En–DeNet Based Segmentation and Gradational Modular Network Classification for Liver Cancer Diagnosis

Author:

G Suganeshwari1ORCID,Appadurai Jothi Prabha2,Kavin Balasubramanian Prabhu3ORCID,C Kavitha4ORCID,Lai Wen-Cheng56ORCID

Affiliation:

1. School of Computer Science and Engineering, Vellore Institute of Technology, Chennai 600127, Tamil Nadu, India

2. Computer Science and Engineering Department, Kakatiya Institute of Technology and Science, Warangal 506015, Telangana, India

3. Department of Data Science and Business Systems, College of Engineering and Technology, SRM Institute of Science and Technology, SRM Nagar, Chengalpattu District, Kattankulathur 603203, Tamilnadu, India

4. Department of Computer Science and Engineering, Sathyabama Institute of Science and Technology, Jeppiaar Nagar, Rajiv Gandhi Salai, Chennai 600119, Tamil Nadu, India

5. Bachelor Program in Industrial Projects, National Yunlin University of Science and Technology, Douliu 640301, Taiwan

6. Department Electronic Engineering, National Yunlin University of Science and Technology, Douliu 640301, Taiwan

Abstract

Liver cancer ranks as the sixth most prevalent cancer among all cancers globally. Computed tomography (CT) scanning is a non-invasive analytic imaging sensory system that provides greater insight into human structures than traditional X-rays, which are typically used to make the diagnosis. Often, the final product of a CT scan is a three-dimensional image constructed from a series of interlaced two-dimensional slices. Remember that not all slices deliver useful information for tumor detection. Recently, CT scan images of the liver and its tumors have been segmented using deep learning techniques. The primary goal of this study is to develop a deep learning-based system for automatically segmenting the liver and its tumors from CT scan pictures, and also reduce the amount of time and labor required by speeding up the process of diagnosing liver cancer. At its core, an Encoder–Decoder Network (En–DeNet) uses a deep neural network built on UNet to serve as an encoder, and a pre-trained EfficientNet to serve as a decoder. In order to improve liver segmentation, we developed specialized preprocessing techniques, such as the production of multichannel pictures, de-noising, contrast enhancement, ensemble, and the union of model predictions. Then, we proposed the Gradational modular network (GraMNet), which is a unique and estimated efficient deep learning technique. In GraMNet, smaller networks called SubNets are used to construct larger and more robust networks using a variety of alternative configurations. Only one new SubNet modules is updated for learning at each level. This helps in the optimization of the network and minimizes the amount of computational resources needed for training. The segmentation and classification performance of this study is compared to the Liver Tumor Segmentation Benchmark (LiTS) and 3D Image Rebuilding for Comparison of Algorithms Database (3DIRCADb01). By breaking down the components of deep learning, a state-of-the-art level of performance can be attained in the scenarios used in the evaluation. In comparison to more conventional deep learning architectures, the GraMNets generated here have a low computational difficulty. When associated with the benchmark study methods, the straight forward GraMNet is trained faster, consumes less memory, and processes images more rapidly.

Funder

National Yunlin University of Science and Technology, Douliu

Publisher

MDPI AG

Subject

General Biochemistry, Genetics and Molecular Biology,Medicine (miscellaneous)

Cited by 6 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. CotepRes-Net: An efficient U-Net based deep learning method of liver segmentation from Computed Tomography images;Biomedical Signal Processing and Control;2024-02

2. Enhanced deep transfer learning with multi-feature fusion for lung disease detection;Multimedia Tools and Applications;2023-12-11

3. Diagnosis of Liver Tumor from CT Scan Images using Deep Segmentation Network with CMBOA based CNN;2023 IEEE 3rd Mysore Sub Section International Conference (MysuruCon);2023-12-01

4. Segmenting the Liver Tumor from Computed Tomography Using 3D-UNet with IDFOA Model;2023 International Conference on Ambient Intelligence, Knowledge Informatics and Industrial Electronics (AIKIIE);2023-11-02

5. Automatic liver tumor detection and classification using the hyper tangent fuzzy C-Means and improved fuzzy SVM;Multimedia Tools and Applications;2023-10-24

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