Using pRoloc for spatial proteomics data analysis
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چکیده
This tutorial illustrates the usage of the pRoloc R package for the analysis and interpretation of spatial proteomics data. It walks the reader through the creation of MSnSet instances, that hold the quantitative proteomics data and meta-data and introduces several aspects of data analysis, including data visu-alisation and application of machine learning to predict protein localisation.
منابع مشابه
A short tutorial on using pRoloc for spatial proteomics data analysis
This tutorial illustrates the usage of the pRoloc R package for the analysis and interpretation of spatial proteomics data. It walks the reader through the creation of MSnSet instances, that hold the quantitative proteomics data and meta-data and introduces several aspects of data analysis, including data visualisation and application of machine learning to predict protein localisation.
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تاریخ انتشار 2016