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(Ebook) MATLAB Bioinformatics Toolbox™ User's Guide by The MathWorks, Inc.

  • SKU: EBN-11236232
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Instant download (eBook) MATLAB Bioinformatics Toolbox™ User's Guide after payment.
Authors:The MathWorks, Inc.
Pages:228 pages.
Year:2020
Editon:R2020a
Publisher:The MathWorks, Inc.
Language:english
File Size:4.72 MB
Format:pdf
Categories: Ebooks

Product desciption

(Ebook) MATLAB Bioinformatics Toolbox™ User's Guide by The MathWorks, Inc.

Read, analyze, and visualize genomic and proteomic data. Bioinformatics Toolbox provides algorithms and apps for Next Generation Sequencing (NGS), microarray analysis, mass spectrometry, and gene ontology. Using toolbox functions, you can read genomic and proteomic data from standard file formats such as SAM, FASTA, CEL, and CDF, as well as from online databases such as the NCBI Gene Expression Omnibus and GenBank®. You can explore and visualize this data with sequence browsers, spatial heatmaps, and clustergrams. The toolbox also provides statistical techniques for detecting peaks, imputing values for missing data, and selecting features. You can combine toolbox functions to support common bioinformatics workflows. You can use ChIP-Seq data to identify transcription factors; analyze RNA-Seq data to identify differentially expressed genes; identify copy number variants and SNPs in microarray data; and classify protein profiles using mass spectrometry data.
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