A perspective on explanations of molecular prediction models
Chemists can be skeptical in using deep learning (DL) in decision making, due to the lack of
interpretability in “black-box” models. Explainable artificial intelligence (XAI) is a branch of …
interpretability in “black-box” models. Explainable artificial intelligence (XAI) is a branch of …
Artificial intelligence and cheminformatics tools: a contribution to the drug development and chemical science
I Saifi, BA Bhat, SS Hamdani, UY Bhat… - Journal of …, 2024 - Taylor & Francis
In the ever-evolving field of drug discovery, the integration of Artificial Intelligence (AI) and
Machine Learning (ML) with cheminformatics has proven to be a powerful combination …
Machine Learning (ML) with cheminformatics has proven to be a powerful combination …
XSMILES: interactive visualization for molecules, SMILES and XAI attribution scores
Background Explainable artificial intelligence (XAI) methods have shown increasing
applicability in chemistry. In this context, visualization techniques can highlight regions of a …
applicability in chemistry. In this context, visualization techniques can highlight regions of a …
Democratizing cheminformatics: interpretable chemical grou** using an automated KNIME workflow
With the increased availability of chemical data in public databases, innovative techniques
and algorithms have emerged for the analysis, exploration, visualization, and extraction of …
and algorithms have emerged for the analysis, exploration, visualization, and extraction of …
Where developmental toxicity meets explainable artificial intelligence: state-of-the-art and perspectives
M Vittoria Togo, F Mastrolorito, A Orfino… - Expert Opinion on …, 2024 - Taylor & Francis
ABSTRACT Introduction The application of Artificial Intelligence (AI) to predictive toxicology
is rapidly increasing, particularly aiming to develop non-testing methods that effectively …
is rapidly increasing, particularly aiming to develop non-testing methods that effectively …
[HTML][HTML] Recent Applications of Explainable AI (XAI): A Systematic Literature Review
This systematic literature review employs the Preferred Reporting Items for Systematic
Reviews and Meta-Analyses (PRISMA) methodology to investigate recent applications of …
Reviews and Meta-Analyses (PRISMA) methodology to investigate recent applications of …
Can we predict clinical pharmacokinetics of highly lipophilic compounds by integration of machine learning or in vitro data into physiologically based models? A …
While high lipophilicity tends to improve potency, its effects on pharmacokinetics (PK) are
complex and often unfavorable. To predict clinical PK in early drug discovery, we built …
complex and often unfavorable. To predict clinical PK in early drug discovery, we built …
Cheminformatics and artificial intelligence for accelerating agrochemical discovery
Y Djoumbou-Feunang, J Wilmot, J Kinney… - Frontiers in …, 2023 - frontiersin.org
The global cost-benefit analysis of pesticide use during the last 30 years has been
characterized by a significant increase during the period from 1990 to 2007 followed by a …
characterized by a significant increase during the period from 1990 to 2007 followed by a …
Improving Dimensionality Reduction Projections for Data Visualization
In data science and visualization, dimensionality reduction techniques have been
extensively employed for exploring large datasets. These techniques involve the …
extensively employed for exploring large datasets. These techniques involve the …
Explaining compound activity predictions with a substructure-aware loss for graph neural networks
Explainable machine learning is increasingly used in drug discovery to help rationalize
compound property predictions. Feature attribution techniques are popular choices to …
compound property predictions. Feature attribution techniques are popular choices to …