Deep learning-based molecular generative models have garnered emerging attention for their capability to generate molecules with novel structures and desired physicochemical properties. However, the evaluation of these models, particularly in a biological context, remains insufficient. To address the limitations of existing metrics and emulate practical application scenarios, we construct the RediscMol benchmark that comprises active molecules extracted from 5 kinase and 3 GPCR data sets. A set of rediscovery- and similarity-related metrics are introduced to assess the performance of 8 representative generative models (CharRNN, VAE, Reinvent, AAE, ORGAN, RNNAttn, TransVAE, and GraphAF). Our findings based on the RediscMol benchmark differ f...
De novo design seeks to generate molecules with required property profiles by virtual design-make-te...
Deep generative models of molecules have grown immensely in popularity, trained on relevant datasets...
The field of computational drug discovery and development has grown, with the aid of new computation...
While a multitude of deep generative models have recently emerged there exists no best practice for ...
In recent years the scientific community has devoted much effort in the development of deep learning...
It is more pressing than ever to reduce the time and costs for the development of lead compounds in ...
Abstract: Deep generative models have shown the ability to devise both valid and novel chemistry, wh...
While generative models have recently become ubiquitous in many scientific areas, less attention has...
Deep generative models have shown the ability to devise both valid and novel chemistry, which could ...
In recent years the scientific community has devoted much effort in the development of deep learning...
© 2020 American Chemical Society. All rights reserved. The discovery of functional molecules is an e...
Machine learning (ML) and Artificial Intelligence (AI) have had a renaissance during the last few ye...
This directory contains sets of molecules used to train chemical language models in the paper, "Lear...
Designing compounds with desired properties is a key element of the drug discovery process. However,...
The new wave of successful generative models in machine learning has increased the interest in deep ...
De novo design seeks to generate molecules with required property profiles by virtual design-make-te...
Deep generative models of molecules have grown immensely in popularity, trained on relevant datasets...
The field of computational drug discovery and development has grown, with the aid of new computation...
While a multitude of deep generative models have recently emerged there exists no best practice for ...
In recent years the scientific community has devoted much effort in the development of deep learning...
It is more pressing than ever to reduce the time and costs for the development of lead compounds in ...
Abstract: Deep generative models have shown the ability to devise both valid and novel chemistry, wh...
While generative models have recently become ubiquitous in many scientific areas, less attention has...
Deep generative models have shown the ability to devise both valid and novel chemistry, which could ...
In recent years the scientific community has devoted much effort in the development of deep learning...
© 2020 American Chemical Society. All rights reserved. The discovery of functional molecules is an e...
Machine learning (ML) and Artificial Intelligence (AI) have had a renaissance during the last few ye...
This directory contains sets of molecules used to train chemical language models in the paper, "Lear...
Designing compounds with desired properties is a key element of the drug discovery process. However,...
The new wave of successful generative models in machine learning has increased the interest in deep ...
De novo design seeks to generate molecules with required property profiles by virtual design-make-te...
Deep generative models of molecules have grown immensely in popularity, trained on relevant datasets...
The field of computational drug discovery and development has grown, with the aid of new computation...