KOC-WebPredictor: An Open-Access Tool for Prediction and Insights into Soil Sorption
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https://figshare.com/articles/dataset/K_sub_OC_sub_-WebPredictor_An_Open-Access_Tool_for_Prediction_and_Insights_into_Soil_Sorption/31790863
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The soil organic carbon–water partition coefficient (KOC) is a key determinant of the environmental mobility and persistence of organic contaminants. Experimental measurement of KOC is accurate but resource-intensive, limiting its availability for the vast chemical inventory in commerce. Here, we developed interpretable quantitative structure–activity relationship (QSAR) and quantitative Read-Across Structure–Activity Relationship (q-RASAR) models, along with machine learning (ML) approaches, to predict log KOC values using reproducible 1D and 2D molecular descriptors. The optimized multiple linear regression (MLR)-based QSAR model, built on 824 structurally diverse compounds and nine mechanistically relevant descriptors, achieved strong internal and external performance (R2 = 0.85, Q2LOO = 0.84, and Q2F1 = 0.84). Comparative statistical evaluation using paired t- and Wilcoxon signed-rank tests confirmed that the QSAR model significantly outperformed the q-RASAR variant (p KOC-WebPredictor, was developed to deliver quantitative (QSAR-based) and qualitative (ML-based) predictions, with visualization taking AD into consideration. This integrated, interpretable platform provides a practical alternative to experimental assays for assessing soil–organic carbon interactions and prioritizing chemicals based on mobility potential.



