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Tuberculosis drug resistance profiling based on machine learning: A literature review
Sharma, Abhinav; Machado, Edson; Lima, Karla Valeria Batista; Suffys, Philip Noel; Conceição, Emilyn Costa.
  • Sharma, Abhinav; Liverpool John Moores University (LJMU). Faculty of Engineering and Technology. Liverpool. GB
  • Machado, Edson; Fundação Oswaldo Cruz-Fiocruz. Instituto Oswaldo Cruz. Laboratório de Biologia Molecular Aplicada a Micobactérias. Rio de Janeiro. BR
  • Lima, Karla Valeria Batista; Instituto Evandro Chagas. Seção de Bacteriologia e Micologia. Ananindeua. BR
  • Suffys, Philip Noel; Fundação Oswaldo Cruz-Fiocruz. Instituto Oswaldo Cruz. Laboratório de Biologia Molecular Aplicada a Micobactérias. Rio de Janeiro. BR
  • Conceição, Emilyn Costa; Fundação Oswaldo Cruz. Instituto Nacional de Infectologia Evandro Chagas. Programa de Pós-graduação em Pesquisa Clínica e Doenças Infecciosas. Rio de Janeiro. BR
Braz. j. infect. dis ; 26(1): 102332, 2022. graf
Article in English | LILACS-Express | LILACS | ID: biblio-1364546
ABSTRACT
Abstract Tuberculosis (TB), caused by Mycobacterium tuberculosis (MTB), is one of the top 10 causes of death worldwide. Drug-resistant tuberculosis (DR-TB) poses a major threat to the World Health Organization's "End TB" strategy which has defined its target as the year 2035. In 2019, there were close to 0.5 million cases of DRTB, of which 78% were resistant to multiple TB drugs. The traditional culture-based drug susceptibility test (DST - the current gold standard) often takes multiple weeks and the necessary laboratory facilities are not readily available in low-income countries. Whole genome sequencing (WGS) technology is rapidly becoming an important tool in clinical and research applications including transmission detection or prediction of DR-TB. For the latter, many tools have recently been developed using curated database(s) of known resistance conferring mutations. However, documenting all the mutations and their effect is a time-taking and a continuous process and therefore Machine Learning (ML) techniques can be useful for predicting the presence of DR-TB based on WGS data. This can pave the way to an earlier detection of drug resistance and consequently more efficient treatment when compared to the traditional DST.


Full text: Available Index: LILACS (Americas) Language: English Journal: Braz. j. infect. dis Journal subject: Communicable Diseases Year: 2022 Type: Article Affiliation country: Brazil / United kingdom Institution/Affiliation country: Fundação Oswaldo Cruz/BR / Fundação Oswaldo Cruz-Fiocruz/BR / Instituto Evandro Chagas/BR / Liverpool John Moores University (LJMU)/GB

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Full text: Available Index: LILACS (Americas) Language: English Journal: Braz. j. infect. dis Journal subject: Communicable Diseases Year: 2022 Type: Article Affiliation country: Brazil / United kingdom Institution/Affiliation country: Fundação Oswaldo Cruz/BR / Fundação Oswaldo Cruz-Fiocruz/BR / Instituto Evandro Chagas/BR / Liverpool John Moores University (LJMU)/GB