TY - BOOK AU - Ye,Shui Qing TI - Big data analysis for bioinformatics and biomedical discoveries SN - 9781498724524 U1 - 570.285 PY - 2016/// CY - Abingdon PB - CRC Press KW - Bioinformatics KW - Medical sciences KW - Data processing KW - Sequence alignment - Bioinformatics KW - Nucleotide sequence KW - Data mining KW - Big data N1 - Table of Contents 1. Commonly Used Tools for Big Data Analysis 2. Linux for Big Data Analysis 3. Shui Qing Ye and Ding-You Li 4. Python for Big Data Analysis 5. Dmitry N. Grigoryev 6. R for Big Data Analysis 7. Stephen D. Simon 8. Next-Generation DNA Sequencing Data Analysis 9. Genome-Seq Data Analysis 10. Min Xiong, Li Qin Zhang, and Shui Qing Ye 11. RNA-Seq Data Analysis 12. Li Qin Zhang, Min Xiong, Daniel P. Heruth, and Shui Qing Ye 13. Microbiome-Seq Data Analysis 14. Daniel P. Heruth, Min Xiong, and Xun Jiang 15. miRNA-Seq Data Analysis 16. Daniel P. Heruth, Min Xiong, and Guang-Liang Bi 17. Methylome-Seq Data Analysis 18. Chengpeng Bi 19. ChIP-Seq Data Analysis 20. Shui Qing Ye, Li Qin Zhang, and Jiancheng Tu 21. Integrative and Comprehensive Big Data Analysis 22. Integrating Omics Data in Big Data Analysis 23. Li Qin Zhang, Daniel P. Heruth, and Shui Qing Ye 24. Pharmacogenetics and Genomics 25. Andrea Gaedigk, Katrin Sangkuhl, and Larisa H. Cavallari 26. Exploring De-Identified Electronic Health Record Data with i2b2 27. Mark Hoffman 28. Big Data and Drug Discovery 29. Gerald J. Wyckoff and D. Andrew Skaff 30. Literature-Based Knowledge Discovery 31. Hongfang Liu and Majid Rastegar-Mojarad 32. Mitigating High Dimensionality in Big Data Analysis 33. Deendayal Dinakarpandian N2 - Features Covers the most important topics of Big Data analysis in biomedicine and biology Introduces computing tools for Big Data analysis, such as Linux-based command lines, Python, and R Presents data analysis pipelines for next-generation DNA sequencing applications, including Genome-seq, RNA-seq, Microbiome-seq, Methylome-seq, miRNA-seq, and ChIP-seq Shows how to integrate high-dimensional omics data, pharmacogenomics data, electronic medical records, in silico drug findings, and literature-based knowledge for precision medicine Summary Demystifies Biomedical and Biological Big Data Analyses Big Data Analysis for Bioinformatics and Biomedical Discoveries provides a practical guide to the nuts and bolts of Big Data, enabling you to quickly and effectively harness the power of Big Data to make groundbreaking biological discoveries, carry out translational medical research, and implement personalized genomic medicine. Contributing to the NIH Big Data to Knowledge (BD2K) initiative, the book enhances your computational and quantitative skills so that you can exploit the Big Data being generated in the current omics era. The book explores many significant topics of Big Data analyses in an easily understandable format. It describes popular tools and software for Big Data analyses and explains next-generation DNA sequencing data analyses. It also discusses comprehensive Big Data analyses of several major areas, including the integration of omics data, pharmacogenomics, electronic health record data, and drug discovery. Accessible to biologists, biomedical scientists, bioinformaticians, and computer data analysts, the book keeps complex mathematical deductions and jargon to a minimum. Each chapter includes a theoretical introduction, example applications, data analysis principles, step-by-step tutorials, and authoritative references. https://www.crcpress.com/Big-Data-Analysis-for-Bioinformatics-and-Biomedical-Discoveries/Ye/p/book/9781498724524 ER -