An interpretable multi-scale convolutional attention residual neural network for glioma grading with Raman spectroscopy

IF 2.6 3区 化学 Q2 CHEMISTRY, ANALYTICAL Analytical Methods Pub Date : 2024-12-07 DOI:10.1039/D4AY02068E
Qingbo Li, Xupeng Shao, Yan Zhou, Yinyan Wang, Zeya Yan, Hongbo Bao and Lipu Zhou
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Abstract

Since the malignancy of gliomas varies with their grade, classifying gliomas of different grades can assist doctors in developing personalized surgical plans during surgery, thereby improving the prognosis. Raman spectroscopy is an optical method for real-time glioma diagnosis. However, high-grade glioma (HGG, WHO grades III and IV), low-grade glioma (LGG, WHO grades I and II) and normal tissue have similar biochemical components, leading to similar spectral characteristics. This similarity reduces classification accuracy when using traditional machine learning methods. In contrast, deep learning offers enhanced feature extraction capabilities without the need for extensive feature engineering. Nevertheless, the diversity in the scale of spectral features presents challenges in designing a neural network that effectively adapts to these characteristics. To address these issues, this paper proposes a Multi-Scale Convolutional Attention Residual Network (M-SCA ResNet), which incorporates multi-scale channel and spatial attention mechanisms along with residual structures to improve the model's feature extraction capabilities. The algorithm presented in this study, was employed to classify HGG, LGG, and healthy tissue and was compared with conventional machine learning and neural networks. The results indicate that the M-SCA ResNet achieved an identification accuracy exceeding 85% for all three tissue types, along with the highest weighted F1-score. Furthermore, to enhance the interpretability of deep learning models, Gradient-weighted Class Activation Mapping (Grad-CAM) was utilized to extract and visualize key Raman shifts that significantly contribute to classification. Most of the extracted Raman shifts correspond to characteristic peaks of brain tissue which have been demonstrated to be effective in distinguishing between glioma of different grades and normal tissue in previous studies. This finding proves the strong correlation between the feature extraction capabilities of the M-SCA ResNet and the biomolecular characteristics of various tissues. The experiments conducted in this study validate the feasibility of using the M-SCA ResNet for glioma grading and provide valuable support for formulating subsequent surgical and treatment plans, indicating its promising application in in vivo and in situ spectral diagnosis of glioma grading.

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利用拉曼光谱对胶质瘤分级的可解释多尺度卷积注意残差神经网络。
由于胶质瘤的恶性程度不同,对胶质瘤进行分级可以帮助医生在手术中制定个性化的手术方案,从而改善预后。拉曼光谱是一种实时诊断胶质瘤的光学方法。然而,高级别胶质瘤(HGG, WHO分级III级和IV级)、低级别胶质瘤(LGG, WHO分级I级和II级)与正常组织具有相似的生化成分,因此光谱特征相似。这种相似性降低了使用传统机器学习方法时的分类准确性。相比之下,深度学习提供了增强的特征提取能力,而不需要大量的特征工程。然而,光谱特征尺度的多样性给设计有效适应这些特征的神经网络带来了挑战。为了解决这些问题,本文提出了一种多尺度卷积注意残差网络(M-SCA ResNet),该网络结合了多尺度通道和空间注意机制以及残差结构,以提高模型的特征提取能力。采用本研究提出的算法对HGG、LGG和健康组织进行分类,并与传统的机器学习和神经网络进行比较。结果表明,M-SCA ResNet对所有三种组织类型的识别准确率均超过85%,加权f1得分最高。此外,为了增强深度学习模型的可解释性,我们利用梯度加权类激活映射(Gradient-weighted Class Activation Mapping, Grad-CAM)来提取和可视化对分类有重要贡献的关键拉曼位移。提取的拉曼位移大部分对应于脑组织的特征峰,在以往的研究中已被证明可以有效区分不同级别的胶质瘤和正常组织。这一发现证明了M-SCA ResNet的特征提取能力与各种组织的生物分子特征之间存在很强的相关性。本研究的实验验证了M-SCA ResNet用于胶质瘤分级的可行性,为制定后续的手术和治疗方案提供了有价值的支持,显示了其在胶质瘤分级的体内和原位光谱诊断中的应用前景。
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来源期刊
Analytical Methods
Analytical Methods CHEMISTRY, ANALYTICAL-FOOD SCIENCE & TECHNOLOGY
CiteScore
5.10
自引率
3.20%
发文量
569
审稿时长
1.8 months
期刊介绍: Early applied demonstrations of new analytical methods with clear societal impact
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