Modeling of RNA-seq fragment sequence bias reduces systematic errors in transcript abundance estimation.
Michael I LoveJohn B HogeneschRafael A IrizarryPublished in: Nature biotechnology (2016)
We find that current computational methods for estimating transcript abundance from RNA-seq data can lead to hundreds of false-positive results. We show that these systematic errors stem largely from a failure to model fragment GC content bias. Sample-specific biases associated with fragment sequence features lead to misidentification of transcript isoforms. We introduce alpine, a method for estimating sample-specific bias-corrected transcript abundance. By incorporating fragment sequence features, alpine greatly increases the accuracy of transcript abundance estimates, enabling a fourfold reduction in the number of false positives for reported changes in expression compared with Cufflinks. Using simulated data, we also show that alpine retains the ability to discover true positives, similar to other approaches. The method is available as an R/Bioconductor package that includes data visualization tools useful for bias discovery.
Keyphrases
- rna seq
- single cell
- antibiotic resistance genes
- electronic health record
- big data
- high throughput
- poor prognosis
- patient safety
- emergency department
- adverse drug
- microbial community
- amino acid
- wastewater treatment
- machine learning
- high resolution
- deep learning
- long non coding rna
- binding protein
- artificial intelligence
- drug induced