Açık Akademik Arşiv Sistemi

A New Medical Decision Support System for Diagnosing HFrEF and HFpEF Using ECG and Machine Learning Techniques

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dc.contributor.authors Kavas, Pinar Ozen; Bozkurt, Mehmet Recep; Kocayigit, Ibrahim; Bilgin, Cahit
dc.date.accessioned 2023-01-24T12:08:40Z
dc.date.available 2023-01-24T12:08:40Z
dc.date.issued 2022
dc.identifier.issn 2169-3536
dc.identifier.uri http://dx.doi.org/10.1109/ACCESS.2022.3213065
dc.identifier.uri https://hdl.handle.net/20.500.12619/99538
dc.description Bu yayın 06.11.1981 tarihli ve 17506 sayılı Resmî Gazete’de yayımlanan 2547 sayılı Yükseköğretim Kanunu’nun 4/c, 12/c, 42/c ve 42/d maddelerine dayalı 12/12/2019 tarih, 543 sayılı ve 05 numaralı Üniversite Senato Kararı ile hazırlanan Sakarya Üniversitesi Açık Bilim ve Açık Akademik Arşiv Yönergesi gereğince telif haklarına uygun olan nüsha açık akademik arşiv sistemine açık erişim olarak yüklenmiştir.
dc.description.abstract As heart failure (HF) appears to be a growing epidemic, no case should be overlooked in the diagnosis of HF. Two subtypes of HF by left ventricular ejection fraction (LVEF) are HF with reduced ejection fraction (HFrEF) (LVEF <= 40%) and HF with preserved ejection fraction (HFpEF) (LVEF >= 50%). HFrEF is easier to diagnose. However, the diagnosis of HFpEF is more complex and difficult even for specialists. The diagnosis of HFpEF is a problem that is being tried to be solved in medicine. Since LVEF appears normal (LVEF >= 50% also in healthy individuals), HFpEF can be confused with chest diseases due to some similar symptoms. The diagnosis of HF subtypes is ideally made using echocardiography. Echocardiography should be performed in all patients with HF; however, it is expensive and requires specialists. Even in high-resource regions, this test is not always performed, and treatment may need to be initiated before the echocardiographic data are obtained. For such situations, economical and practical systems are required. In this study, a medical decision support system was developed to detect HFrEF and HFpEF cases using only 3-lead ECG. From the ECG data of 61 volunteers, 37 features were extracted, of which 16 were Yule-Walker and Burg's method parameters, and 21 were in the time domain. Consequently, 37 features were reduced by feature selection and triple classification was performed with only 4 features with maximum accuracy. This study aimed to determine whether the individuals with HF symptoms were HFrEF, HFpEF, or healthy. Four machine learning algorithms were used for classification. The best classification accuracy rate was 100% for k-NN, and significant results were also obtained from the other three algorithms: SVMs, Decision Trees, and Ensemble Bagged Trees.
dc.language English
dc.language.iso eng
dc.publisher IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
dc.relation.isversionof 10.1109/ACCESS.2022.3213065
dc.subject Computer Science
dc.subject Engineering
dc.subject Telecommunications
dc.subject Artificial intelligence
dc.subject classification
dc.subject electrocardiography
dc.subject heart failure
dc.subject HFpEF
dc.subject HFrEF
dc.title A New Medical Decision Support System for Diagnosing HFrEF and HFpEF Using ECG and Machine Learning Techniques
dc.type Article
dc.contributor.authorID Özen, Pınar/0000-0001-9884-2860
dc.contributor.authorID Kocayigit, ibrahim/0000-0001-8295-9837
dc.contributor.authorID BILGIN, CAHIT/0000-0003-2213-5881
dc.identifier.volume 10
dc.identifier.startpage 107283
dc.identifier.endpage 107292
dc.relation.journal IEEE ACCESS
dc.identifier.doi 10.1109/ACCESS.2022.3213065
dc.contributor.author Kavas, Pinar Ozen
dc.contributor.author Bozkurt, Mehmet Recep
dc.contributor.author Kocayigit, Ibrahim
dc.contributor.author Bilgin, Cahit
dc.relation.publicationcategory Makale - Uluslararası Hakemli Dergi - Kurum Öğretim Elemanı
dc.rights.openaccessdesignations gold


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