化学
细菌
苯硼酸
计算生物学
人口
生物传感器
生物系统
细菌分类学
鉴定(生物学)
生物化学
荧光团
荧光
酶
细菌细胞结构
纳米技术
大肠杆菌
微生物学
作者
Xin Wang,Lilin Yin,Haiyan Li,Hui-Da Li,Ying Cao,Ting Yang,Jianhua Wang
标识
DOI:10.1021/acs.analchem.5c05097
摘要
Array-based biosensors hold substantial promise for rapid bacterial identification. However, conventional approaches face two key limitations: their reliance on nonspecific interactions with bacterial surfaces hinders biochemical interpretation, and their detection of bulk populations results in concentration-dependent responses that obscure distinctive bacterial fingerprints. Here, we present a novel, concentration-independent bacteria identification (CIBI) sensor array strategy that profiles the intrinsic biochemical characteristics of bacteria at the single-cell level to generate distinct fingerprints. The array consists of three sensing modules: two unnatural d-amino acid probes targeting different enzymatic pathways in peptidoglycan synthesis, and a phenylboronic acid probe recognizing surface polysaccharides. By measuring per-cell fluorescence from ∼10,000 individually interrogated bacteria rather than population responses, the system achieves concentration-independent profiling. Combined with machine learning, the CIBI strategy accurately identifies nine bacterial strains (105 CFU/mL) with 92.2% accuracy within 100 min. Remarkably, it also predicts the identity of previously unseen strains. In clinical applications, the array identified pathogen-spiked urinary tract infection samples with 95.2% accuracy, improving to 97.6% using a random forest algorithm. Overall, this strategy offers a robust platform for rapid and reliable clinical diagnostics.
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