生物传感器
检出限
纳米片
G-四倍体
纳米复合材料
纳米技术
鸟嘌呤
化学
适体
胶体金
材料科学
纳米颗粒
DNA
分子生物学
色谱法
基因
生物化学
生物
核苷酸
作者
Qianqing Wu,Zhenhui Li,Qianwei Liang,Rongkai Ye,Shuzhou Guo,Xiaobing Zeng,Jianqiang Hu,Aiqing Li
标识
DOI:10.1016/j.electacta.2022.140945
摘要
MicroRNAs (miRNAs) are considered as potential biomarkers for early diagnosis and prognostic assessment of diabetic nephropathy. In this work, an electrochemical biosensor for ultrasensitive detection of miRNA-377 was constructed based on MXene-Au nanocomposites and G-quadruplex nano-amplification strategy. As a promising nanocarrier, taking advantage of leveraging synergistic effects between Au nanoparticles (AuNPs) and MXene nanosheet, MXene-Au nanocomposites exhibited excellent electronic conductivity and provided massive active sites for DNA capture probe immobilization by Au-S bonds. AuNPs modified with Guanine-rich sequence DNA detection probes were designed as signal amplification nano-labels. Specifically, by inducing the transition of Guanine-rich detection probes to G-quadruplex, the strong affinity interaction between methylene blue and G-quadruplex could not only reflect trace concentration information of miRNA-377, but also lead to the further enhancement of electrochemical signal (2.7-fold). As a result, this newly designed biosensor exhibited superior sensing performance with a wide linear range from 10 aM to 100 pM and the limit of detection was as low as 1.35 aM. Compared with biosensors based on other nanocomposites and reported miRNA-377 biosensors, the proposed sensing platform did not require any thermal cycling or reverse transcription process, meeting the miRNA sensing requirements of convenient, sensitive, specific and stable. Furthermore, the as-constructed biosensor also displayed good selectivity, which was applied to accurate detection of miRNA-377 in human serum samples with satisfactory sensitivity, suggesting the biosensor system has promising applications in biological researches and early clinical diagnosis for diabetic nephropathy.
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