Tumor-Net: convolutional neural network modeling for classifying brain tumors from MRI images

Abu Kowshir Bitto, Md. Hasan Imam Bijoy, S. Yesmin, Imran Mahmud, Md. Jueal Mia, Khalid Been Md. Badruzzaman Biplob
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引用次数: 1

Abstract

Abnormal brain tissue or cell growth is known as a brain tumor. One of the body's most intricate organs is the brain, where billions of cells work together. As a head tumor grows, the brain suffers damage due to its increasingly dense core. Magnetic resonance imaging, or MRI, is a type of medical imaging that enables radiologists to view the inside of body structures without the need for surgery. The image-based medical diagnosis expert system is crucial for a brain tumor patient. In this study, we combined two Magnetic Resonance Imaging (MRI)-based image datasets from Figshare and Kaggle to identify brain tumor MRI using a variety of convolutional neural network designs. To achieve competitive performance, we employ several data preprocessing techniques, such as resizing and enhancing contrast. The image augmentation techniques (E.g., rotated, width shifted, height shifted, shear shifted, and horizontally flipped) are used to increase data size, and five pre-trained models employed, including VGG-16, VGG-19, ResNet-50, Xception, and Inception-V3. The model with the highest accuracy, ResNet-50, performs at 96.76 percent. The model with the highest precision overall is Inception V3, with a precision score of 98.83 percent. ResNet-50 performs at 96.96% for F1-Score. The prominent accuracy of the implemented model, i.e., ResNet-50, compared with several earlier studies to validate the consequence of this introspection. The outcome of this study can be used in the medical diagnosis of brain tumors with an MRI-based expert system.
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肿瘤网络:卷积神经网络建模用于从MRI图像中分类脑肿瘤
异常的脑组织或细胞生长被称为脑肿瘤。大脑是人体最复杂的器官之一,数十亿个细胞一起工作。随着头部肿瘤的生长,大脑因其日益密集的核心而受到损害。磁共振成像(MRI)是一种医学成像技术,它使放射科医生无需手术就能看到身体结构的内部。基于图像的医学诊断专家系统对脑肿瘤患者的诊断至关重要。在这项研究中,我们结合了来自Figshare和Kaggle的两个基于磁共振成像(MRI)的图像数据集,使用各种卷积神经网络设计来识别脑肿瘤MRI。为了获得具有竞争力的性能,我们采用了几种数据预处理技术,例如调整大小和增强对比度。使用图像增强技术(例如旋转、宽度移位、高度移位、剪切移位和水平翻转)来增加数据大小,并使用了五种预训练模型,包括VGG-16、VGG-19、ResNet-50、Xception和Inception-V3。准确率最高的模型ResNet-50的准确率为96.76%。总体上精度最高的模型是Inception V3,精度分数为98.83%。ResNet-50对F1-Score的评分为96.96%。实现的模型(即ResNet-50)的突出准确性与早期的几项研究进行了比较,以验证这种自省的结果。本研究结果可用于基于mri的专家系统对脑肿瘤的医学诊断。
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International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
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