集成集成分类器与数据增强和VGG16特征提取的计算机辅助脑肿瘤检测

S. Youssef, Jomana Ahmed Gaber, Yasmina Ayman Kamal
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引用次数: 0

摘要

早期发现脑肿瘤对于提高完全康复率而不危及患者的生命至关重要。目前,医学领域的目标是利用磁共振实现对脑肿瘤(BT)的早期检测,因为每100名患者中有40人能存活1年或更长时间[6],因此早期发现肿瘤有助于恢复。磁共振成像(MRI)和x线图像用于BT的早期诊断,以消除其扩散。在本文中,我们构建了一个集成了数据增强和VGG16深度学习特征提取模型的集成分类器模型,用于早期检测患者感染的多类脑肿瘤类型。我们使用所提出的模型对具有多类别分类(胶质瘤、脑膜瘤、无肿瘤和垂体瘤)的数据集进行BT分类,如果肿瘤在MRI中存在,它将对肿瘤的类型进行分类。使用所提出的模型,我们的模型的准确率为96.8%。
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A Computer-Aided Brain Tumor Detection Integrating Ensemble Classifiers with Data Augmentation and VGG16 Feature Extraction
Early detection of brain tumors is important to increase the rate of complete recovery from it without risking the lives of patients. Nowadays, the medical domain aims to use magnetic resonance to achieve early detection of Brain Tumors (BT), as 40 out of 100 people survive their cancer for 1 year or more[6], therefore the early detection of the tumors helps in the recovery. Magnetic resonance imaging (MRI) and X-Ray images are used in the early diagnosis of BT to eliminate its spreading. In this paper, we build an ensemble classifier model that integrates data augmentation with the VGG16 deep-learning feature extraction model for early detection of multi-class brain tumor types of patient infection. We perform the BT classification using the proposed model on a dataset that has a multiclass classification (Glioma tumor, Meningioma tumor, No tumor, and Pituitary tumor), it will classify the type of the tumor if it exists in the MRI. Our model results in an accuracy of 96.8% using the proposed model.
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