Inverse Conformational Selection in Lipid–Protein Binding
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American Chemical Society
Abstract
Interest in lipid interactions with proteins and other biomolecules is emerging not only in fundamental biochemistry but also in the field of nanobiotechnology where lipids are commonly used, for example, in carriers of mRNA vaccines. The outward-facing components of cellular membranes and lipid nanoparticles, the lipid headgroups, regulate membrane interactions with approaching substances, such as proteins, drugs, RNA, or viruses. Because lipid headgroup conformational ensembles have not been experimentally determined in physiologically relevant conditions, an essential question about their interactions with other biomolecules remains unanswered: Do headgroups exchange between a few rigid structures, or fluctuate freely across a practically continuous spectrum of conformations? Here, we combine solid-state NMR experiments and molecular dynamics simulations from the NMRlipids Project to resolve the conformational ensembles of headgroups of four key lipid types in various biologically relevant conditions. We find that lipid headgroups sample a wide range of overlapping conformations in both neutral and charged cellular membranes, and that differences in the headgroup chemistry manifest only in probability distributions of conformations. Furthermore, the analysis of 894 protein-bound lipid structures from the Protein Data Bank suggests that lipids can bind to proteins in a wide range of conformations, which are not limited by the headgroup chemistry. We propose that lipids can select a suitable headgroup conformation from the wide range available to them to fit the various binding sites in proteins. The proposed inverse conformational selection model will extend also to lipid binding to targets other than proteins, such as drugs, RNA, and viruses.
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Bacle, A., Buslaev, P., Garcia-Fandino, R., Favela-Rosales, F., Ferreira, T. M., Fuchs, P. F. J., Gushchin, I., Javanainen, M., Kiirikki, A. M., Madsen, J. J., Melcr, J., Rodríguez, P. M., Miettinen, M. S., Ollila, O. H. S., Papadopoulos, C. G., Peón, A., Piggot, T. J., Piñeiro, Á., & Virtanen, S. I. (2021). Inverse conformational selection in lipid-protein binding. Journal of the American Chemical Society, 143(34), 13701–13709. https://doi.org/10.1021/jacs.1c05549
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https://doi.org/10.1021/jacs.1c05549Sponsors
M.J. thanks CSC-IT Center for Science for computational resources and the Emil Aaltonen foundation for financial support. T.M.F. was supported by the Ministry of Economics, Science and Digitalisation of the State of Saxony-Anhalt, Germany. P.B. was supported by the Academy of Finland (Grant 311031). F.F.-R. acknowledges Tecnológico Nacional de México Proyecto IT16C431, Dirección General de Asuntos del Personal Académico (DGAPA), Programa de Apoyo a Proyectos de Investigación e Innovación Tecnológica (PAPIIT) IG100920, CONACyT Ciencia de Frontera 74884, for financial support and Miztli-Dirección de Cómputo y de Tecnologías de Información y Comunicación (DGTIC)Universidad Nacional Autónoma de México (UNAM) (Project LANCAD-UNAM-DGTIC-057) facilities for computing time allocation. I.G. was supported by the Ministry of Science and Higher Education of the Russian Federation (agreement no. 075-00337-20-03, project FSMG-2020-0003). J.J.M. gratefully acknowledges financial support from the Carlsberg Foundation in the form of a postdoctoral fellowship while at the University of Chicago (grants CF15-0552, CF160639, and CF17-0783) and the research framework provided by the Research Computing Center at the University of Chicago. O.H.S.O, A.M.K, and S.I.V. acknowledge CSC − IT Center for Science for computational resources and Academy of Finland (grants 315596 and 319902) for financial support. T.J.P. acknowledges use of the Iridis high-performance computing resources at the University of Southampton. J.M. thanks the Center for Information Technology of the University of Groningen for their support and for providing access to the Peregrine high performance computing cluster. R.G.-F. and A.P. acknowledge the financial support from Fundaçao para a Ciência e Tecnologia (FCT) and FEDER European funds, through the project PTDC/BIA-BFS/30579/ 2017 (POCI-01-0145-30579) and UIDB/00081/2020. R.G.-F. thanks Ministerio de Ciencia, Innovación y Universidades for a “Ramón y Cajal” contract (RYC-2016-20335), and also the Spanish Agencia Estatal de Investigación (AEI), the ERDF (RTI2018-098795-A-I00), the Xunta de Galicia and the ERDF (ED431F 2020/05), and Centro singular de investigación de Galicia accreditation 2016-2019, ED431G/09). Á .P. acknowledges the Spanish Agencia Estatal de Investigación (AEI) and the ERDF (PID2019-111327GB-I00). R.G.-F., A.P., and Á .P. acknowledge the Centro de Supercomputación de Galicia (CESGA) for technical support and computing time.
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© 2021 The Authors. This is an open access article published by American Chemical Society under the CC BY license (http://creativecommons.org/licenses/by/4.0/). Attribution 4.0 International








