posted on 2024-04-02, 16:04authored byTengyu Xie, Jing Huang
Understanding
the conformational dynamics of proteins, such as
the inward-facing (IF) and outward-facing (OF) transition observed
in transporters, is vital for elucidating their functional mechanisms.
Despite significant advances in protein structure prediction (PSP)
over the past three decades, most efforts have been focused on single-state
prediction, leaving multistate or alternative conformation prediction
(ACP) relatively unexplored. This discrepancy has led to the development
of highly accurate PSP methods such as AlphaFold, yet their capabilities
for ACP remain limited. To investigate the performance of current
PSP methods in ACP, we curated a data set, named IOMemP, consisting
of 32 experimentally determined high-resolution IF and OF structures
of 16 membrane proteins with substantial conformational changes. We
benchmarked 12 representative PSP methods, along with two recent multistate
methods based on AlphaFold, against this data set. Our findings reveal
a remarkably consistent preference for specific states across various
PSP methods. We elucidated how coevolution information in MSAs influences
state preference. Moreover, we showed that AlphaFold, when excluding
coevolution information, estimated similar energies between the experimental
IF and OF conformations, indicating that the energy model learned
by AlphaFold is not biased toward any particular state. Our IOMemP
data set and benchmark results are anticipated to advance the development
of robust ACP methods.