Improved Salp Swarm Optimization-based Fuzzy Centroid Region Growing for Liver Tumor Segmentation and Deep Learning Oriented Classification

Ramchand Hablani, Suraj Patil, Dnyaneshwar Kirange
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Abstract

Due to heterogenous shape of liver, the segmentation and classification of liver is challenging task. Therefore, Computer-Aided Diagnosis (CAD) is employed for predictive decision making for liver diagnosis. The major intuition of this paper is to detect liver cancer in a precise manner by automatic approach. The developed model initially collects the standard benchmark LiTS dataset, and image preprocessing is done by three techniques like Histogram equalization for contrast enhancement, and median filtering and Anisotropic diffusion filtering for noise removal. Further, the Adaptive thresholding is adopted to perform the liver segmentation. As a novelty, optimized Fuzzy centroid-based region growing model is proposed for tumor segmentation in liver. The main objective of thistumor segmentation model is to maximize the entropy by optimizing the fuzzy centroid and threshold of region growing using Mean Fitness-based Salp Swarm Optimization Algorithm (MF-SSA). From segmented tumor, the features like Local Directional Pattern (LDP) and Gray Level Co-occurrence Matrix (GLCM) are extracted. The extracted features are given as input to NN, and segmented tumor is given to Convolutional Neural Network (CNN). The AND bit operation to both of the outputs obtained from NN and CNN confirms the healthy and unhealthy CT images. Since the number of hidden neurons makes an effect on final classification output, the optimization of neurons is done using MF-SSA. From the experimental analysis, it is confirmed that the proposed model is better as compared with state of art results of previous study can assist radiologists in tumor diagnosis from CT scan images.
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基于改进Salp群优化的模糊质心区域生长的肝脏肿瘤分割和面向深度学习的分类
由于肝脏形状的异质性,肝脏的分割和分类是一项具有挑战性的任务。因此,计算机辅助诊断(CAD)被用于肝脏诊断的预测性决策。本文的主要目的是通过自动方法对肝癌进行精确的检测。该模型首先收集标准基准LiTS数据集,通过直方图均衡化(Histogram equalization)增强对比度,中值滤波和各向异性扩散滤波(Anisotropic diffusion filtering)去噪等三种技术对图像进行预处理。进一步,采用自适应阈值分割进行肝脏分割。作为一种新颖的基于模糊质心的区域生长优化模型,提出了一种用于肝脏肿瘤分割的方法。该肿瘤分割模型的主要目标是利用Mean Fitness-based Salp Swarm Optimization Algorithm (MF-SSA)对区域生长的模糊质心和阈值进行优化,从而实现熵的最大化。从分割的肿瘤中提取局部方向模式(LDP)和灰度共生矩阵(GLCM)等特征。将提取的特征作为神经网络的输入,将分割后的肿瘤输入到卷积神经网络(CNN)。对从NN和CNN得到的输出进行与位运算,确定健康和不健康的CT图像。由于隐藏神经元的数量对最终的分类输出有影响,因此使用MF-SSA对神经元进行优化。通过实验分析,证实了所提出的模型优于现有的研究成果,可以辅助放射科医师根据CT扫描图像进行肿瘤诊断。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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