Abstract:
Abstract: Emergence of drug resistant bacteria is one of the serious problems in today’s public
health. However, the relationship between genomic mutation of bacteria and the phenotypic
difference of them is still unclear. In this paper, based on the mutation information in whole
genome sequences of 96 MRSA strains, two kinds of phenotypes (pathogenicity and drug
resistance) were learnt and predicted by machine learning algorithms. As a result of effective
feature selection by cross entropy based sparse logistic regression, these phenotypes could be
predicted in sufficiently high accuracy (100% and 97.87%, respectively) with less than 10 features.
It means that we could develop a novel rapid test method in the future for checking MRSA
phenotypes.
Keywords: Cross Entropy, Sparse Logistic Regression, Classification, Phenotype-Related
Mutations, Staphylococcus aureus