Kcat’s Technology used to derive variants to achieve kg level Substrate conversion

March 23, 2021by kcat

Schematic representation of Kcat’s Technology used to derive variants to achieve kg level substrate conversion with desired regioselectivity, stereospecificity, and enantiomeric excess. A system of Micrometer size with higher enzyme and substrate concentrations at varying pH, temperature, cofactor, co-substrate, and solvent conditions is simulated for microseconds.

Information Capturing Technologies:
A 7th Dimensional Grid made of Quantum beads that captures information across the reaction system
Cryptic Interactions & Cryptic Pockets
Induced Substrate diffusion path and thermodynamics based product exit path
De novo active site design using Suspended probes and fluid models 
FMO-DFT based long-range QM/MM simulation to identify transition states
Deep Learning uses convolution neural networks constructed from a database of enzymes & mutations to derive enzyme variants to achieve kg level substrate conversion
Enzyme Control Flux Analysis technology with Deep Learning using convolution neural networks