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Prediction of the cell-type-specific transcription of non-coding RNAs from genome sequences via machine learning.

Publication ,  Journal Article
Koido, M; Hon, C-C; Koyama, S; Kawaji, H; Murakawa, Y; Ishigaki, K; Ito, K; Sese, J; Parrish, NF; Kamatani, Y; Carninci, P; Terao, C
Published in: Nature biomedical engineering
June 2023

Gene transcription is regulated through complex mechanisms involving non-coding RNAs (ncRNAs). As the transcription of ncRNAs, especially of enhancer RNAs, is often low and cell type specific, how the levels of RNA transcription depend on genotype remains largely unexplored. Here we report the development and utility of a machine-learning model (MENTR) that reliably links genome sequence and ncRNA expression at the cell type level. Effects on ncRNA transcription predicted by the model were concordant with estimates from published studies in a cell-type-dependent manner, regardless of allele frequency and genetic linkage. Among 41,223 variants from genome-wide association studies, the model identified 7,775 enhancer RNAs and 3,548 long ncRNAs causally associated with complex traits across 348 major human primary cells and tissues, such as rare variants plausibly altering the transcription of enhancer RNAs to influence the risks of Crohn's disease and asthma. The model may aid the discovery of causal variants and the generation of testable hypotheses for biological mechanisms driving complex traits.

Duke Scholars

Published In

Nature biomedical engineering

DOI

EISSN

2157-846X

ISSN

2157-846X

Publication Date

June 2023

Volume

7

Issue

6

Start / End Page

830 / 844

Related Subject Headings

  • Transcription, Genetic
  • RNA, Untranslated
  • Humans
  • Genome-Wide Association Study
  • Genome
  • 4003 Biomedical engineering
 

Citation

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Koido, M., Hon, C.-C., Koyama, S., Kawaji, H., Murakawa, Y., Ishigaki, K., … Terao, C. (2023). Prediction of the cell-type-specific transcription of non-coding RNAs from genome sequences via machine learning. Nature Biomedical Engineering, 7(6), 830–844. https://doi.org/10.1038/s41551-022-00961-8
Koido, Masaru, Chung-Chau Hon, Satoshi Koyama, Hideya Kawaji, Yasuhiro Murakawa, Kazuyoshi Ishigaki, Kaoru Ito, et al. “Prediction of the cell-type-specific transcription of non-coding RNAs from genome sequences via machine learning.Nature Biomedical Engineering 7, no. 6 (June 2023): 830–44. https://doi.org/10.1038/s41551-022-00961-8.
Koido M, Hon C-C, Koyama S, Kawaji H, Murakawa Y, Ishigaki K, et al. Prediction of the cell-type-specific transcription of non-coding RNAs from genome sequences via machine learning. Nature biomedical engineering. 2023 Jun;7(6):830–44.
Koido, Masaru, et al. “Prediction of the cell-type-specific transcription of non-coding RNAs from genome sequences via machine learning.Nature Biomedical Engineering, vol. 7, no. 6, June 2023, pp. 830–44. Epmc, doi:10.1038/s41551-022-00961-8.
Koido M, Hon C-C, Koyama S, Kawaji H, Murakawa Y, Ishigaki K, Ito K, Sese J, Parrish NF, Kamatani Y, Carninci P, Terao C. Prediction of the cell-type-specific transcription of non-coding RNAs from genome sequences via machine learning. Nature biomedical engineering. 2023 Jun;7(6):830–844.

Published In

Nature biomedical engineering

DOI

EISSN

2157-846X

ISSN

2157-846X

Publication Date

June 2023

Volume

7

Issue

6

Start / End Page

830 / 844

Related Subject Headings

  • Transcription, Genetic
  • RNA, Untranslated
  • Humans
  • Genome-Wide Association Study
  • Genome
  • 4003 Biomedical engineering