logo
Loading...
Generative machine learning produces kinetic models that accurately characterize intracellular metabolic states

Biology

Generative machine learning produces kinetic models that accurately characterize intracellular metabolic states

S. Choudhury, B. Narayanan, et al.

Unlocking the secrets of metabolic states in *Escherichia coli* just got easier! Researchers Subham Choudhury, Bharath Narayanan, Michael Moret, Vassily Hatzimanikatis, and Ljubisa Miskovic introduce RENAISSANCE, a groundbreaking machine learning framework that harnesses the power of omics data to accurately characterize metabolic processes. This study offers a powerful new tool for those exploring metabolic variations in health and biotechnology.... show more
Abstract
Generating large omics datasets has become routine for gaining insights into cellular processes, yet deciphering these datasets to determine metabolic states remains challenging. Kinetic models can help integrate omics data by explicitly linking metabolite concentrations, metabolic fluxes and enzyme levels. Nevertheless, determining the kinetic parameters that underlie cellular physiology poses notable obstacles to the widespread use of these mathematical representations of metabolism. Here we present RENAISSANCE, a generative machine learning framework for efficiently parameterizing large-scale kinetic models with dynamic properties matching experimental observations. Through seamless integration of diverse omics data and other relevant information, including extracellular medium composition, physicochemical data and expertise of domain specialists, RENAISSANCE accurately characterizes intracellular metabolic states in Escherichia coli. It also estimates missing kinetic parameters and reconciles them with sparse experimental data, substantially reducing parameter uncertainty and improving accuracy. This framework will be valuable for researchers studying metabolic variations involving changes in metabolite and enzyme levels and enzyme activity in health and biotechnology.
Publisher
Nature Catalysis
Published On
Oct 01, 2024
Authors
Subham Choudhury, Bharath Narayanan, Michael Moret, Vassily Hatzimanikatis, Ljubisa Miskovic
Tags
metabolic states
kinetic models
machine learning
omics data
parameter estimation
Escherichia coli
biotechnology
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 12+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny