Brain Tumor Diagnosis using Machine Learning: A Review

Sally Ali Abdulateef
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Abstract

Recently, early brain tumor diagnosis has grown in importance as a study area recently. The patient's rateof survival rises with early tumor detection for primarytreatment. Because ofthe high processing overhead caused by the enormous volume regardingimage input to processing system, processing magnetic resonance image (MRI) for the early detection of tumors presents a problem. This led to a significant delay and a decline in system effectiveness. As a result, recently, there has been an increased requirement for an improved detection system for precise representation and segmentationfor accurate and fasterprocessing. Latestliterature has suggested the creation of novel methods depending onenhanced processing and learningfor the detection of brain tumors. This essay provides a succinct overview of the MRI-related advancements. The machine learning (ML)algorithms' capacity for fine processing and learninghas shown an enhancementin the efficiency and accuracy of processing for the detection of the brain tumor in existing automation systems. Restrictions, advantages,and outlook for future regardingthe present approaches for computer-aided diagnostics (CAD)in the detection of the brain tumor are discussed, along with current advances in automation related tobrain tumor detections. In the presented study, researcherexplore the history of numerous methods that have been put forth to image brain tumors across a variety of domains.
使用机器学习诊断脑肿瘤:综述
近年来,早期脑肿瘤诊断作为一个重要的研究领域越来越受到重视。患者的生存率随着早期肿瘤的发现而提高。由于大量的图像输入到处理系统所造成的高处理开销,处理磁共振图像(MRI)以早期检测肿瘤提出了一个问题。这导致了显著的延迟和系统效率的下降。因此,最近对精确表示和分割的改进检测系统的需求增加,以实现准确和更快的处理。最新的文献表明,依靠增强的处理和学习来检测脑肿瘤的新方法的创造。这篇文章提供了mri相关进展的简要概述。机器学习(ML)算法的精细处理和学习能力提高了现有自动化系统中脑肿瘤检测处理的效率和准确性。本文讨论了目前计算机辅助诊断(CAD)在脑肿瘤检测中的局限性、优势和未来的展望,以及脑肿瘤检测自动化的最新进展。在本研究中,研究人员探索了许多方法的历史,这些方法已经被提出,用于在各个领域对脑肿瘤进行成像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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