Combining Group Contribution Method and Semisupervised Learning to Build Machine Learning Models for Predicting Hydroxyl Radical Rate Constants of Water Contaminants
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https://figshare.com/articles/dataset/Combining_Group_Contribution_Method_and_Semisupervised_Learning_to_Build_Machine_Learning_Models_for_Predicting_Hydroxyl_Radical_Rate_Constants_of_Water_Contaminants/28095176
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Machine learning is an effective tool for predicting reaction rate constants for many organic compounds with the hydroxyl radical (HO•). Previously reported models have achieved relatively good performance, but due to scarce data (R2 = 0.77, root-mean-square-error = 0.32, and mean-absolute-error = 0.24 on the test set. Importantly, the AD was expanded by 117% compared to the model developed solely based on the Primary data set, and the final model can be reliably applied to more than 560,000 chemicals from the DSSTox database. Further model interpretation results indicated that the model made predictions based on a correct “understanding” of the impact of key substituents and reactive sites toward HO•. This research provides an effective method for augmenting data sets, which is important in improving ML model performance and expanding AD. The final model has been made widely accessible through a free online predictor.
创建时间:
2024-12-26



