2020
DOI: 10.11591/ijeecs.v18.i2.pp1057-1065
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Implementation of optical flow: good feature definition for tracking of heart cavity

Abstract: <span>Echocardiography is a method of examination using high-frequency sound waves to capture images of the heart organ structure. Echocardiography video is used by a doctor to analyze heart wall cavity movements and identify heart disease. Several points of view including the long axis, the two and four cavities in the left ventricle can be used in the examination of heart function. Cardiac assessment is still performed conventionally, which requires a level of thoroughness. This research proposes a met… Show more

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Cited by 6 publications
(13 citation statements)
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“…As demonstrated in Table 5, the proposed model outperforms compared to the existing work. [5] 2019 NB, RF 86.81% Wan Hajarul [6] 2018 DT and RF 82.99% with RF Amin Ul Haq [8] 2018 SVM, DT, RF, NB, DT 86% with SVM Kathleen H. Miaoa [11] 2018 Deep neural network 83.67% Wiharto Wiharto [12] 2019 Ensemble classifier 88.33% Noor Basha [18] 2019 KNN, NB, SVM, DT 85%, with KNN Edsel Ing [19] 2019 SVM and LR 82.71% with LR Márcio Dias [20] 2020 SVM 87.71% Khaled Mohamad [21] 2020 SVM, NB 84.19% with SVM Pooja Rani [22] 2021 NB, LR, NB, SVM, RF 84.79% with SVM Suja Panicker [23] 2020 SVM 90% G. Magesh [24] 2020 RF 89.30% Ashir Javeed [25] 2020 Deep neural network 91.83% G. Saranya [ A hybrid approach to medical decision-making: diagnosis of heart disease … (Tamilarasi Suresh) 1837 5. CONCLUSION Automated intelligent approaches are crucial for timely prediction of heart disease.…”
Section: Comparative Studymentioning
confidence: 99%
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“…As demonstrated in Table 5, the proposed model outperforms compared to the existing work. [5] 2019 NB, RF 86.81% Wan Hajarul [6] 2018 DT and RF 82.99% with RF Amin Ul Haq [8] 2018 SVM, DT, RF, NB, DT 86% with SVM Kathleen H. Miaoa [11] 2018 Deep neural network 83.67% Wiharto Wiharto [12] 2019 Ensemble classifier 88.33% Noor Basha [18] 2019 KNN, NB, SVM, DT 85%, with KNN Edsel Ing [19] 2019 SVM and LR 82.71% with LR Márcio Dias [20] 2020 SVM 87.71% Khaled Mohamad [21] 2020 SVM, NB 84.19% with SVM Pooja Rani [22] 2021 NB, LR, NB, SVM, RF 84.79% with SVM Suja Panicker [23] 2020 SVM 90% G. Magesh [24] 2020 RF 89.30% Ashir Javeed [25] 2020 Deep neural network 91.83% G. Saranya [ A hybrid approach to medical decision-making: diagnosis of heart disease … (Tamilarasi Suresh) 1837 5. CONCLUSION Automated intelligent approaches are crucial for timely prediction of heart disease.…”
Section: Comparative Studymentioning
confidence: 99%
“…In recent years, heart disease have become one of the foremost reason of chronic disease related deaths thought the world population [1]- [5]. Moreover, heart disease is among the most frequently occurring diseases in the world affecting 26 million of the world population [1], [2].…”
Section: Introductionmentioning
confidence: 99%
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“…In this study, good features on the left ventricular wall were used for the tracking process with the optical flow using the Lucas-Kanade method. Reference [16], using good features obtained from crossing lines on the contours is used to track left ventricles. The proposed method shows the results of calculations with a sensitivity of 90% and an accuracy of 87.451%.…”
Section: Fig 2 Triangle Equationmentioning
confidence: 99%
“…It uses an initialization point located in the left ventricular wall to visualize tracking in a four-chamber viewpoint. Anwar et al [7] propose a method for developing automatic heart wall cavity tracking using Lucas-Kanade optical flow. The tracking method uses a good-feature point distribution defined in the first frame using an image processing approach with a sensitivity of 90 % and an accuracy of 87.451 %.…”
Section: Introductionmentioning
confidence: 99%