Brain Tumor Detection Using Deep Convolutional Neural Network

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Abstract

Brain tumor is the third-most common cause of cancer related deaths in the world. Fortunately, it can be detected using MRI. Computer-aided diagnosis (CADx) systems can help clinicians identify cancer from brain diseases more accurately. In this project, propose a CAD system that distinguishes and classifies brain tumor from pre-cancerous conditions. The system uses a deplearning model. Deep CNN which involves depth wise separable convolutions, to classify cancer and non-cancers. The proposed method consist of two steps: Google’s Auto Augment for augmentation and the CV2 based feature selection for image segmentation during pre- processing. These approaches produce a feasible methods of distinguishing and classifying cancers from other brain diseases. Our methods are fully automated without the manual specification of region-of-interests for the test and with a random selection of images for model training. This methodology may play a crucial role in selecting effective treatment options without the need for a surgical biopsy.
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基于深度卷积神经网络的脑肿瘤检测
脑肿瘤是世界上第三大癌症相关死亡原因。幸运的是,它可以通过MRI检测到。计算机辅助诊断(CADx)系统可以帮助临床医生更准确地从脑部疾病中识别癌症。在这个项目中,提出一个CAD系统来区分和分类脑肿瘤和癌前病变。该系统采用耗尽模型。深度CNN涉及深度可分离卷积,用于分类癌症和非癌症。该方法包括两个步骤:用于增强的Google Auto Augment和用于预处理过程中基于CV2的特征选择的图像分割。这些方法产生了一种将癌症与其他脑部疾病区分和分类的可行方法。我们的方法是完全自动化的,无需手动指定测试的兴趣区域,并且随机选择图像进行模型训练。这种方法可能在选择有效的治疗方案中发挥关键作用,而不需要手术活检。
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