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使用先进的深度学习技术进行脑肿瘤检测和多分类。

Brain tumor detection and multi-classification using advanced deep learning techniques.

机构信息

Department of Computer Science, University of Central Punjab, Lahore, Pakistan.

Artificial Intelligence & Data Analytics Lab, CCIS Prince Sultan University, Riyadh, Saudi Arabia.

出版信息

Microsc Res Tech. 2021 Jun;84(6):1296-1308. doi: 10.1002/jemt.23688. Epub 2021 Jan 5.

DOI:10.1002/jemt.23688
PMID:33400339
Abstract

A brain tumor is an uncontrolled development of brain cells in brain cancer if not detected at an early stage. Early brain tumor diagnosis plays a crucial role in treatment planning and patients' survival rate. There are distinct forms, properties, and therapies of brain tumors. Therefore, manual brain tumor detection is complicated, time-consuming, and vulnerable to error. Hence, automated computer-assisted diagnosis at high precision is currently in demand. This article presents segmentation through Unet architecture with ResNet50 as a backbone on the Figshare data set and achieved a level of 0.9504 of the intersection over union (IoU). The preprocessing and data augmentation concept were introduced to enhance the classification rate. The multi-classification of brain tumors is performed using evolutionary algorithms and reinforcement learning through transfer learning. Other deep learning methods such as ResNet50, DenseNet201, MobileNet V2, and InceptionV3 are also applied. Results thus obtained exhibited that the proposed research framework performed better than reported in state of the art. Different CNN, models applied for tumor classification such as MobileNet V2, Inception V3, ResNet50, DenseNet201, NASNet and attained accuracy 91.8, 92.8, 92.9, 93.1, 99.6%, respectively. However, NASNet exhibited the highest accuracy.

摘要

脑肿瘤是脑瘤中脑细胞的不受控制的发育,如果在早期没有被发现。早期脑肿瘤诊断在治疗计划和患者的生存率中起着至关重要的作用。脑肿瘤有不同的形式、性质和治疗方法。因此,手动脑肿瘤检测既复杂又耗时,且容易出错。因此,目前需要高精度的自动化计算机辅助诊断。本文在 Figshare 数据集上使用 ResNet50 作为骨干网络通过 Unet 架构进行分割,达到了 0.9504 的交并比 (IoU)。引入了预处理和数据增强的概念来提高分类率。通过迁移学习,使用进化算法和强化学习对脑肿瘤进行多分类。还应用了其他深度学习方法,如 ResNet50、DenseNet201、MobileNet V2 和 InceptionV3。由此得到的结果表明,所提出的研究框架比现有技术的报告表现更好。应用于肿瘤分类的不同 CNN 模型,如 MobileNet V2、Inception V3、ResNet50、DenseNet201、NASNet,其准确率分别为 91.8%、92.8%、92.9%、93.1%、99.6%。然而,NASNet 的准确率最高。

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