The RIN: an RNA integrity number for assigning integrity values to RNA measurements
Agilent Technologies (Germany) · Hewlett-Packard (Germany) · +3 more institutions
Abstract
The integrity of RNA molecules is of paramount importance for experiments that try to reflect the snapshot of gene expression at the moment of RNA extraction. Until recently, there has been no reliable standard for estimating the integrity of RNA samples and the ratio of 28S:18S ribosomal RNA, the common measure for this purpose, has been shown to be inconsistent. The advent of microcapillary electrophoretic RNA separation provides the basis for an automated high-throughput approach, in order to estimate the integrity of RNA samples in an unambiguous way.
A method is introduced that automatically selects features from signal measurements and constructs regression models based on a Bayesian learning technique. Feature spaces of different dimensionality are compared in the Bayesian framework, which allows selecting a final feature combination corresponding to models with high posterior probability.
Citation impact
- FWCI
- 33.26
- Percentile
- 100%
- References
- 18
Authors
10- ASAndreas SchröederCorresponding
Agilent Technologies (Germany), Hewlett-Packard (Germany)
- OMOdilo Mueller
Agilent Technologies (United States)
- SSSusanne Stocker
Roche (United States), Agilent Technologies (Germany), Hewlett-Packard (Germany)
- RSRuediger Salowsky
Agilent Technologies (Germany), Hewlett-Packard (Germany)
- MJMichael J. Leiber
Agilent Technologies (Germany), Hewlett-Packard (Germany)
Topics & keywords
- RNA
- Computer science
- Computational biology
- Algorithm
- Ribosomal RNA
- Bayesian probability
- RNA extraction
- Data mining