xTrimoABFold: De novo Antibody Structure Prediction without MSA
Yining Wang, Xumeng Gong, Shaochuan Li, Bing Yang, YiWu Sun, Chuan, Shi, Yangang Wang, Cheng Yang, Hui Li, Le Song

TL;DR
xTrimoABFold is a novel deep learning model that predicts antibody structures from sequence alone with higher accuracy and significantly faster than existing methods, advancing de novo antibody design.
Contribution
The paper introduces xTrimoABFold, a new antibody structure prediction model that leverages a pretrained antibody language model and efficient structural modules, outperforming existing methods.
Findings
xTrimoABFold achieves over 30% improvement in RMSD compared to AlphaFold2.
The model is 151 times faster than AlphaFold2.
It outperforms other state-of-the-art antibody structure prediction methods.
Abstract
In the field of antibody engineering, an essential task is to design a novel antibody whose paratopes bind to a specific antigen with correct epitopes. Understanding antibody structure and its paratope can facilitate a mechanistic understanding of its function. Therefore, antibody structure prediction from its sequence alone has always been a highly valuable problem for de novo antibody design. AlphaFold2, a breakthrough in the field of structural biology, provides a solution to predict protein structure based on protein sequences and computationally expensive coevolutionary multiple sequence alignments (MSAs). However, the computational efficiency and undesirable prediction accuracy of antibodies, especially on the complementarity-determining regions (CDRs) of antibodies limit their applications in the industrially high-throughput drug design. To learn an informative representation of…
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Taxonomy
TopicsMonoclonal and Polyclonal Antibodies Research · Glycosylation and Glycoproteins Research · vaccines and immunoinformatics approaches
MethodsFocal Loss
