Abstract
DNA-binding response regulators (DBRRs) are a broad class of proteins that operate in tandem with their partner kinase proteins to form two-component signal transduction systems in bacteria. Typical DBRRs are composed of two domains where the conserved N-terminal domain accepts transduced signals and the evolutionarily diverse C-terminal domain binds to DNA. These domains are assumed to be functionally independent, and hence recombination of the two domains should yield novel DBRRs of arbitrary input/output response, which can be used as biosensors. This idea has been proved to be successful in some cases; yet, the error rate is not trivial. Improvement of the success rate of this technique requires a deeper understanding of the linker-domain and inter-domain residue interactions, which have not yet been thoroughly examined. Here, we studied residue coevolution of DBRRs of the two main subfamilies (OmpR and NarL) using large collections of bacterial amino acid sequences to extensively investigate the evolutionary signatures of linker-domain and inter-domain residue interactions. Coevolutionary analysis uncovered evolutionarily selected linker-domain and inter-domain residue interactions of known experimental structures, as well as previously unknown inter-domain residue interactions. We examined the possibility of these inter-domain residue interactions as contacts that stabilize an inactive conformation of the DBRR where DNA binding is inhibited for both subfamilies. The newly gained insights on linker-domain/inter-domain residue interactions and shared inactivation mechanisms improve the understanding of the functional mechanism of DBRRs, providing clues to efficiently create functional DBRR-based biosensors. Additionally, we show the feasibility of applying coevolutionary landscape models to predict the functionality of domain-swapped DBRR proteins. The presented result demonstrates that sequence information can be used to filter out bioengineered DBRR proteins that are predicted to be nonfunctional due to a high negative predictive value.
| Original language | English |
|---|---|
| Pages (from-to) | 681-692 |
| Number of pages | 12 |
| Journal | Biophysical Journal |
| Volume | 123 |
| Issue number | 6 |
| DOIs | |
| State | Published - Mar 19 2024 |
Bibliographical note
Publisher Copyright:© 2024 Biophysical Society
Funding
Part of this work was done when M.S. X.L. and R.R.C. were at the Center for Theoretical Biological Physics (CTBP). Work at CTBP was supported by the NSF grants PHY-2019745 and PHY-2210291. M.S. thanks TOMODACHI-STEM Women's Leadership and Research Program and Tobitate! (Leap for Tomorrow) Study Abroad Initiative for traveling. J.N.O. is a CPRIT Scholar in Cancer Research sponsored by the Cancer Prevention and Research Institute of Texas. This work was supported in part, by JST, the establishment of university fellowships toward the creation of science technology innovation, grant number JPMJFS2113 and by Basis for Supporting Innovative Drug Discovery and Life Science Research (BINDS) (JP23ama121055) from Japan Agency for Medical Research and Development (AMED). The calculation in this research was partly conducted on Chaen, the supercomputer of the Center for Interdisciplinary AI and Data Science at Ochanomizu University. The authors declare no competing interests. Part of this work was done when M.S., X.L., and R.R.C. were at the Center for Theoretical Biological Physics (CTBP). Work at CTBP was supported by the NSF grants PHY-2019745 and PHY-2210291 . M.S. thanks TOMODACHI-STEM Women’s Leadership and Research Program and Tobitate! (Leap for Tomorrow) Study Abroad Initiative for traveling. J.N.O. is a CPRIT Scholar in Cancer Research sponsored by the Cancer Prevention and Research Institute of Texas . This work was supported in part, by JST , the establishment of university fellowships toward the creation of science technology innovation, grant number JPMJFS2113 and by Basis for Supporting Innovative Drug Discovery and Life Science Research (BINDS) ( JP23ama121055 ) from Japan Agency for Medical Research and Development (AMED). The calculation in this research was partly conducted on Chaen, the supercomputer of the Center for Interdisciplinary AI and Data Science at Ochanomizu University.
| Funders | Funder number |
|---|---|
| Cancer Prevention and Research Institute of Texas | |
| Japan Agency for Medical Research and Development | |
| Japan Science and Technology Agency | |
| Ochanomizu University | |
| National Science Foundation Arctic Social Science Program | PHY-2019745, PHY-2210291 |
| University Fellowship Creation Project for Creating Scientific and Technological Innovation | JPMJFS2113, JP23ama121055 |
ASJC Scopus subject areas
- Biophysics