生物传感器
抄写(语言学)
化学
计算生物学
抑制因子lexA
激活剂(遗传学)
孕酮受体
小分子
生物物理学
生物
生物化学
受体
细胞生物学
转录因子
抑制因子
遗传学
基因
癌症
哲学
雌激素受体
语言学
乳腺癌
作者
Kun Liu,Yunsen Zhang,Ke Liu,Yunqiu Zhao,Bei Gao,Xinyi Tao,Ming Zhao,Feng‐Qing Wang,Dongzhi Wei
标识
DOI:10.1016/j.bios.2021.113897
摘要
Identifying, isolating, and obtaining naturally occurring transcription factors (TFs) is crucial for developing transcription-dependent biosensors. However, identifying and optimizing TFs for given molecules requires extensive time and effort. Accordingly, here, we report a strategy for the de novo design of a nonnatural TF, DLA, on the basis of a subtle conformational change of the ligand-binding domain (LBD) after the binding of a target molecule with its receptor. For the de novo design of DLA, we applied molecular dynamics to simulate different conformational states of DLA in order to understand the complete activity of DLA, which involves shortening of the distance between the DNA-binding domain (DBD) and the activation domain (AD) after progesterone binds to its LBD within DLA. The simulated results suggested that prokaryotic LexA, a truncated LBD from the progesterone receptor, and prokaryotic B42 together constitute DLA with a TF function. As a proof of concept, DLA was used as a transcription activator controlling the transcription of green fluorescent protein to construct an S. cerevisiae biosensor for progesterone detection. The progesterone-specific biosensor was successfully constructed with a sensitivity index EC50 of 27 μg/L, working range (0.16-60 μg/L), and time-to-detection (2.5 h). Ultimately, a low-cost, user-friendly kit was developed for the rapid detection of progesterone in the clinic. Theoretically, this work can also be used to develop a variety of other biosensors by employing the same strategy.
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