Liu Ziyu, Xue Ying, Yang Chun, Li Bei, Zhang Ying
Department of Pediatric Respiratory, The First Hospital of Jilin University, Changchun, China.
School of Life Science, Jilin University, Changchun, China.
Front Microbiol. 2023 Jan 26;14:1065173. doi: 10.3389/fmicb.2023.1065173. eCollection 2023.
Respiratory infections rank fourth in the global economic burden of disease. Lower respiratory tract infections are the leading cause of death in low-income countries. The rapid identification of pathogens causing lower respiratory tract infections to help guide the use of antibiotics can reduce the mortality of patients with lower respiratory tract infections. Single-cell Raman spectroscopy is a "whole biological fingerprint" technique that can be used to identify microbial samples. It has the advantages of no marking and fast and non-destructive testing. In this study, single-cell Raman spectroscopy was used to collect spectral data of six respiratory tract pathogen isolates. The T-distributed stochastic neighbor embedding (t-SNE) isolation analysis algorithm was used to compare the differences between the six respiratory tract pathogens. The eXtreme Gradient Boosting (XGBoost) algorithm was used to establish a Raman phenotype database model. The classification accuracy of the isolated samples was 93-100%, and the classification accuracy of the clinical samples was more than 80%. Combined with heavy water labeling technology, the drug resistance of respiratory tract pathogens was determined. The study showed that single-cell Raman spectroscopy-DO (SCRS-DO) labeling could rapidly identify the drug resistance of respiratory tract pathogens within 2 h.
呼吸道感染在全球疾病经济负担中排名第四。下呼吸道感染是低收入国家的主要死因。快速鉴定引起下呼吸道感染的病原体以帮助指导抗生素的使用可降低下呼吸道感染患者的死亡率。单细胞拉曼光谱是一种可用于鉴定微生物样本的“全生物指纹”技术。它具有无需标记、检测快速且无损的优点。在本研究中,使用单细胞拉曼光谱收集六种呼吸道病原体分离株的光谱数据。采用T分布随机邻域嵌入(t-SNE)分离分析算法比较六种呼吸道病原体之间的差异。使用极端梯度提升(XGBoost)算法建立拉曼表型数据库模型。分离样本的分类准确率为93%-100%,临床样本的分类准确率超过80%。结合重水标记技术,测定呼吸道病原体的耐药性。研究表明,单细胞拉曼光谱-DO(SCRS-DO)标记可在2小时内快速鉴定呼吸道病原体的耐药性。