Zeng2022 - Prediction of HIV Growth Inhibition using ImageMol
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下载链接:
https://www.omicsdi.org/dataset/biomodels/MODEL2405130001
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资源简介:
ImageMol is a Representation Learning Framework that utilizes molecule images for encoding molecular inputs as machine readable vectors for downstream tasks such as bio-activity prediction, drug metabolism analysis, or drug toxicity prediction. The approach utilizes transfer learning, that is, pre-training the model on massive unlabeled datasets to help it in generalizing feature extraction and then fine tuning on specific tasks. This model is fine tuned on 13 assays concerned with a number of target categories ranging from viral entry to toxicity in humans. These interactions are formulated as binary classification tasks.
Model Type: Predictive machine learning model.
Model Relevance: Probability of HIV inhibition.
Model Encoded by: Dhanshree Arora (Ersilia)
Metadata Submitted in BioModels by: Zainab Ashimiyu-Abdusalam
Implementation of this model code by Ersilia is available here:
https://github.com/ersilia-os/eos6hy3
创建时间:
2024-05-13



