利用深度学习算法自动检测脑肿瘤

R. Sangeetha, A. Mohanarathinam, G. Aravindh, S. Jayachitra, M. Bhuvaneswari
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引用次数: 8

摘要

脑瘤是细胞异常生长的结果,这些细胞以不受控制的方式自我繁殖。这种类型的肿瘤是通过磁共振成像(MRI)诊断的,它在将肿瘤区域分割成不同的方式进行手术和医疗计划评估方面发挥着重要作用,但人工检测可能会导致错误,并且是一个耗时的过程。为了克服这个问题,专家们使用了各种基于深度学习算法的自动检测肿瘤区域的算法。它们的设计目的是在短时间内训练和调整数百万张图像。进一步,本文提出了基于VggNet、GoogleNet和ResNet 50等CNN架构的不同类型的分类方法,并进行了多次迭代。对于60次迭代,VggNet的准确率为89.33%,GoogleNet为93.45%,ResNet为96.50%。最后,证明了ResNet 50比VggNet和GoogleNet取得了更好的结果,而且时间相对更短,准确率更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Detection of Brain Tumor Using Deep Learning Algorithms
Brain tumor is the result of an abnormal growth of cells, which reproduce themselves in an uncontrolled manner. This type of tumour is diagnosed through Magnetic Resonance Imaging (MRI), which plays a significant role in segmenting the tumor region into different ways for performing surgical and medical planning assessment but the manual detection may lead to errors and it is a time consuming process. To overcome the problem, experts use various algorithms for automatic detection of the tumor region, which are based on deep learning algorithms. They are designed to train and tune millions of images within a short period of time. Further, this paper proposes different types of classification methods with a number of iterations are based on CNN architectures such as VggNet, GoogleNet and ResNet 50. For 60 iterations VggNet reports 89.33% accuracy, GoogleNet 93.45% and ResNet 50 96.50%. Finally, it is proved that ResNet 50 achieves better results than VggNet and GoogleNet with comparatively less time and better accuracy.
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