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pmid: 35726092
pmc: PMC9750858
AbstractA general method to generate biosensors for user-defined molecules could provide detection tools for a wide range of biological applications. Here, we describe an approach for the rapid engineering of biosensors using PYR1 (Pyrabactin Resistance 1), a plant abscisic acid (ABA) receptor with a malleable ligand-binding pocket and a requirement for ligand-induced heterodimerization, which facilitates the construction of sense–response functions. We applied this platform to evolve 21 sensors with nanomolar to micromolar sensitivities for a range of small molecules, including structurally diverse natural and synthetic cannabinoids and several organophosphates. X-ray crystallography analysis revealed the mechanistic basis for new ligand recognition by an evolved cannabinoid receptor. We demonstrate that PYR1-derived receptors are readily ported to various ligand-responsive outputs, including enzyme-linked immunosorbent assay (ELISA)-like assays, luminescence by protein-fragment complementation and transcriptional circuits, all with picomolar to nanomolar sensitivity. PYR1 provides a scaffold for rapidly evolving new biosensors for diverse sense–response applications.
570, Arabidopsis Proteins, Arabidopsis, Biosensing Techniques, Biological Sciences, Plants, 540, Ligands, Article, Medicinal and Biomolecular Chemistry, Plant Growth Regulators, Information and Computing Sciences, Chemical Sciences, Biochemistry and Cell Biology, Biotechnology
570, Arabidopsis Proteins, Arabidopsis, Biosensing Techniques, Biological Sciences, Plants, 540, Ligands, Article, Medicinal and Biomolecular Chemistry, Plant Growth Regulators, Information and Computing Sciences, Chemical Sciences, Biochemistry and Cell Biology, Biotechnology
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