New AI-driven Toolkit Provides Insight into Infectious Pathogens
By LabMedica International staff writers
Posted on 20 Mar 2019
Scientists at the Francis Crick Institute (London, England) and UCL (London, England) have developed a new AI-driven platform that can analyze how pathogens infect human (‘host’) cells with the precision of a trained biologist.Posted on 20 Mar 2019
The platform named HRMAn (‘Herman’), which stands for Host Response to Microbe Analysis, is open-source, easy-to-use and can be tailored for different pathogens including Salmonella enterica. HRMAn uses deep neural networks to analyze complex patterns in images of pathogen and human cell interactions, pulling out the same detailed characteristics that scientists do by-hand.
The researchers used HRMAn to analyze the body’s response to Toxoplasma gondii, a parasite that replicates in cats and is thought to be carried by more than a third of the world’s population. Researchers in the Crick’s High Throughput Screening facility collected over 30,000 microscope images of five different types of Toxoplasma-infected human cells and loaded them into HRMAn for analysis. HRMAn detected and analyzed over 175,000 pathogen-containing cellular compartments, providing detailed information about the number of parasites per cell, the location of the parasites within the cells, and how many cell proteins interacted with the parasites, among other variables. The team also used HRMAn to analyze Salmonella enterica – a bacterial pathogen 16 times smaller than Toxoplasma, demonstrating its versatility for studying different pathogens.
“What used to be a manual, time-consuming task for biologists now takes us a matter of minutes on a computer, enabling us to learn more about infectious pathogens and how our bodies respond to them, more quickly and more precisely,” said Eva Frickel, Group Leader at the Crick, who led the project. “HRMAn can actually see host-pathogen interactions like a biologist, but unlike us, it doesn’t get tired and need to sleep!”
“Using the same sorts of algorithms that run self-driving cars, we’ve created a platform that boosts the precision of high volume biological data analysis, which has revolutionized what we can do in the lab,” said Artur Yakimovich, Research Associate in Jason Mercer’s lab at the MRC LMCB at UCL and co-first author of the study. Algorithms come in handy when the platform evaluates the image-based data in a way a trained specialist would. It’s also really easy to use, even for scientists with little to no knowledge of coding.”
Related Links:
Francis Crick Institute
UCL