New molecular descriptor of the “structure–property” model for the estimation of ionization potentials of naphtho- and anthraquinones

2015 ◽  
Vol 56 (5) ◽  
pp. 829-835 ◽  
Author(s):  
M. Yu. Dolomatov ◽  
E. A. Kovaleva
Pharmaceutics ◽  
2021 ◽  
Vol 13 (7) ◽  
pp. 1101
Author(s):  
Elena M. Tosca ◽  
Roberta Bartolucci ◽  
Paolo Magni

Machine learning (ML) approaches are receiving increasing attention from pharmaceutical companies and regulatory agencies, given their ability to mine knowledge from available data. In drug discovery, for example, they are employed in quantitative structure–property relationship (QSPR) models to predict biological properties from the chemical structure of a drug molecule. In this paper, following the Second Solubility Challenge (SC-2), a QSPR model based on artificial neural networks (ANNs) was built to predict the intrinsic solubility (logS0) of the 100-compound low-variance tight set and the 32-compound high-variance loose set provided by SC-2 as test datasets. First, a training dataset of 270 drug-like molecules with logS0 value experimentally determined was gathered from the literature. Then, a standard three-layer feed-forward neural network was defined by using 10 ChemGPS physico-chemical descriptors as input features. The developed ANN showed adequate predictive performances on both of the SC-2 test datasets. Benefits and limitations of ML approaches have been highlighted and discussed, starting from this case-study. The main findings confirmed that ML approaches are an attractive and promising tool to predict logS0; however, many aspects, such as data quality, molecular descriptor computation and selection, and assessment of applicability domain, are crucial but often neglected, and should be carefully considered to improve predictions based on ML.


2021 ◽  
pp. 109709
Author(s):  
Xinyu Yang ◽  
Richard A. Barrett ◽  
Noel M. Harrison ◽  
Sean B. Leen

CORROSION ◽  
10.5006/3844 ◽  
2021 ◽  
Author(s):  
Ahmed Mohamed ◽  
D. Visco Jr. ◽  
David M. Bastidas

Chloride–induced corrosion of carbon steel reinforcements is one of the most important failure mechanisms of reinforced concrete structures. Organic corrosion inhibitors containing different functional groups were analyzed using cyclic potentiodynamic polarization to determine their effect on the pitting potential of carbon steel reinforcements in a 0.1 M Cl– contaminated simulated concrete pore solution. It was found that organic compounds with π–electrons in a functional group had better performance. This is attributed to the high density of highest occupied molecular orbital energies found in carboxyl group π–bond. Accordingly, increasing the tendency of donating π–electrons to the appropriate vacant d–orbital of the carbon steel, forming an adsorption film. The best corrosion inhibition performance was achieved by poly–carboxylates followed by alkanolamines and amines. In addition, a novel approach to show the significance of corrosion inhibition phenomenon was applied by developing a quantitative structure-property relationship using the Signature molecular descriptor which correlates the occurrences of atomic Signatures in a dataset to a property of interest using a forward stepping multilinear regression. The atomic Signature fragment capturing π–bond was the most influential of all the fragments, which underscores the significance of π–bond electrons in the adsorption process. It was demonstrated that the [O](=[C]) atomic Signature plays a crucial role in the inhibition process at all heights, corroborating the experimental results.


Carbon ◽  
2016 ◽  
Vol 107 ◽  
pp. 525-535 ◽  
Author(s):  
Michael J. Behr ◽  
Brian G. Landes ◽  
Bryan E. Barton ◽  
Mark T. Bernius ◽  
Gerry F. Billovits ◽  
...  

2000 ◽  
Vol 43 (1) ◽  
pp. 103-113 ◽  
Author(s):  
Lene Hjorth Alifrangis ◽  
Inge T. Christensen ◽  
Anders Berglund ◽  
Maria Sandberg ◽  
Lars Hovgaard ◽  
...  

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