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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Numerical Function Optimization in Brain Tumor Regions Using Reconfigured Multi-Objective Bat Optimization Algorithm
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Numerical Function Optimization in Brain Tumor Regions Using Reconfigured Multi-Objective Bat Optimization Algorithm

机译:使用重新配置多目标蝙蝠优化算法脑肿瘤区域数值函数优化

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摘要

Medical imaging has evolved as an essential component in many avenues of bio-medical research and clinical practices. It is a vast research area that is used to view the interior parts of the body for the diagnosis of diseases. Brain tumor extraction is a very crucial and highly challenging task in the medical field for that the MRI images are considered for the diagnosis of pathological structures present in the brain. Tumor segmentation using MRI image is done manually by the medical practitioners it causes inaccurate results due to the variability of size and shape of the brain tumors. In this paper, we have proposed the Multi-Objective Bat (MOB) Optimization followed by the Fuzzy-C-Means (FCM) Clustering to segment the tumor region efficiently with intelligent Wireless Sensor Network using NEMS for monitoring real world phenomenon. As a result, it provides the better sub-optimal solution compared with the existing approaches.
机译:医学成像在生物医学研究和临床实践中的许多途径中发展成为一个重要组成部分。 它是一个庞大的研究区,用于观察身体的内部部分以诊断疾病。 脑肿瘤提取是在医学领域中的一个非常重要的,具有极具挑战性的任务,为MRI图像被认为是诊断大脑中存在的病理结构。 使用MRI图像的肿瘤分割由医疗从业者手动完成,由于脑肿瘤的大小和形状的变化,它会导致不准确的结果。 在本文中,我们提出了多目标BAT(MOB)优化,然后是模糊-C-MATION(FCM)聚类,以利用NEM将智能无线传感器网络与智能无线传感器网络一起分割肿瘤区域,以监测现实世界现象。 结果,与现有方法相比,它提供了更好的次优溶液。

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