Data Science for Genomics
Editat de Amit Kumar Tyagi, Ajith Abrahamen Limba Engleză Paperback – dec 2022
Techniques that are more specifically used for studying genomes are then described in the order in which they are used in a genome project, including methods for constructing genetic and physical maps. DNA sequencing methodology and the strategies used to assemble a contiguous genome sequence and methods for identifying genes in a genome sequence and determining the functions of those genes in the cell. Readers will learn how the information contained in the genome is released and made available to the cell, as well as methods centered on cloning and PCR.
- Provides a detailed explanation of data science concepts, methods and algorithms, all reinforced by practical examples that are applied to genomics
- Presents a roadmap of future trends suitable for innovative Data Science research and practice
- Includes topics such as Blockchain technology for securing data at end user/server side
- Presents real world case studies, open issues and challenges faced in Genomics, including future research directions and a separate chapter for Ethical Concerns
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Specificații
ISBN-13: 9780323983525
ISBN-10: 0323983529
Pagini: 312
Dimensiuni: 216 x 276 x 19 mm
Greutate: 0.73 kg
Editura: ELSEVIER SCIENCE
ISBN-10: 0323983529
Pagini: 312
Dimensiuni: 216 x 276 x 19 mm
Greutate: 0.73 kg
Editura: ELSEVIER SCIENCE
Public țintă
Academics (scientists, researchers, MSc. PhD. students) from the fields of Computer Science and Engineering, Biomedical Engineering, Biology, Chemistry, Genomics, and Information Technology. The audience also includes interested professionals-experts from both public and private industries of biomedical, genomics, computer science, data science, and information technology; The book may be used in Data Science, Medical, Biomedical, Artificial Intelligence, Machine Learning, Deep Learning oriented courses given at especially Health, Biology, Biomedical Engineering, Genetics or similar programs of universities, institutions.Cuprins
1. Introduction to Data Science
2. Toolboxes for Data Scientists
3. Machine Learning and Deep Learning: A Concise Overview
4. Artificial Intelligence
5. Data Privacy and Data Trust
6. Visual Data Analysis and Complex Data Analysis
7. Big Data programming with Apache Spark and Hadoop
8. Information Retrieval and Recommender Systems
9. Statistical Natural Language Processing for Sentiment Analysis
10. Parallel Computing and High-Performance Computing
11. Data Science, Genomics, Genomes, and Genetics
12. Blockchain Technology for securing Genomic data
13. Cloud, edge, fog, etc., for communicating and storing data for Genome
14. Open Issues, Challenges and Future Research Directions towards Data science and Genomics
15. Privacy Laws
16. Ethical Concerns
17. Self-study questions
18. Problem-based learning
19. Key Terms/ Glossary
20. Appendix – Keeping up to Date
21. Bibliography
2. Toolboxes for Data Scientists
3. Machine Learning and Deep Learning: A Concise Overview
4. Artificial Intelligence
5. Data Privacy and Data Trust
6. Visual Data Analysis and Complex Data Analysis
7. Big Data programming with Apache Spark and Hadoop
8. Information Retrieval and Recommender Systems
9. Statistical Natural Language Processing for Sentiment Analysis
10. Parallel Computing and High-Performance Computing
11. Data Science, Genomics, Genomes, and Genetics
12. Blockchain Technology for securing Genomic data
13. Cloud, edge, fog, etc., for communicating and storing data for Genome
14. Open Issues, Challenges and Future Research Directions towards Data science and Genomics
15. Privacy Laws
16. Ethical Concerns
17. Self-study questions
18. Problem-based learning
19. Key Terms/ Glossary
20. Appendix – Keeping up to Date
21. Bibliography