基于支持向量机、随机森林、决策树、k近邻、时间卷积和迁移学习的MRI脑肿瘤检测多模态案例研究

P. Sutradhar, Prosenjit Kumer Tarefder, Imran Prodan, Md. Sheikh Saddi, Victor Stany Rozario
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引用次数: 4

摘要

在医学领域,脑肿瘤的检测由于其不同的形状、位置和图像强度而成为一项关键而艰巨的任务。这就是为什么自动化系统对帮助医生和放射科医生检测和分类脑肿瘤很重要。在本研究中,我们讨论了不同的机器学习和深度学习算法,这些算法主要用于图像分类。我们还比较了用于基于机器学习和深度学习的肿瘤分类的不同模型。胶质瘤、垂体瘤、脑膜瘤的MRI影像是本研究的基础,我们比较了不同的技术以及使用这些MRI影像的不同分类模型的准确性。我们使用了不同的深度学习预训练模型来训练脑肿瘤图像。这些预训练的模型提供了出色的性能以及更少的功耗和计算时间。在其他模型和传统的机器学习算法中,EfficientNet-B3提供了98.16%的最佳准确率。实验结果表明,该模型对肿瘤的检测和分类是最有效的。
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Multi-Modal Case Study on MRI Brain Tumor Detection Using Support Vector Machine, Random Forest, Decision Tree, K-Nearest Neighbor, Temporal Convolution & Transfer Learning
In the Medical field, Brain Tumor Detection has become a critical and demanding task because of its several shapes, locations, and intensity of image. That’s why an automated system is important to aid physicians and radiologists in detecting and classifying brain tumors. In this research, we have discussed different machine learning as well as deep learning algorithm which are mostly used for image classification. We have also compared different models that are being used for tumor classification based on machine learning and deep learning. MRI images of Glioma tumor, Pituitary tumor, Meningioma tumor are the base of this research, and we have compared different techniques along with the accuracy of different classification models using those MRI images. We have used different deep learning pre-trained models for training the brain tumor images. Those pre-trained models have provided outstanding performance along with less power consumption and computational time. EfficientNet-B3 has provided the best accuracy of 98.16% among other models as well as traditional machine learning algorithms. The experimental result of this model is proven the best and most efficient for tumor detection and classification in comparison with other recent studies.
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