| Literature DB >> 34222327 |
Hayat Ali Shah1, Juan Liu1, Zhihui Yang1, Jing Feng1.
Abstract
Prediction and reconstruction of metabolic pathways play significant roles in many fields such as genetic engineering, metabolic engineering, drug discovery, and are becoming the most active research topics in synthetic biology. With the increase of related data and with the development of machine learning techniques, there have many machine leaning based methods been proposed for prediction or reconstruction of metabolic pathways. Machine learning techniques are showing state-of-the-art performance to handle the rapidly increasing volume of data in synthetic biology. To support researchers in this field, we briefly review the research progress of metabolic pathway reconstruction and prediction based on machine learning. Some challenging issues in the reconstruction of metabolic pathways are also discussed in this paper.Entities:
Keywords: biochemical reaction; enzymes; machine learning; metabolic pathway; metabolites; prediction; substrate
Year: 2021 PMID: 34222327 PMCID: PMC8247443 DOI: 10.3389/fmolb.2021.634141
Source DB: PubMed Journal: Front Mol Biosci ISSN: 2296-889X
FIGURE 1Classification of catalytic and non-catalytic protein sequences.
FIGURE 2Schematic illustration of ML-based algorithms.
FIGURE 3Prediction of metabolites using ML techniques.
FIGURE 4Schematic illustration of a deep neural network method for the prediction of a reaction.