HRMAn 2.0: Next-generation artificial intelligence-driven analysis for broad host-pathogen interactionsMore about Open Access at the Crick
Authors listDaniel Fisch Robbie Evans Barbara Clough Sophie K Byrne Will M Channell Jacob Dockterman Eva-Maria Frickel
To study the dynamics of infection processes, it is common to manually enumerate imaging-based infection assays. However, manual counting of events from imaging data is biased, error-prone and a laborious task. We recently presented HRMAn (Host Response to Microbe Analysis), an automated image analysis program using state-of-the-art machine learning and artificial intelligence algorithms to analyze pathogen growth and host defense behavior. With HRMAn we can quantify intracellular infection by pathogens such as Toxoplasma gondii and Salmonella in a variety of cell types in an unbiased and highly reproducible manner, measuring multiple parameters including pathogen growth, pathogen killing and activation of host cell defenses. Since HRMAn is based on the KNIME Analytics platform, it can easily be adapted to work with other pathogens and produce more readouts from quantitative imaging data. Here we showcase improvements to HRMAn resulting in the release of HRMAn 2.0 and new applications of HRMAn 2.0 for the analysis of host-pathogen interactions using the established pathogen Toxoplasma gondii and further extend it for use with the bacterial pathogen Chlamydia trachomatis and the fungal pathogen Cryptococcus neoformans. This article is protected by copyright. All rights reserved.
Journal Cellular Microbiology
Issue number 7