Keyword search (4,163 papers available)

"Cheung-Ong K" Authored Publications:

Title Authors PubMed ID
1 Transcriptome-Wide Off-Target Effects of Steric-Blocking Oligonucleotides Holgersen EM; Gandhi S; Zhou Y; Kim J; Vaz B; Bogojeski J; Bugno M; Shalev Z; Cheung-Ong K; Gonçalves J; O' Hara M; Kron K; Verby M; Sun M; Kakaradov B; Delong A; Merico D; Deshwar AG; 34388351
ENCS

 

Title:Transcriptome-Wide Off-Target Effects of Steric-Blocking Oligonucleotides
Authors:Holgersen EMGandhi SZhou YKim JVaz BBogojeski JBugno MShalev ZCheung-Ong KGonçalves JO' Hara MKron KVerby MSun MKakaradov BDelong AMerico DDeshwar AG
Link:https://pubmed.ncbi.nlm.nih.gov/34388351/
DOI:10.1089/nat.2020.0921
Publication:Nucleic acid therapeutics
Keywords:off-target effectssplice-switchingsteric-blocking oligonucleotides
PMID:34388351 Category: Date Added:2021-08-14
Dept Affiliation: ENCS
1 Deep Genomics, Inc., Toronto, Canada.
2 Graduate School of Medical Science and Engineering, KAIST, Daejeon, Republic of Korea.
3 Providence Therapeutics, Toronto, Canada.
4 The Hospital for Sick Children, Toronto, Canada.
5 Skyhawk Therapeutics, Waltham, Massachusetts, USA.
6 Department of Computer Science and Software Engineering, Concordia University, Montreal, Canada.

Description:

Steric-blocking oligonucleotides (SBOs) are short, single-stranded nucleic acids designed to modulate gene expression by binding to RNA transcripts and blocking access from cellular machinery such as splicing factors. SBOs have the potential to bind to near-complementary sites in the transcriptome, causing off-target effects. In this study, we used RNA-seq to evaluate the off-target differential splicing events of 81 SBOs and differential expression events of 46 SBOs. Our results suggest that differential splicing events are predominantly hybridization driven, whereas differential expression events are more common and driven by other mechanisms (including spurious experimental variation). We further evaluated the performance of in silico screens for off-target splicing events, and found an edit distance cutoff of three to result in a sensitivity of 14% and false discovery rate (FDR) of 99%. A machine learning model incorporating splicing predictions substantially improved the ability to prioritize low edit distance hits, increasing sensitivity from 4% to 26% at a fixed FDR of 90%. Despite these large improvements in performance, this approach does not detect the majority of events at an FDR <99%. Our results suggest that in silico methods are currently of limited use for predicting the off-target effects of SBOs, and experimental screening by RNA-seq should be the preferred approach.





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