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Detecting and Tracking Nosocomial Methicillin-Resistant Staphylococcus aureus Using a Microfluidic SERS Biosensor

机译:使用微流控SERS生物传感器检测和跟踪耐甲氧西林金黄色葡萄球菌的医院内感染

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Rapid detection and differentiation of methicillin-resistant Staphylococcus aureus (MRSA) are critical for the early diagnosis of difficult-to-treat nosocomial and community acquired clinical infections and improved epidemiological surveillance. We developed a microfluidics chip coupled with surface enhanced Raman scattering (SERS) spectroscopy (532 nm) "lab-on-a-chip" system to rapidly detect and differentiate methicillin-sensitive S. aureus (MSSA) and MRSA using clinical isolates from China and the United States. A total of 21 MSSA isolates and 37 MRSA isolates recovered from infected humans were first analyzed by using polymerase chain reaction (PCR) and multilocus sequence typing (MLST). The mecA gene, which refers resistant to methicillin, was detected in all the MRSA isolates, and different allelic profiles were identified assigning isolates as either previously identified or novel clones. A total of 17 400 SERS spectra of the 58 S. aureus isolates were collected within 3.5 h using this optofluidic platform. Intra- and interlaboratory spectral reproducibility yielded a differentiation index value of 3.43-4.06 and demonstrated the feasibility of using this optofluidic system at different laboratories for bacterial identification. A global SERS-based dendrogram model for MRSA and MSSA identification and differentiation to the strain level was established and cross-validated (Simpson index of diversity of 0.989) and had an average recognition rate of 95% for S. aureus isolates associated with a recent outbreak in China. SERS typing correlated well with MLST indicating that it has high sensitivity and selectivity and would be suitable for determining the origin and possible spread of MRSA. A SERS-based partial least-squares regression model could quantify the actual concentration of a specific MRSA isolate in a bacterial mixture at levels from 5% to 100% (regression coefficient, >0.98; residual prediction deviation, >10.05). This optofluidic platform has advantages over traditional genotyping for ultrafast, automated, and reliable detection and epidemiological surveillance of bacterial infections.
机译:快速检测和区分耐甲氧西林的金黄色葡萄球菌(MRSA)对于难以治疗的医院和社区获得性临床感染的早期诊断以及改善流行病学监测至关重要。我们开发了一种微流体芯片,结合了表面增强拉曼散射(SERS)光谱(532 nm)“芯片实验室”系统,可以使用来自中国的临床分离株快速检测和区分对甲氧西林敏感的金黄色葡萄球菌(MSSA)和MRSA和美国。首先使用聚合酶链反应(PCR)和多基因座序列分型(MLST)分析了从感染人类中回收的总共21种MSSA分离株和37种MRSA分离株。在所有MRSA分离株中均检测到对甲氧西林具有抗性的mecA基因,并鉴定了不同的等位基因谱,将分离株指定为先前鉴定的克隆或新型克隆。使用该光流体平台,在3.5 h内收集了58株金黄色葡萄球菌的17400 SERS光谱。实验室内和实验室间的光谱再现性得出的分化指数值为3.43-4.06,并证明了在不同实验室使用这种光流体系统进行细菌鉴定的可行性。建立了全球基于SERS的树状图模型,用于MRSA和MSSA鉴定和向菌株水平的分化并交叉验证(辛普森多样性指数为0.989),对于与最近相关的金黄色葡萄球菌分离株的平均识别率为95%在中国爆发。 SERS分型与MLST相关性很好,表明它具有高灵敏度和选择性,将适合确定MRSA的起源和可能的传播。基于SERS的偏最小二乘回归模型可以量化细菌混合物中特定MRSA分离物的实际浓度,浓度为5%至100%(回归系数,> 0.98;残留预测偏差,> 10.05)。与传统的基因分型相比,这种光流体平台具有超快,自动化和可靠的细菌感染检测和流行病学监测优势。

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