Characterizing alternative splicing effects on protein interaction networks with LINDA.

Bioinformatics

Section of Bioinformatics and Systems Cardiology, Klaus Tschira Institute for Integrative Computational Cardiology, University Hospital Heidelberg, Heidelberg 69120, Germany.

Published: June 2023

AI Article Synopsis

  • Alternative RNA splicing helps decide how proteins work in our bodies, but we don't have enough tools to study how it affects protein interactions.
  • To solve this, scientists created a new method called LINDA that combines different data to understand how splicing changes protein networks and cellular processes.
  • Using LINDA, researchers tested it on specific cell experiments and found it worked better than other methods in discovering how splicing affects biological pathways, and they confirmed some of these findings through experiments.

Article Abstract

Motivation: Alternative RNA splicing plays a crucial role in defining protein function. However, despite its relevance, there is a lack of tools that characterize effects of splicing on protein interaction networks in a mechanistic manner (i.e. presence or absence of protein-protein interactions due to RNA splicing). To fill this gap, we present Linear Integer programming for Network reconstruction using transcriptomics and Differential splicing data Analysis (LINDA) as a method that integrates resources of protein-protein and domain-domain interactions, transcription factor targets, and differential splicing/transcript analysis to infer splicing-dependent effects on cellular pathways and regulatory networks.

Results: We have applied LINDA to a panel of 54 shRNA depletion experiments in HepG2 and K562 cells from the ENCORE initiative. Through computational benchmarking, we could show that the integration of splicing effects with LINDA can identify pathway mechanisms contributing to known bioprocesses better than other state of the art methods, which do not account for splicing. Additionally, we have experimentally validated some of the predicted splicing effects that the depletion of HNRNPK in K562 cells has on signalling.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10311343PMC
http://dx.doi.org/10.1093/bioinformatics/btad224DOI Listing

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