The experimental determination of water solubility (log S 0 ) and Setschenow coefficient (k m ) of a compound is a time-consuming activity, which often needs large amounts of expensive substances. This work aims at establishing two “open-source” chemometric models based on a regression tree that is able to predict the two abovementioned quantities. The dataset used is the largest to appear up to now for the collection of k m values, containing information on 295 molecules and it is relevant also for the collection of logS 0 values (321 molecules); for each of them 32 descriptors were taken from freely available databases. Information about water solubility and Setschenow coefficients, necessary to train the models, were taken from available...
Accurate prediction of the solubility of chemical substances in solvents remains a challenge. The sp...
This paper attempts to elucidate differences in QSPR models of aqueous solubility (Log S), melting p...
Solubility prediction remains a critical challenge in drug development, synthetic route and chemical...
Two estimation methods for water solubility are compared for several sets of compounds. One method i...
Random Forest regression (RF), Partial-Least-Squares (PLS) regression, Support Vector Machines (SVM)...
The estimation of the solubility of organic compounds in high-temperature water is important for des...
Water solubility is a critical property in risk assessments for chemicals, but measured values are o...
This work reports the ability of cosolvency and activity coefficient models in the prediction of dru...
Accurate solubility prediction is crucial across a range of scientific disciplines including drug ...
The relationship between aqueous activity coefficients (log γ(w)) and different physico-chemical pro...
Aqueous solubility is one of the most important physical properties to consider in drug discovery an...
Several methods have been proposed for the prediction of aqueous solubility. This study proposes the...
Non conformational QSPR models were built for the aqueous solubility (mol/L) at 25 °C of 5610 struct...
Aqueous solubility is one of the most important ADMET properties to assess and to optimize during th...
The goal of this study was to develop a simple means of estimating the cosolvent/water solubility pr...
Accurate prediction of the solubility of chemical substances in solvents remains a challenge. The sp...
This paper attempts to elucidate differences in QSPR models of aqueous solubility (Log S), melting p...
Solubility prediction remains a critical challenge in drug development, synthetic route and chemical...
Two estimation methods for water solubility are compared for several sets of compounds. One method i...
Random Forest regression (RF), Partial-Least-Squares (PLS) regression, Support Vector Machines (SVM)...
The estimation of the solubility of organic compounds in high-temperature water is important for des...
Water solubility is a critical property in risk assessments for chemicals, but measured values are o...
This work reports the ability of cosolvency and activity coefficient models in the prediction of dru...
Accurate solubility prediction is crucial across a range of scientific disciplines including drug ...
The relationship between aqueous activity coefficients (log γ(w)) and different physico-chemical pro...
Aqueous solubility is one of the most important physical properties to consider in drug discovery an...
Several methods have been proposed for the prediction of aqueous solubility. This study proposes the...
Non conformational QSPR models were built for the aqueous solubility (mol/L) at 25 °C of 5610 struct...
Aqueous solubility is one of the most important ADMET properties to assess and to optimize during th...
The goal of this study was to develop a simple means of estimating the cosolvent/water solubility pr...
Accurate prediction of the solubility of chemical substances in solvents remains a challenge. The sp...
This paper attempts to elucidate differences in QSPR models of aqueous solubility (Log S), melting p...
Solubility prediction remains a critical challenge in drug development, synthetic route and chemical...