Department of Physics and Technology, UiT The Arctic University of Norway, Tromsø, Norway.
Thrombosis Research Group (TREC), Department of Clinical Medicine, UiT The Arctic University of Norway, Tromsø, Norway.
Sci Rep. 2024 Mar 21;14(1):6791. doi: 10.1038/s41598-024-56788-7.
Extracellular vesicles (EVs) released from cells attract interest for their possible role in health and diseases. The detection and characterization of EVs is challenging due to the lack of specialized methodologies. Raman spectroscopy, however, has been suggested as a novel approach for biochemical analysis of EVs. To extract information from the spectra, a novel deep learning architecture is explored as a versatile variant of autoencoders. The proposed architecture considers the frequency range separately from the intensity of the spectra. This enables the model to adapt to the frequency range, rather than requiring that all spectra be pre-processed to the same frequency range as it was trained on. It is demonstrated that the proposed architecture accepts Raman spectra of EVs and lipoproteins from 13 biological sources and from two laboratories. High reconstruction accuracy is maintained despite large variances in frequency range and noise level. It is also shown that the architecture is able to cluster the biological nanoparticles by their Raman spectra and differentiate them by their origin without pre-processing of the spectra or supervision during learning. The model performs label-free differentiation, including separating EVs from activated vs. non-activated blood platelets and EVs/lipoproteins from prostate cancer patients versus non-cancer controls. The differentiation is evaluated by creating a neural network classifier that observes the features extracted by the model to classify the spectra according to their sample origin. The classification reveals a test sensitivity of and selectivity of over 769 measurements from two labs that have different measurement configurations.
细胞外囊泡 (EVs) 的释放引起了人们的兴趣,因为它们可能在健康和疾病中发挥作用。由于缺乏专门的方法学,EVs 的检测和表征具有挑战性。然而,拉曼光谱已被提议作为 EVs 生化分析的一种新方法。为了从光谱中提取信息,探索了一种新的深度学习架构,作为自动编码器的通用变体。所提出的架构分别考虑光谱的频率范围和强度。这使得模型能够适应频率范围,而不需要将所有光谱都预处理为与训练时相同的频率范围。结果表明,所提出的架构接受来自 13 个生物来源和两个实验室的 EVs 和脂蛋白的拉曼光谱。尽管频率范围和噪声水平存在很大差异,但仍保持高重建精度。还表明,该架构能够根据拉曼光谱对生物纳米颗粒进行聚类,并根据其来源对其进行区分,而无需对光谱进行预处理或在学习过程中进行监督。该模型执行无标签区分,包括将 EVs 与激活的与非激活的血小板以及前列腺癌患者的 EVs/脂蛋白与非癌症对照区分开。通过创建一个神经网络分类器来评估区分,该分类器观察模型提取的特征,根据其样本来源对光谱进行分类。该分类在两个具有不同测量配置的实验室的 769 多次测量中显示出 的测试灵敏度和 的选择性。