Literature DB >> 35325548

Integrating Long-Range Regulatory Interactions to Predict Gene Expression Using Graph Convolutional Networks.

Jeremy Bigness1,2,3, Xavier Loinaz2, Shalin Patel4, Erica Larschan1,3, Ritambhara Singh1,2.   

Abstract

Long-range regulatory interactions among genomic regions are critical for controlling gene expression, and their disruption has been associated with a host of diseases. However, when modeling the effects of regulatory factors, most deep learning models either neglect long-range interactions or fail to capture the inherent 3D structure of the underlying genomic organization. To address these limitations, we present a Graph Convolutional Model for Epigenetic Regulation of Gene Expression (GC-MERGE). Using a graph-based framework, the model incorporates important information about long-range interactions via a natural encoding of genomic spatial interactions into the graph representation. It integrates measurements of both the global genomic organization and the local regulatory factors, specifically histone modifications, to not only predict the expression of a given gene of interest but also quantify the importance of its regulatory factors. We apply GC-MERGE to data sets for three cell lines-GM12878 (lymphoblastoid), K562 (myelogenous leukemia), and HUVEC (human umbilical vein endothelial)-and demonstrate its state-of-the-art predictive performance. Crucially, we show that our model is interpretable in terms of the observed biological regulatory factors, highlighting both the histone modifications and the interacting genomic regions contributing to a gene's predicted expression. We provide model explanations for multiple exemplar genes and validate them with evidence from the literature. Our model presents a novel setup for predicting gene expression by integrating multimodal data sets in a graph convolutional framework. More importantly, it enables interpretation of the biological mechanisms driving the model's predictions.

Entities:  

Keywords:  Hi-C; deep learning; gene expression; graph neural networks; histone modifications

Mesh:

Year:  2022        PMID: 35325548      PMCID: PMC9125570          DOI: 10.1089/cmb.2021.0316

Source DB:  PubMed          Journal:  J Comput Biol        ISSN: 1066-5277            Impact factor:   1.549


  27 in total

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2.  Predicting mRNA Abundance Directly from Genomic Sequence Using Deep Convolutional Neural Networks.

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3.  Attend and Predict: Understanding Gene Regulation by Selective Attention on Chromatin.

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Journal:  Adv Neural Inf Process Syst       Date:  2017-12

Review 4.  Organizational principles of 3D genome architecture.

Authors:  M Jordan Rowley; Victor G Corces
Journal:  Nat Rev Genet       Date:  2018-12       Impact factor: 53.242

5.  Aniridia-associated translocations, DNase hypersensitivity, sequence comparison and transgenic analysis redefine the functional domain of PAX6.

Authors:  D A Kleinjan; A Seawright; A Schedl; R A Quinlan; S Danes; V van Heyningen
Journal:  Hum Mol Genet       Date:  2001-09-15       Impact factor: 6.150

6.  A statistical framework for modeling gene expression using chromatin features and application to modENCODE datasets.

Authors:  Chao Cheng; Koon-Kiu Yan; Kevin Y Yip; Joel Rozowsky; Roger Alexander; Chong Shou; Mark Gerstein
Journal:  Genome Biol       Date:  2011-02-16       Impact factor: 13.583

7.  Chromatin interaction-aware gene regulatory modeling with graph attention networks.

Authors:  Alireza Karbalayghareh; Merve Sahin; Christina S Leslie
Journal:  Genome Res       Date:  2022-04-08       Impact factor: 9.438

8.  Integrative analysis of 111 reference human epigenomes.

Authors:  Anshul Kundaje; Wouter Meuleman; Jason Ernst; Misha Bilenky; Angela Yen; Alireza Heravi-Moussavi; Pouya Kheradpour; Zhizhuo Zhang; Jianrong Wang; Michael J Ziller; Viren Amin; John W Whitaker; Matthew D Schultz; Lucas D Ward; Abhishek Sarkar; Gerald Quon; Richard S Sandstrom; Matthew L Eaton; Yi-Chieh Wu; Andreas R Pfenning; Xinchen Wang; Melina Claussnitzer; Yaping Liu; Cristian Coarfa; R Alan Harris; Noam Shoresh; Charles B Epstein; Elizabeta Gjoneska; Danny Leung; Wei Xie; R David Hawkins; Ryan Lister; Chibo Hong; Philippe Gascard; Andrew J Mungall; Richard Moore; Eric Chuah; Angela Tam; Theresa K Canfield; R Scott Hansen; Rajinder Kaul; Peter J Sabo; Mukul S Bansal; Annaick Carles; Jesse R Dixon; Kai-How Farh; Soheil Feizi; Rosa Karlic; Ah-Ram Kim; Ashwinikumar Kulkarni; Daofeng Li; Rebecca Lowdon; GiNell Elliott; Tim R Mercer; Shane J Neph; Vitor Onuchic; Paz Polak; Nisha Rajagopal; Pradipta Ray; Richard C Sallari; Kyle T Siebenthall; Nicholas A Sinnott-Armstrong; Michael Stevens; Robert E Thurman; Jie Wu; Bo Zhang; Xin Zhou; Arthur E Beaudet; Laurie A Boyer; Philip L De Jager; Peggy J Farnham; Susan J Fisher; David Haussler; Steven J M Jones; Wei Li; Marco A Marra; Michael T McManus; Shamil Sunyaev; James A Thomson; Thea D Tlsty; Li-Huei Tsai; Wei Wang; Robert A Waterland; Michael Q Zhang; Lisa H Chadwick; Bradley E Bernstein; Joseph F Costello; Joseph R Ecker; Martin Hirst; Alexander Meissner; Aleksandar Milosavljevic; Bing Ren; John A Stamatoyannopoulos; Ting Wang; Manolis Kellis
Journal:  Nature       Date:  2015-02-19       Impact factor: 69.504

9.  A compendium of promoter-centered long-range chromatin interactions in the human genome.

Authors:  Inkyung Jung; Anthony Schmitt; Yarui Diao; Andrew J Lee; Tristin Liu; Dongchan Yang; Catherine Tan; Junghyun Eom; Marilynn Chan; Sora Chee; Zachary Chiang; Changyoun Kim; Eliezer Masliah; Cathy L Barr; Bin Li; Samantha Kuan; Dongsup Kim; Bing Ren
Journal:  Nat Genet       Date:  2019-09-09       Impact factor: 38.330

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  1 in total

1.  Chromatin interaction-aware gene regulatory modeling with graph attention networks.

Authors:  Alireza Karbalayghareh; Merve Sahin; Christina S Leslie
Journal:  Genome Res       Date:  2022-04-08       Impact factor: 9.438

  1 in total

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