48 research outputs found
Application of Multivariate Adaptive Regression Splines (MARSplines) for Predicting Hansen Solubility Parameters Based on 1D and 2D Molecular Descriptors Computed from SMILES String
A new method of Hansen solubility parameters (HSPs) prediction was developed
by combining the multivariate adaptive regression splines (MARSplines)
methodology with a simple multivariable regression involving 1D and 2D PaDEL
molecular descriptors. In order to adopt the MARSplines approach to QSPR/QSAR
problems, several optimization procedures were proposed and tested. The
effectiveness of the obtained models was checked via standard QSPR/QSAR
internal validation procedures provided by the QSARINS software and by
predicting the solubility classification of polymers and drug-like solid
solutes in collections of solvents. By utilizing information derived only from
SMILES strings, the obtained models allow for computing all of the three Hansen
solubility parameters including dispersion, polarization, and hydrogen bonding.
Although several descriptors are required for proper parameters estimation, the
proposed procedure is simple and straightforward and does not require a
molecular geometry optimization. The obtained HSP values are highly correlated
with experimental data, and their application for solving solubility problems
leads to essentially the same quality as for the original parameters. Based on
provided models, it is possible to characterize any solvent and liquid solute
for which HSP data are unavailable
The use of fast molecular descriptors and artificial neural networks approach in organochlorine compounds electron ionization mass spectra classification
International audienceDeveloping of theoretical tools can be very helpful for supporting new pollutant detection. Nowadays, a combination of mass spectrometry and chromatographic techniques are the most basic environmental monitoring methods. In this paper, two organ-ochlorine compound mass spectra classification systems were proposed. The classification models were developed within the framework of artificial neural networks (ANNs) and fast 1D and 2D molecular descriptor calculations. Based on the intensities of two characteristic MS peaks, namely, [M] and [M-35], two classification criterions were proposed. According to criterion I, class 1 comprises [M] signals with the intensity higher than 800 NIST units, while class 2 consists of signals with the intensity lower or equal than 800. According to criterion II, class 1 consists of [M-35] signals with the intensity higher than 100, while signals with the intensity lower or equal than 100 belong to class 2. As a result of ANNs learning stage, five models for both classification criterions were generated. The external model validation showed that all ANNs are characterized by high predicting power; however, criterion I-based ANNs are much more accurate and therefore are more suitable for analytical purposes. In order to obtain another confirmation, selected ANNs were tested against additional dataset comprising popular sunscreen agents disin-fection by-products reported in previous works
On the origin of surfaces-dependent growth of benzoic acid crystal inferred through the droplet evaporation method
International audienceCrystal growth behavior of benzoic acid crystals on different surfaces was examined. The performed experiments documented the existence of very strong influence introduced by polar surfaces as glass, gelatin, and polyvinyl alcohol (PVA) on the growth of benzoic acid crystals. These surfaces impose strong orientation effect resulting in a dramatic reduction of number of faces seen with x-ray powder diffractions (XPRD). However, scrapping the crystal off the surface leads to a morphology that is similar to the one observed for bulk crystallization. The surfaces of low wettability (paraffin) seem to be useful for preparation of amorphous powders, even for well-crystal-lizable compounds. The performed quantum chemistry computations characterized energetic contributions to stabilization of morphology related faces. It has been demonstrated , that the dominant face (002) of benzoic acid crystal, growing on polar surfaces, is characterized by the highest densities of intermolecular interaction energies determining the highest cohesive properties among all studied faces. Additionally, the inter-layer interactions, which stand for adhesive properties, are also the strongest in the case of this face. Thus, quantum chemistry computations providing detailed description of energetic contributions can be successfully used for clarification of adhesive and cohesive nature of benzoic acids crystal faces
Albumin-hyaluronan interactions : influence of ionic composition probed by molecular dynamics
The lubrication mechanism in synovial fluid and joints is not yet fully understood. Nevertheless,
intermolecular interactions between various neutral and ionic species including large
macromolecular systems and simple inorganic ions are the key to understanding the excellent lubrication
performance. An important tool for characterizing the intermolecular forces and their
structural consequences is molecular dynamics. Albumin is one of the major components in synovial
fluid. Its electrostatic properties, including the ability to form molecular complexes, are closely
related to pH, solvation, and the presence of ions. In the context of synovial fluid, it is relevant to
describe the possible interactions between albumin and hyaluronate, taking into account solution
composition effects. In this study, the influence of Na+, Mg2+, and Ca2+ ions on human serum
albumin鈥揾yaluronan interactions were examined using molecular dynamics tools. It was established
that the presence of divalent cations, and especially Ca2+, contributes mostly to the increase of
the affinity between hyaluronan and albumin, which is associated with charge compensation in
negatively charged hyaluronan and albumin. Furthermore, the most probable binding sites were
structurally and energetically characterized. The indicated moieties exhibit a locally positive charge
which enables hyaluronate binding (direct and water mediated)
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Collagen Type II—Chitosan Interactions as Dependent on Hydroxylation and Acetylation Inferred from Molecular Dynamics Simulations
Chitosan–collagen blends have been widely applied in tissue engineering, joints diseases treatment, and many other biomedical fields. Understanding the affinity between chitosan and collagen type II is particularly relevant in the context of mechanical properties modulation, which is closely associated with designing biomaterials suitable for cartilage and synovial fluid regeneration. However, many structural features influence chitosan’s affinity for collagen. One of the most important ones is the deacetylation degree (DD) in chitosan and the hydroxylation degree (HD) of proline (PRO) moieties in collagen. In this paper, combinations of both factors were analyzed using a very efficient molecular dynamics approach. It was found that DD and HD modifications significantly affect the structural features of the complex related to considered types of interactions, namely hydrogen bonds, hydrophobic, and ionic contacts. In the case of hydrogen bonds both direct and indirect (water bridges) contacts were examined. In case of the most collagen analogues, a very good correlation between binding free energy and DD was observed
Application 2D Descriptors and Artificial Neural Networks for Beta-Glucosidase Inhibitors Screening
Beta-glucosidase inhibitors play important medical and biological roles. In this study, simple two-variable artificial neural network (ANN) classification models were developed for beta-glucosidase inhibitors screening. All bioassay data were obtained from the ChEMBL database. The classifiers were generated using 2D molecular descriptors and the data miner tool available in the STATISTICA package (STATISTICA Automated Neural Networks, SANN). In order to evaluate the models’ accuracy and select the best classifiers among automatically generated SANNs, the Matthews correlation coefficient (MCC) was used. The application of the combination of maxHBint3 and SpMax8_Bhs descriptors leads to the highest predicting abilities of SANNs, as evidenced by the averaged test set prediction results (MCC = 0.748) calculated for ten different dataset splits. Additionally, the models were analyzed employing receiver operating characteristics (ROC) and cumulative gain charts. The thirteen final classifiers obtained as a result of the model development procedure were applied for a natural compounds collection available in the BIOFACQUIM database. As a result of this beta-glucosidase inhibitors screening, eight compounds were univocally classified as active by all SANNs
Molecular dynamics simulations of the affinity of chitin and chitosan for collagen: the effect of pH and the presence of sodium and calcium cations
Chitosan and chitin are promising biopolymers used in many areas including biomedical applications, such as tissue engineering and viscosupplementation. Chitosan shares similar properties with hyaluronan, a natural component of synovial fluid, making it a good candidate for joint disease treatment. The structural and energetic consequences of intermolecular interactions are crucial for understanding the biolubrication phenomenon and other important biomedical features. However, the properties of biopolymers, including their complexation abilities, are influenced by the nature of the aqueous medium with which they interact. In this study, we employed molecular dynamics simulations to describe the effect of pH and the presence of sodium and calcium cations on the stability of molecular complexes formed by collagen type II with chitin and chitosan oligosaccharides. Based on Gibbs free energy of binding, all considered complexes are thermodynamically stable over the entire pH range. The affinity between chitosan oligosaccharide and collagen is highly influenced by pH, while oligomeric chitin shows no pH-dependent effect on the stability of molecular assemblies with collagen. On the other hand, the presence of sodium and calcium cations has a negligible effect on the affinity of chitin and chitosan for collagen.</p