Research

Life Sciences & Biotechnology

Title :

Development of a deep learning-based pipeline for detection of nosocomial pathogens from metagenomic data

Area of research :

Life Sciences & Biotechnology

Principal Investigator :

Dr. Rachana Banerjee, JIS University, Kolkata, West Bengal

Timeline Start Year :

2023

Timeline End Year :

2026

Contact info :

Equipments :

Details

Executive Summary :

Multi-drug resistant nosocomial infections are a global concern, particularly in India due to overcrowded and unhealthy hospital environments and unrestrained use of broad-spectrum antibiotics. Rapid identification of nosocomial strains can improve patient outcomes, antibiotic effects, and hospital stay length. Current computational tools often rely on sequence homology methods, which are often unsuccessful in revealing novel strains if closely related genomes are unavailable or absent in the reference database. This proposal aims to develop a deep learning-based approach for extracting nosocomial strain-specific features by training on a broad number of species with known nosocomial characteristics. Common nosocomial bacteria include Enterococcus faecium, Staphylococcus aureus, Klebsiella pneumoniae, Acinetobacter baumannii, Pseudomonas aeruginosa, and Enterobacter species. These strains do not restrict their normal habitats to human hosts and can be found in other animals without causing disease in humans. The success of these nosocomial strains is mainly due to mutations in their virulence factors (VFs) and antibiotic resistance genes (ARGs), which help these superbugs escape antibiotics. Searching these genes in metagenomic data is the most suitable method for unbiased results. The proposed deep learning algorithm can be implemented to reconstruct a pipeline for fast detection of pathogenic potential and taxonomic composition of nosocomial strains directly from metagenomic reads. The efficacy of the pipeline will be tested by typifying publicly available metagenomic shotgun datasets with well-established pathogenic characteristics. The pipeline can be compiled into user-friendly software for clinicians and scientists.

Co-PI:

Dr. Sandip Paul, JIS University, Kolkata, West Bengal-700109, Dr. Kausik Basak, JIS University, Kolkata, West Bengal-700109

Total Budget (INR):

20,39,950

Organizations involved