Faculty Opinions recommendation of Automated de novo molecular design by hybrid machine intelligence and rule-driven chemical synthesis.

Author(s):  
Igor Jurisica
2019 ◽  
Vol 1 (7) ◽  
pp. 307-315 ◽  
Author(s):  
Alexander Button ◽  
Daniel Merk ◽  
Jan A. Hiss ◽  
Gisbert Schneider

Author(s):  
Joshua Meyers ◽  
Benedek Fabian ◽  
Nathan Brown

1994 ◽  
Vol 37 (23) ◽  
pp. 3994-4002 ◽  
Author(s):  
Bohdan Waszkowycz ◽  
David E. Clark ◽  
David Frenkel ◽  
Jin Li ◽  
Christopher W. Murray ◽  
...  

2019 ◽  
Author(s):  
Simon Johansson ◽  
Oleksii Ptykhodko ◽  
Josep Arús-Pous ◽  
Ola Engkvist ◽  
Hongming Chen

In recent years, deep learning for de novo molecular generation has become a rapidly growing research area. Recurrent neural networks (RNN) using the SMILES molecular representation is one of the most common approaches used. Recent study shows that the differentiable neural computer (DNC) can make considerable improvement over the RNN for modeling of sequential data. In the current study, DNC has been implemented as an extension to REINVENT, an RNN-based model that has already been used successfully to make de novo molecular design. The model was benchmarked on its capacity to learn the SMILES language on the GDB-13 and MOSES datasets. The DNC shows improvement on all test cases conducted at the cost of significantly increased computational time and memory consumption.


1995 ◽  
Vol 9 (1) ◽  
pp. 13-32 ◽  
Author(s):  
David E. Clark ◽  
David Frenkel ◽  
Stephen A. Levy ◽  
Jin Li ◽  
Christopher W. Murray ◽  
...  

2019 ◽  
Vol 59 (3) ◽  
pp. 1182-1196 ◽  
Author(s):  
Boris Sattarov ◽  
Igor I. Baskin ◽  
Dragos Horvath ◽  
Gilles Marcou ◽  
Esben Jannik Bjerrum ◽  
...  

2020 ◽  
Author(s):  
Thomas Blaschke ◽  
Ola Engkvist ◽  
Jürgen Bajorath ◽  
Hongming Chen

Abstract In de novo molecular design, recurrent neural networks (RNN) have been shown to be effective methods for sampling and generating novel chemical structures. Using a technique called reinforcement learning (RL), an RNN can be tuned to target a particular section of chemical space with optimized desirable properties using a scoring function. However, ligands generated by current RL methods so far tend to have relatively low diversity, and sometimes even result in duplicate structures when optimizing towards desired properties. Here, we propose a new method to address the low diversity issue in RL for molecular design. Memory-assisted RL is an extension of the known RL, with the introduction of a so-called memory unit. As proof of concept, we applied our method to generate structures with a desired AlogP value. In a second case study, we applied our method to design ligands for the dopamine type 2 receptor and the 5-hydroxytryptamine type 1A receptor. For both receptors, a machine learning model was developed to predict whether generated molecules were active or not for the receptor. In both case studies, it was found that memory-assisted RL led to the generation of more compounds predicted to be active having higher chemical diversity, thus achieving better coverage of chemical space of known ligands compared to established RL methods.


Sign in / Sign up

Export Citation Format

Share Document