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Abstract
A major challenge to achieving industry-scale biomanufacturing of therapeutic alkaloids is the slow process of biocatalyst engineering. Amaryllidaceae alkaloids, such as the Alzheimer’s medication galantamine, are complex plant secondary metabolites with recognized therapeutic value. Due to their difficult synthesis they are regularly sourced by extraction and purification from the low-yielding daffodil Narcissus pseudonarcissus. Here, we propose an efficient biosensor-machine learning technology stack for biocatalyst development, which we apply to engineer an Amaryllidaceae enzyme in Escherichia coli. Directed evolution is used to develop a highly sensitive (EC50 = 20 μM) and specific biosensor for the key Amaryllidaceae alkaloid branchpoint 4’-O-methylnorbelladine. A structure-based residual neural network (MutComputeX) is subsequently developed and used to generate activity-enriched variants of a plant methyltransferase, which are rapidly screened with the biosensor. Functional enzyme variants are identified that yield a 60% improvement in product titer, 2-fold higher catalytic activity, and 3-fold lower off-product regioisomer formation. A solved crystal structure elucidates the mechanism behind key beneficial mutations.
Amaryllidaceae alkaloids, such as the Alzheimer’s medication galantamine, are currently extracted from low-yielding daffodils. Here, authors pair biosensor-assisted screening with machine learning-guided protein design to rapidly engineer an improved Amaryllidaceae enzyme in a microbial host.
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1 University of Texas at Austin, Department of Molecular Biosciences, Austin, USA (GRID:grid.89336.37) (ISNI:0000 0004 1936 9924); Harvard Medical School, Synthetic Biology HIVE, Department of Systems Biology, Boston, USA (GRID:grid.38142.3c) (ISNI:000000041936754X)
2 University of Texas at Austin, Department of Chemistry, Austin, USA (GRID:grid.89336.37) (ISNI:0000 0004 1936 9924); University of Texas at Austin, Institute for Foundations of Machine Learning, Austin, USA (GRID:grid.89336.37) (ISNI:0000 0004 1936 9924)
3 University of Texas at Austin, McKetta Department of Chemical Engineering, Austin, USA (GRID:grid.89336.37) (ISNI:0000 0004 1936 9924)
4 University of Texas at Austin, Department of Molecular Biosciences, Austin, USA (GRID:grid.89336.37) (ISNI:0000 0004 1936 9924)
5 Prairie View A&M University, 100 University Dr, Department of Chemistry, Prairie View, USA (GRID:grid.262103.4) (ISNI:0000 0004 0456 3986)
6 University of Texas at Austin, Department of Chemistry, Austin, USA (GRID:grid.89336.37) (ISNI:0000 0004 1936 9924)