Xiamen Key Laboratory of Indoor Air and Health, Key Laboratory of Urban Environment and Health, Institute of Urban Environment, Chinese Academy of Sciences, Xiamen 361021, China.
College of Resources and Environment, University of Chinese Academy of Sciences, Beijing 100049, China.
Anal Chem. 2022 Sep 13;94(36):12416-12426. doi: 10.1021/acs.analchem.2c02226. Epub 2022 Aug 27.
Pathogenic bacterial infections, exacerbated by increasing antimicrobial resistance, pose a major threat to human health worldwide. Extracellular vesicles (EVs), secreted by bacteria and acting as their "long-distance weapons", play an important role in the occurrence and development of infectious diseases. However, no efficient methods to rapidly detect and identify EVs of different bacterial origins are available. Here, label-free Raman spectroscopy in combination with a new deep learning model of the attentional neural network (aNN) was developed to identify pathogen-derived EVs at Gram, species, strain, and even down to physiological levels. By training the aNN model with a large Raman data set from six typical pathogen-derived EVs, we achieved the identification of EVs with high accuracies at all levels: exceeding 96% at the Gram and species levels, 93% at the antibiotic-resistant and sensitive strain levels, and still above 87% at the physiological level. aNN enabled Raman spectroscopy to interrogate the bacterial origin of EVs to a much higher level than previous methods. Moreover, spectral markers underpinning EV discrimination were uncovered from subtly different EV spectra via an interpretation algorithm of the integrated gradient. A further comparative analysis of the rich Raman biochemical signatures of EVs and parental pathogens clearly revealed the biogenesis process of EVs, including the selective encapsulation of biocomponents and distinct membrane compositions from the original bacteria. This developed platform provides an accurate and versatile means to identify pathogen-derived EVs, spectral markers, and the biogenesis process. It will promote rapid diagnosis and allow the timely treatment of bacterial infections.
致病细菌感染,加上抗菌药物耐药性的加剧,对全球人类健康构成重大威胁。细菌分泌的细胞外囊泡(EVs)作为其“远程武器”,在传染病的发生和发展中起着重要作用。然而,目前尚无有效的方法来快速检测和鉴定不同细菌来源的 EVs。在这里,我们开发了无标记拉曼光谱结合注意力神经网络(aNN)的深度学习模型,用于鉴定革兰氏阳性菌、种属、菌株甚至生理水平的病原体衍生 EVs。通过使用来自六种典型病原体衍生 EVs 的大型拉曼数据集训练 aNN 模型,我们在所有水平上实现了 EVs 的高准确度识别:革兰氏阳性菌和种属水平超过 96%,抗生素耐药性和敏感性菌株水平超过 93%,生理水平仍超过 87%。aNN 使拉曼光谱能够以比以往方法更高的水平探究 EVs 的细菌来源。此外,通过集成梯度的解释算法,从略微不同的 EV 光谱中发现了支持 EV 区分的光谱标记。对 EV 和原始病原体丰富的拉曼生化特征的进一步比较分析清楚地揭示了 EV 的生物发生过程,包括生物成分的选择性封装以及与原始细菌不同的膜组成。该开发平台为鉴定病原体衍生的 EVs、光谱标记和生物发生过程提供了一种准确、通用的方法。它将促进快速诊断,并允许及时治疗细菌感染。