CVLGIVQMNov 26, 2022

3D Reconstruction of Protein Complex Structures Using Synthesized Multi-View AFM Images

arXiv:2211.14662v13 citationsh-index: 57
Originality Synthesis-oriented
AI Analysis

This work addresses a domain-specific bottleneck in structural biology for predicting protein complexes, but it is incremental as it builds on existing 3D reconstruction methods with synthesized data.

The paper tackles the problem of predicting 3D structures of protein complexes, which are challenging for existing deep learning methods, by using synthesized multi-view AFM images and achieves an IoU of 0.92 on training and 0.52 on validation datasets.

Recent developments in deep learning-based methods demonstrated its potential to predict the 3D protein structures using inputs such as protein sequences, Cryo-Electron microscopy (Cryo-EM) images of proteins, etc. However, these methods struggle to predict the protein complexes (PC), structures with more than one protein. In this work, we explore the atomic force microscope (AFM) assisted deep learning-based methods to predict the 3D structure of PCs. The images produced by AFM capture the protein structure in different and random orientations. These multi-view images can help train the neural network to predict the 3D structure of protein complexes. However, obtaining the dataset of actual AFM images is time-consuming and not a pragmatic task. We propose a virtual AFM imaging pipeline that takes a 'PDB' protein file and generates multi-view 2D virtual AFM images using volume rendering techniques. With this, we created a dataset of around 8K proteins. We train a neural network for 3D reconstruction called Pix2Vox++ using the synthesized multi-view 2D AFM images dataset. We compare the predicted structure obtained using a different number of views and get the intersection over union (IoU) value of 0.92 on the training dataset and 0.52 on the validation dataset. We believe this approach will lead to better prediction of the structure of protein complexes.

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