Suyu, Zhang and Ye Zi and Jaya Kumar, Yogan and Guanxi, Li and Fengyan, Song (2023) Bi-DCNet: Bilateral network with dilated convolutions for left ventricle segmentation. Life, 13 (4). pp. 1-13. ISSN 2075-1729
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Abstract
Left ventricular segmentation is a vital and necessary procedure for assessing cardiac systolic and diastolic function, while echocardiography is an indispensable diagnostic technique that enables cardiac functionality assessment. However, manually labeling the left ventricular region on echocardiography images is time consuming and leads to observer bias. Recent research has demonstrated that deep learning has the capability to employ the segmentation process automatically. However, on the downside, it still ignores the contribution of all semantic information through the segmentation process. This study proposes a deep neural network architecture based on BiSeNet, named Bi-DCNet. This model comprises a spatial path and a context path, with the former responsible for spatial feature (low-level) acquisition and the latter responsible for contextual semantic feature (high-level) exploitation. Moreover, it incorporates feature extraction through the integration of dilated convolutions to achieve a larger receptive field to capture multi-scale information. The EchoNet-Dynamic dataset was utilized to assess the proposed model, and this is the first bilateral-structured network implemented on this large clinical video dataset for accomplishing the segmentation of the left ventricle. As demonstrated by the experimental outcomes, our method obtained 0.9228 and 0.8576 in DSC and IoU, respectively, proving the structure’s effectiveness.
Item Type: | Article |
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Uncontrolled Keywords: | Left ventricle segmentation, Bilateral network, Convolutional neural network, Dilated convolution |
Divisions: | Faculty of Information and Communication Technology |
Depositing User: | Norfaradilla Idayu Ab. Ghafar |
Date Deposited: | 25 Jul 2024 10:05 |
Last Modified: | 25 Jul 2024 10:05 |
URI: | http://eprints.utem.edu.my/id/eprint/27386 |
Statistic Details: | View Download Statistic |
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