Published May 21, 2024 | Version 1.0
Dataset Open

Conformer datasets for "Equivariant Graph Neural Networks for Toxicity Prediction"

Description

Predictive modeling of toxicity is a crucial step in the drug discovery pipeline. It can help filter out molecules with a high probability of failing in the early stages of de novo drug design. Thus, several machine learning (ML) models have been developed to predict the toxicity of molecules by combining classical ML techniques or deep neural networks with well-known molecular representations such as fingerprints or 2D graphs. But the more natural, accurate representation of molecules is expected to be defined in physical 3D space like in ab initio methods. Recent studies successfully used equivariant graph neural networks (EGNNs) for representation learning based on 3D structures to predict quantum-mechanical properties of molecules. Inspired by this, we investigated the performance of EGNNs to construct reliable ML models for toxicity prediction. We used the equivariant transformer (ET) model in TorchMD-NET for this. Eleven toxicity data sets taken from MoleculeNet, TDCommons, and ToxBenchmark have been considered to evaluate the capability of ET for toxicity prediction. Our results show that ET adequately learns 3D representations of molecules that can successfully correlate with toxicity activity, achieving good accuracies on most data sets comparable to state-of-the-art models. We also test a physicochemical property, namely, the total energy of a molecule, to inform the toxicity prediction with a physical prior. However, our work suggests that these two properties can not be related. We also provide an attention weight analysis for helping to understand the toxicity prediction in 3D space and thus increase the explainability of the ML model. In summary, our findings offer promising insights considering 3D geometry information via EGNNs and provide a straightforward way to integrate molecular conformers into ML-based pipelines for predicting and investigating toxicity prediction in physical space. We expect that in the future, especially for larger, more diverse data sets, EGNNs will be an essential tool in this domain.

PAPER

https://pubs.acs.org/doi/full/10.1021/acs.chemrestox.3c00032

CODE and MODELS:

The conformer data sets and trained toxicity models will be published upon acceptance of this work. The code has been made available at https://github.com/jule-c/ET-Tox, and the processed data as well as pretrained models for training and testing can be downloaded from https://zenodo.org/record/7942946. We can provide the full list of conformers as XYZ files upon request.

Files

Files (2.1 GB)

Name Size Download all
md5:ab91e904729013fdb6f69400aa6a036e
356.5 MB Download
md5:a1c385e7adbe0753c5b49948225ea995
19.3 MB Download
md5:a392d0e0a0a5c143b1d09fe3b0b12d80
48.7 MB Download
md5:eba95055575235692511122aca559368
63.5 MB Download
md5:97ff9a4537c113177c89cd7889a6a973
554.5 MB Download
md5:f27e0b33e12d9df85069ea55b13cff9e
307.1 MB Download
md5:9982edc09931bf2bcbf9245bb4c64608
752.9 MB Download

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