RNA-Seq gene expression estimation with read mapping uncertainty
University of Wisconsin–Madison · Morgridge Institute for Research
Abstract
Abstract Motivation: RNA-Seq is a promising new technology for accurately measuring gene expression levels. Expression estimation with RNA-Seq requires the mapping of relatively short sequencing reads to a reference genome or transcript set. Because reads are generally shorter than transcripts from which they are derived, a single read may map to multiple genes and isoforms, complicating expression analyses. Previous computational methods either discard reads that map to multiple locations or allocate them to genes heuristically. Results: We present a generative statistical model and associated inference methods that handle read mapping uncertainty in a principled manner. Through simulations parameterized by…
Citation impact
- FWCI
- 15.33
- Percentile
- 100%
- References
- 17
Authors
5- BLBo LiCorresponding
University of Wisconsin–Madison, Morgridge Institute for Research
- VRVictor Ruotti
University of Wisconsin–Madison, Morgridge Institute for Research
- RSRon Stewart
University of Wisconsin–Madison, Morgridge Institute for Research
- JAJames A. Thomson
University of Wisconsin–Madison, Morgridge Institute for Research
- CNColin N. Dewey
University of Wisconsin–Madison, Morgridge Institute for Research
Topics & keywords
- Computer science
- Inference
- RNA-Seq
- Expression (computer science)
- Computational biology
- Data mining
- Gene
- Algorithm