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Adaptable volumetric liver segmentation model for CT images using region-based features and convolutional neural network

Czipczer, Vanda and Manno-Kovács, Andrea (2022) Adaptable volumetric liver segmentation model for CT images using region-based features and convolutional neural network. NEUROCOMPUTING, 505. pp. 388-401. ISSN 0925-2312

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Abstract

Liver plays an important role in metabolic processes, therefore fast diagnosis and potential surgical plan- ning is essential in case of any disease. The automatic liver segmentation approach has been studied dur- ing the past years and different segmentation techniques have been proposed, but this task remains a challenge and improvements are still required to further increase segmentation accuracy. In this work, an automatic, deep learning based approach is introduced, which is adaptable and it is able to handle smaller databases, including heterogeneous data. The method starts with a preprocessing to highlight the liver area using probability density function based estimation and supervoxel segmentation. Then, a modification of the 3D U-Net is introduced, which is called 3D RP-UNet and applies the ResPath in the 3D network. Finally, with liver-heart separation and morphological steps, the segmentation results are further refined. Segmentation results on three public databases showed that the proposed method performs robustly and achieves good segmentation performance compared to other state-of-the-art approaches in the majority of the evaluation metrics.

Item Type: Article
Uncontrolled Keywords: Liver segmentation, Convolutional neural networks, 3D U-Net, Biomedical volumetric image segmentation, Fully automated segmentation
Subjects: R Medicine / orvostudomány > R1 Medicine (General) / orvostudomány általában
SWORD Depositor: MTMT SWORD
Depositing User: MTMT SWORD
Date Deposited: 26 Sep 2022 11:20
Last Modified: 26 Sep 2022 11:20
URI: http://real.mtak.hu/id/eprint/149735

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