Rahman2022 - High throughput antibacterial screening with machine learning.
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下载链接:
https://www.omicsdi.org/dataset/biomodels/MODEL2404080002
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资源简介:
Prediction of antimicrobial potential using a dataset of 29537 compounds screened against the antibiotic resistant pathogen Burkholderia cenocepacia. The model uses the Chemprop Direct Message Passing Neural Network (D-MPNN) and has an AUC score of 0.823 for the test set. It has been used to virtually screen the FDA approved drugs as well as a collection of natural product list (>200k compounds) with hit rates of 26% and 12% respectively.
Model Type: Predictive machine learning model.
Model Relevance: Probability that a compound inhibits bacterial pathogens with a focus on ESKAPE.
Model Encoded by: Sarima Chiorlu (Ersilia)
Metadata Submitted in BioModels by: Zainab Ashimiyu-Abdusalam
Implementation of this model code by Ersilia is available here:
https://github.com/ersilia-os/eos5xng
创建时间:
2024-05-10



