Literature DB >> 35612324

Machine Learning for Antimicrobial Resistance Prediction: Current Practice, Limitations, and Clinical Perspective.

Jee In Kim1,2,3, Finlay Maguire1,2,4,5,6, Kara K Tsang7, Theodore Gouliouris8,9,10, Sharon J Peacock8, Tim A McAllister3, Andrew G McArthur11,12,13, Robert G Beiko1,2.   

Abstract

Antimicrobial resistance (AMR) is a global health crisis that poses a great threat to modern medicine. Effective prevention strategies are urgently required to slow the emergence and further dissemination of AMR. Given the availability of data sets encompassing hundreds or thousands of pathogen genomes, machine learning (ML) is increasingly being used to predict resistance to different antibiotics in pathogens based on gene content and genome composition. A key objective of this work is to advocate for the incorporation of ML into front-line settings but also highlight the further refinements that are necessary to safely and confidently incorporate these methods. The question of what to predict is not trivial given the existence of different quantitative and qualitative laboratory measures of AMR. ML models typically treat genes as independent predictors, with no consideration of structural and functional linkages; they also may not be accurate when new mutational variants of known AMR genes emerge. Finally, to have the technology trusted by end users in public health settings, ML models need to be transparent and explainable to ensure that the basis for prediction is clear. We strongly advocate that the next set of AMR-ML studies should focus on the refinement of these limitations to be able to bridge the gap to diagnostic implementation.

Entities:  

Keywords:  antimicrobial resistance; machine learning

Mesh:

Substances:

Year:  2022        PMID: 35612324      PMCID: PMC9491192          DOI: 10.1128/cmr.00179-21

Source DB:  PubMed          Journal:  Clin Microbiol Rev        ISSN: 0893-8512            Impact factor:   50.129


  106 in total

Review 1.  Antimicrobial resistance surveillance in the genomic age.

Authors:  Andrew G McArthur; Kara K Tsang
Journal:  Ann N Y Acad Sci       Date:  2016-11-22       Impact factor: 5.691

2.  Nanopore ultra-long read sequencing technology for antimicrobial resistance detection in Mannheimia haemolytica.

Authors:  Alexander Lim; Bryan Naidenov; Haley Bates; Karyn Willyerd; Timothy Snider; Matthew Brian Couger; Charles Chen; Akhilesh Ramachandran
Journal:  J Microbiol Methods       Date:  2019-03-05       Impact factor: 2.363

Review 3.  Applications of Machine Learning to the Problem of Antimicrobial Resistance: an Emerging Model for Translational Research.

Authors:  Melis N Anahtar; Jason H Yang; Sanjat Kanjilal
Journal:  J Clin Microbiol       Date:  2021-06-18       Impact factor: 5.948

4.  Dissecting vancomycin-intermediate resistance in staphylococcus aureus using genome-wide association.

Authors:  Md Tauqeer Alam; Robert A Petit; Emily K Crispell; Timothy A Thornton; Karen N Conneely; Yunxuan Jiang; Sarah W Satola; Timothy D Read
Journal:  Genome Biol Evol       Date:  2014-04-30       Impact factor: 3.416

Review 5.  Epistasis and the Evolution of Antimicrobial Resistance.

Authors:  Alex Wong
Journal:  Front Microbiol       Date:  2017-02-17       Impact factor: 5.640

6.  Heavy metal driven co-selection of antibiotic resistance in soil and water bodies impacted by agriculture and aquaculture.

Authors:  Claudia Seiler; Thomas U Berendonk
Journal:  Front Microbiol       Date:  2012-12-14       Impact factor: 5.640

7.  NCBI prokaryotic genome annotation pipeline.

Authors:  Tatiana Tatusova; Michael DiCuccio; Azat Badretdin; Vyacheslav Chetvernin; Eric P Nawrocki; Leonid Zaslavsky; Alexandre Lomsadze; Kim D Pruitt; Mark Borodovsky; James Ostell
Journal:  Nucleic Acids Res       Date:  2016-06-24       Impact factor: 16.971

8.  Increased power from conditional bacterial genome-wide association identifies macrolide resistance mutations in Neisseria gonorrhoeae.

Authors:  Kevin C Ma; Tatum D Mortimer; Marissa A Duckett; Allison L Hicks; Nicole E Wheeler; Leonor Sánchez-Busó; Yonatan H Grad
Journal:  Nat Commun       Date:  2020-10-23       Impact factor: 14.919

9.  Machine Learning Prediction of Resistance to Subinhibitory Antimicrobial Concentrations from Escherichia coli Genomes.

Authors:  Sam Benkwitz-Bedford; Martin Palm; Talip Yasir Demirtas; Ville Mustonen; Anne Farewell; Jonas Warringer; Leopold Parts; Danesh Moradigaravand
Journal:  mSystems       Date:  2021-08-24       Impact factor: 6.496

10.  Machine learning for classifying tuberculosis drug-resistance from DNA sequencing data.

Authors:  Yang Yang; Katherine E Niehaus; Timothy M Walker; Zamin Iqbal; A Sarah Walker; Daniel J Wilson; Tim E A Peto; Derrick W Crook; E Grace Smith; Tingting Zhu; David A Clifton
Journal:  Bioinformatics       Date:  2018-05-15       Impact factor: 6.937

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