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Poster
in
Workshop: AI for Science: from Theory to Practice

Scalable Multimer Structure Prediction using Diffusion Models

Peter Pao-Huang · Bowen Jing · Bowen Jing · Bonnie Berger


Abstract:

Accurate protein complex structure modeling is a necessary step in understanding the behavior of biological pathways and cellular systems. While some works have attempted to address this challenge, there is still a need for scaling existing methods to larger protein complexes. To address this need, we propose a novel diffusion generative model (DGM) that predicts large multimeric protein structures by learning to rigidly dock its chains together. Additionally, we construct a new dataset specifically for large protein complexes used to train and evaluate our DGM. We substantially improve prediction runtime and completion rates while maintaining competitive accuracy with current methods.

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