Kim Sangsik, Day Alexander S, Yoon Jeong-Yeol
Department of Biomedical Engineering, The University of Arizona, Tucson, AZ, 85721, USA.
Anal Bioanal Chem. 2022 May;414(13):3895-3904. doi: 10.1007/s00216-022-04031-5. Epub 2022 Mar 28.
Traditionally, specific bioreceptors such as antibodies have rapidly identified bacterial species in environmental water samples. However, this method has the disadvantages of requiring an additional process to conjugate or immobilize bioreceptors on the assay platform, which becomes unstable at room temperature. Here, we demonstrate a novel mix-and-match method to identify bacteria species by loading the bacterial samples with simple bacteria interacting components (not bioreceptors), such as lipopolysaccharides, peptidoglycan, and bovine serum albumin, and carboxylated particles, all separately on multiple channels. Neither covalent conjugation nor surface immobilization was necessary. Interactions between bacteria and the above bacteria interacting components resulted in varied surface tension and viscosity, leading to various flow velocities of capillary action through the paper fibers. The smartphone camera and a custom Python code recorded multiple channel flow velocity, each loaded with different bacteria interacting components. A multi-dimensional data set was obtained for a given bacterial species and concentration and used as a machine learning training model. A support vector machine was applied to classify the six bacterial species: Escherichia coli, Salmonella Typhimurium, Pseudomonas aeruginosa, Staphylococcus aureus, Enterococcus faecium, and Bacillus subtilis. Under optimized conditions, the training model predicts the bacterial species with an accuracy of > 85% of the six bacteria species.
传统上,特定的生物受体(如抗体)已被用于快速鉴定环境水样中的细菌种类。然而,这种方法存在缺点,即需要额外的过程将生物受体偶联或固定在检测平台上,而该平台在室温下会变得不稳定。在此,我们展示了一种新颖的混合匹配方法,通过在多个通道上分别加载含有简单细菌相互作用成分(而非生物受体)的细菌样本,如脂多糖、肽聚糖、牛血清白蛋白和羧化颗粒,来鉴定细菌种类。既不需要共价偶联也不需要表面固定。细菌与上述细菌相互作用成分之间的相互作用导致表面张力和粘度变化,从而使通过纸纤维的毛细管作用产生不同的流速。智能手机摄像头和自定义的Python代码记录了每个加载有不同细菌相互作用成分的多个通道的流速。针对给定的细菌种类和浓度获得了一个多维数据集,并将其用作机器学习训练模型。应用支持向量机对六种细菌进行分类:大肠杆菌、鼠伤寒沙门氏菌、铜绿假单胞菌、金黄色葡萄球菌、粪肠球菌和枯草芽孢杆菌。在优化条件下,训练模型对六种细菌的预测准确率超过85%。