3.8 Article

Protein structure prediction in the era of AI: Challenges and limitations when applying to in silico force spectroscopy

Journal

FRONTIERS IN BIOINFORMATICS
Volume 2, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fbinf.2022.983306

Keywords

artificial intelligence; protein folding; adhesins; molecular dynamics; force spectroscopy; Staphylococcus infection

Funding

  1. This work was supported by the National Science Foundation under Grant MCB-2143787 (CAREER: In Silico Single-Molecule Force Spectroscopy). [MCB-2143787]
  2. National Science Foundation
  3. (CAREER: In Silico Single-Molecule Force Spectroscopy)

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Mechanoactive proteins play a crucial role in physiological and pathological processes, but current research methods have limitations. The AI-based AlphaFold has the potential to revolutionize protein research by accurately predicting protein folds from sequences. However, the results of AlphaFold need to be validated and should not be blindly applied.
Mechanoactive proteins are essential for a myriad of physiological and pathological processes. Guided by the advances in single-molecule force spectroscopy (SMFS), we have reached a molecular-level understanding of how mechanoactive proteins sense and respond to mechanical forces. However, even SMFS has its limitations, including the lack of detailed structural information during force-loading experiments. That is where molecular dynamics (MD) methods shine, bringing atomistic details with femtosecond time-resolution. However, MD heavily relies on the availability of high-resolution structural data, which is not available for most proteins. For instance, the Protein Data Bank currently has 192K structures deposited, against 231M protein sequences available on Uniprot. But many are betting that this gap might become much smaller soon. Over the past year, the AI-based AlphaFold created a buzz on the structural biology field by being able to predict near-native protein folds from their sequences. For some, AlphaFold is causing the merge of structural biology with bioinformatics. Here, using an in silico SMFS approach pioneered by our group, we investigate how reliable AlphaFold structure predictions are to investigate mechanical properties of Staphylococcus bacteria adhesins proteins. Our results show that AlphaFold produce extremally reliable protein folds, but in many cases is unable to predict high-resolution protein complexes accurately. Nonetheless, the results show that AlphaFold can revolutionize the investigation of these proteins, particularly by allowing high-throughput scanning of protein structures. Meanwhile, we show that the AlphaFold results need to be validated and should not be employed blindly, with the risk of obtaining an erroneous protein mechanism.

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