Deep learning (DL) has attracted the attention of computational toxicologists as it offers a potentially greater power for in silico predictive toxicology than existing shallow learning algorithms. However, contradicting reports have been documented. To further explore the advantages of DL over shallow learning, we conducted this case study using two cell-based androgen receptor (AR) activity datasets with 10K chemicals generated from the Tox21 program. A nested double-loop cross-validation approach was adopted along with a stratified sampling strategy for partitioning chemicals of multiple AR activity classes (i.e., agonist, antagonist, inactive, and inconclusive) at the same distribution rates amongst the training, validation and test sub...
G protein-coupled receptors (GPCRs) initiate intracellular signaling pathways via interaction with e...
[[abstract]]Machine learning is a well-known approach for virtual screening. Recently, deep learning...
Quantitative structure-activity relationships (QSAR) are relevant techniques that assist biologists ...
Numerous chemical compounds are distributed around the world and may affect the homeostasis of the e...
Molecular design and evaluation for drug development and chemical safety assessment have been advanc...
In silico approaches have been studied intensively to assess the toxicological risk of various chemi...
In silico bioactivity prediction studies are designed to complement in vivo and in vitro efforts to ...
Many chemicals are present in our environment, and all living species are exposed to them. However, ...
Classifying chemicals according to putative modes of action (MOAs) is of paramount importance in the...
peer reviewedAssessing chemical toxicity is a multidisciplinary process, traditionally involving in ...
In drug development, late stage toxicity issues of a compound are the main cause of failure in clini...
Many chemicals are out there in our environment, and all living species are exposed. However, numero...
The antioxidant response elements (AREs) play a significant role in occurrence of oxidative stress a...
Computational models may assist in identification and prioritization of large chemical libraries. Re...
Drug-induced liver injury (DILI) is a severe adverse reaction caused by drugs and may result in acut...
G protein-coupled receptors (GPCRs) initiate intracellular signaling pathways via interaction with e...
[[abstract]]Machine learning is a well-known approach for virtual screening. Recently, deep learning...
Quantitative structure-activity relationships (QSAR) are relevant techniques that assist biologists ...
Numerous chemical compounds are distributed around the world and may affect the homeostasis of the e...
Molecular design and evaluation for drug development and chemical safety assessment have been advanc...
In silico approaches have been studied intensively to assess the toxicological risk of various chemi...
In silico bioactivity prediction studies are designed to complement in vivo and in vitro efforts to ...
Many chemicals are present in our environment, and all living species are exposed to them. However, ...
Classifying chemicals according to putative modes of action (MOAs) is of paramount importance in the...
peer reviewedAssessing chemical toxicity is a multidisciplinary process, traditionally involving in ...
In drug development, late stage toxicity issues of a compound are the main cause of failure in clini...
Many chemicals are out there in our environment, and all living species are exposed. However, numero...
The antioxidant response elements (AREs) play a significant role in occurrence of oxidative stress a...
Computational models may assist in identification and prioritization of large chemical libraries. Re...
Drug-induced liver injury (DILI) is a severe adverse reaction caused by drugs and may result in acut...
G protein-coupled receptors (GPCRs) initiate intracellular signaling pathways via interaction with e...
[[abstract]]Machine learning is a well-known approach for virtual screening. Recently, deep learning...
Quantitative structure-activity relationships (QSAR) are relevant techniques that assist biologists ...