Listeria Monocytogenes

Exploring the biofilm phenotype and surfactome of Listeria monocytogenes to predict its persistence and pathogenicity potential using machine learning

J4-4555

ARRS

 

 

General Data

 

Member of UL

Veterinary Faculty

 

Name of the leading partner

Jožef Stefan Institute  

Status

partner  

Project code/ Projet No.

J4-4555  

Project title

Exploring the biofilm phenotype and surfactome of Listeria monocytogenes to predict its persistence and pathogenicity potential using machine learning.  

Financier

ARRS  

Project period

1. 10. 2022 – 30. 9. 2025  

Yearly sum of FTE

project D  

Leader

dr. Majda Golob  

Scientific field

Biotehnology  

Partners

Jožef Stefan Institute, Biotechnical Faculty UL, Veterinary Faculty UL

 

 

 

Project Phases

The project is organized into 5 work packagfes (WP) consisting of tasks and providing deliverables:

  • WP1 Biofilm architecture of L. monocytogenes strains 
  • WP2 Effect of nutrients on L. monocytogenes biofilm formation 
  • WP3 Effect of nutrients on L. monocytogenes surfactome 
  • WP4 Effects of nutrients on the virulence of L. monocytogenes
  • WP5 Project management and dissemination 

 

Project Description

The project addresses bacterial infectious diseases as a global health threat and, in particular, the foodborne zoonosis listeriosis, which is associated with the highest mortality rate in the EU. It is caused by bacteria Listeria monocytogenes, which is transmitted through the consumption of contaminated food, and its prevalence is increasing. L. monocytogenes is able to survive and grow in acidic, salty and cold conditions and can colonize food processing environments very successfully. It is thus regularly found on ready-to-eat foods, meat and dairy products, raw vegetables and fruits. The incredible persistence of L. monocytogenes, which is evident from the outbreaks in the EU that span several years, is caused by persistent biofilms. L. monocytogenes isolates have been associated with either persistence in the environment or high pathogenicity potential. The features associated with both greater biofilm persistence and higher pathogenicity that lead to outbreaks are unknown. In the project, we address this issue by using machine learning to investigate the association of biofilm phenotype with molecular surface markers and pathogenicity potential. Biofilms are bacterial consortia enclosed in a self-produced extracellular matrix. They allow bacteria to survive under adverse environmental conditions and also promote antimicrobial resistance. The ability to form biofilms varies from isolate to isolate, and no clear link to genetic information has yet been established. 

In this project, the characteristics of biofilm phenotypes of different L. monocytogenes strains (WP1) growing on different surfaces and with different nutrients (WP2) will be investigated. Special attention will be paid to the differences between animal and plant nutrient sources and the comparison of pathogenic and non-pathogenic strains. We will then analyze how these nutrients affect the metabolome, surfactome and glycome (WP3) to find molecular markers of distinct biofilm phenotypes. Finally, their effectiveness in mammalian cell adhesion and invasion will be analyzed to evaluate their pathogenicity (WP4). At the same time, an image analysis toolkit will be developed for biofilm image analysis with enriched data (WP1 and WP2) and extended for multimodal learning with omics-level data (WP3). Finally, pathogenicity potential data will be used to assess the potential computational predictability of strain pathogenicity based on previously identified molecular markers (WP4). Based on this deeper understanding of L. monocytogenes biofilms and the features that enable L. monocytogenes persistence in different environments, we will propose new strategies for more efficient surveillance and prevention of listeriosis outbreaks.

J4-4555

 

Structure of the Project Group

  • dr. Jerica Sabotič (Jožef Stefan Institute, Department of Biotechnology )
  • dr. Martin Breskvar (Jožef Stefan Institute, Department of Knowledge Technologies)
  • dr. Majda Golob (UL, Veterinary Faculty)
  • prof. dr. Anja Klančnik (UL, Biotechnical Faculty)
  • Boštjan Kokot (Jožef Stefan Institute, Department of Condensed Matter Physics)