Literature DB >> 33245088

The application potential of machine learning and genomics for understanding natural product diversity, chemistry, and therapeutic translatability.

David Prihoda1, Julia M Maritz2, Ondrej Klempir3, David Dzamba3, Christopher H Woelk2, Daria J Hazuda2, Danny A Bitton3, Geoffrey D Hannigan2.   

Abstract

Covering: up to the end of 2020. The machine learning field can be defined as the study and application of algorithms that perform classification and prediction tasks through pattern recognition instead of explicitly defined rules. Among other areas, machine learning has excelled in natural language processing. As such methods have excelled at understanding written languages (e.g. English), they are also being applied to biological problems to better understand the "genomic language". In this review we focus on recent advances in applying machine learning to natural products and genomics, and how those advances are improving our understanding of natural product biology, chemistry, and drug discovery. We discuss machine learning applications in genome mining (identifying biosynthetic signatures in genomic data), predictions of what structures will be created from those genomic signatures, and the types of activity we might expect from those molecules. We further explore the application of these approaches to data derived from complex microbiomes, with a focus on the human microbiome. We also review challenges in leveraging machine learning approaches in the field, and how the availability of other "omics" data layers provides value. Finally, we provide insights into the challenges associated with interpreting machine learning models and the underlying biology and promises of applying machine learning to natural product drug discovery. We believe that the application of machine learning methods to natural product research is poised to accelerate the identification of new molecular entities that may be used to treat a variety of disease indications.

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Year:  2021        PMID: 33245088     DOI: 10.1039/d0np00055h

Source DB:  PubMed          Journal:  Nat Prod Rep        ISSN: 0265-0568            Impact factor:   13.423


  6 in total

Review 1.  Exploring Newer Biosynthetic Gene Clusters in Marine Microbial Prospecting.

Authors:  Manigundan Kaari; Radhakrishnan Manikkam; Abirami Baskaran
Journal:  Mar Biotechnol (NY)       Date:  2022-04-08       Impact factor: 3.619

Review 2.  Targeted Large-Scale Genome Mining and Candidate Prioritization for Natural Product Discovery.

Authors:  Jessie James Limlingan Malit; Hiu Yu Cherie Leung; Pei-Yuan Qian
Journal:  Mar Drugs       Date:  2022-06-16       Impact factor: 6.085

3.  Characterization of siderophores from Escherichia coli strains through genome mining tools: an antiSMASH study.

Authors:  Levent Cavas; Ibrahim Kirkiz
Journal:  AMB Express       Date:  2022-06-15       Impact factor: 4.126

Review 4.  A roadmap for metagenomic enzyme discovery.

Authors:  Serina L Robinson; Jörn Piel; Shinichi Sunagawa
Journal:  Nat Prod Rep       Date:  2021-11-17       Impact factor: 13.423

5.  Complex peptide natural products: Biosynthetic principles, challenges and opportunities for pathway engineering.

Authors:  Sebastian L Wenski; Sirinthra Thiengmag; Eric J N Helfrich
Journal:  Synth Syst Biotechnol       Date:  2022-02-09

Review 6.  Alkaloids in Contemporary Drug Discovery to Meet Global Disease Needs.

Authors:  Sharna-Kay Daley; Geoffrey A Cordell
Journal:  Molecules       Date:  2021-06-22       Impact factor: 4.411

  6 in total

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