A Study of Brain Tumor Segmentation and Classification using Machine and Deep Learning Techniques

Anil Kumar Mandle, Satya Prakash Sahu, Govind P. Gupta
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引用次数: 2

Abstract

One of the most common methodologies in medical study is to detect a brain tumor and its development from a magnetic resonance imaging (MRI) of the brain. As a result, manually segmenting brain tumor from MRI images is a time-consuming and difficult process. Furthermore, an automatic brain tumor categorization based on an MRI scan is non-invasive, eliminating the need for a sample and making the diagnosing procedure safer. The scientific community has been working tirelessly since the turn of the millennium and the late 1990s to develop an automated brain tumor segmentation and classification approach. As a result, there is a lot of literature on segmentation employing region growth, classical machine learning, and deep learning methods. Similarly, several tasks in the domain of brain tumor categorization into their various histological types have been completed, with outstanding performance outcomes. The goal of this study is to present a complete assessment of three newly suggested important segmentation and classification methods for the brain tumor, namely, region growth, shallow machine learning, and deep learning, taking into explanation state-of-the-art techniques and their performance. Technical issues such as the strengths and drawbacks of alternative methods, pre-and post-processing methodologies, feature extraction, datasets, and model performance of the evaluation metrics are also covered in the conventional works involved in this study.
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基于机器和深度学习技术的脑肿瘤分割与分类研究
医学研究中最常用的方法之一是通过大脑的磁共振成像(MRI)来检测脑肿瘤及其发展。因此,从MRI图像中手动分割脑肿瘤是一个耗时且困难的过程。此外,基于核磁共振扫描的自动脑肿瘤分类是非侵入性的,消除了对样本的需要,使诊断过程更安全。自世纪之交和20世纪90年代末以来,科学界一直在孜孜不倦地开发一种自动化的脑肿瘤分割和分类方法。因此,有很多关于使用区域增长、经典机器学习和深度学习方法进行分割的文献。同样,在脑肿瘤分类领域的一些任务已经完成,并取得了出色的表现成果。本研究的目的是全面评估新提出的三种重要的脑肿瘤分割和分类方法,即区域生长、浅机器学习和深度学习,并解释最新的技术及其性能。技术问题,如替代方法的优缺点、预处理和后处理方法、特征提取、数据集和评估指标的模型性能也涵盖在本研究所涉及的常规工作中。
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