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Spatial correlation statistics enable transcriptome-wide characterization of RNA structure binding.


ABSTRACT: Molecular interactions at identical transcriptomic locations or at proximal but non-overlapping sites can mediate RNA modification and regulation, necessitating tools to uncover these spatial relationships. We present nearBynding, a flexible algorithm and software pipeline that models spatial correlation between transcriptome-wide tracks from diverse data types. nearBynding can process and correlate interval as well as continuous data and incorporate experimentally derived or in silico predicted transcriptomic tracks. nearBynding offers visualization functions for its statistics to identify colocalizations and adjacent features. We demonstrate the application of nearBynding to correlate RNA-binding protein (RBP) binding preferences with other RBPs, RNA structure, or RNA modification. By cross-correlating RBP binding and RNA structure data, we demonstrate that nearBynding recapitulates known RBP binding to structural motifs and provides biological insights into RBP binding preference of G-quadruplexes. nearBynding is available as an R/Bioconductor package and can run on a personal computer, making correlation of transcriptomic features broadly accessible.

SUBMITTER: Busa VF 

PROVIDER: S-EPMC9017189 | biostudies-literature | 2021 Oct

REPOSITORIES: biostudies-literature

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Spatial correlation statistics enable transcriptome-wide characterization of RNA structure binding.

Busa Veronica F VF   Favorov Alexander V AV   Fertig Elana J EJ   Leung Anthony K L AKL  

Cell reports methods 20211001 6


Molecular interactions at identical transcriptomic locations or at proximal but non-overlapping sites can mediate RNA modification and regulation, necessitating tools to uncover these spatial relationships. We present nearBynding, a flexible algorithm and software pipeline that models spatial correlation between transcriptome-wide tracks from diverse data types. nearBynding can process and correlate interval as well as continuous data and incorporate experimentally derived or <i>in silico</i> pr  ...[more]

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