应用异常模型对脑肿瘤的MRI分型

Ramil Cobilla, Jhon Carlo Dichoso, Al. Minon, April Kate Pascual, Mideth B. Abisado, Shekinah Lor B. Huyo-a, G. Sampedro
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引用次数: 0

摘要

脑肿瘤被认为是最具侵入性的手术之一。癌症在大脑内部发展是由于不受控制和异常的细胞分裂。最近深度学习的突破极大地帮助了医学成像部门诊断许多疾病。在磁共振图像中,视觉学习和图像识别已被用于脑肿瘤的类型分类。研究人员利用卷积神经网络(CNN)方法、数据增强和图像处理来组织大脑MRI扫描,以区分癌变或非癌变。使用迁移学习方法,研究人员将初级CNN模型的性能与预训练的CNN和例外模型的性能进行了比较。然而,实验是在有限的数据集上进行的。后来的结果表明,该模型的准确率结果是非常有效的,并且复杂度率很低,在异常模型上达到了96%的准确率。
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Classification of the Type of Brain Tumor in MRI Using Xception Model
A brain tumor is recognized as one of the most invasive things to operate on. Cancer develops inside the brain due to unregulated and aberrant cell partitioning. The recent breakthroughs in deep learning greatly aided the medical imaging sector in diagnosing numerous diseases. In MR images, visual learning and image recognition have been used to classify the type of brain tumor. The researchers utilized a Convolutional Neural Network (CNN) approach, Data Augmentation, and Image Processing to organize brain MRI scans as cancerous or non-cancerous. Using the transfer learning method, the researchers compared the performance of the primary CNN model to that of pre-trained CNN and Xception models. However, the experiment was conducted on a limited dataset. Later results reveal that the model’s accuracy result is very effective and has a meager complexity rate, attaining 96% accuracy on the Xception Model.
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