Brain Tumor Classification by Convolutional Neural Network

Dhiraj Kapila, Ghanshyam Vatsa, P. Prabavathi, R. M. Kingston, A. Srivastava, Rajesh Deorari
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引用次数: 1

Abstract

Image categorization challenges are typically solved by means of the employment of convolutional neural networks (CNN). The categorization of medical photos is currently receiving the attention of an ever-increasing number of people. Backpropagation is performed in the process of selecting features in an adaptive manner. Some of the CNN building parts that are utilized in this process are convolution, pooling, and fully connected layers. Backpropagation is performed to accomplish this. The design of a CNN model that is capable of identifying brain tumors in contrast-enhanced T1-weighted MRI images was the principal goal of this research. Within the structure that I've outlined, there are two steps that are vitally important. After the initial processing of the photos applying a number of image processing techniques, the images are subsequently categorized with the assistance of a CNN. Afterwards, the photos are stored. There are a total of 3064 distinct cases of glioma, meningioma, and pituitary tumors contained in the collection of images of brain tumors that were utilized in the experiment (glioma, meningioma, pituitary) (glioma, meningioma, pituitary) (glioma, meningioma, pituitary) (glioma, meningioma, pituitary). By implementing our CNN model, we were able to attain above-average testing accuracy, as well as recall and precision that were both above-average. The proposed method performed extremely well on the dataset, exceeding a substantial number of the other methods that are already accessible.
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基于卷积神经网络的脑肿瘤分类
图像分类的挑战通常是通过使用卷积神经网络(CNN)来解决的。医学照片的分类目前正受到越来越多的人的关注。在自适应选择特征的过程中进行反向传播。在这个过程中使用的一些CNN构建部分是卷积,池化和全连接层。执行反向传播来实现这一点。设计一个能够在对比增强的t1加权MRI图像中识别脑肿瘤的CNN模型是本研究的主要目标。在我概述的结构中,有两个步骤非常重要。在应用许多图像处理技术对照片进行初始处理后,随后在CNN的帮助下对图像进行分类。之后,这些照片被存储起来。在实验中使用的脑肿瘤图像集合中,共有3064例不同的胶质瘤、脑膜瘤和垂体瘤(胶质瘤、脑膜瘤、垂体)(胶质瘤、脑膜瘤、垂体)(胶质瘤、脑膜瘤、垂体)(胶质瘤、脑膜瘤、垂体)。通过实现我们的CNN模型,我们能够获得高于平均水平的测试准确度,以及高于平均水平的查全率和查准率。所提出的方法在数据集上的表现非常好,超过了大量已经可用的其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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