Removing technical variability in RNA-seq data using conditional quantile normalization

KD Hansen, RA Irizarry, Z Wu - Biostatistics, 2012 - academic.oup.com
Biostatistics, 2012academic.oup.com
The ability to measure gene expression on a genome-wide scale is one of the most
promising accomplishments in molecular biology. Microarrays, the technology that first
permitted this, were riddled with problems due to unwanted sources of variability. Many of
these problems are now mitigated, after a decade's worth of statistical methodology
development. The recently developed RNA sequencing (RNA-seq) technology has
generated much excitement in part due to claims of reduced variability in comparison to …
Abstract
The ability to measure gene expression on a genome-wide scale is one of the most promising accomplishments in molecular biology. Microarrays, the technology that first permitted this, were riddled with problems due to unwanted sources of variability. Many of these problems are now mitigated, after a decade's worth of statistical methodology development. The recently developed RNA sequencing (RNA-seq) technology has generated much excitement in part due to claims of reduced variability in comparison to microarrays. However, we show that RNA-seq data demonstrate unwanted and obscuring variability similar to what was first observed in microarrays. In particular, we find guanine-cytosine content (GC-content) has a strong sample-specific effect on gene expression measurements that, if left uncorrected, leads to false positives in downstream results. We also report on commonly observed data distortions that demonstrate the need for data normalization. Here, we describe a statistical methodology that improves precision by 42% without loss of accuracy. Our resulting conditional quantile normalization algorithm combines robust generalized regression to remove systematic bias introduced by deterministic features such as GC-content and quantile normalization to correct for global distortions.
Oxford University Press