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通过集成注意力机制提高脑肿瘤分类。

Enhancing brain tumor classification through ensemble attention mechanism.

机构信息

Department of Geomatic Engineering, Yıldız Technical University, Esenler, Istanbul, Turkey.

Department of Geomatics Engineering, Gumushane University, Gumushane, Turkey.

出版信息

Sci Rep. 2024 Sep 27;14(1):22260. doi: 10.1038/s41598-024-73803-z.

DOI:10.1038/s41598-024-73803-z
PMID:39333699
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11436883/
Abstract

Brain tumors pose a serious threat to public health, impacting thousands of individuals directly or indirectly worldwide. Timely and accurate detection of these tumors is crucial for effective treatment and enhancing the quality of patients' lives. The widely used brain imaging technique is magnetic resonance imaging, the precise identification of brain tumors in MRI images is challenging due to the diverse anatomical structures. This paper introduces an innovative approach known as the ensemble attention mechanism to address this challenge. Initially, the approach uses two networks to extract intermediate- and final-level feature maps from MobileNetV3 and EfficientNetB7. This assists in gathering the relevant feature maps from the different models at different levels. Then, the technique incorporates a co-attention mechanism into the intermediate and final feature map levels on both networks and ensembles them. This directs attention to certain regions to extract global-level features at different levels. Ensemble of attentive feature maps enabling the precise detection of various feature patterns within brain tumor images at both model, local, and global levels. This leads to an improvement in the classification process. The proposed system was evaluated on the Figshare dataset and achieved an accuracy of 98.94%, and 98.48% for the BraTS 2019 dataset which is superior to other methods. Thus, it is robust and suitable for brain tumor detection in healthcare systems.

摘要

脑肿瘤对公众健康构成严重威胁,直接或间接地影响着全球成千上万的人。及时、准确地检测这些肿瘤对于有效治疗和提高患者生活质量至关重要。广泛使用的脑成像技术是磁共振成像,但由于解剖结构的多样性,MRI 图像中脑肿瘤的精确识别具有挑战性。本文介绍了一种名为集成注意力机制的创新方法来应对这一挑战。该方法首先使用两个网络从 MobileNetV3 和 EfficientNetB7 中提取中间和最终级别的特征图,以帮助从不同模型的不同级别收集相关特征图。然后,该技术在两个网络的中间和最终特征图级别中加入了协同注意机制,并将它们集成在一起。这会将注意力引导到某些区域,以在不同级别提取全局级别的特征。集成注意力特征图可以在模型、局部和全局级别上精确检测脑肿瘤图像中的各种特征模式,从而改善分类过程。该系统在 Figshare 数据集上进行了评估,在 BraTS 2019 数据集上的准确率达到了 98.94%,优于其他方法。因此,它具有鲁棒性,适用于医疗保健系统中的脑肿瘤检测。

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