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Macromolecular conformational changes in photosystem II: interaction between structure and function.

Vasily V Terentyev
Published in: Biophysical reviews (2022)
Conformational changes play an important role in the functioning of proteins and their complexes. This is also true for the pigment-protein super-complex of photosystem II (PSII). The data testify about the pH-induced macromolecular conformational changes in the water-oxidizing complex (WOC) on the donor side of PSII, the interaction between the spatial structure of WOC proteins and the distribution of cytochrome b 559 redox-forms, and the electron transfer efficiency between Q A and Q B on the acceptor side of PSII. Changes in the protein environment near Q A and Q B can be observed after the removal of the bicarbonate ion associated with non-heme Fe or after the addition of herbicides binding to the Q B site, which results in the suppression of the electron transfer in this site. The "locking" of the de novo assembled PSII in an inactive state until WOC activation is also accompanied by strong structural perturbations on the PSII acceptor and donor sides with the participation of Psb28 and Psb27 proteins. The triggers for degradation and replacement of damaged PSII proteins are structural changes induced by their oxidative modification and aggregation. Macromolecular changes in the antenna proteins underlie the activation of photoprotective non-photochemical quenching, which are induced by protonation of the lumenal residues of PsbS or/and Lhcsr3, as well as the phosphorylation of antenna proteins. Besides this, many smaller-scale conformational changes may occur in PSII. This review summarizes current knowledge about the possible conformational changes in proteins in the PSII super-complex and describes their proposed influence on PSII function.
Keyphrases
  • electron transfer
  • molecular dynamics
  • molecular dynamics simulations
  • single molecule
  • energy transfer
  • healthcare
  • machine learning
  • electronic health record
  • deep learning
  • binding protein