Nuclear receptors (NRs) are important biological targets of endocrine-disrupting chemicals (EDCs). Identifying chemicals that can act as EDCs and modulate the function of NRs is difficult because of the time and cost of in vitro and in vivo screening to determine the potential hazards of the 100 000s of chemicals that humans are exposed to. Hence, there is a need for computational approaches to prioritize chemicals for biological testing. Machine learning (ML) techniques are alternative methods that can quickly screen millions of chemicals and identify those that may be an EDC. Computational models of chemical binding to multiple NRs have begun to emerge. Recently, a Nuclear Receptor Activity (NuRA) dataset, describing experimentally d...
Endocrine-disrupting chemicals (EDCs) can cause serious harm to human health and the environment; th...
Developing a new drug is a complex process. Today, with the use of combinatorial chemistry, millions...
Background: Computational (in silico) methods, such as quantitative structure-activity relationships...
International audienceEndocrine disrupting chemicals (EDCs) are compounds able to penetrate the body...
Some pollutants can bind to nuclear receptors (NRs) and modulate their activities. Predicting intera...
Endocrine-disrupting chemicals (EDCs) are exogenous substances that interfere with the normal functi...
Endocrine-disrupting chemicals have been shown to interfere with the endocrine system function at th...
The mechanism of transcriptional activation/repression of the nuclear receptors (NRs) involves two m...
Abstract Nuclear receptors (NR) are a class of proteins that are responsible for sensing steroid and...
NURA (NUclear Receptor Activity) dataset collects curated information on small molecules that modula...
Nuclear receptors (NRs) are ligand dependent transcriptional factors and play a key role in reproduc...
An area of ongoing concern in toxicology and chemical risk assessment is endocrine disrupting chemic...
Nuclear receptors (NRs) are closely associated with various major diseases such as cancer, diabetes,...
Many chemicals that disrupt endocrine function have been linked to a variety of adverse biological o...
Endocrine disrupting chemicals (EDCs) pose a significant threat to human health, society, and the en...
Endocrine-disrupting chemicals (EDCs) can cause serious harm to human health and the environment; th...
Developing a new drug is a complex process. Today, with the use of combinatorial chemistry, millions...
Background: Computational (in silico) methods, such as quantitative structure-activity relationships...
International audienceEndocrine disrupting chemicals (EDCs) are compounds able to penetrate the body...
Some pollutants can bind to nuclear receptors (NRs) and modulate their activities. Predicting intera...
Endocrine-disrupting chemicals (EDCs) are exogenous substances that interfere with the normal functi...
Endocrine-disrupting chemicals have been shown to interfere with the endocrine system function at th...
The mechanism of transcriptional activation/repression of the nuclear receptors (NRs) involves two m...
Abstract Nuclear receptors (NR) are a class of proteins that are responsible for sensing steroid and...
NURA (NUclear Receptor Activity) dataset collects curated information on small molecules that modula...
Nuclear receptors (NRs) are ligand dependent transcriptional factors and play a key role in reproduc...
An area of ongoing concern in toxicology and chemical risk assessment is endocrine disrupting chemic...
Nuclear receptors (NRs) are closely associated with various major diseases such as cancer, diabetes,...
Many chemicals that disrupt endocrine function have been linked to a variety of adverse biological o...
Endocrine disrupting chemicals (EDCs) pose a significant threat to human health, society, and the en...
Endocrine-disrupting chemicals (EDCs) can cause serious harm to human health and the environment; th...
Developing a new drug is a complex process. Today, with the use of combinatorial chemistry, millions...
Background: Computational (in silico) methods, such as quantitative structure-activity relationships...