Brain tumor classification of magnetic resonance images using a novel CNN-based medical image analysis and detection network in comparison with AlexNet.

Mohan Ramya, Ganapathy Kirupa, A. Rama
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引用次数: 1

Abstract

AIM This research work aims at developing an automatic medical image analysis and detection for accurate classification of brain tumors from a magnetic resonance imaging (MRI) dataset. We developed a new MIDNet18 CNN architecture in comparison with the AlexNet CNN architecture for classifying normal brain images from brain tumor images. MATERIALS AND METHODS The novel MIDNet18 CNN architecture comprises 14 convolutional layers, seven pooling layers, four dense layers, and one classification layer. The dataset used for this study has two classes: normal brain MR images and brain tumor MR images. This binary MRI brain dataset consists of 2918 images as the training set, 1458 images as the validation set, and 212 images as the test set. The independent sample size calculated was seven for each group, keeping GPower at 80%. RESULT From the experimental performance metrics, it could be inferred that our novel MIDNet18 achieved higher test accuracy, AUC, F1 score, precision, and recall over the AlexNet algorithm. CONCLUSION From the result, it can be concluded that MIDNet18 is significantly more accurate (independent sample t-test P<0.05) than AlexNet in classifying tumors from brain MRI images.
基于cnn的新型医学图像分析检测网络与AlexNet的脑肿瘤磁共振图像分类比较
本研究旨在开发一种自动医学图像分析和检测系统,用于从磁共振成像(MRI)数据集中准确分类脑肿瘤。我们开发了一种新的MIDNet18 CNN架构,与AlexNet CNN架构进行比较,用于从脑肿瘤图像中分类正常脑图像。材料与方法新型MIDNet18 CNN架构包括14个卷积层、7个池化层、4个密集层和1个分类层。本研究使用的数据集分为两类:正常脑磁共振图像和脑肿瘤磁共振图像。该二值MRI脑数据集由2918张图像作为训练集,1458张图像作为验证集,212张图像作为测试集组成。每组计算的独立样本量为7个,使GPower保持在80%。结果从实验性能指标可以推断,我们的新型MIDNet18比AlexNet算法具有更高的测试准确度、AUC、F1分数、精度和召回率。结论MIDNet18对脑MRI图像肿瘤的分类准确率显著高于AlexNet(独立样本t检验P<0.05)。
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