Transcriptome signature of cell viability predicts drug response and drug interaction in Mycobacterium tuberculosis
Srinivas, Vivek, Rene A. Ruiz, Min Pan, Selva Rupa Christinal Immanuel, Eliza J. R. Peterson, Nitin S. Baliga
Zenodo (CERN European Organization for Nuclear Research) · 2021-10
Abstract
Here, we report the development of “DRonA” and “MLSynergy”, algorithms to perform rapid drug response assays and predict response of Mtb to novel drug combinations. Using a transcriptome signature for cell viability, DRonA accurately detects bacterial killing by diverse mechanisms in broth culture, macrophage infection and patient sputum, providing an efficient, and more sensitive alternative to time- and resource-intensive bacteriologic assays. Further, MLSynergy builds on DRonA to predict synergistic and antagonistic multi-drug combinations using transcriptomes of Mtb treated with single drugs. Together, DRonA and MLSynergy represent a generalizable framework for rapid monitoring of drug effects in host-relevant contexts and accelerate the discovery of efficacious high-order drug combinations.
MeSH terms
- Mycobacterium tuberculosis
- Transcriptome
- Drug
- Tuberculosis
- Signature (topology)
- Computational biology
- Microbiology
- Drug response
- Biology