Machine Learning-Based Toxicological Modeling for Screening Environmental Obesogens
收藏NIAID Data Ecosystem2026-05-02 收录
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https://figshare.com/articles/dataset/Machine_Learning-Based_Toxicological_Modeling_for_Screening_Environmental_Obesogens/27158867
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资源简介:
The emerging presence of environmental obesogens, chemicals
that
disrupt energy balance and contribute to adipogenesis and obesity,
has become a major public health challenge. Molecular initiating events
(MIEs) describe biological outcomes resulting from chemical interactions
with biomolecules. Machine learning models based on MIEs can predict
complex toxic end points due to chemical exposure and improve the
interpretability of models. In this study, a system was constructed
that integrated six MIEs associated with adipogenesis and obesity.
This system showed high accuracy in external validation, with an area
under the receiver operating characteristic curve of 0.78. Molecular
hydrophobicity (SlogP_VSA) and direct electrostatic interactions (PEOE_VSA)
were identified as the two most critical molecular descriptors representing
the obesogenic potential of chemicals. This system was further used
to predict the obesogenic effects of chemicals on the candidate list
of substances of very high concern (SVHCs). Results from 3T3-L1 adipogenesis
assays verified that the system correctly predicted obesogenic or
nonobesogenic effects of 10 of the 12 SVHCs tested, and identified
four novel potential obesogens, including 2-benzotriazol-2-yl-4,6-ditert-butylphenol (UV-320), 4-(1,1,5-trimethylhexyl)phenol
(p262-NP), 2-[4-(1,1,3,3-tetramethylbutyl)phenoxy]ethanol (OP1EO)
and endosulfan. These validation data suggest that the screening system
has good performance in adipogenic prediction.
创建时间:
2024-10-03



