Department of Biomedical Engineering, University of California, Irvine, California 92697, United States.
Center for Synthetic Biology, University of California, Irvine, California 92697, United States.
ACS Synth Biol. 2021 Oct 15;10(10):2705-2714. doi: 10.1021/acssynbio.1c00316. Epub 2021 Oct 1.
Genetically encoded biosensors are valuable for the optimization of small-molecule biosynthesis pathways, because they transduce the production of small-molecule ligands into a readout compatible with high-throughput screening or selection in vivo. However, engineering biosensors with appropriate response functions and ligand preferences remains challenging. Here, we show that the continuous hypermutation system, OrthoRep, can be effectively applied to evolve biosensors with a high dynamic range, reprogrammed activity toward desired noncognate ligands, and proper operational range for coupling to biosynthetic pathways. In particular, we encoded the allosteric transcriptional factor, BenM, on OrthoRep such that the propagation of host yeast cells resulted in BenM's rapid and continuous diversification. When these cells were subjected to cycles of culturing and sorting on BenM activity in the presence and absence of its cognate ligand, muconic acid, or the noncognate ligand, adipic acid, we obtained multiple BenM variants that respond to their corresponding ligands. These biosensors outperform previously engineered BenM-based biosensors by achieving a substantially greater dynamic range (up to ∼180-fold induction) and broadened operational range. The expression of select BenM variants in the presence of a muconic acid biosynthetic pathway demonstrated sensitive biosensor activation without saturating response, which should enable pathway and host engineering for higher production of muconic and adipic acids. Given the streamlined manner in which high-performance and versatile biosensors were evolved using OrthoRep, this study provides a template for generating custom biosensors for metabolic pathway engineering and other biotechnology goals.
基因编码生物传感器对于小分子生物合成途径的优化非常有价值,因为它们可以将小分子配体的产生转化为与高通量筛选或体内选择兼容的读数。然而,用适当的响应功能和配体偏好来设计生物传感器仍然具有挑战性。在这里,我们表明,连续超突变系统 OrthoRep 可以有效地用于进化具有高动态范围、重新编程的非天然配体活性以及与生物合成途径偶联的适当工作范围的生物传感器。特别是,我们在 OrthoRep 上编码变构转录因子 BenM,使得宿主酵母细胞的繁殖导致 BenM 的快速和连续多样化。当这些细胞在存在和不存在其天然配体、粘康酸或非天然配体己二酸的情况下,根据 BenM 活性进行培养和分选循环时,我们获得了多种响应其相应配体的 BenM 变体。这些生物传感器通过实现更大的动态范围(高达约 180 倍诱导)和更宽的工作范围,优于以前设计的基于 BenM 的生物传感器。在存在粘康酸生物合成途径的情况下,选择的 BenM 变体的表达显示出对生物传感器的灵敏激活而没有饱和响应,这应该能够实现代谢途径和宿主工程以提高粘康酸和己二酸的产量。鉴于使用 OrthoRep 以简化的方式进化出高性能和多功能的生物传感器,本研究为代谢途径工程和其他生物技术目标生成定制生物传感器提供了模板。