Big Data in Predictive Toxicology / ISSN (ePub)
The rate at which toxicological data is generated is continually becoming more rapid and the volume of data generated is growing dramatically. This is due in part to advances in software solutions and cheminformatics approaches which increase the...
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The rate at which toxicological data is generated is continually becoming more rapid and the volume of data generated is growing dramatically. This is due in part to advances in software solutions and cheminformatics approaches which increase the availability of open data from chemical, biological and toxicological and high throughput screening resources. However, the amplified pace and capacity of data generation achieved by these novel techniques presents challenges for organising and analysing data output.
Big Data in Predictive Toxicology discusses these challenges as well as the opportunities of new techniques encountered in data science. It addresses the nature of toxicological big data, their storage, analysis and interpretation. It also details how these data can be applied in toxicity prediction, modelling and risk assessment.
This title is of particular relevance to researchers and postgraduates working and studying in the fields of computational methods, applied and physical chemistry, cheminformatics, biological sciences, predictive toxicology and safety and hazard assessment.
Dr Andrea Richarz holds a diploma and PhD in Chemistry from the Technical University Berlin. She has managed two large international EU research projects in the area of computational toxicology and new approaches for chemical safety assessment, related to REACH chemicals and cosmetics substances, and was also involved in nanosafety project research. As Scientific Officer at the European Commission Joint Research Centre in Ispra, Italy she worked in the area of predictive toxicology, in silico methods and read-across, with special interest in integrated chemical safety assessment approaches as well as combined exposure to chemicals, including uncertainties of and confidence in the approaches in view of their regulatory acceptance. She has recently joined the European Chemicals Agency in Helsinki.
- 2019, 1. Auflage, 394 Seiten, Englisch
- Herausgegeben: Daniel Neagu, Andrea-Nicole Richarz
- Verlag: RSC
- ISBN-10: 1839160829
- ISBN-13: 9781839160820
- Erscheinungsdatum: 04.12.2019
Abhängig von Bildschirmgröße und eingestellter Schriftgröße kann die Seitenzahl auf Ihrem Lesegerät variieren.
- Dateiformat: ePub
- Größe: 8.39 MB
- Mit Kopierschutz
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