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Optofluidic label-free SERS platform for rapid bacteria detection in serum

机译:无光液标记的SERS平台可快速检测血清中的细菌

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The prevalence of hospital acquired infections and antibiotic resistant pathogens necessitates the development of bacteria sensing systems that do not require sample amplification via conventional cell culturing, which can be prohibitively time-consuming. To meet this need, we designed an optofluidic Raman detection platform which utilized a microfluidic driven hollow-core photonic crystal fiber, which in combination with silver nanoparticles, provides a large enhancement to the Raman signal. By confining both light and cells within this fiber, spectral events generated by the flowing cells facilitates a novel method of cell counting to simultaneously quantify and qualify infections. Counting is performed automatically by a genetically optimized support vector machine learning algorithm that was previously developed by our group. The microfluidic system can be regenerated multiple times, and allows for online detection of planktonic bacteria to levels as low as 4 CFU/mL in 15 min. This compares favourably to other methods currently under development such as qPCR and biosensing techniques. Furthermore, Raman spectral differences between bacteria allow for inherent multiplexed detection in serum, by adding another layer to the learning algorithm. Further development of this device has promising potential as a rapid point-of-care system for infection management in the clinic.
机译:医院获得性感染和抗生素抗性病原体的流行需要开发不需要通过常规细胞培养进行样品扩增的细菌传感系统,这可能会非常耗时。为了满足这一需求,我们设计了一种光流体拉曼检测平台,该平台利用了微流体驱动的中空光子晶体光纤,该光纤与银纳米颗粒相结合,大大增强了拉曼信号。通过将光和细胞限制在这种纤维内,流动细胞产生的光谱事件促进了一种新的细胞计数方法,可以同时量化和鉴定感染。计数是由我们小组先前开发的经过遗传优化的支持向量机学习算法自动执行的。该微流体系统可以再生多次,并允许在15分钟内在线检测浮游细菌至低至4 CFU / mL的水平。与当前正在开发的其他方法(例如qPCR和生物传感技术)相比,它具有优势。此外,细菌之间的拉曼光谱差异允许在学习算法中增加另一层,从而在血清中进行固有的多重检测。该设备的进一步开发有望成为临床中用于感染管理的快速即时护理系统。

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