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CHIASMA is a project funded by Horizon Europe. The CHIASMA Project will devise and demonstrate a comprehensive set of New Approach Methodologies (NAMs) and integrate them in a user friendly, reliable and robust framework to perform human and environmental safety evaluation in a regulatory context.
For more information visit https://chiasma-project.eu/
| Title | Model Description |
| QSAR model for LC50 organic chemicals and pesticides in Fathead Minnow | This QSAR model predicts the Log10(1/LC50) of organic chemicals and pesticides in Pimephales Promelas. |
| PFAS Kinetic Model for Danio Rerio (Zebrafish)-NTUA | A kinetic model to predict PFAS concentration in zebrafish |
| Human pregnancy-PBK model for Cypermethrin - Maternal | This model describes cypermethrin kinetics in pregnant women after ingestion |
| Human pregnancy-PBK model for Cypermethrin - Fetus | This model describes the kinetics of cypermethrin in the fetus following maternal oral exposure |
| Human pregnancy-PBK model for Permethrin - Maternal | This model describes permethrin kinetics in pregnant women after ingestion |
| Human pregnancy-PBK model for Permethrin - Fetus | This model describes the kinetics of permethrin in the fetus following maternal oral exposure |
| Human pregnancy-PBK model for Deltamethrin - Maternal | This model describes deltamethrin kinetics in pregnant women after ingestion |
| Human pregnancy-PBK model for Deltamethrin - Fetus | This model describes the kinetics of deltamethrin in the fetus following maternal oral exposure |
| Generic PBK model for graphene oxide materials | This is a PBK model that predicts the biodistribution of Graphene Oxide in mice following intravenous, oral, inhalation, or intraperitoneal administration |
| PBK models for graphene oxide materials from different biodistribution studies | This is a PBK model that predicts the biodistribution of Graphene Oxide in mice across multiple exposure routes (intravenous, oral, inhalation, intraperitoneal), where a study-specific model was fitted to each biodistribution dataset |