature selection to extract informative features and to cluster membership degree, non-membership degree, and hesitancy degree. On the MIT-BIH dataset, the proposed model achieved accuracy, sensitivity, specificity, precision, and Matthews’s correlation coefficient (MCC) of 99.75%, 98.29%, 98.39%, 98.35%, and 97.79% respectively. On the CPSC 2018 dataset, the proposed model achieved accuracy of 99.79%, sensitivity of 99.11%, specificity of 98.20%, precision of 99.43%, and MCC of 98.57%. Hence, the results proved that the proposed method provides better results in the classification of VF. ABSTRAK:  Pemfibrilan Ventrikel (VF) adalah ancaman nyawa nombor satu dan jenis Aritmia Jantung (CA) berbahaya dengan kadar kematian 10-15% setahun. Oleh itu, pengesanan awal Aritmia Jantung sangat penting bagi mengurangkan kadar kematian. Terdapat banyak algoritma pembelajaran mesin yang telah dicadangkan dan terbukti berkesan dalam pengelasan dan pengesanan sakit jantung. Kajian ini mencadangkan kaedah baru pengelasan Memori Ingatan Jangka Panjang Pendek (LSTM) dengan Pengoptimuman Penambahbaikan Penguin (IPEO) yang dilaksanakan bagi  klasifikasi VF.  IPEO digunakan bagi mencari hiperparameter yang dapat mengatasi masalah padanan berlebihan. Model yang dicadangkan diuji, dilatih dan disahkan menggunakan dua dataset piawai yang dapat diperoleh secara terbuka: Institut Teknologi Hospital Massachusetts-Beth Israel (MIT-BIH) dan Cabaran Signal Psikologi Cina  2018 (CPSC). Kedua-dua data ini mempunyai rakaman ECG selama lima saat daripada pesakit Penyakit Jantung Koronari (CHD). Malah, kajian itu turut menggunakan Purata-C Kabur dan Kaedah Set Kasar Kabur Dipertingkat (FCM-ETIFRST) untuk pemilihan bagi mengekstrak ciri-ciri dan mengelaskan kelompok tahap keahlian, bukan ahli dan tahap keraguan. Bagi dataset MIT-BIH, model yang dicadangkan mencapai ketepatan, tahap sensitif, tahap spesifik, kejituan dan pekali kaitan Matthews (MCC) sebanyak 99.75%, 98.29%, 98.39%, 98.35%, dan 97.79% masing-masing. Bagi dataset CPSC 2018 pula, model yang dicadangkan mencapai ketepatan sebanyak 99.79%, 99.11% tahap sensitif , 98.20% tahap spesifik, 99.43% kejituan dan 98.57% MCC. Oleh itu, dapatan kajian membuktikan kaedah yang dicadangkan menunjukkan keputusan lebih baik dalam pengelasan VF.
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基于改进企鹅帝优化的长短期记忆网络的冠心病分类
心室颤动(VF)是最危及生命和最危险的心律失常(CA)类型,每年死亡率为10-15%。因此,早期发现心律失常对降低死亡率至关重要。许多机器学习算法已经被提出并证明了它们在心脏问题的分类和检测方面的有用性。本文提出了一种基于改进企鹅优化(IPEO)的长短期记忆(LSTM)分类器用于VF分类。IPEO用于寻找克服过拟合问题的最优超参数。本模型使用两个公开的标准数据集进行测试、训练和验证:麻省理工学院-贝斯以色列医院(MIT-BIH)和中国生理信号挑战(CPSC) 2018数据集。两者都是由冠心病(CHD)患者5秒的心电图记录组成。采用模糊c均值和增强模糊粗糙集方法(FCM-ETIFRST)进行特征选择,提取信息特征,并对聚类隶属度、非隶属度和犹豫度进行分析。在MIT-BIH数据集上,该模型的准确率、灵敏度、特异性、精密度和马修斯相关系数(MCC)分别为99.75%、98.29%、98.39%、98.35%和97.79%。在CPSC 2018数据集上,该模型的准确率为99.79%,灵敏度为99.11%,特异性为98.20%,精度为99.43%,MCC为98.57%。结果表明,本文提出的方法在VF分类中具有较好的效果。摘要:Pemfibrilan Ventrikel (VF) adalah and aman nyawa nombor satu and jenis aria Jantung (CA) berbahaya dengan kadar kematian 10-15% setahun。我的意思是,我的意思是,我的意思是,我的意思是,我的意思是,我的意思是我的意思。Terdapat banyak算法pembelajaran mesin yang telah dicadangkan dan terbukti berkesan dalam pengesan dan pengesanan sakit jandong。Kajian ini mencadangkan kaedah baru pengelasan Memori Ingatan Jangka Panjang Pendek (LSTM) dengan Pengoptimuman Penambahbaikan Penguin (IPEO) yang dilaksanakan bagi klasifikasi VF。IPEO digunakan bagi menencari高参数yang dapat mengatasi masalah padanan berlebihan。模型杨dicadangkan diuji,扩展dan disahkan menggunakan dua数据集piawai yang dapat diperoleh secara terbuka:麻省理工学院医院-以色列贝斯(MIT-BIH)和Cabaran信号心理学中国2018 (CPSC)。心电数据,心电数据,心电数据,心电数据,心电数据,心电数据。Malah, katjian itu turut menggunakan Purata-C Kabur dan Kaedah Set Kasar Kabur Dipertingkat (FCM-ETIFRST) untuk pemilihan bagi mengekstrak ciri-ciri danmengelaskan kelompok taha keahlian, bukan ahli dantaha keraguan。Bagi数据集MIT-BIH,模型yang dicadangkan mencapai ketepatan, tahap sensitif, tahap spespeik, kejituan dan pekali kaitan Matthews (MCC) sebanyak 99.75%, 98.29%, 98.39%, 98.35%, dan masing-masing 97.79%。Bagi数据集CPSC 2018 pula,模型yang dicadangkan mencapai ketepatan sebanyak 99.79%, tahap敏感性99.11%,tahap特异性98.20%,kejituan 99.43%, MCC 98.57%。Oleh itu, dapatan kajian membuktikan kaedah yang dicadangkan menunjukkan keputusan lebih baik dalam pengelasan VF。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IIUM Engineering Journal
IIUM Engineering Journal ENGINEERING, MULTIDISCIPLINARY-
CiteScore
2.10
自引率
20.00%
发文量
57
审稿时长
40 weeks
期刊介绍: The IIUM Engineering Journal, published biannually (June and December), is a peer-reviewed open-access journal of the Faculty of Engineering, International Islamic University Malaysia (IIUM). The IIUM Engineering Journal publishes original research findings as regular papers, review papers (by invitation). The Journal provides a platform for Engineers, Researchers, Academicians, and Practitioners who are highly motivated in contributing to the Engineering disciplines, and Applied Sciences. It also welcomes contributions that address solutions to the specific challenges of the developing world, and address science and technology issues from an Islamic and multidisciplinary perspective. Subject areas suitable for publication are as follows: -Chemical and Biotechnology Engineering -Civil and Environmental Engineering -Computer Science and Information Technology -Electrical, Computer, and Communications Engineering -Engineering Mathematics and Applied Science -Materials and Manufacturing Engineering -Mechanical and Aerospace Engineering -Mechatronics and Automation Engineering
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