Glioma Identification Based on Digital Multimodal Spectra Integrated With Deep Learning Feature Fusion Using a Miniature Raman Spectrometer

IF 2.2 3区 化学 Q2 INSTRUMENTS & INSTRUMENTATION
Qingbo Li, Shufan Chen
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引用次数: 0

Abstract

The miniature fiber Raman spectroscopy detection technology can reflect the properties of biomolecules through spectral characteristics and has the advantages of noninvasiveness, real-time, safety, label-free operation, and potential for early cancer diagnosis. This technology holds promise for developing portable, low-cost, intraoperative tumor detection instruments. Glioma is one of the most common malignant tumors of the central nervous system with rapid growth and a short disease course. However, the considerable heterogeneity of the glioma sample leads to substantial intraclass variance in collected spectra, coupled with the miniature Raman spectrometer's low signal-to-noise ratio. These factors diminish the accuracy of the brain glioma recognition model. To address this issue, a glioma identification method based on digital multimodal spectra integrated with deep learning features fusion (DMS-DLFF) using the miniature Raman spectrometer is proposed. Different from existing multimodal tumor detection methods employing multiple spectral instruments, DMS-DLFF enhances tumor identification accuracy without increasing hardware costs. The method mathematically decomposes the original spectra to Raman and fluorescence spectra, so as to augment the biospectral information. Then, the deep learning method is used to extract the feature information of the two kinds of spectra, respectively, and the digital multimodal spectral fusion is realized at the feature level. Moreover, a two-layer pattern recognition model is constructed based on the ensemble strategy, amalgamating the strengths of diverse classifiers. Meanwhile, the bagging strategy is introduced to improve support vector machine algorithms, one of the basic classifiers. Compared with traditional methodologies, DMS-DLFF operates at both the feature level and decision level, employing high-information-density feature vectors to train ensemble classification models for increasing overall recognition accuracy. This study collected 260 Raman spectra of glioma and 151 Raman spectra of normal brain tissue. The accuracy, sensitivity, and specificity were 91.9%, 96.7%, and 80.8%, respectively. The proposed method outperforms traditional algorithms in brain glioma detection, which helps doctors formulate precise surgical plans and thereby improve patient prognosis.
利用微型拉曼光谱仪,基于数字多模态光谱与深度学习特征融合进行胶质瘤识别
微型光纤拉曼光谱检测技术可通过光谱特性反映生物大分子的性质,具有无创、实时、安全、无标记操作等优点,并有望用于早期癌症诊断。该技术有望开发便携式、低成本的术中肿瘤检测仪器。胶质瘤是中枢神经系统最常见的恶性肿瘤之一,生长迅速,病程短。然而,胶质瘤样本具有相当大的异质性,导致采集到的光谱存在很大的类内差异,再加上微型拉曼光谱仪的信噪比较低。这些因素降低了脑胶质瘤识别模型的准确性。为解决这一问题,本文提出了一种基于数字多模态光谱与深度学习特征融合(DMS-DLFF)的胶质瘤识别方法。与现有的使用多种光谱仪器的多模态肿瘤检测方法不同,DMS-DLFF 在不增加硬件成本的情况下提高了肿瘤识别的准确性。该方法通过数学方法将原始光谱分解为拉曼光谱和荧光光谱,从而增强生物光谱信息。然后,利用深度学习方法分别提取两种光谱的特征信息,在特征层实现数字多模态光谱融合。此外,基于集合策略构建了双层模式识别模型,融合了不同分类器的优势。同时,引入了装袋策略来改进支持向量机算法(基本分类器之一)。与传统方法相比,DMS-DLFF 同时在特征层和决策层运行,采用高信息密度特征向量来训练集合分类模型,从而提高整体识别准确率。这项研究收集了 260 个胶质瘤拉曼光谱和 151 个正常脑组织拉曼光谱。准确率、灵敏度和特异性分别为 91.9%、96.7% 和 80.8%。该方法在脑胶质瘤检测方面优于传统算法,有助于医生制定精确的手术方案,从而改善患者的预后。
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来源期刊
Applied Spectroscopy
Applied Spectroscopy 工程技术-光谱学
CiteScore
6.60
自引率
5.70%
发文量
139
审稿时长
3.5 months
期刊介绍: Applied Spectroscopy is one of the world''s leading spectroscopy journals, publishing high-quality peer-reviewed articles, both fundamental and applied, covering all aspects of spectroscopy. Established in 1951, the journal is owned by the Society for Applied Spectroscopy and is published monthly. The journal is dedicated to fulfilling the mission of the Society to “…advance and disseminate knowledge and information concerning the art and science of spectroscopy and other allied sciences.”
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