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首页> 外文期刊>Biocybernetics and biomedical engineering >Social-Group-Optimization based tumor evaluation tool for clinical brain MRI of Flair/diffusion-weighted modality
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Social-Group-Optimization based tumor evaluation tool for clinical brain MRI of Flair/diffusion-weighted modality

机译:基于社会群体优化的临床脑研磨肿瘤评价工具,Flair /扩散加权方式的临床脑研发

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摘要

Brain tumor is one of the harsh diseases among human community and is usually diagnosed with medical imaging procedures. Computed-Tomography (CT) and Magnetic-Resonance-Image (MRI) are the regularly used non-invasive methods to acquire brain abnormalities for medical study. Due to its importance, a significant quantity of image assessment and decision-making procedures exist in literature. This article proposes a two-stage image assessment tool to examine brain MR images acquired using the Flair and DW modalities. The combination of the Social-Group-Optimization (SGO) and Shannon's-Entropy (SE) supported multi-thresholding is implemented to pre-processing the input images. The image post-processing includes several procedures, such as Active Contour (AC), Watershed and region-growing segmentation, to extract the tumor section. Finally, a classifier system is implemented using ANFIS to categorize the tumor under analysis into benign and malignant. Experimental investigation was executed using benchmark datasets, like ISLES and BRATS, and also clinical MR images obtained with Flair/DW modality. The outcome of this study confirms that AC offers enhanced results compared with other segmentation procedures considered in this article. The ANFIS classifier obtained an accuracy of 94.51% on the used ISLES and real clinical images. (C) 2019 Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier B.V. All rights reserved.
机译:脑肿瘤是人类群落中的苛刻疾病之一,通常被诊断出现有医学成像程序。计算断层扫描(CT)和磁共振 - 图像(MRI)是定期使用的非侵入性方法来获取医学研究的大脑异常。由于其重要性,文学中存在大量的图像评估和决策程序。本文提出了一种两阶段图像评估工具,用于检查使用Flair和DW方式获取的脑MR图像。社交组优化(SGO)和Shannon's-熵(SE)支持的多阈值处理的组合被实施为预处理输入图像。图像后处理包括若干过程,例如有源轮廓(AC),流域和区域生长分割,以提取肿瘤部分。最后,使用ANFIS实现分类器系统,以将肿瘤分类为良性和恶性。使用基准数据集执行实验调查,如岛和小群岛,也是用Flair / DW模态获得的临床MR图像。该研究的结果证实,与本文中考虑的其他分段程序相比,AC提供增强的结果。 ANFIS分类器在二手群岛和真实临床图像上获得了94.51%的精度。 (c)2019年纳雷斯州博士科学学院生物医学研究所。 elsevier b.v出版。保留所有权利。

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