Finding Antibodies in Cryo-EM densities with CrAI

biorxiv(2024)

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摘要
Therapeutic antibodies have emerged as a prominent class of new drugs due to their high specificity and their ability to bind to several protein targets. Once an initial antibody has been identified, an optimization of this hit compound follows based on the 3D structure, when available. Cryo-EM is currently the most efficient method to obtain such structures, supported by well-established methods that can transform raw data into a potentially noisy 3D map. These maps need to be further interpreted by inferring the number, position and structure of antibodies and other proteins that might be present. Unfortunately, existing automated methods addressing this last step have a limited accuracy and usually require additional inputs, high resolution maps, and exhibit long running times. We propose the first fully automatic and efficient method dedicated to finding antibodies in cryo-EM densities: CrAI. This machine learning approach leverages the conserved structure of antibodies and exploits a dedicated novel database that we built to solve this problem. Running a prediction takes only a few seconds, instead of hours, and requires nothing but the cryo-EM density, seamlessly integrating in automated analysis pipelines. Our method is able to find the location of both Fabs and VHHs, at resolutions up to 10Å and is significantly more reliable than existing methods. It also provides an accurate estimation of the antibodies’ pose, even in challenging examples such as Fab binding to VHHs and vice-versa. We make our method available as a ChimeraX[[44][1]] bundle. [1][2] ### Competing Interest Statement The authors have declared no competing interest. [1]: #ref-44 [2]: #fn-3
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