基于机器学习和亚变异技术的脑肿瘤检测和分割分析:一个远景研究

Ravika Goel, N. K. Trivedi, S. Gaur
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引用次数: 0

摘要

图像分离、解释和计算机视觉领域的研究人员一直致力于在计算机的帮助下实现肿瘤分割、异常检测、分类和其他结构障碍预测等自动化任务。脑肿瘤(BT)和其他脑结构异常的诊断,他们的预后是在几种医学成像方式的帮助下确定的。本研究旨在总结医学图像分割和分类方面的成就和进步,并尊重无监督、有监督和混合机器学习及其衍生技术,以检测大脑中的异常。研究工作的明确目标是实现描述性分析和识别有效的机器学习技术。该研究被理解为DWAE和SVM作为有效的混合ML技术,预计将包含准确和精确分类脑肿瘤疾病的突出特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brain Tumor Detection And Segmentation Analysis With Machine Learning And Sub-Variant Techniques: A Perspective Study
Researchers in the fields of image separation, interpretation, and computer vision are always at work on automating tasks such as tumor segmentation, anomaly detection, classification, and the prediction of other structural disorders with the assistance of a computer. Brain tumors (BT) and other structural brain abnormalities are diagnosed, and their prognoses are determined with the help of several medical imaging modalities. This study aims to encapsulate the accomplishments and advancements in medical image segmentation and classification with reverence to unsupervised, supervised, and hybrid Machine learning and its derivative techniques for detecting abnormalities in the brain. The distinct objective of the research work is to implement descriptive analysis and identify the efficient ML technique. The study is comprehended with DWAE and SVM as efficient hybrid ML techniques foreseeing to enfold prominent features of accurately and precisely classifying brain tumor disorders.
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