3.8 Article

3D Structure From 2D Microscopy Images Using Deep Learning

Journal

FRONTIERS IN BIOINFORMATICS
Volume 1, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fbinf.2021.740342

Keywords

SMLM; deep-learning; structure; storm; AI

Funding

  1. BB is funded by a studentship from the UKRI/BBSRC National Productivity Investment Fund (BB/S507519/1) and is part of the London Interdisciplinary Doctoral Programme funded by UKRI/BBSRC (BB/M009513/1). [BB/S507519/1, BB/M009513/1]
  2. UKRI/BBSRC National Productivity Investment Fund

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This study introduces a deep learning solution for reconstructing protein complex structures from 2D microscopy images, utilizing a combination of convolutional neural network and differentiable renderer to predict and derive a structure model that fits the dataset.
Understanding the structure of a protein complex is crucial in determining its function. However, retrieving accurate 3D structures from microscopy images is highly challenging, particularly as many imaging modalities are two-dimensional. Recent advances in Artificial Intelligence have been applied to this problem, primarily using voxel based approaches to analyse sets of electron microscopy images. Here we present a deep learning solution for reconstructing the protein complexes from a number of 2D single molecule localization microscopy images, with the solution being completely unconstrained. Our convolutional neural network coupled with a differentiable renderer predicts pose and derives a single structure. After training, the network is discarded, with the output of this method being a structural model which fits the data-set. We demonstrate the performance of our system on two protein complexes: CEP152 (which comprises part of the proximal toroid of the centriole) and centrioles.

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