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Transcriptome Data Analysis Rajeev K Azad Ed

  • SKU: BELL-58658002
Transcriptome Data Analysis Rajeev K Azad Ed
$ 31.00 $ 45.00 (-31%)

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Transcriptome Data Analysis Rajeev K Azad Ed instant download after payment.

Publisher: Humana Press
File Extension: PDF
File size: 7.95 MB
Author: Rajeev K. Azad (ed.)
ISBN: 9781071638859, 9781071638866, 1071638858, 1071638866
Language: English
Year: 2024

Product desciption

Transcriptome Data Analysis Rajeev K Azad Ed by Rajeev K. Azad (ed.) 9781071638859, 9781071638866, 1071638858, 1071638866 instant download after payment.

Advances in transcriptomics have revolutionized the fields of biology and medicine. Use of high-throughput sequencing technologies has resulted in mountains of transcriptomic data, which has necessitated the development of efficient methods for their analysis and interpretation. This volume presents a comprehensive description of the advances in transcriptomics, with a focus on methods and pipelines for transcriptome data analysis. In addition to the step-by-step description of well-established RNA sequencing (RNA-Seq) data analysis protocols, specialized pipelines have also been described, such as multi-omics data integration and analysis, gene interaction network construction, single-cell trajectory inference, detection of structural variants, and application of machine learning, to mention a few. This Methods in Molecular Biology series provides a useful resource for educators and researchers to help familiarize them with the new developments in the field, learn usage of the protocols for transcriptome data analysis, and implement the tools or pipelines to address relevant problems of their interest.

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