Literature DB >> 34379107

A genomic data resource for predicting antimicrobial resistance from laboratory-derived antimicrobial susceptibility phenotypes.

Margo VanOeffelen1, Marcus Nguyen2,3, Derya Aytan-Aktug4, Thomas Brettin2,5, Emily M Dietrich2,5, Ronald W Kenyon6, Dustin Machi6, Chunhong Mao6, Robert Olson2,3, Gordon D Pusch1, Maulik Shukla2,3, Rick Stevens5,7, Veronika Vonstein1, Andrew S Warren6, Alice R Wattam3,6, Hyunseung Yoo2,3, James J Davis2,3,8.   

Abstract

Antimicrobial resistance (AMR) is a major global health threat that affects millions of people each year. Funding agencies worldwide and the global research community have expended considerable capital and effort tracking the evolution and spread of AMR by isolating and sequencing bacterial strains and performing antimicrobial susceptibility testing (AST). For the last several years, we have been capturing these efforts by curating data from the literature and data resources and building a set of assembled bacterial genome sequences that are paired with laboratory-derived AST data. This collection currently contains AST data for over 67 000 genomes encompassing approximately 40 genera and over 100 species. In this paper, we describe the characteristics of this collection, highlighting areas where sampling is comparatively deep or shallow, and showing areas where attention is needed from the research community to improve sampling and tracking efforts. In addition to using the data to track the evolution and spread of AMR, it also serves as a useful starting point for building machine learning models for predicting AMR phenotypes. We demonstrate this by describing two machine learning models that are built from the entire dataset to show where the predictive power is comparatively high or low. This AMR metadata collection is freely available and maintained on the Bacterial and Viral Bioinformatics Center (BV-BRC) FTP site ftp://ftp.bvbrc.org/RELEASE_NOTES/PATRIC_genomes_AMR.txt. Published by Oxford University Press 2021.

Entities:  

Keywords:  GWAS; antimicrobial resistance; artificial intellignence; epidemiology; machine learning

Mesh:

Year:  2021        PMID: 34379107      PMCID: PMC8575023          DOI: 10.1093/bib/bbab313

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   13.994


  94 in total

1.  ARG-ANNOT, a new bioinformatic tool to discover antibiotic resistance genes in bacterial genomes.

Authors:  Sushim Kumar Gupta; Babu Roshan Padmanabhan; Seydina M Diene; Rafael Lopez-Rojas; Marie Kempf; Luce Landraud; Jean-Marc Rolain
Journal:  Antimicrob Agents Chemother       Date:  2013-10-21       Impact factor: 5.191

2.  Antimicrobial resistance of Enterobacter cloacae complex isolates from the surface of muskmelons.

Authors:  Irene Esteban-Cuesta; Samart Dorn-In; Nathalie Drees; Christina Hölzel; Christoph Gottschalk; Manfred Gareis; Karin Schwaiger
Journal:  Int J Food Microbiol       Date:  2019-04-30       Impact factor: 5.277

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

Review 4.  Dissemination of Antimicrobial Resistance in Microbial Ecosystems through Horizontal Gene Transfer.

Authors:  Christian J H von Wintersdorff; John Penders; Julius M van Niekerk; Nathan D Mills; Snehali Majumder; Lieke B van Alphen; Paul H M Savelkoul; Petra F G Wolffs
Journal:  Front Microbiol       Date:  2016-02-19       Impact factor: 5.640

5.  Antimicrobial susceptibility testing of rapidly growing mycobacteria isolated in Japan.

Authors:  Shuji Hatakeyama; Yuki Ohama; Mitsuhiro Okazaki; Yoko Nukui; Kyoji Moriya
Journal:  BMC Infect Dis       Date:  2017-03-07       Impact factor: 3.090

6.  Antimicrobial resistance genetic factor identification from whole-genome sequence data using deep feature selection.

Authors:  Jinhong Shi; Yan Yan; Matthew G Links; Longhai Li; Jo-Anne R Dillon; Michael Horsch; Anthony Kusalik
Journal:  BMC Bioinformatics       Date:  2019-12-24       Impact factor: 3.169

7.  A novel ciprofloxacin-resistant subclade of H58 Salmonella Typhi is associated with fluoroquinolone treatment failure.

Authors:  Duy Pham Thanh; Abhilasha Karkey; Sabina Dongol; Nhan Ho Thi; Corinne N Thompson; Maia A Rabaa; Amit Arjyal; Kathryn E Holt; Vanessa Wong; Nga Tran Vu Thieu; Phat Voong Vinh; Tuyen Ha Thanh; Ashish Pradhan; Saroj Kumar Shrestha; Damoder Gajurel; Derek Pickard; Christopher M Parry; Gordon Dougan; Marcel Wolbers; Christiane Dolecek; Guy E Thwaites; Buddha Basnyat; Stephen Baker
Journal:  Elife       Date:  2016-03-11       Impact factor: 8.140

8.  Machine learning and structural analysis of Mycobacterium tuberculosis pan-genome identifies genetic signatures of antibiotic resistance.

Authors:  Erol S Kavvas; Edward Catoiu; Nathan Mih; James T Yurkovich; Yara Seif; Nicholas Dillon; David Heckmann; Amitesh Anand; Laurence Yang; Victor Nizet; Jonathan M Monk; Bernhard O Palsson
Journal:  Nat Commun       Date:  2018-10-17       Impact factor: 14.919

9.  Application of Whole-Genome Sequences and Machine Learning in Source Attribution of Salmonella Typhimurium.

Authors:  Nanna Munck; Patrick Murigu Kamau Njage; Pimlapas Leekitcharoenphon; Eva Litrup; Tine Hald
Journal:  Risk Anal       Date:  2020-06-08       Impact factor: 4.000

10.  The European Nucleotide Archive in 2020.

Authors:  Peter W Harrison; Alisha Ahamed; Raheela Aslam; Blaise T F Alako; Josephine Burgin; Nicola Buso; Mélanie Courtot; Jun Fan; Dipayan Gupta; Muhammad Haseeb; Sam Holt; Talal Ibrahim; Eugene Ivanov; Suran Jayathilaka; Vishnukumar Balavenkataraman Kadhirvelu; Manish Kumar; Rodrigo Lopez; Simon Kay; Rasko Leinonen; Xin Liu; Colman O'Cathail; Amir Pakseresht; Youngmi Park; Stephane Pesant; Nadim Rahman; Jeena Rajan; Alexey Sokolov; Senthilnathan Vijayaraja; Zahra Waheed; Ahmad Zyoud; Tony Burdett; Guy Cochrane
Journal:  Nucleic Acids Res       Date:  2020-11-11       Impact factor: 16.971

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  3 in total

1.  Towards routine employment of computational tools for antimicrobial resistance determination via high-throughput sequencing.

Authors:  Simone Marini; Rodrigo A Mora; Christina Boucher; Noelle Robertson Noyes; Mattia Prosperi
Journal:  Brief Bioinform       Date:  2022-03-10       Impact factor: 11.622

Review 2.  Application of Artificial Intelligence in Combating High Antimicrobial Resistance Rates.

Authors:  Ali A Rabaan; Saad Alhumaid; Abbas Al Mutair; Mohammed Garout; Yem Abulhamayel; Muhammad A Halwani; Jeehan H Alestad; Ali Al Bshabshe; Tarek Sulaiman; Meshal K AlFonaisan; Tariq Almusawi; Hawra Albayat; Mohammed Alsaeed; Mubarak Alfaresi; Sultan Alotaibi; Yousef N Alhashem; Mohamad-Hani Temsah; Urooj Ali; Naveed Ahmed
Journal:  Antibiotics (Basel)       Date:  2022-06-08

3.  A Practical Approach for Predicting Antimicrobial Phenotype Resistance in Staphylococcus aureus Through Machine Learning Analysis of Genome Data.

Authors:  Shuyi Wang; Chunjiang Zhao; Yuyao Yin; Fengning Chen; Hongbin Chen; Hui Wang
Journal:  Front Microbiol       Date:  2022-03-02       Impact factor: 5.640

  3 in total

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