Archive | 2021

QSAR Models for Active Substances Against Pseudomonas aeruginosa Using Disk-diffusion Test Data

 
 
 

Abstract


Pseudomonas aeruginosa is a Gram-negative bacillus included among the six ESKAPE microbial species with an outstanding ability to escape currently used antibiotics and developing new antibiotics against it is of the highest priority. Whereas minimum inhibitory concentration (MIC) values against Pseudomonas aeruginosa have been used previously for QSAR model development, disk diffusion results (inhibition zones) have not been apparently used for this purpose in the literature and we decided to explore their use in this sense. We developed multiple QSAR methods using several machine learning algorithms (support vector classifier, K nearest neighbors, random forest classifier, decision tree classifier, AdaBoost classifier, logistic regression and naive Bayes classifier). We used four sets of molecular descriptors and fingerprints and three different methods of data balancing, together with the native data set. In total, 32 models were built for each set of descriptors or fingerprint and balancing method, of which 28 were selected and stacked to create meta-models. In terms of balanced accuracy, the best performance was provided by KNN, logistic regression and decision tree classifier, but the ensemble method had slightly superior results in nested cross-validation.

Volume None
Pages None
DOI 10.20944/PREPRINTS202102.0147.V1
Language English
Journal None

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