使用监督学习检测脑肿瘤:一项调查

Parth Shanishchara, Vibha Patel
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引用次数: 2

摘要

随着科技的进步,人工智能和计算机视觉在医疗保健领域得到了广泛的应用。具体来说,在脑肿瘤的检测和分类方面进行了大量的研究。脑肿瘤可以被定义为一种慢性疾病,其中脑组织开始以无法控制的方式生长。目前用于检测脑肿瘤的技术很少,如CT扫描和核磁共振成像。而且,这些技术需要专家对肿瘤的类型和位置进行诊断,而且这些任务非常耗时。这就是为什么需要一种能够更快诊断的自动脑肿瘤检测系统。调查论文将回顾可用于检测二维脑图像中的肿瘤的监督机器学习算法和监督神经网络算法。实验使用SVM和ANN、CNN、VGG-16、ResNet、InceptionNet等深度神经网络方法进行。数据集是从Kaggle下载的。平均检测准确率为97.76%
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 Using Supervised Learning: A Survey
With the advancement in technology, artificial intelligence and computer vision are being used extensively in health care sector. Specifically, there’s a lot of research happening in brain tumor detection and classification. A brain tumor can be defined as a chronic disease in which the brain tissues start to grow in an uncontrollable manner. There are very few technologies currently in use to detect brain tumors such as CT - Scans and MRIs. And, such technologies require expert diagnosis of the type and location of the tumor, and such tasks are time-consuming. This is the reason, there is a need for an automatic brain tumor detection system that can make the diagnosis faster. The survey paper will review the supervised machine learning algorithm and supervised neural network algorithms that can be employed to detect the tumor in 2D brain images. The experiments were carried out using SVM and other deep neural network approaches like ANN, CNN, VGG-16, ResNet, and InceptionNet. The dataset was downloaded from Kaggle. The average testing accuracy achieved was 97.76%
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