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UniVisNet: A Unified Visualization and Classification Network for Accurate Grading of Gliomas from MRI.

Computers in Biology and Medicine(2023)SCI 3区SCI 2区

Air Force Med Univ

Cited 2|Views34
Abstract
Accurate grading of brain tumors plays a crucial role in the diagnosis and treatment of glioma. While convolutional neural networks (CNNs) have shown promising performance in this task, their clinical applicability is still constrained by the interpretability and robustness of the models. In the conventional framework, the classification model is trained first, and then visual explanations are generated. However, this approach often leads to models that prioritize classification performance or complexity, making it difficult to achieve a precise visual explanation. Motivated by these challenges, we propose the Unified Visualization and Classification Network (UniVisNet), a novel framework that aims to improve both the classification performance and the generation of high-resolution visual explanations. UniVisNet addresses attention misalignment by introducing a subregion-based attention mechanism, which replaces traditional down-sampling operations. Additionally, multiscale feature maps are fused to achieve higher resolution, enabling the generation of detailed visual explanations. To streamline the process, we introduce the Unified Visualization and Classification head (UniVisHead), which directly generates visual explanations without the need for additional separation steps. Through extensive experiments, our proposed UniVisNet consistently outperforms strong baseline classification models and prevalent visualization methods. Notably, UniVisNet achieves remarkable results on the glioma grading task, including an AUC of 94.7%, an accuracy of 89.3%, a sensitivity of 90.4%, and a specificity of 85.3%. Moreover, UniVisNet provides visually interpretable explanations that surpass existing approaches. In conclusion, UniVisNet innovatively generates visual explanations in brain tumor grading by simultaneously improving the classification performance and generating high-resolution visual explanations. This work contributes to the clinical application of deep learning, empowering clinicians with comprehensive insights into the spatial heterogeneity of glioma.
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Key words
Glioma grading,Visual explanations,Subregion-based attention,High-resolution explanations,Unified model
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要点】:本文提出了一种名为UniVisNet的新网络结构,旨在提高脑胶质瘤MRI图像的分类性能和视觉解释生成,创新点在于统一了视觉化和分类过程,提高了解释的可视化分辨率。

方法】:UniVisNet通过引入基于子区域的注意力机制和融合多尺度特征图来改进传统的卷积神经网络结构。

实验】:在广泛实验中,UniVisNet在脑胶质瘤分级任务上表现出色,AUC达到94.7%,准确率为89.3%,敏感性为90.4%,特异性为85.3%,并且生成的视觉解释比现有方法更直观。使用的数据集为脑胶质瘤MRI图像数据集。