Results 301 to 310 of about 407,477 (350)
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Aqueous solubility and true solutions.
Die Pharmazie, 2010To the naked eye there is no sharp boundary between true solutions, where solute molecules are fully dispersed in the solvent, and colloidal solutions, where the solute molecules form very small (diameter < 50 nm) water-soluble aggregates, and smaller aggregates (diameter < 5 nm) are not easily detected by light scattering.
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High melatonin solubility in aqueous medium
Journal of Pineal Research, 1994Shida CS, Castrucci AML, Lamy‐Freund MT. High melatonin solubility in aqueous medium. J Pineal Res. 1994:16:198–201.AbstractThe pineal hormone melatonin (5‐methoxy‐N‐acetyl‐tryptamine) has been reported to participate in important physiological processes.
C S, Shida +2 more
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Database for aqueous solubility of nonelectrolytes
Bioinformatics, 1989The ARIZONA dATAbASE of Aqueous Solubility was developed. At the present time, it is the largest and most comprehensive compilation of aqueous solubility available for unionised organic compounds. The solubility data, which are extracted from various scientific articles, are objectively evaluated by five criteria: temperature, solute purity ...
R, Dannenfelser, S H, Yalkowsky
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Nature, 1964
Solubilities of Inorganic and Organic Compounds Edited by Prof. H. Stephen and Dr. T. Stephen. Vol. 1: Binary Systems, Part 2. Pp. viii + 963–1933. (London and New York: Pergamon Press, 1963.) 250s. net.
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Solubilities of Inorganic and Organic Compounds Edited by Prof. H. Stephen and Dr. T. Stephen. Vol. 1: Binary Systems, Part 2. Pp. viii + 963–1933. (London and New York: Pergamon Press, 1963.) 250s. net.
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Ensemble Geometric Deep Learning of Aqueous Solubility
Journal of Chemical Information and Modeling, 2023Geometric deep learning is one of the main workhorses for harnessing the power of big data to predict molecular properties such as aqueous solubility, which is key to the pharmacokinetic improvement of drug candidates. Two ensembles of graph neural network architectures were built, one based on spectral convolution and the other on spatial convolution.
Mohammad M. Ghahremanpour +3 more
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In Silico Prediction of Aqueous Solubility: The Solubility Challenge
Journal of Chemical Information and Modeling, 2009The dissolution of a chemical into water is a process fundamental to both chemistry and biology. The persistence of a chemical within the environment and the effects of a chemical within the body are dependent primarily upon aqueous solubility. With the well-documented limitations hindering the accurate experimental determination of aqueous solubility,
M, Hewitt +5 more
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Aqueous solubility of polychlorinated biphenyls
Chemosphere, 1980Abstract Aqueous solubility data for chlorinated biphenyls are compiled and a correlation developed from which the isomer solubility can be estimated from melting point and total surface area.
D. Mackay +4 more
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Aqueous Solubility and Insolubility
2008Publisher Summary This chapter focuses on aqueous solubility and insolubility. The correlation of aqueous solubility with a solute's interfacial tension with water is more useful with solutes that have a known, finite solubility, than with extremely hydrophilic polymeric solutes.
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Modeling the Aqueous Solubility of Aliphatic Alcohols
SAR and QSAR in Environmental Research, 1998A comparison of several structure-properly models for predicting the solubility of aliphatic alcohols in water is presented. Models based on the valence vertex-connectivity indices are better than models based on weighted edge-connectivity indices or vertex-connectivity indices or parameters related to the molecular surface area.
Nikolić, Sonja, Trinajstić, Nenad
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Random Forest Models To Predict Aqueous Solubility
Journal of Chemical Information and Modeling, 2006Random Forest regression (RF), Partial-Least-Squares (PLS) regression, Support Vector Machines (SVM), and Artificial Neural Networks (ANN) were used to develop QSPR models for the prediction of aqueous solubility, based on experimental data for 988 organic molecules.
Palmer, D. S. +3 more
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