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Brain tumor segmentation approaches: Review, analysis and anticipated solutions in machine learning

机译:脑肿瘤分割方法:在机器学习中审查,分析和预期解决方案

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Brain tumor is one of the most rigorous diseases in the medical science. An effective and efficient analysis is always a key concern for the radiologists in the premature phase of tumor growth. At first sight of the imaging modality like in Magnetic Resonance (MR) imaging, the proper visualization of the tumor cells and its differentiation with its nearby soft tissues is somewhat difficult task. The reason for the above problem is the presence of the low illumination in imaging modalities. One of the solutions of such problem is deal by using machine learning based system diagnosis. In past various segmentation methods had been applied on brain MR imaging system to figure out the proper abnormality region from overall volume of the brain. In this paper a decade survey analysis is presented for all such approaches which are used in machine learning system for tumor segmentation. Further, the paper presents the limitations and advantages of all such approaches in machine learning based diagnosis. At last, the comparative segmentation results are discussed with certain clustering performance measures to analyse the effectiveness of each algorithm.
机译:脑肿瘤是医学科学中最严苛的疾病之一。有效且有效的分析始终是肿瘤生长过早阶段放射科医生的关键问题。首先看到磁共振(MR)成像中的成像模型,肿瘤细胞的适当可视化及其与其附近的软组织的分化是有些困难的任务。上述问题的原因是成像模态中存在低的照明。这种问题的一个解决方案是通过使用基于机器学习的系统诊断来造成的。在过去的各种分割方法中,已经应用于脑MR成像系统,从大脑的总体积弄清楚正确的异常区域。本文为肿瘤分割机器学习系统中使用的所有此类方法提供了十年的调查分析。此外,本文介绍了基于机器学习诊断的所有此类方法的局限性和优点。最后,通过某些聚类性能措施讨论了比较分割结果,以分析每种算法的有效性。

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