Recurrent Neural Networks (RNNs) trained with a set of molecules represented as unique (canonical) SMILES strings, have shown the capacity to create large chemical spaces of valid and meaningful structures. Herein we perform an extensive benchmark on models trained with subsets of GDB-13 of different sizes (1 million, 10,000 and 1000), with different SMILES variants (canonical, randomized and DeepSMILES), with two different recurrent cell types (LSTM and GRU) and with different hyperparameter combinations. To guide the benchmarks new metrics were developed that define how well a model has generalized the training set. The generated chemical space is evaluated with respect to its uniformity, closedness and completeness. Results show that mod...
Chemical autoencoders are attractive models as they combine chemical space navigation with possibili...
In de novo drug design, computational strategies are used to generate novel molecules with good affi...
Deep learning has acquired considerable momentum over the past couple of years in the domain of de-n...
A Recurrent Neural Network (RNN) trained with a set of molecules represented as SMILES strings can g...
Recurrent Neural Networks (RNNs) trained with a set of molecules represented as unique (canonical) S...
Recent applications of recurrent neural networks (RNN) enable training models that sample the chemic...
Abstract Recent applications of recurrent neural networks (RNN) enable training models that sample t...
Recent applications of Recurrent Neural Networks enable training models that sample the chemical spa...
Recurrent neural networks have been widely used to generate millions of de novo molecules in a known...
Generative artificial intelligence models present a fresh approach to chemogenomics and de novo drug...
This directory contains sets of molecules used to train chemical language models in the paper, "Lear...
BackgroundThere has been increasing interest in the use of deep neural networks for de novo design o...
We present here a combination of two networks, Recurrent Neural Networks (RNN) and Temporarily Convo...
Chemical autoencoders are attractive models as they combine chemical space navigation with possibili...
Molecular generative models trained with small sets of molecules represented as SMILES strings can g...
Chemical autoencoders are attractive models as they combine chemical space navigation with possibili...
In de novo drug design, computational strategies are used to generate novel molecules with good affi...
Deep learning has acquired considerable momentum over the past couple of years in the domain of de-n...
A Recurrent Neural Network (RNN) trained with a set of molecules represented as SMILES strings can g...
Recurrent Neural Networks (RNNs) trained with a set of molecules represented as unique (canonical) S...
Recent applications of recurrent neural networks (RNN) enable training models that sample the chemic...
Abstract Recent applications of recurrent neural networks (RNN) enable training models that sample t...
Recent applications of Recurrent Neural Networks enable training models that sample the chemical spa...
Recurrent neural networks have been widely used to generate millions of de novo molecules in a known...
Generative artificial intelligence models present a fresh approach to chemogenomics and de novo drug...
This directory contains sets of molecules used to train chemical language models in the paper, "Lear...
BackgroundThere has been increasing interest in the use of deep neural networks for de novo design o...
We present here a combination of two networks, Recurrent Neural Networks (RNN) and Temporarily Convo...
Chemical autoencoders are attractive models as they combine chemical space navigation with possibili...
Molecular generative models trained with small sets of molecules represented as SMILES strings can g...
Chemical autoencoders are attractive models as they combine chemical space navigation with possibili...
In de novo drug design, computational strategies are used to generate novel molecules with good affi...
Deep learning has acquired considerable momentum over the past couple of years in the domain of de-n...