Literature DB >> 32163074

Molecular generation targeting desired electronic properties via deep generative models.

Qi Yuan1, Alejandro Santana-Bonilla, Martijn A Zwijnenburg, Kim E Jelfs.   

Abstract

As we seek to discover new functional materials, we need ways to explore the vast chemical space of precursor building blocks, not only generating large numbers of possible building blocks to investigate, but trying to find non-obvious options, that we might not suggest by chemical experience alone. Artificial intelligence techniques provide a possible avenue to generate large numbers of organic building blocks for functional materials, and can even do so from very small initial libraries of known building blocks. Specifically, we demonstrate the application of deep recurrent neural networks for the exploration of the chemical space of building blocks for a test case of donor-acceptor oligomers with specific electronic properties. The recurrent neural network learned how to produce novel donor-acceptor oligomers by trading off between selected atomic substitutions, such as halogenation or methylation, and molecular features such as the oligomer's size. The electronic and structural properties of the generated oligomers can be tuned by sampling from different subsets of the training database, which enabled us to enrich the library of donor-acceptors towards desired properties. We generated approximately 1700 new donor-acceptor oligomers with a recurrent neural network tuned to target oligomers with a HOMO-LUMO gap <2 eV and a dipole moment <2 Debye, which could have potential application in organic photovoltaics.

Entities:  

Year:  2020        PMID: 32163074     DOI: 10.1039/c9nr10687a

Source DB:  PubMed          Journal:  Nanoscale        ISSN: 2040-3364            Impact factor:   7.790


  6 in total

Review 1.  Into the Unknown: How Computation Can Help Explore Uncharted Material Space.

Authors:  Austin M Mroz; Victor Posligua; Andrew Tarzia; Emma H Wolpert; Kim E Jelfs
Journal:  J Am Chem Soc       Date:  2022-10-07       Impact factor: 16.383

2.  A transfer learning approach for reaction discovery in small data situations using generative model.

Authors:  Sukriti Singh; Raghavan B Sunoj
Journal:  iScience       Date:  2022-06-22

3.  EvoMol: a flexible and interpretable evolutionary algorithm for unbiased de novo molecular generation.

Authors:  Jules Leguy; Thomas Cauchy; Marta Glavatskikh; Béatrice Duval; Benoit Da Mota
Journal:  J Cheminform       Date:  2020-09-16       Impact factor: 5.514

4.  Explainable graph neural networks for organic cages.

Authors:  Qi Yuan; Filip T Szczypiński; Kim E Jelfs
Journal:  Digit Discov       Date:  2022-02-11

Review 5.  A Generative Approach to Materials Discovery, Design, and Optimization.

Authors:  Dhruv Menon; Raghavan Ranganathan
Journal:  ACS Omega       Date:  2022-07-24

6.  NMR-TS: de novo molecule identification from NMR spectra.

Authors:  Jinzhe Zhang; Kei Terayama; Masato Sumita; Kazuki Yoshizoe; Kengo Ito; Jun Kikuchi; Koji Tsuda
Journal:  Sci Technol Adv Mater       Date:  2020-07-30       Impact factor: 8.090

  6 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.