Literature DB >> 32180410

Discovery of Self-Assembling π-Conjugated Peptides by Active Learning-Directed Coarse-Grained Molecular Simulation.

Kirill Shmilovich1, Rachael A Mansbach2, Hythem Sidky1, Olivia E Dunne1, Sayak Subhra Panda3,4, John D Tovar3,4,5, Andrew L Ferguson1.   

Abstract

Electronically active organic molecules have demonstrated great promise as novel soft materials for energy harvesting and transport. Self-assembled nanoaggregates formed from π-conjugated oligopeptides composed of an aromatic core flanked by oligopeptide wings offer emergent optoelectronic properties within a water-soluble and biocompatible substrate. Nanoaggregate properties can be controlled by tuning core chemistry and peptide composition, but the sequence-structure-function relations remain poorly characterized. In this work, we employ coarse-grained molecular dynamics simulations within an active learning protocol employing deep representational learning and Bayesian optimization to efficiently identify molecules capable of assembling pseudo-1D nanoaggregates with good stacking of the electronically active π-cores. We consider the DXXX-OPV3-XXXD oligopeptide family, where D is an Asp residue and OPV3 is an oligophenylenevinylene oligomer (1,4-distyrylbenzene), to identify the top performing XXX tripeptides within all 203 = 8000 possible sequences. By direct simulation of only 2.3% of this space, we identify molecules predicted to exhibit superior assembly relative to those reported in prior work. Spectral clustering of the top candidates reveals new design rules governing assembly. This work establishes new understanding of DXXX-OPV3-XXXD assembly, identifies promising new candidates for experimental testing, and presents a computational design platform that can be generically extended to other peptide-based and peptide-like systems.

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Year:  2020        PMID: 32180410     DOI: 10.1021/acs.jpcb.0c00708

Source DB:  PubMed          Journal:  J Phys Chem B        ISSN: 1520-5207            Impact factor:   2.991


  7 in total

1.  Machine learning in combinatorial polymer chemistry.

Authors:  Adam J Gormley; Michael A Webb
Journal:  Nat Rev Mater       Date:  2021-02-05       Impact factor: 76.679

2.  Machine Learning on a Robotic Platform for the Design of Polymer-Protein Hybrids.

Authors:  Matthew J Tamasi; Roshan A Patel; Carlos H Borca; Shashank Kosuri; Heloise Mugnier; Rahul Upadhya; N Sanjeeva Murthy; Michael A Webb; Adam J Gormley
Journal:  Adv Mater       Date:  2022-06-11       Impact factor: 32.086

3.  Targeted sequence design within the coarse-grained polymer genome.

Authors:  Michael A Webb; Nicholas E Jackson; Phwey S Gil; Juan J de Pablo
Journal:  Sci Adv       Date:  2020-10-21       Impact factor: 14.136

4.  Data-driven discovery of cardiolipin-selective small molecules by computational active learning.

Authors:  Bernadette Mohr; Kirill Shmilovich; Isabel S Kleinwächter; Dirk Schneider; Andrew L Ferguson; Tristan Bereau
Journal:  Chem Sci       Date:  2022-03-02       Impact factor: 9.969

5.  Beyond Tripeptides Two-Step Active Machine Learning for Very Large Data sets.

Authors:  Alexander van Teijlingen; Tell Tuttle
Journal:  J Chem Theory Comput       Date:  2021-04-27       Impact factor: 6.006

6.  Integration of Machine Learning and Coarse-Grained Molecular Simulations for Polymer Materials: Physical Understandings and Molecular Design.

Authors:  Danh Nguyen; Lei Tao; Ying Li
Journal:  Front Chem       Date:  2022-01-24       Impact factor: 5.221

Review 7.  Automation and data-driven design of polymer therapeutics.

Authors:  Rahul Upadhya; Shashank Kosuri; Matthew Tamasi; Travis A Meyer; Supriya Atta; Michael A Webb; Adam J Gormley
Journal:  Adv Drug Deliv Rev       Date:  2020-11-24       Impact factor: 15.470

  7 in total

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