Buch, Englisch, 466 Seiten, Format (B × H): 152 mm x 229 mm, Gewicht: 450 g
With Applications to Computer-Aided Drug Design, Cancer Biology, Emerging Pathogens and Computational Toxicology
Buch, Englisch, 466 Seiten, Format (B × H): 152 mm x 229 mm, Gewicht: 450 g
ISBN: 978-0-323-85713-0
Verlag: William Andrew Publishing
Here, an international team of leading experts review their respective fields and present their latest research findings, with case studies used throughout to analyze and present key information.
Zielgruppe
<p>Primary: Researchers involved in the management and practical use of big data in chemistry, biology, chemoinformatics, bioinformatics, computational chemistry, new drug discovery, drug design, and surveillance of emerging pathogens</p> <p>Secondary: Students and young researchers interested in techniques and applications of big data analytics</p>
Autoren/Hrsg.
Weitere Infos & Material
GENERAL SECTION:
- CHEMOINFORMATICS AND BIOINFORMATICS BY DISCRETE MATHEMATICS AND NUMBERS: An adventure from small data to the realm of emerging big data
- Robustness Concerns in High-dimensional Data Analysis and Potential Solutions
- The Social Face of Big Data: Privacy, Transparency, Bias and Fairness in Algorithms
CHEMISTRY & CHEMOINFORMATICS SECTION:
- Integrating data into a complex Adverse Outcome Pathway
- Big data and deep learning: extracting and revising chemical knowledge from data
- Retrosynthetic space persuades by big data descriptors, by Claudiu N Lungu
- Approaching history of chemistry through big data on chemical reactions and compounds
- Combinatorial Techniques for Large Data Sets: Hypercubes and Halocarbons
- Development of QSAR/QSPR/QSTR models based on Electrophilicity index: A Conceptual DFT based descriptor
- Pharmacophore based virtual screening of large compound databases can aid "big data" problems in drug discovery
- A New Robust Classifier to Detect Hot-Spots and Null-Spots in Protein-Protein Interface: Validation of Binding Pocket and Identification of Inhibitors in in-vitro and in-vivo Models
- Mining Big Data in Drug Discovery - Triaging and Decision Trees
BIOINFORMATICS AND COMPUTATIOANL TOXICOLOGY SECTION:
- Use of proteomics data and proteomics based biodescriptors in the estimation of bioactivity/ toxicity of chemicals and nanosubstances
- Mapping Interaction between Big spaces; active space from Protein structure and available chemical space
- Artificial Intelligence, Big Data and Machine Learning approaches in Genome-wide SNP based prediction for Precision Medicine & Drug Discovery
- Applications of alignment-free sequence descriptors (AFSDs) in the characterization of sequences in the age of big data: A case study with Zika virus, SARS, MERS, and COVID-19
- Scalable QSAR Systems for Predictive Toxicology
- From big data to complex network: a navigation through the maze of drug-target interaction
- Dissecting big RNA-Seq cancer data using machine learning to find disease-associated genes and the causal mechanism