Detection of differential RNA modifications from direct RNA sequencing of human cell lines

Differences in RNA expression can provide insights into the molecular identity of a cell, pathways involved in human diseases, and variation in RNA levels across patients associated with clinical phenotypes. RNA modifications such as m6A have been found to contribute to molecular functions of RNAs. However, quantification of differences in RNA modifications has been challenging.

Here we develop a computational method (xPore) to identify differential RNA modifications from direct RNA sequencing data.

We evaluate our method on transcriptome-wide m6A profiling data, demonstrating that xPore identifies positions of m6A sites at single base resolution, estimates the fraction of modified RNAs in the cell, and quantifies the differential modification rate across conditions. We apply the method to direct RNA-Sequencing data from 6 cell lines and find that many m6A sites are preserved, while a subset of m6A sites show significant differences in their modification rates across cell types.

Together, we show that RNA modifications can be identified from direct RNA-sequencing with high accuracy, enabling the analysis of differential modifications and expression from a single high throughput experiment.

Authors: loy N. Pratanwanich, Fei Yao, Ying Chen, Casslynn W.Q. Koh, Christopher Hendra, Polly Poon, Yeek Teck Goh, Phoebe M. L. Yap, Choi Jing Yuan, Wee Joo Chng, Sarah Ng, Alexandre Thiery, W.S. Sho Goh, Jonathan Göke