Automatic Detection of Brain Tumor from CT and MRI Images using Wireframe model and 3D Alex-Net

S. Rani, Sandeep Kumar, D. Ghai, K. Prasad
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引用次数: 6

Abstract

Automatic detection of brain tumors from CT and MRI images is always an effortful task because of the complexity and heterogeneous images. Many neural networks architecture (NN) have recently been developed for segmentation and classification tasks and have proved quite successful. Studies that have taken into account the sizes of items have been rare; as a result, the majority of them show poor detection performance for tiny objects. This has the potential to have a significant influence on illness identification. Recently, the 3D neural network became popular because it can work with a large labeled dataset. We proposed a 3D Alex-Net-based architecture that can classify the different types of a brain tumors at an early stage. First, the image contour is identified and given to the classifier for class-wise identification. We tested our proposed approach on RSNA- MICCAI brain tumors and found that the proposed method delivers the highest accuracy, and the results provide a clear advantage for the classification of a brain tumor in medical images.
基于线框模型和3D Alex-Net的CT和MRI图像自动检测脑肿瘤
由于图像的复杂性和异质性,从CT和MRI图像中自动检测脑肿瘤一直是一项艰巨的任务。近年来,许多神经网络架构(NN)被开发用于分割和分类任务,并被证明是相当成功的。考虑到物品大小的研究很少;因此,它们中的大多数对微小物体的检测性能较差。这有可能对疾病鉴定产生重大影响。最近,3D神经网络因其可以处理大型标记数据集而受到欢迎。我们提出了一个基于3D alex - net的架构,可以在早期阶段对不同类型的脑肿瘤进行分类。首先,识别图像轮廓并将其交给分类器进行分类识别。我们在RSNA- MICCAI脑肿瘤上测试了我们提出的方法,发现我们提出的方法提供了最高的准确性,结果为医学图像中脑肿瘤的分类提供了明显的优势。
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