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Multi-channeled MR brain image segmentation: A novel double optimization approach combined with clustering technique for tumor identification and tissue segmentation

机译:多通道先生脑图像分割:一种新型双重优化方法,结合肿瘤鉴定和组织分割的聚类技术

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Growth of cancer cells within the human body is a major outcome of the manipulation of cells and it has resulted in the deterioration of the life span of humans. The impact of cancer cells is irretrievable and it has paved the way to the formation of tumors within the human body. For achieving and developing a single-structured framework to prominently identify the tumor regions and segmenting the tissue structures specifically in human brain, a novel combinational algorithm is proposed through this paper. The algorithm has been embodied with two optimization techniques namely particle swarm optimization (PSO) and bacteria foraging optimization (BFO), wherein, PSO helps in finding the best position of global bacterium for BFO, consecutively, BFO supports the modified fuzzy c means (MFCM) algorithm by providing optimized cluster heads. Finally, MFCM segments the tissue regions and identifies the tumor portion, thereby reducing the interaction and complication experienced by a radiologist during patient diagnosis. The strength of the proposed algorithm is proven by comparing it with the state-of-the-art techniques by means of evaluation parameters like mean squared error (MSE), peak signal to noise ratio (PSNR), sensitivity, specificity, etc., Data sets used in this paper were exclusively obtained from hospital, Brain web simulator and BRATS-2013 challenge. The sensitivity and specificity values for 115 MR brain slice images are 0.9545 and 0.9905, which prove the segmentation ability and multitude characteristics possessed by the proposed PSBFO based MFCM (PSBFO-MFCM) algorithm. (C) 2018 Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier B.V. All rights reserved.
机译:人体内癌细胞的生长是对细胞操纵的主要结果,导致人类的生命跨度恶化。癌细胞的影响是无可挽回的,它已经向人体内部形成了肿瘤的途径。为了实现和开发单结构化框架以突出识别肿瘤区域并在人脑中分割特异性组织结构,通过本文提出了一种新的组合算法。该算法已经体现有两种优化技术,即粒子群优化(PSO)和细菌觅食优化(BFO),其中,PSO有助于在连续地,BFO支持全球细菌的最佳位置,BFO支持改进的模糊C装置(MFCM )通过提供优化的簇头来算法。最后,MFCM区段组织区域并识别肿瘤部分,从而减少放射科学家在患者诊断期间所经历的相互作用和并发症。通过将其与均方方误差(MSE)等评价参数相比,通过与最先进的技术进行比较来证明所提出的算法的强度,如平均方形误差(MSE),峰值信号到噪声比(PSNR),灵敏度,特异性等,本文使用的数据集专门从医院,脑网模拟器和Brats-2013挑战中获取。 115 MR脑切片图像的灵敏度和特异性值为0.9545和0.9905,其证明了所提出的基于PSBFO的MFCM(PSBFO-MFCM)算法所拥有的分割能力和众多特征。 (c)2018年纳雷斯州博士生物庭院研究所和波兰科学院的生物医学工程。 elsevier b.v出版。保留所有权利。

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