Bhhatarai, B.; Gramatica, P. Modelling physico-chemical properties of (benzo)triazoles, and screening for environmental partitioning. Water Res. 2011, 45, 3, 1463–1471.

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Bhhatarai, B.; Gramatica, P. Modelling physico-chemical properties of (benzo)triazoles, and screening for environmental partitioning. Water Res. 2011, 45, 3, 1463–1471.

QDB archive DOI: 10.15152/QDB.127   DOWNLOAD

QsarDB content

Property logWS: Aqueous solubility as logWS [mg/L]

Eq1: Model for aqueous solubility

Regression model (regression)

Open in:QDB ExplorerQDB Predictor

NameTypen

R2

σ

Training set itraining490.8380.502

Property logVP: Vapour pressure as logVP [mm Hg]

Eq3: Model for vapor pressure

Regression model (regression)

Open in:QDB ExplorerQDB Predictor

NameTypen

R2

σ

Training set itraining330.8080.780

Property MP: Melting point [°C]

Eq4: Model for melting point i

Regression model (regression)

Open in:QDB ExplorerQDB Predictor

NameTypen

R2

σ

Training set itraining560.81327.151

Property logKow: Octanol/water partition coefficient as logKow

Eq2: Model for octanol/water partition coefficient

Regression model (regression)

Open in:QDB ExplorerQDB Predictor

NameTypen

R2

σ

Training set itraining630.8860.600

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When using this QDB archive, please cite (see details) it together with the original article:

  • Piir, G. Data for: Modelling physico-chemical properties of (benzo)triazoles, and screening for environmental partitioning. QsarDB repository, QDB.127. 2014. https://doi.org/10.15152/QDB.127

  • Bhhatarai, B.; Gramatica, P. Modelling physico-chemical properties of (benzo)triazoles, and screening for environmental partitioning. Water Res. 2011, 45, 1463–1471. https://doi.org/10.1016/j.watres.2010.11.006

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dc.date.accessioned2014-12-12T09:28:35Z
dc.date.available2014-12-12T09:28:35Z
dc.date.issued2014-12-12*
dc.identifier.urihttp://hdl.handle.net/10967/127
dc.identifier.urihttp://dx.doi.org/10.15152/QDB.127
dc.description.abstract(Benzo)triazoles are distributed throughout the environment, mainly in water compartments, because of their wide use in industry where they are employed in pharmaceutical, agricultural and deicing products. They are hazardous chemicals that adversely affect humans and other non-target species, and are on the list of substances of very high concern (SVHC) in the new European regulation of chemicals e REACH (Registration, Evaluation, Authorization and Restriction of Chemical substances). Thus there is a vital need for further investigations to understand the behavior of these compounds in biota and the environment. In such a scenario, physico-chemical properties like aqueous solubility, hydrophobicity, vapor pressure and melting point can be useful. However, the limited availability and the high cost of lab testing prevents the acquisition of necessary experimental data that industry must submit for the registration of these chemicals. In such cases a preliminary analysis can be made using Quantitative Structure-Property Relationships (QSPR) models. For such an analysis, we propose Multiple Linear Regression (MLR) models based on theoretical molecular descriptors selected by Genetic Algorithm (GA). Training and prediction sets were prepared a priori by splitting the available experimental data, which were then used to derive statistically robust and predictive (both internally and externally) models. These models, after verification of their structural applicability domain (AD), were used to predict the properties of a total of 351 compounds, including those in the REACH preregistration list. Finally, Principal Component Analysis was applied to the predictions to rank the environmental partitioning properties (relevant for leaching and volatility) of new and untested (benzo)triazoles within the AD of each model. Our study using this approach highlighted compounds dangerous for the aquatic compartment. Similar analyses using predictions obtained by the EPI Suite and VCCLAB tools are also compared and discussed in this paper.
dc.publisherGeven Piir
dc.rightsAttribution 4.0 International
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/
dc.titleBhhatarai, B.; Gramatica, P. Modelling physico-chemical properties of (benzo)triazoles, and screening for environmental partitioning. Water Res. 2011, 45, 3, 1463–1471.
qdb.property.endpoint1. Physical Chemical Properties 1.1. Melting pointen_US
qdb.property.endpoint1. Physical Chemical Properties 1.3. Water solubilityen_US
qdb.property.endpoint1. Physical Chemical Properties 1.4. Vapour pressureen_US
qdb.property.endpoint1. Physical Chemical Properties 1.6. Octanol-water partition coefficient (Kow)en_US
qdb.descriptor.applicationDRAGON 5en_US
qdb.prediction.applicationMOBY DIGS 1.2en_US
bibtex.entryarticleen_US
bibtex.entry.authorBhhatarai, B.
bibtex.entry.authorGramatica, P.
bibtex.entry.doi10.1016/j.watres.2010.11.006en_US
bibtex.entry.journalWater Res.en_US
bibtex.entry.monthJan
bibtex.entry.number3en_US
bibtex.entry.pages1463–1471en_US
bibtex.entry.titleModelling physico-chemical properties of (benzo)triazoles, and screening for environmental partitioningen_US
bibtex.entry.volume45en_US
bibtex.entry.year2011
qdb.model.typeRegression model (regression)en_US


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  • Publications
    Uni. Insubria (Italy), QSAR Research Unit in Environmental Chemistry and Ecotoxicology

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