Benchmarking the accuracy of structure‐based binding affinity predictors on Spike–ACE2 deep mutational interaction set
Burcu Ozden,
Eda Şamiloğlu,
Atakan Özsan
et al.
Abstract:Since the start of COVID‐19 pandemic, a huge effort has been devoted to understanding the Spike (SARS‐CoV‐2)–ACE2 recognition mechanism. To this end, two deep mutational scanning studies traced the impact of all possible mutations across receptor binding domain (RBD) of Spike and catalytic domain of human ACE2. By concentrating on the interface mutations of these experimental data, we benchmarked six commonly used structure‐based binding affinity predictors (FoldX, EvoEF1, MutaBind2, SSIPe, HADDOCK, and UEP). … Show more
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