Litcius/Paper detail

Machine Learning in Mass Spectrometry: A MALDI-TOF MS Approach to Phenotypic Antibacterial Screening

Luuk N. van Oosten, Christian D. Klein

2020Journal of Medicinal Chemistry29 citationsDOI

Abstract

Machine learning techniques can be applied to MALDI-TOF mass spectral data of drug-treated cells to obtain classification models which assign the mechanism of action of drugs. Here, we present an example application of this concept to the screening of antibacterial drugs that act at the major bacterial target sites such as the ribosome, penicillin-binding proteins, and topoisomerases in a pharmacologically relevant phenotypic setting. We show that antibacterial effects can be identified and classified in a label-free, high-throughput manner using wild-type Escherichia coli and Staphylococcus aureus cells at variable levels of target engagement. This phenotypic approach, which combines mass spectrometry and machine learning, therefore denoted as PhenoMS-ML, may prove useful for the identification and development of novel antibacterial compounds and other pharmacological agents.

Topics & Concepts

ChemistryEscherichia coliMass spectrometryPhenotypeComputational biologyPhenotypic screeningDrug discoveryMechanism of actionIdentification (biology)Antibacterial activityCombinatorial chemistryBiochemistryBacteriaChromatographyIn vitroBiologyGeneticsGeneBotanyBacterial Identification and Susceptibility TestingMass Spectrometry Techniques and ApplicationsBiosensors and Analytical Detection