Transfer learning enables identification of multiple types of RNA modifications using nanopore direct RNA sequencing.
You WuWenna ShaoMengxiao YanYuqin WangPengfei XuGuoqiang HuangXiaofei LiBrian D GregoryJun YangHongxia WangJuan R Alvarez-DominguezPublished in: Nature communications (2024)
Nanopore direct RNA sequencing (DRS) has emerged as a powerful tool for RNA modification identification. However, concurrently detecting multiple types of modifications in a single DRS sample remains a challenge. Here, we develop TandemMod, a transferable deep learning framework capable of detecting multiple types of RNA modifications in single DRS data. To train high-performance TandemMod models, we generate in vitro epitranscriptome datasets from cDNA libraries, containing thousands of transcripts labeled with various types of RNA modifications. We validate the performance of TandemMod on both in vitro transcripts and in vivo human cell lines, confirming its high accuracy for profiling m 6 A and m 5 C modification sites. Furthermore, we perform transfer learning for identifying other modifications such as m 7 G, Ψ, and inosine, significantly reducing training data size and running time without compromising performance. Finally, we apply TandemMod to identify 3 types of RNA modifications in rice grown in different environments, demonstrating its applicability across species and conditions. In summary, we provide a resource with ground-truth labels that can serve as benchmark datasets for nanopore-based modification identification methods, and TandemMod for identifying diverse RNA modifications using a single DRS sample.