Literature DB >> 30858411

Interpretable genotype-to-phenotype classifiers with performance guarantees.

Alexandre Drouin1,2, Gaël Letarte3,4, Frédéric Raymond5,6, Mario Marchand3,4, Jacques Corbeil4,7, François Laviolette3,4.   

Abstract

Understanding the relationship between the genome of a cell and its phenotype is a central problem in precision medicine. Nonetheless, genotype-to-phenotype prediction comes with great challenges for machine learning algorithms that limit their use in this setting. The high dimensionality of the data tends to hinder generalization and challenges the scalability of most learning algorithms. Additionally, most algorithms produce models that are complex and difficult to interpret. We alleviate these limitations by proposing strong performance guarantees, based on sample compression theory, for rule-based learning algorithms that produce highly interpretable models. We show that these guarantees can be leveraged to accelerate learning and improve model interpretability. Our approach is validated through an application to the genomic prediction of antimicrobial resistance, an important public health concern. Highly accurate models were obtained for 12 species and 56 antibiotics, and their interpretation revealed known resistance mechanisms, as well as some potentially new ones. An open-source disk-based implementation that is both memory and computationally efficient is provided with this work. The implementation is turnkey, requires no prior knowledge of machine learning, and is complemented by comprehensive tutorials.

Entities:  

Mesh:

Year:  2019        PMID: 30858411      PMCID: PMC6411721          DOI: 10.1038/s41598-019-40561-2

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  26 in total

1.  Interpreting k-mer-based signatures for antibiotic resistance prediction.

Authors:  Magali Jaillard; Mattia Palmieri; Alex van Belkum; Pierre Mahé
Journal:  Gigascience       Date:  2020-10-17       Impact factor: 6.524

2.  Assessing putative bias in prediction of anti-microbial resistance from real-world genotyping data under explicit causal assumptions.

Authors:  Mattia Prosperi; Christina Boucher; Jiang Bian; Simone Marini
Journal:  Artif Intell Med       Date:  2022-06-03       Impact factor: 7.011

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

Authors:  Margo VanOeffelen; Marcus Nguyen; Derya Aytan-Aktug; Thomas Brettin; Emily M Dietrich; Ronald W Kenyon; Dustin Machi; Chunhong Mao; Robert Olson; Gordon D Pusch; Maulik Shukla; Rick Stevens; Veronika Vonstein; Andrew S Warren; Alice R Wattam; Hyunseung Yoo; James J Davis
Journal:  Brief Bioinform       Date:  2021-11-05       Impact factor: 13.994

Review 4.  Machine Learning for Antimicrobial Resistance Prediction: Current Practice, Limitations, and Clinical Perspective.

Authors:  Jee In Kim; Finlay Maguire; Kara K Tsang; Theodore Gouliouris; Sharon J Peacock; Tim A McAllister; Andrew G McArthur; Robert G Beiko
Journal:  Clin Microbiol Rev       Date:  2022-05-25       Impact factor: 50.129

5.  AMR-meta: a k-mer and metafeature approach to classify antimicrobial resistance from high-throughput short-read metagenomics data.

Authors:  Simone Marini; Marco Oliva; Ilya B Slizovskiy; Rishabh A Das; Noelle Robertson Noyes; Tamer Kahveci; Christina Boucher; Mattia Prosperi
Journal:  Gigascience       Date:  2022-05-18       Impact factor: 7.658

6.  A convolutional neural network highlights mutations relevant to antimicrobial resistance in Mycobacterium tuberculosis.

Authors:  Anna G Green; Chang Ho Yoon; Andrew Beam; Maha Farhat; Michael L Chen; Yasha Ektefaie; Mack Fina; Luca Freschi; Matthias I Gröschel; Isaac Kohane
Journal:  Nat Commun       Date:  2022-07-02       Impact factor: 17.694

7.  Interpretable machine learning for genomics.

Authors:  David S Watson
Journal:  Hum Genet       Date:  2021-10-20       Impact factor: 5.881

Review 8.  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

9.  Enhancing predictions of antimicrobial resistance of pathogens by expanding the potential resistance gene repertoire using a pan-genome-based feature selection approach.

Authors:  Ming-Ren Yang; Yu-Wei Wu
Journal:  BMC Bioinformatics       Date:  2022-04-15       Impact factor: 3.307

10.  Predicting Antimicrobial Resistance Using Partial Genome Alignments.

Authors:  D Aytan-Aktug; M Nguyen; P T L C Clausen; R L Stevens; F M Aarestrup; O Lund; J J Davis
Journal:  mSystems       Date:  2021-06-15       Impact factor: 6.496

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