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INGOT-DR: an interpretable classifier for predicting drug resistance in M. tuberculosis.

Hooman ZabetiNick DexterAmir Hosein SafariNafiseh SedaghatMaxwell LibbrechtLeonid Chindelevitch
Published in: Algorithms for molecular biology : AMB (2021)
We test the predictive accuracy of our approach on five first-line and seven second-line antibiotics used for treating tuberculosis. We find that it has a higher or comparable accuracy to that of commonly used machine learning models, and is able to identify variants in genes with previously reported association to drug resistance. Our method is intrinsically interpretable, and can be customized for different evaluation metrics. Our implementation is available at github.com/hoomanzabeti/INGOT_DR and can be installed via The Python Package Index (Pypi) under ingotdr. This package is also compatible with most of the tools in the Scikit-learn machine learning library.
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