posted on 2024-11-01, 11:36authored byGustav Olanders, Giulia Testa, Alessandro Tibo, Eva Nittinger, Christian Tyrchan
In the realm of biomedical research,
understanding the
intricate
structure of proteins is crucial, as these structures determine how
proteins function within our bodies and interact with potential drugs.
Traditionally, methods like X-ray crystallography and cryo-electron
microscopy have been used to unravel these structures, but they are
often challenging, time-consuming and costly. Recently, a breakthrough
in computational biology has emerged with the development of deep
learning algorithms capable of predicting protein structures based
on their amino acid sequences (Jumper, J., et al. Nature2021, 596, 583. Lane, T. J. Nature Methods2023, 20,
170. Kryshtafovych, A., et al. Proteins: Structure, Function
and Bioinformatics2021, 89, 1607). This study focuses on predicting the dynamic changes that
proteins undergo upon ligand binding, specifically when they bind
to allosteric sites, i.e. a pocket different from the active site.
Allosteric modulators are particularly important for drug discovery,
as they open new avenues for designing drugs that can target proteins
more effectively and with fewer side effects (Nussinov, R.; Tsai,
C. J. Cell2013, 153, 293). To study this, we curated a data set of 578 X-ray structures
comprised of proteins displaying orthosteric and allosteric binding
as well as a general framework to evaluate deep learning-based structure
prediction methods. Our findings demonstrate the potential and current
limitations of deep learning methods, such as AlphaFold2 (Jumper,
J., et al. Nature2021, 596, 583), NeuralPLexer (Qiao, Z., et al. Nat Mach Intell2024, 6, 195), and RoseTTAFold All-Atom
(Krishna, R., et al. Science2024, 384, eadl2528) to predict not just static protein structures
but also the dynamic conformational changes. Herein we show that predicting
the allosteric induce-fit conformation still poses a challenge to
deep learning methods as they more accurately predict the orthosteric
bound conformation compared to the allosteric induce fit conformation.
For AlphaFold2, we observed that conformational diversity, and sampling
between the apo and holo state could be increased by modifying the
MSA depth, but this did not enhance the ability to generate conformations
close to the allosteric induced-fit conformation. To further support
advancements in protein structure prediction field, the curated data
set and evaluation framework are made publicly available.