Literature DB >> 30632745

EncoderMap: Dimensionality Reduction and Generation of Molecule Conformations.

Tobias Lemke1, Christine Peter1.   

Abstract

Molecular simulation is one example where large amounts of high-dimensional (high-d) data are generated. To extract useful information, e.g., about relevant states and important conformational transitions, a form of dimensionality reduction is required. Dimensionality reduction algorithms differ in their ability to efficiently project large amounts of data to an informative low-dimensional (low-d) representation and the way the low and high-d representations are linked. We propose a dimensionality reduction algorithm called EncoderMap that is based on a neural network autoencoder in combination with a nonlinear distance metric. A key advantage of this method is that it establishes a functional link from the high-d to the low-d representation and vice versa. This allows us not only to efficiently project data points to the low-d representation but also to generate high-d representatives for any point in the low-d map. The potential of the algorithm is demonstrated for molecular simulation data of a small, highly flexible peptide as well as for folding simulations of the 20-residue Trp-cage protein. We demonstrate that the algorithm is able to efficiently project the ensemble of high-d structures to a low-d map where major states can be identified and important conformational transitions are revealed. We also show that molecular conformations can be generated for any point or any connecting line between points on the low-d map. This ability of inverse mapping from the low-d to the high-d representation is particularly relevant for the use in algorithms that enhance the exploration of conformational space or the sampling of transitions between conformational states.

Entities:  

Year:  2019        PMID: 30632745     DOI: 10.1021/acs.jctc.8b00975

Source DB:  PubMed          Journal:  J Chem Theory Comput        ISSN: 1549-9618            Impact factor:   6.006


  12 in total

1.  Neural networks for protein structure and function prediction and dynamic analysis.

Authors:  Yuko Tsuchiya; Kentaro Tomii
Journal:  Biophys Rev       Date:  2020-03-12

2.  Variational embedding of protein folding simulations using Gaussian mixture variational autoencoders.

Authors:  Mahdi Ghorbani; Samarjeet Prasad; Jeffery B Klauda; Bernard R Brooks
Journal:  J Chem Phys       Date:  2021-11-21       Impact factor: 3.488

3.  Unsupervised Learning Methods for Molecular Simulation Data.

Authors:  Aldo Glielmo; Brooke E Husic; Alex Rodriguez; Cecilia Clementi; Frank Noé; Alessandro Laio
Journal:  Chem Rev       Date:  2021-05-04       Impact factor: 60.622

4.  Deep learning the structural determinants of protein biochemical properties by comparing structural ensembles with DiffNets.

Authors:  Michael D Ward; Maxwell I Zimmerman; Artur Meller; Moses Chung; S J Swamidass; Gregory R Bowman
Journal:  Nat Commun       Date:  2021-05-21       Impact factor: 14.919

5.  Investigating the Conformational Ensembles of Intrinsically Disordered Proteins with a Simple Physics-Based Model.

Authors:  Yani Zhao; Robinson Cortes-Huerto; Kurt Kremer; Joseph F Rudzinski
Journal:  J Phys Chem B       Date:  2020-05-13       Impact factor: 2.991

6.  Explore Protein Conformational Space With Variational Autoencoder.

Authors:  Hao Tian; Xi Jiang; Francesco Trozzi; Sian Xiao; Eric C Larson; Peng Tao
Journal:  Front Mol Biosci       Date:  2021-11-12

7.  Inverse design of 3d molecular structures with conditional generative neural networks.

Authors:  Niklas W A Gebauer; Michael Gastegger; Stefaan S P Hessmann; Klaus-Robert Müller; Kristof T Schütt
Journal:  Nat Commun       Date:  2022-02-21       Impact factor: 17.694

8.  Evaluating Autoencoder-Based Featurization and Supervised Learning for Protein Decoy Selection.

Authors:  Fardina Fathmiul Alam; Taseef Rahman; Amarda Shehu
Journal:  Molecules       Date:  2020-03-04       Impact factor: 4.411

Review 9.  Computational methods for exploring protein conformations.

Authors:  Jane R Allison
Journal:  Biochem Soc Trans       Date:  2020-08-28       Impact factor: 5.407

Review 10.  Collective variable-based enhanced sampling and machine learning.

Authors:  Ming Chen
Journal:  Eur Phys J B       Date:  2021-10-20       Impact factor: 1.500

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