Transfer learning enables identification of multiple types of RNA modification using nanopore direct RNA sequencing. Transfer learning enables identification of multiple types of RNA modification using nanopore direct RNA sequencing
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https://www.ncbi.nlm.nih.gov/bioproject/PRJNA943203
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RNA internal modifications play critical role in development of multicellular organisms and their response to environmental cues. Using nanopore direct RNA sequencing (DRS), we constructed a large in vitro epitranscriptome (IVET) resource from plant cDNA library labeled with m6A, m1A and m5C respectively. Furthermore, after transfer learning, the pre-trained model was used to detect additional RNA internal modification such as m1A, hm5C, m7G and Ψ modification. Finally, we illustrated a global view of epitranscriptome with m6A, m1A, m5C, m7G and Ψ modification in rice seedlings under normal and high salinity environment. In summary, we provided a strategy for creating IVET resource from cDNA library and developed a computational method that use IVET-based transfer learning termed TandemMod for profiling epitranscriptome landscape with co-occupancy of multiple types of RNA modification in plants responsive to environmental signal. Overall design: Comparative epitranscriptome profiling analysis of DRS data for rice seedings under normal and high salinity environment.
创建时间:
2023-03-10



