Predictive Toxicology

A topical collection in Toxics (ISSN 2305-6304). This collection belongs to the section "Novel Methods in Toxicology Research".

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Editor


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Collection Editor
National Center for Toxicological Research, United States Food and Drug Administration, Jefferson, AR 72079, USA
Interests: bioinformatics; drug-induced liver injury; drug safety; biomarker discovery; toxicogenomics
Special Issues, Collections and Topics in MDPI journals

Topical Collection Information

Dear Colleagues,

The recent advances of toxicogenomics, high-throughput screening, stem cells, and image analysis are creating unique opportunities to improve our ability to predict risk in humans and the development of predictive toxicology. These modern biotechnologies are producing big toxicological data and require advanced artificial intelligence technologies to evaluate the potential for predicting toxicity. The application of conventional machine learning algorithms, such as logical regression, decision tree, and support vector machines, have largely enhanced our capability to recover useful knowledge from the increasing volume of toxicity data. A recent study reported by researchers from John Hopkins University, demonstrated that using artificial intelligent algorithms trained on chemical-safety, big data could be more predictive and outperform expensive animals studies on some toxicities. Notably, the development of deep learning techniques, with the help of advanced computer technologies (e.g., the use of graphical processing units (GPU)) and complicated neural network algorithms, have brought about breakthroughs in computer vision and pattern recognition, image and speech recognition, drug discovery, and toxicology. In several public scientific challenges, including the Merck-sponsored Kaggle competition in 2012 and the Tox21 Data Challenge in 2015, deep learning algorithms demonstrated a superior predictive performance to convenient machine learning algorithms.

In this Topical Collection, we focus on exploring the relationship between the toxicity of xenobiotics and their chemical structures, disturbed cellular, and molecular pathways by the application of artificial intelligent methods to improve the prediction of toxicity risk. In addition, we especially encourage submissions on applying deep learning techniques to process datasets from high-dimensional gene expression, image and high-throughput screening, and chemical structures.

You may choose our Joint Topical Collection in IJERPH

Dr. Minjun Chen
Collection Editor

Manuscript Submission Information

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Submitted manuscripts should not have been published previously, nor be under consideration for publication elsewhere (except conference proceedings papers). All manuscripts are thoroughly refereed through a single-blind peer-review process. A guide for authors and other relevant information for submission of manuscripts is available on the Instructions for Authors page. Toxics is an international peer-reviewed open access monthly journal published by MDPI.

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Keywords

  • predictive toxicology
  • artificial intelligence
  • big data
  • machine learning
  • deep learning
  • toxicogenomics
  • high throughput screening
  • image analysis
  • chemical structure

Related Special Issue

Published Papers (1 paper)

2023

27 pages, 5720 KiB  
Article
Artificial Intelligence/Machine Learning-Driven Small Molecule Repurposing via Off-Target Prediction and Transcriptomics
by Mohan Rao, Eric McDuffie and Clifford Sachs
Toxics 2023, 11(10), 875; https://doi.org/10.3390/toxics11100875 - 22 Oct 2023
Cited by 2 | Viewed by 2603
Abstract
The process of discovering small molecule drugs involves screening numerous compounds and optimizing the most promising ones, both in vitro and in vivo. However, approximately 90% of these optimized candidates fail during trials due to unexpected toxicity or insufficient efficacy. Current concepts with [...] Read more.
The process of discovering small molecule drugs involves screening numerous compounds and optimizing the most promising ones, both in vitro and in vivo. However, approximately 90% of these optimized candidates fail during trials due to unexpected toxicity or insufficient efficacy. Current concepts with respect to drug–protein interactions suggest that each small molecule interacts with an average of 6–11 targets. This implies that approved drugs and even discontinued compounds could be repurposed by leveraging their interactions with unintended targets. Therefore, we developed a computational repurposing framework for small molecules, which combines artificial intelligence/machine learning (AI/ML)-based and chemical similarity-based target prediction methods with cross-species transcriptomics information. This repurposing methodology incorporates eight distinct target prediction methods, including three machine learning methods. By using multiple orthogonal methods for a “dataset” composed of 2766 FDA-approved drugs targeting multiple therapeutic target classes, we identified 27,371 off-target interactions involving 2013 protein targets (i.e., an average of around 10 interactions per drug). Relative to the drugs in the dataset, we identified 150,620 structurally similar compounds. The highest number of predicted interactions were for drugs targeting G protein-coupled receptors (GPCRs), enzymes, and kinases with 10,648, 4081, and 3678 interactions, respectively. Notably, 17,283 (63%) of the off-target interactions have been confirmed in vitro. Approximately 4000 interactions had an IC50 of <100 nM for 1105 FDA-approved drugs and 1661 interactions had an IC50 of <10 nM for 696 FDA-approved drugs. Together, the confirmation of numerous predicted interactions and the exploration of tissue-specific expression patterns in human and animal tissues offer insights into potential drug repurposing for new therapeutic applications. Full article
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