AlTahhan Fatma E, Khouqeer Ghada A, Saadi Sarmad, Elgarayhi Ahmed, Sallah Mohammed
Mathematics Department, Faculty of Science, Mansoura University, Mansoura 35516, Egypt.
Physics Department, Faculty of science, Imam Mohammad Ibn Saud Islamic University, Riyadh 11564, Saudi Arabia.
Diagnostics (Basel). 2023 Feb 23;13(5):864. doi: 10.3390/diagnostics13050864.
Refined hybrid convolutional neural networks are proposed in this work for classifying brain tumor classes based on MRI scans. A dataset of 2880 T1-weighted contrast-enhanced MRI brain scans are used. The dataset contains three main classes of brain tumors: gliomas, meningiomas, and pituitary tumors, as well as a class of no tumors. Firstly, two pre-trained, fine-tuned convolutional neural networks, GoogleNet and AlexNet, were used for classification process, with validation and classification accuracy being 91.5% and 90.21%, respectively. Then, to improving the performance of the fine-tuning AlexNet, two hybrid networks (AlexNet-SVM and AlexNet-KNN) were applied. These hybrid networks achieved 96.9% and 98.6% validation and accuracy, respectively. Thus, the hybrid network AlexNet-KNN was shown to be able to apply the classification process of the present data with high accuracy. After exporting these networks, a selected dataset was employed for testing process, yielding accuracies of 88%, 85%, 95%, and 97% for the fine-tuned GoogleNet, the fine-tuned AlexNet, AlexNet-SVM, and AlexNet-KNN, respectively. The proposed system would help for automatic detection and classification of the brain tumor from the MRI scans and safe the time for the clinical diagnosis.
本文提出了一种改进的混合卷积神经网络,用于基于磁共振成像(MRI)扫描对脑肿瘤类别进行分类。使用了一个包含2880张T1加权对比增强MRI脑部扫描图像的数据集。该数据集包含三类主要的脑肿瘤:神经胶质瘤、脑膜瘤和垂体瘤,以及一类无肿瘤的图像。首先,使用两个预训练的、经过微调的卷积神经网络GoogleNet和AlexNet进行分类,验证准确率和分类准确率分别为91.5%和90.21%。然后,为了提高微调后的AlexNet的性能,应用了两个混合网络(AlexNet-SVM和AlexNet-KNN)。这些混合网络的验证准确率和准确率分别达到了96.9%和98.6%。因此,混合网络AlexNet-KNN被证明能够高精度地应用于当前数据的分类过程。导出这些网络后,使用一个选定的数据集进行测试,微调后的GoogleNet、微调后的AlexNet、AlexNet-SVM和AlexNet-KNN的准确率分别为88%、85%、95%和97%。所提出的系统将有助于从MRI扫描中自动检测和分类脑肿瘤,并节省临床诊断时间。