Multi-Class Brain Disease Classification Using Modified Pre-Trained Convolutional Neural Networks Model with Substantial Data Augmentation

I. Nandhini, D. Manjula, V. Sugumaran
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Abstract

The integration of various algorithms in the medical field to diagnose brain disorders is significant. Generally, Computed Tomography, Magnetic Resonance Imaging techniques have been used to diagnose brain images. Subsequently, segmentation and classification of brain disease remain an exigent task in medical image processing. This paper presents an extended model for brain image classification based on a Modified pre-trained convolutional neural network model with extensive data augmentation. The proposed system has been efficiently trained using the technique of substantial data augmentation in the pre-processing stage. In the first phase, the pre-trained models namely AlexNet, VGGNet-19, and ResNet-50 are employed to classify the brain disease. In the second phase, the idea of integrating the existing pre-trained model with a multiclass linear support vector machine is incorporated. Hence, the SoftMax layer of pre-trained models is replaced with a multi class linear support vector machine classifier is proposed. These proposed modified pre-trained model is employed to classify brain images as normal, inflammatory, degenerative, neoplastic and cerebrovascular diseases. The training loss, mean square error, and classification accuracy have been improved through the concept of Cyclic Learning rate. The appropriateness of transfer learning has been demonstrated by applying three convolutional neural network models, namely, AlexNet, VGGNet-19, and ResNet-50. It has been observed that the modified pre-trained models achieved a higher classification rate of accuracies of 93.45% when compared with a finetuned pre-trained model of 89.65%. The best classification accuracy of 92.11%, 92.83% and 93.45% has been attained in the proposed method of the modified pre-trained model. A comparison of the proposed model with other pre-trained models is also presented.
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基于改进的预训练卷积神经网络模型和大量数据增强的多类脑疾病分类
整合医学领域的各种算法来诊断脑部疾病具有重要意义。一般来说,计算机断层扫描,磁共振成像技术已被用于诊断脑图像。因此,脑疾病的分割和分类仍然是医学图像处理中一个紧迫的任务。本文提出了一种基于改进的预训练卷积神经网络模型的脑图像分类扩展模型。在预处理阶段,采用大量数据增强技术对系统进行了有效的训练。在第一阶段,使用预训练模型AlexNet、VGGNet-19和ResNet-50对脑部疾病进行分类。在第二阶段,将已有的预训练模型与多类线性支持向量机相结合。因此,提出用多类线性支持向量机分类器代替预训练模型的SoftMax层。这些改进的预训练模型用于脑图像分类为正常、炎症、退行性、肿瘤和脑血管疾病。通过循环学习率的概念,提高了训练损失、均方误差和分类精度。通过应用三个卷积神经网络模型,即AlexNet, VGGNet-19和ResNet-50,证明了迁移学习的适用性。结果表明,改进后的预训练模型的分类准确率为93.45%,而调整后的预训练模型的分类准确率为89.65%。改进的预训练模型的分类准确率分别为92.11%、92.83%和93.45%。并将该模型与其他预训练模型进行了比较。
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