利用深度改进的 ResNet50 进行基于磁共振成像的脑肿瘤分类

Karrar Neamah;Farhan Mohamed;Safa Riyadh Waheed;Waleed Hadi Madhloom Kurdi;Adil Yaseen Taha;Karrar Abdulameer Kadhim
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引用次数: 0

摘要

目前正在利用深度卷积神经网络(CNN)开发一种稳健的脑肿瘤分类方法。本研究利用的开源数据集来自 MRI Brats2015 脑肿瘤数据集。预处理包括强度归一化、对比度增强和缩小。此外还应用了数据增强技术,包括旋转和翻转。我们提出的方法的核心在于利用修改后的 ResNet-50 架构进行特征提取。该模型通过将最后一层替换为空间金字塔汇集层,整合了迁移学习,使其能够利用来自 ImageNet 的预训练参数。来自 ImageNet 的迁移学习有助于消除过拟合。我们用各种超参数评估了模型的性能,包括准确率、精确度、召回率、F1-分数、灵敏度和特异性等方面的现有方法。这项研究展示了深度学习、迁移学习和空间金字塔池在基于核磁共振成像的脑肿瘤分类中的潜力,为医学图像分析提供了一种有效的工具。我们的方法采用了具有迁移学习功能的改进型 ResNet-50 架构,并整合了空间金字塔池层用于特征提取。系统评估表明,该模型优于现有方法,在准确度(0.9902)、精确度(0.9837)、召回率(0.9915)、F1-分数(0.9891)、灵敏度和特异性方面都取得了显著成果。与著名 CNN 架构的对比分析再次证明了它的卓越性能。我们的模型不仅减轻了过拟合的挑战,还为医学图像分析提供了一种前景广阔的工具,凸显了空间金字塔池和迁移学习的综合功效。该研究的优化参数,包括 25 个历元、1e-4 的学习率和均衡的批量大小,都有助于提高其鲁棒性和实际应用性,从而进一步推动核磁共振成像数据中的脑肿瘤高效分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilizing Deep improved ResNet50 for Brain Tumor Classification Based MRI
A robust approach for brain tumor classification is being developed using deep convolutional neural networks (CNNs). This study leverages an open-source dataset derived from the MRI Brats2015 brain tumor dataset. Preprocessing included intensity normalization, contrast enhancement, and downsizing. Data augmentation techniques were also applied, encompassing rotations and flipping. The core of our proposed approach lies in the utilization of a modified ResNet-50 architecture for feature extraction. This model integrates transfer learning by replacing the final layer with a spatial pyramid pooling layer, enabling it to leverage pre-trained parameters from ImageNet. Transfer learning from ImageNet aids in countering overfitting. Our model's performance was evaluated with various hyperparameters, including existing methods in terms of accuracy, precision, recall, F1-score, sensitivity, and specificity. This study showcases the potential of deep learning, transfer learning, and spatial pyramid pooling in MRI-based brain tumor classification, providing an effective tool for medical image analysis. Our methodology employs a modified ResNet-50 architecture with transfer learning, integrating a spatial pyramid pooling layer for feature extraction. Systematic evaluation showcases the model's superiority over existing methods, demonstrating remarkable results in accuracy (0.9902), precision (0.9837), recall (0.9915), F1-score (0.9891), sensitivity, and specificity. The comparative analysis against prominent CNN architectures reaffirms its outstanding performance. Our model not only mitigates overfitting challenges but also offers a promising tool for medical image analysis, underlining the combined efficacy of spatial pyramid pooling and transfer learning. The study's optimization parameters, including 25 epochs, a learning rate of 1e-4, and a balanced batch size, contribute to its robustness and real-world applicability, furthering advancements in efficient brain tumor classification within MRI data.
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