基于人工智能的脑肿瘤检测与诊断分析

N. Shafana, A. Senthilselvi
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引用次数: 3

摘要

癌症是由身体任何部位不受控制的细胞发育引起的。现在癌症是增长最快的疾病之一。肿瘤以各种形式出现,每种形式都有自己的一套特征和治疗方案。原发性脑肿瘤和转移性脑肿瘤是脑肿瘤的两种主要形式。早期发现和诊断肿瘤可以极大地挽救生命。现在肿瘤的快速增长,目前需要研究。因此,科学家和研究人员一直在努力开发先进的工具和方法来识别肿瘤类型及其分期。MRI(磁共振成像)和CT(计算机断层扫描)是通过切除和分析脑组织或位置的异常来检测肿瘤的最常用的方法。由于磁共振成像优于计算机断层扫描,医生更倾向于使用MRI模式。MRI是一种非侵入性成像技术,是医学领域研究的热点之一,它解释了如何将肿瘤与大脑的MRI识别区分开来。本分析旨在概述使用深度学习(DL),机器学习(ML)和迁移学习(TL)技术的脑肿瘤分割,检测和诊断。这一分析给出了部分和全自动分割技术的大纲,从以前的研究中提到。本文列出了用于分割和分类的数据库集合。该研究将标准分割和分类技术中的最佳方法与定量分析相结合。本文的比较将对脑肿瘤的检测和诊断技术提供一个详细的总结。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of AI based Brain Tumor Detection and Diagnosis
Cancer is caused by uncontrolled cell development in any part of the body. Nowadays cancer is one of the fast growing diseases. Tumors appear in various forms, each with its own set of characteristics and treatment options. Primary and metastatic brain tumors are the two major forms of brain tumors. Detecting and diagnosing the tumor at the early stage can save the lives drastically. Now the fast growth of tumor, presently need research. As a result, scientists and researchers have been trying to develop advanced tools and methods for identifying tumor types and their stages. MRI (Magnetic Resonance Image) and CT (Computed Tomography) are the most commonly preferred modalities for detecting the tumors by re-sectioning and analyzing anomalies in brain tissue or location. Due to the benefits of Magnetic Resonance Image over Computer Tomography scan, the doctors are preferred to use the MRI modality. MRI is non-invasive imaging which is one among the deeply considered modality in the field of medical area network which explain how to distinguish the tumor from the MRI identification of a brain cerebrum. This analysis aims at presenting an overview about Brain Tumor Segmentation, Detection and Diagnosis using Deep Learning (DL), Machine Learning (ML), and Transfer Learning (TL) techniques. This analysis gives an outline of partially and fully automated segmentation techniques that are referred from the previous studies. The collection of the databases used for segmenting and classifying are tabulated in this article. The study blends the presentation of best-in-class approaches from standard segmentation and classification techniques with a quantitative analysis. The comparison mentioned in the articles would greatly provide a detailed summary about the brain tumor detection and diagnosis techniques.
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