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2015 | OriginalPaper | Buchkapitel

Bioinformatics and Microarray Data Analysis on the Cloud

verfasst von : Barbara Calabrese, Mario Cannataro

Verlag: Springer New York

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Abstract

High-throughput platforms such as microarray, mass spectrometry, and next-generation sequencing are producing an increasing volume of omics data that needs large data storage and computing power. Cloud computing offers massive scalable computing and storage, data sharing, on-demand anytime and anywhere access to resources and applications, and thus, it may represent the key technology for facing those issues. In fact, in the recent years it has been adopted for the deployment of different bioinformatics solutions and services both in academia and in the industry. Although this, cloud computing presents several issues regarding the security and privacy of data, that are particularly important when analyzing patients data, such as in personalized medicine. This chapter reviews main academic and industrial cloud-based bioinformatics solutions; with a special focus on microarray data analysis solutions and underlines main issues and problems related to the use of such platforms for the storage and analysis of patients data.
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Metadaten
Titel
Bioinformatics and Microarray Data Analysis on the Cloud
verfasst von
Barbara Calabrese
Mario Cannataro
Copyright-Jahr
2015
Verlag
Springer New York
DOI
https://doi.org/10.1007/7651_2015_236