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DataSheet1_Thermodynamics-Based Model Construction for the Accurate Prediction of Molecular Properties From Partition Coefficients.docx

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https://figshare.com/articles/dataset/DataSheet1_Thermodynamics-Based_Model_Construction_for_the_Accurate_Prediction_of_Molecular_Properties_From_Partition_Coefficients_docx/16609249
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Developing models for predicting molecular properties of organic compounds is imperative for drug development and environmental safety; however, development of such models that have high predictive power and are independent of the compounds used is challenging. To overcome the challenges, we used a thermodynamics-based theoretical derivation to construct models for accurately predicting molecular properties. The free energy change that determines a property equals the sum of the free energy changes (ΔGFs) caused by the factors affecting the property. By developing or selecting molecular descriptors that are directly proportional to ΔGFs, we built a general linear free energy relationship (LFER) for predicting the property with the molecular descriptors as predictive variables. The LFER can be used to construct models for predicting various specific properties from partition coefficients. Validations show that the models constructed according to the LFER have high predictive power and their performance is independent of the compounds used, including the models for the properties having little correlation with partition coefficients. The findings in this study are highly useful for applications in drug development and environmental safety.
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2021-09-13
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