| Literature DB >> 28651966 |
Kate B Cook1, Shankar Vembu2, Kevin C H Ha1, Hong Zheng2, Kaitlin U Laverty1, Timothy R Hughes3, Debashish Ray4, Quaid D Morris5.
Abstract
RNA-binding proteins recognize RNA sequences and structures, but there is currently no systematic and accurate method to derive large (>12base) motifs de novo that reflect a combination of intrinsic preference to both sequence and structure. To address this absence, we introduce RNAcompete-S, which couples a single-step competitive binding reaction with an excess of random RNA 40-mers to a custom computational pipeline for interrogation of the bound RNA sequences and derivation of SSMs (Sequence and Structure Models). RNAcompete-S confirms that HuR, QKI, and SRSF1 prefer binding sites that are single stranded, and recapitulates known 8-10bp sequence and structure preferences for Vts1p and RBMY. We also derive an 18-base long SSM for Drosophila SLBP, which to our knowledge has not been previously determined by selections from pure random sequence, and accurately discriminates human replication-dependent histone mRNAs. Thus, RNAcompete-S enables accurate identification of large, intrinsic sequence-structure specificities with a uniform assay.Entities:
Keywords: High-throughput sequencing; In vitro selection; Motif discovery; Motif scanning; RNA secondary structure; RNA-binding protein
Mesh:
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Year: 2017 PMID: 28651966 DOI: 10.1016/j.ymeth.2017.06.024
Source DB: PubMed Journal: Methods ISSN: 1046-2023 Impact factor: 3.608