Baffa Matheus de Freitas Oliveira, Zezell Denise Maria, Bachmann Luciano, Pereira Thiago Martini, Felipe Joaquim Cezar
São Paulo State University, Ribeirão Preto, Brazil.
Institute of Nuclear and Energy Research, São Paulo, Brazil.
Sci Rep. 2025 Aug 26;15(1):31351. doi: 10.1038/s41598-025-16060-y.
Hyperspectral imaging has shown significant applicability in the medical field, particularly for its ability to represent spectral information that can differentiate specific biomolecular characteristics in tissue samples. However, the complexity of analyzing HSI data, due to its high dimensionality and the large volume of information, presents significant challenges. At the same time, deep learning, particularly convolutional neural networks and recurrent neural networks, has become an essential tool in medical diagnostics, providing detailed analysis across various contexts. These techniques enable the analysis of complex information often unattainable through traditional methods. This paper introduces a novel approach that integrates micro-FTIR spectroscopy with three different deep learning architectures, namely RNN, FCNN, and 1D-CNN, to compare their performance in region-based classification of thyroid tissues, including goiter, cancerous, and healthy types. The proposed deep learning methods were developed on a dataset of 60 patients and evaluated using grouped 10-fold cross-validation. The 1D-CNN achieved the highest scores in classifying the spectral data provided by micro-FTIR, enabling more precise and accurate region-based tissue classification. The 1D-CNN achieved an accuracy of 97.60%, while RNN and FCNN achieved 96.88% and 93.66%, respectively. These results highlight the effectiveness of this approach in enhancing the precision of thyroid pathology analysis.
高光谱成像已在医学领域显示出显著的适用性,特别是因其能够呈现可区分组织样本中特定生物分子特征的光谱信息。然而,由于高光谱成像(HSI)数据的高维度和大量信息,分析其数据的复杂性带来了重大挑战。与此同时,深度学习,特别是卷积神经网络和循环神经网络,已成为医学诊断中的重要工具,可在各种情况下提供详细分析。这些技术能够分析传统方法通常无法获得的复杂信息。本文介绍了一种新颖的方法,该方法将显微傅里叶变换红外光谱(micro-FTIR spectroscopy)与三种不同的深度学习架构,即循环神经网络(RNN)、全卷积神经网络(FCNN)和一维卷积神经网络(1D-CNN)相结合,以比较它们在甲状腺组织基于区域的分类中的性能,包括甲状腺肿、癌性和健康类型。所提出的深度学习方法是在60名患者的数据集上开发的,并使用分组10折交叉验证进行评估。一维卷积神经网络在对显微傅里叶变换红外光谱提供的光谱数据进行分类时获得了最高分,能够实现更精确和准确的基于区域的组织分类。一维卷积神经网络的准确率达到了97.60%,而循环神经网络和全卷积神经网络的准确率分别为96.88%和93.66%。这些结果突出了该方法在提高甲状腺病理分析精度方面的有效性。