posted on 2023-04-26, 12:35authored byThi Tuyet
Van Tran, Agung Surya Wibowo, Hilal Tayara, Kil To Chong
Toxicity prediction is a critical step in the drug discovery
process
that helps identify and prioritize compounds with the greatest potential
for safe and effective use in humans, while also reducing the risk
of costly late-stage failures. It is estimated that over 30% of drug
candidates are discarded owing to toxicity. Recently, artificial intelligence
(AI) has been used to improve drug toxicity prediction as it provides
more accurate and efficient methods for identifying the potentially
toxic effects of new compounds before they are tested in human clinical
trials, thus saving time and money. In this review, we present an
overview of recent advances in AI-based drug toxicity prediction,
including the use of various machine learning algorithms and deep
learning architectures, of six major toxicity properties and Tox21
assay end points. Additionally, we provide a list of public data sources
and useful toxicity prediction tools for the research community and
highlight the challenges that must be addressed to enhance model performance.
Finally, we discuss future perspectives for AI-based drug toxicity
prediction. This review can aid researchers in understanding toxicity
prediction and pave the way for new methods of drug discovery.