Literature DB >> 35422469

Chromatin architecture in addiction circuitry identifies risk genes and potential biological mechanisms underlying cigarette smoking and alcohol use traits.

Nancy Y A Sey1,2, Benxia Hu1,2, Marina Iskhakova3,4,5, Sool Lee2, Huaigu Sun2, Neda Shokrian3,4,5, Gabriella Ben Hutta3,4,5, Jesse A Marks6, Bryan C Quach6, Eric O Johnson6,7, Dana B Hancock6, Schahram Akbarian8,9,10, Hyejung Won11,12.   

Abstract

Cigarette smoking and alcohol use are among the most prevalent substances used worldwide and account for a substantial proportion of preventable morbidity and mortality, underscoring the public health significance of understanding their etiology. Genome-wide association studies (GWAS) have successfully identified genetic variants associated with cigarette smoking and alcohol use traits. However, the vast majority of risk variants reside in non-coding regions of the genome, and their target genes and neurobiological mechanisms are unknown. Chromosomal conformation mappings can address this knowledge gap by charting the interaction profiles of risk-associated regulatory variants with target genes. To investigate the functional impact of common variants associated with cigarette smoking and alcohol use traits, we applied Hi-C coupled MAGMA (H-MAGMA) built upon cortical and newly generated midbrain dopaminergic neuronal Hi-C datasets to GWAS summary statistics of nicotine dependence, cigarettes per day, problematic alcohol use, and drinks per week. The identified risk genes mapped to key pathways associated with cigarette smoking and alcohol use traits, including drug metabolic processes and neuronal apoptosis. Risk genes were highly expressed in cortical glutamatergic, midbrain dopaminergic, GABAergic, and serotonergic neurons, suggesting them as relevant cell types in understanding the mechanisms by which genetic risk factors influence cigarette smoking and alcohol use. Lastly, we identified pleiotropic genes between cigarette smoking and alcohol use traits under the assumption that they may reveal substance-agnostic, shared neurobiological mechanisms of addiction. The number of pleiotropic genes was ~26-fold higher in dopaminergic neurons than in cortical neurons, emphasizing the critical role of ascending dopaminergic pathways in mediating general addiction phenotypes. Collectively, brain region- and neuronal subtype-specific 3D genome architecture helps refine neurobiological hypotheses for smoking, alcohol, and general addiction phenotypes by linking genetic risk factors to their target genes.
© 2022. The Author(s), under exclusive licence to Springer Nature Limited.

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Year:  2022        PMID: 35422469     DOI: 10.1038/s41380-022-01558-y

Source DB:  PubMed          Journal:  Mol Psychiatry        ISSN: 1359-4184            Impact factor:   13.437


  58 in total

1.  Gene regulation in the third dimension.

Authors:  Job Dekker
Journal:  Science       Date:  2008-03-28       Impact factor: 47.728

2.  Neuron-specific signatures in the chromosomal connectome associated with schizophrenia risk.

Authors:  Prashanth Rajarajan; Tyler Borrman; Will Liao; Nadine Schrode; Erin Flaherty; Charlize Casiño; Samuel Powell; Chittampalli Yashaswini; Elizabeth A LaMarca; Bibi Kassim; Behnam Javidfar; Sergio Espeso-Gil; Aiqun Li; Hyejung Won; Daniel H Geschwind; Seok-Man Ho; Matthew MacDonald; Gabriel E Hoffman; Panos Roussos; Bin Zhang; Chang-Gyu Hahn; Zhiping Weng; Kristen J Brennand; Schahram Akbarian
Journal:  Science       Date:  2018-12-14       Impact factor: 47.728

Review 3.  The three-dimensional landscape of the genome in human brain tissue unveils regulatory mechanisms leading to schizophrenia risk.

Authors:  Won Mah; Hyejung Won
Journal:  Schizophr Res       Date:  2019-03-18       Impact factor: 4.939

Review 4.  Neurobiology of addiction: a neurocircuitry analysis.

Authors:  George F Koob; Nora D Volkow
Journal:  Lancet Psychiatry       Date:  2016-08       Impact factor: 27.083

5.  Chromosome conformation elucidates regulatory relationships in developing human brain.

Authors:  Hyejung Won; Luis de la Torre-Ubieta; Jason L Stein; Neelroop N Parikshak; Jerry Huang; Carli K Opland; Michael J Gandal; Gavin J Sutton; Farhad Hormozdiari; Daning Lu; Changhoon Lee; Eleazar Eskin; Irina Voineagu; Jason Ernst; Daniel H Geschwind
Journal:  Nature       Date:  2016-10-19       Impact factor: 49.962

Review 6.  Global statistics on alcohol, tobacco and illicit drug use: 2017 status report.

Authors:  Amy Peacock; Janni Leung; Sarah Larney; Samantha Colledge; Matthew Hickman; Jürgen Rehm; Gary A Giovino; Robert West; Wayne Hall; Paul Griffiths; Robert Ali; Linda Gowing; John Marsden; Alize J Ferrari; Jason Grebely; Michael Farrell; Louisa Degenhardt
Journal:  Addiction       Date:  2018-06-04       Impact factor: 6.526

7.  Genome-wide meta-analysis of problematic alcohol use in 435,563 individuals yields insights into biology and relationships with other traits.

Authors:  Hang Zhou; Julia M Sealock; Sandra Sanchez-Roige; Toni-Kim Clarke; Daniel F Levey; Zhongshan Cheng; Boyang Li; Renato Polimanti; Rachel L Kember; Rachel Vickers Smith; Johan H Thygesen; Marsha Y Morgan; Stephen R Atkinson; Mark R Thursz; Mette Nyegaard; Manuel Mattheisen; Anders D Børglum; Emma C Johnson; Amy C Justice; Abraham A Palmer; Andrew McQuillin; Lea K Davis; Howard J Edenberg; Arpana Agrawal; Henry R Kranzler; Joel Gelernter
Journal:  Nat Neurosci       Date:  2020-05-25       Impact factor: 24.884

8.  Genome-wide association study of alcohol consumption and use disorder in 274,424 individuals from multiple populations.

Authors:  Henry R Kranzler; Hang Zhou; Rachel L Kember; Rachel Vickers Smith; Amy C Justice; Scott Damrauer; Philip S Tsao; Derek Klarin; Aris Baras; Jeffrey Reid; John Overton; Daniel J Rader; Zhongshan Cheng; Janet P Tate; William C Becker; John Concato; Ke Xu; Renato Polimanti; Hongyu Zhao; Joel Gelernter
Journal:  Nat Commun       Date:  2019-04-02       Impact factor: 14.919

9.  Association studies of up to 1.2 million individuals yield new insights into the genetic etiology of tobacco and alcohol use.

Authors:  Mengzhen Liu; Yu Jiang; Robbee Wedow; Yue Li; David M Brazel; Fang Chen; Gargi Datta; Jose Davila-Velderrain; Daniel McGuire; Chao Tian; Xiaowei Zhan; Hélène Choquet; Anna R Docherty; Jessica D Faul; Johanna R Foerster; Lars G Fritsche; Maiken Elvestad Gabrielsen; Scott D Gordon; Jeffrey Haessler; Jouke-Jan Hottenga; Hongyan Huang; Seon-Kyeong Jang; Philip R Jansen; Yueh Ling; Reedik Mägi; Nana Matoba; George McMahon; Antonella Mulas; Valeria Orrù; Teemu Palviainen; Anita Pandit; Gunnar W Reginsson; Anne Heidi Skogholt; Jennifer A Smith; Amy E Taylor; Constance Turman; Gonneke Willemsen; Hannah Young; Kendra A Young; Gregory J M Zajac; Wei Zhao; Wei Zhou; Gyda Bjornsdottir; Jason D Boardman; Michael Boehnke; Dorret I Boomsma; Chu Chen; Francesco Cucca; Gareth E Davies; Charles B Eaton; Marissa A Ehringer; Tõnu Esko; Edoardo Fiorillo; Nathan A Gillespie; Daniel F Gudbjartsson; Toomas Haller; Kathleen Mullan Harris; Andrew C Heath; John K Hewitt; Ian B Hickie; John E Hokanson; Christian J Hopfer; David J Hunter; William G Iacono; Eric O Johnson; Yoichiro Kamatani; Sharon L R Kardia; Matthew C Keller; Manolis Kellis; Charles Kooperberg; Peter Kraft; Kenneth S Krauter; Markku Laakso; Penelope A Lind; Anu Loukola; Sharon M Lutz; Pamela A F Madden; Nicholas G Martin; Matt McGue; Matthew B McQueen; Sarah E Medland; Andres Metspalu; Karen L Mohlke; Jonas B Nielsen; Yukinori Okada; Ulrike Peters; Tinca J C Polderman; Danielle Posthuma; Alexander P Reiner; John P Rice; Eric Rimm; Richard J Rose; Valgerdur Runarsdottir; Michael C Stallings; Alena Stančáková; Hreinn Stefansson; Khanh K Thai; Hilary A Tindle; Thorarinn Tyrfingsson; Tamara L Wall; David R Weir; Constance Weisner; John B Whitfield; Bendik Slagsvold Winsvold; Jie Yin; Luisa Zuccolo; Laura J Bierut; Kristian Hveem; James J Lee; Marcus R Munafò; Nancy L Saccone; Cristen J Willer; Marilyn C Cornelis; Sean P David; David A Hinds; Eric Jorgenson; Jaakko Kaprio; Jerry A Stitzel; Kari Stefansson; Thorgeir E Thorgeirsson; Gonçalo Abecasis; Dajiang J Liu; Scott Vrieze
Journal:  Nat Genet       Date:  2019-01-14       Impact factor: 38.330

10.  A computational tool (H-MAGMA) for improved prediction of brain-disorder risk genes by incorporating brain chromatin interaction profiles.

Authors:  Nancy Y A Sey; Benxia Hu; Won Mah; Harper Fauni; Jessica Caitlin McAfee; Prashanth Rajarajan; Kristen J Brennand; Schahram Akbarian; Hyejung Won
Journal:  Nat Neurosci       Date:  2020-03-09       Impact factor: 24.884

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