Implementation of Portable Ultrasound for Heart Disease Detection Using Cloud Computing-Based Machine Learning
Heart disease remains one of the leading causes of death globally, including in Indonesia. Cardiovascular disease is the leading cause of death worldwide, resulting in a significant number of fatalities. In Indonesia, access to specialized heart examination services is limited, requiring patients t...
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Politeknik Elektronika Negeri Surabaya
2025-01-01
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Series: | Emitter: International Journal of Engineering Technology |
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Online Access: | http://emitter2.pens.ac.id/ojs/index.php/emitter/article/view/904 |
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author | Riyanto Sigit Rika Rokhana Setiawardhana Taufiq Hidayat Anwar Jovan Josafat Jaenputra |
author_facet | Riyanto Sigit Rika Rokhana Setiawardhana Taufiq Hidayat Anwar Jovan Josafat Jaenputra |
author_sort | Riyanto Sigit |
collection | DOAJ |
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Heart disease remains one of the leading causes of death globally, including in Indonesia. Cardiovascular disease is the leading cause of death worldwide, resulting in a significant number of fatalities. In Indonesia, access to specialized heart examination services is limited, requiring patients to visit large hospitals equipped with specialized facilities. Echocardiographic examinations using ultrasound can measure various heart parameters, such as hemodynamics, heart mass, and myocardial deformation. Portable ultrasound devices have emerged, enabling flexible and effective heart examinations. These devices capture video data of the patient's heart condition. The data undergoes image preprocessing involving median filtering, high-boost filtering, morphological operations, thresholding, and Canny filtering. Segmentation is performed using region filters, collinear filters, and triangle equations. Tracking utilizes the Optical Flow Lucas-Kanade method, and feature extraction employs Euclidean distance and trigonometric equations. The classification stage uses Support Vector Machine (SVM). Video data is transmitted via a mobile application to the cloud, where all stages from preprocessing to classification are conducted on cloud servers. The classification results are then sent back to the mobile application. The proposed model achieved an accuracy rate of 86% with a standard deviation of 0.09, indicating that the detection system performs effectively.
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format | Article |
id | doaj-art-0bb4c46d42694849a241814ddfbf9535 |
institution | Kabale University |
issn | 2355-391X 2443-1168 |
language | English |
publishDate | 2025-01-01 |
publisher | Politeknik Elektronika Negeri Surabaya |
record_format | Article |
series | Emitter: International Journal of Engineering Technology |
spelling | doaj-art-0bb4c46d42694849a241814ddfbf95352025-01-21T11:11:07ZengPoliteknik Elektronika Negeri SurabayaEmitter: International Journal of Engineering Technology2355-391X2443-11682025-01-0112210.24003/emitter.v12i2.904Implementation of Portable Ultrasound for Heart Disease Detection Using Cloud Computing-Based Machine LearningRiyanto Sigit0Rika Rokhana1Setiawardhana2Taufiq Hidayat3Anwar4Jovan Josafat Jaenputra5Politeknik Elektronika Negeri SurabayaPoliteknik Elektronika Negeri SurabayaPoliteknik Elektronika Negeri SurabayaUniversitas AirlanggaKementerian KetenagakerjaanPoliteknik Elektronika Negeri Surabaya, Indonesia Heart disease remains one of the leading causes of death globally, including in Indonesia. Cardiovascular disease is the leading cause of death worldwide, resulting in a significant number of fatalities. In Indonesia, access to specialized heart examination services is limited, requiring patients to visit large hospitals equipped with specialized facilities. Echocardiographic examinations using ultrasound can measure various heart parameters, such as hemodynamics, heart mass, and myocardial deformation. Portable ultrasound devices have emerged, enabling flexible and effective heart examinations. These devices capture video data of the patient's heart condition. The data undergoes image preprocessing involving median filtering, high-boost filtering, morphological operations, thresholding, and Canny filtering. Segmentation is performed using region filters, collinear filters, and triangle equations. Tracking utilizes the Optical Flow Lucas-Kanade method, and feature extraction employs Euclidean distance and trigonometric equations. The classification stage uses Support Vector Machine (SVM). Video data is transmitted via a mobile application to the cloud, where all stages from preprocessing to classification are conducted on cloud servers. The classification results are then sent back to the mobile application. The proposed model achieved an accuracy rate of 86% with a standard deviation of 0.09, indicating that the detection system performs effectively. http://emitter2.pens.ac.id/ojs/index.php/emitter/article/view/904EchocardiographyUltrasound PortableCloud ComputingImage Processing |
spellingShingle | Riyanto Sigit Rika Rokhana Setiawardhana Taufiq Hidayat Anwar Jovan Josafat Jaenputra Implementation of Portable Ultrasound for Heart Disease Detection Using Cloud Computing-Based Machine Learning Emitter: International Journal of Engineering Technology Echocardiography Ultrasound Portable Cloud Computing Image Processing |
title | Implementation of Portable Ultrasound for Heart Disease Detection Using Cloud Computing-Based Machine Learning |
title_full | Implementation of Portable Ultrasound for Heart Disease Detection Using Cloud Computing-Based Machine Learning |
title_fullStr | Implementation of Portable Ultrasound for Heart Disease Detection Using Cloud Computing-Based Machine Learning |
title_full_unstemmed | Implementation of Portable Ultrasound for Heart Disease Detection Using Cloud Computing-Based Machine Learning |
title_short | Implementation of Portable Ultrasound for Heart Disease Detection Using Cloud Computing-Based Machine Learning |
title_sort | implementation of portable ultrasound for heart disease detection using cloud computing based machine learning |
topic | Echocardiography Ultrasound Portable Cloud Computing Image Processing |
url | http://emitter2.pens.ac.id/ojs/index.php/emitter/article/view/904 |
work_keys_str_mv | AT riyantosigit implementationofportableultrasoundforheartdiseasedetectionusingcloudcomputingbasedmachinelearning AT rikarokhana implementationofportableultrasoundforheartdiseasedetectionusingcloudcomputingbasedmachinelearning AT setiawardhana implementationofportableultrasoundforheartdiseasedetectionusingcloudcomputingbasedmachinelearning AT taufiqhidayat implementationofportableultrasoundforheartdiseasedetectionusingcloudcomputingbasedmachinelearning AT anwar implementationofportableultrasoundforheartdiseasedetectionusingcloudcomputingbasedmachinelearning AT jovanjosafatjaenputra implementationofportableultrasoundforheartdiseasedetectionusingcloudcomputingbasedmachinelearning |