Differentiable Scaffolding Tree for Molecular Optimization

09/22/2021
by   Tianfan Fu, et al.
35

The structural design of functional molecules, also called molecular optimization, is an essential chemical science and engineering task with important applications, such as drug discovery. Deep generative models and combinatorial optimization methods achieve initial success but still struggle with directly modeling discrete chemical structures and often heavily rely on brute-force enumeration. The challenge comes from the discrete and non-differentiable nature of molecule structures. To address this, we propose differentiable scaffolding tree (DST) that utilizes a learned knowledge network to convert discrete chemical structures to locally differentiable ones. DST enables a gradient-based optimization on a chemical graph structure by back-propagating the derivatives from the target properties through a graph neural network (GNN). Our empirical studies show the gradient-based molecular optimizations are both effective and sample efficient. Furthermore, the learned graph parameters can also provide an explanation that helps domain experts understand the model output.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/05/2018

Latent Molecular Optimization for Targeted Therapeutic Design

We devise an approach for targeted molecular design, a problem of intere...
research
02/23/2020

ChemGrapher: Optical Graph Recognition of Chemical Compounds by Deep Learning

In drug discovery, knowledge of the graph structure of chemical compound...
research
11/24/2018

DEFactor: Differentiable Edge Factorization-based Probabilistic Graph Generation

Generating novel molecules with optimal properties is a crucial step in ...
research
08/24/2023

Reconciling Inconsistent Molecular Structures from Biochemical Databases

Information on the structure of molecules, retrieved via biochemical dat...
research
10/02/2020

End-to-End Differentiable Molecular Mechanics Force Field Construction

Molecular mechanics (MM) potentials have long been a workhorse of comput...
research
03/06/2021

Molecular modeling with machine-learned universal potential functions

Molecular modeling is an important topic in drug discovery. Decades of r...
research
12/01/2018

Discovering Molecular Functional Groups Using Graph Convolutional Neural Networks

Functional groups (FGs) serve as a foundation for analyzing chemical pro...

Please sign up or login with your details

Forgot password? Click here to reset