化学
微流控
数字聚合酶链反应
荧光
核酸
纳米技术
生物系统
检出限
炸薯条
荧光相关光谱
生物物理学
色谱法
分子
计算机科学
物理
生物化学
光学
基因
材料科学
有机化学
聚合酶链反应
电信
生物
作者
Zhaopeng Chen,Peng Yang,Zezhou Yang,Yaqin Chai,Ruo Yuan,Ying Zhuo,Wenbin Liang
标识
DOI:10.1021/acs.analchem.2c01754
摘要
Digital droplet technology has emerged as a powerful new tool for biomarker analysis. Temperature cycling, enzymes, and off-chip processes are, nevertheless, always required. Herein, we constructed a digital droplet auto-catalytic hairpin assembly (ddaCHA) microfluidic system to achieve digital quantification of single-molecule microRNA (miRNA). The designed continuous chip integrates droplet generation, incubation, and fluorescence imaging on the chip, avoiding the requirement for extra droplet re-collection and heating operations. Clearly, the digital readout was obtained by partitioning miRNA into many individual pL-sized small droplets in which the target molecule is either present ("positive") or absent ("negative"). Importantly, the suggested enzyme-free auto-catalytic hairpin assembly (aCHA) in droplets successfully mitigated the effects of the external environment and thermal cycling on droplets, and its reaction rate is significantly superior to that of traditional CHA. We got excellent sensitivity with a linear correlation from 1 pM to 10 nM and a detection limit of 0.34 pM in the fluorescence spectrum section, as well as high selectivity to other miRNAs. Furthermore, the minimum target concentration could be reduced to 10 fM based on the high-throughput tracking computation of fluorescent droplets with a self-developed Python script, and the fluorescence intensity distribution agreed well with the theoretical value, demonstrating that it is feasible to detect miRNA efficiently and accurately, which has great potential applications in clinical diagnostics and biochemical research.
科研通智能强力驱动
Strongly Powered by AbleSci AI