Literature DB >> 34414415

An end-to-end heterogeneous graph attention network for Mycobacterium tuberculosis drug-resistance prediction.

Yang Yang1,2, Timothy M Walker3, Samaneh Kouchaki4, Chenyang Wang1, Timothy E A Peto5, Derrick W Crook5,6, David A Clifton1,2.   

Abstract

Antimicrobial resistance (AMR) poses a threat to global public health. To mitigate the impacts of AMR, it is important to identify the molecular mechanisms of AMR and thereby determine optimal therapy as early as possible. Conventional machine learning-based drug-resistance analyses assume genetic variations to be homogeneous, thus not distinguishing between coding and intergenic sequences. In this study, we represent genetic data from Mycobacterium tuberculosis as a graph, and then adopt a deep graph learning method-heterogeneous graph attention network ('HGAT-AMR')-to predict anti-tuberculosis (TB) drug resistance. The HGAT-AMR model is able to accommodate incomplete phenotypic profiles, as well as provide 'attention scores' of genes and single nucleotide polymorphisms (SNPs) both at a population level and for individual samples. These scores encode the inputs, which the model is 'paying attention to' in making its drug resistance predictions. The results show that the proposed model generated the best area under the receiver operating characteristic (AUROC) for isoniazid and rifampicin (98.53 and 99.10%), the best sensitivity for three first-line drugs (94.91% for isoniazid, 96.60% for ethambutol and 90.63% for pyrazinamide), and maintained performance when the data were associated with incomplete phenotypes (i.e. for those isolates for which phenotypic data for some drugs were missing). We also demonstrate that the model successfully identifies genes and SNPs associated with drug resistance, mitigating the impact of resistance profile while considering particular drug resistance, which is consistent with domain knowledge.
© The Author(s) 2021. Published by Oxford University Press.

Entities:  

Keywords:  antibiotic resistance; deep learning; genetic data analysis; graph learning; hierarchical attention; machine learning

Mesh:

Substances:

Year:  2021        PMID: 34414415      PMCID: PMC8575050          DOI: 10.1093/bib/bbab299

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   11.622


  11 in total

1.  Whole-genome sequencing for prediction of Mycobacterium tuberculosis drug susceptibility and resistance: a retrospective cohort study.

Authors:  Timothy M Walker; Thomas A Kohl; Shaheed V Omar; Jessica Hedge; Carlos Del Ojo Elias; Phelim Bradley; Zamin Iqbal; Silke Feuerriegel; Katherine E Niehaus; Daniel J Wilson; David A Clifton; Georgia Kapatai; Camilla L C Ip; Rory Bowden; Francis A Drobniewski; Caroline Allix-Béguec; Cyril Gaudin; Julian Parkhill; Roland Diel; Philip Supply; Derrick W Crook; E Grace Smith; A Sarah Walker; Nazir Ismail; Stefan Niemann; Tim E A Peto
Journal:  Lancet Infect Dis       Date:  2015-06-23       Impact factor: 25.071

2.  Application of machine learning techniques to tuberculosis drug resistance analysis.

Authors:  Samaneh Kouchaki; Yang Yang; Timothy M Walker; A Sarah Walker; Daniel J Wilson; Timothy E A Peto; Derrick W Crook; David A Clifton
Journal:  Bioinformatics       Date:  2019-07-01       Impact factor: 6.937

3.  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

4.  Evaluation of Machine Learning and Rules-Based Approaches for Predicting Antimicrobial Resistance Profiles in Gram-negative Bacilli from Whole Genome Sequence Data.

Authors:  Mitchell W Pesesky; Tahir Hussain; Meghan Wallace; Sanket Patel; Saadia Andleeb; Carey-Ann D Burnham; Gautam Dantas
Journal:  Front Microbiol       Date:  2016-11-28       Impact factor: 5.640

5.  DeepARG: a deep learning approach for predicting antibiotic resistance genes from metagenomic data.

Authors:  Gustavo Arango-Argoty; Emily Garner; Amy Pruden; Lenwood S Heath; Peter Vikesland; Liqing Zhang
Journal:  Microbiome       Date:  2018-02-01       Impact factor: 14.650

6.  DeepAMR for predicting co-occurrent resistance of Mycobacterium tuberculosis.

Authors:  Yang Yang; Timothy M Walker; A Sarah Walker; Daniel J Wilson; Timothy E A Peto; Derrick W Crook; Farah Shamout; Tingting Zhu; David A Clifton
Journal:  Bioinformatics       Date:  2019-09-15       Impact factor: 6.937

7.  Multi-Label Random Forest Model for Tuberculosis Drug Resistance Classification and Mutation Ranking.

Authors:  Samaneh Kouchaki; Yang Yang; Alexander Lachapelle; Timothy M Walker; A Sarah Walker; Timothy E A Peto; Derrick W Crook; David A Clifton
Journal:  Front Microbiol       Date:  2020-04-22       Impact factor: 5.640

8.  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

9.  Prediction of Susceptibility to First-Line Tuberculosis Drugs by DNA Sequencing.

Authors:  Caroline Allix-Béguec; Irena Arandjelovic; Lijun Bi; Patrick Beckert; Maryline Bonnet; Phelim Bradley; Andrea M Cabibbe; Irving Cancino-Muñoz; Mark J Caulfield; Angkana Chaiprasert; Daniela M Cirillo; David A Clifton; Iñaki Comas; Derrick W Crook; Maria R De Filippo; Han de Neeling; Roland Diel; Francis A Drobniewski; Kiatichai Faksri; Maha R Farhat; Joy Fleming; Philip Fowler; Tom A Fowler; Qian Gao; Jennifer Gardy; Deborah Gascoyne-Binzi; Ana-Luiza Gibertoni-Cruz; Ana Gil-Brusola; Tanya Golubchik; Ximena Gonzalo; Louis Grandjean; Guangxue He; Jennifer L Guthrie; Sarah Hoosdally; Martin Hunt; Zamin Iqbal; Nazir Ismail; James Johnston; Faisal M Khanzada; Chiea C Khor; Thomas A Kohl; Clare Kong; Sam Lipworth; Qingyun Liu; Gugu Maphalala; Elena Martinez; Vanessa Mathys; Matthias Merker; Paolo Miotto; Nerges Mistry; David A J Moore; Megan Murray; Stefan Niemann; Shaheed V Omar; Rick T-H Ong; Tim E A Peto; James E Posey; Therdsak Prammananan; Alexander Pym; Camilla Rodrigues; Mabel Rodrigues; Timothy Rodwell; Gian M Rossolini; Elisabeth Sánchez Padilla; Marco Schito; Xin Shen; Jay Shendure; Vitali Sintchenko; Alex Sloutsky; E Grace Smith; Matthew Snyder; Karine Soetaert; Angela M Starks; Philip Supply; Prapat Suriyapol; Sabira Tahseen; Patrick Tang; Yik-Ying Teo; Thuong N T Thuong; Guy Thwaites; Enrico Tortoli; Dick van Soolingen; A Sarah Walker; Timothy M Walker; Mark Wilcox; Daniel J Wilson; David Wyllie; Yang Yang; Hongtai Zhang; Yanlin Zhao; Baoli Zhu
Journal:  N Engl J Med       Date:  2018-09-26       Impact factor: 91.245

View more
  1 in total

Review 1.  The Application of Artificial Intelligence in the Diagnosis and Drug Resistance Prediction of Pulmonary Tuberculosis.

Authors:  Shufan Liang; Jiechao Ma; Gang Wang; Jun Shao; Jingwei Li; Hui Deng; Chengdi Wang; Weimin Li
Journal:  Front Med (Lausanne)       Date:  2022-07-28
  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.