Autoignition temperature: comprehensive data analysis and predictive models.
Igor I BaskinS LozanoM DurotGilles MarcouDragos HorvathAlexander VarnekPublished in: SAR and QSAR in environmental research (2020)
Here we report a new predictive model for autoignition temperature (AIT), an important physical parameter widely used to assess potential safety hazards of combustible materials. Available structure-AIT data extracted from different sources were critically analysed. Support vector regression (SVR) models on different data subsets were built in order to identify a reliable compound set on which a realistic model could be built. This led to a selection of the dataset containing 875 compounds annotated with AIT values. The thereupon-based SVR model performs reasonably well in cross-validation with the determination coefficient r 2 = 0.77 and mean absolute error MAE = 37.8°C. External validation on 20 industrial compounds missing in the training set confirmed its good predictive power (MAE = 28.7°C).
Keyphrases
- data analysis
- electronic health record
- physical activity
- big data
- mental health
- magnetic resonance imaging
- heavy metals
- wastewater treatment
- risk assessment
- machine learning
- computed tomography
- drinking water
- peripheral blood
- climate change
- diffusion weighted imaging
- artificial intelligence
- molecularly imprinted
- simultaneous determination