Williams2022 - Permeable compound selection using in vitro ADME data (PAMPA pH 5).
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https://www.omicsdi.org/dataset/biomodels/MODEL2404220004
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资源简介:
Parallel Artificial Membrane Permeability is an in vitro surrogate to determine the permeability of drugs across cellular membranes. PAMPA at pH 5 was experimentally determined in a dataset of 5,473 unique compounds by the NIH-NCATS. 50% of the dataset was used to train a classifier (SVM) to predict the permeability of new compounds, and validated on the remaining 50% of the data, rendering an AUC = 0.88. The Peff was converted to logarithmic, log Peff value lower than 2.0 were considered to have low to moderate permeability, and those with a value higher than 2.5 were considered as high-permeability compounds.
Model Type: Predictive machine learning model.
Model Relevance: Predicting compound permeability across cellular membranes.
Model Encoded by: Pauline Banye (Ersilia)
Metadata Submitted in BioModels by: Zainab Ashimiyu-Abdusalam
Implementation of this model code by Ersilia is available here:
https://github.com/ersilia-os/eos81ew
创建时间:
2024-05-10



