Transcriptome-wide isoform-level dysregulation in ASD, schizophrenia, and bipolar disorder

Michael J. Gandal , Pan Zhang , Evi Hadjimichael , Michael J. Gandal , Pan Zhang , Evi Hadjimichael , Rebecca L. Walker , Chao Chen , Shuang Liu , Hyejung Won , Harm van Bakel , Merina Varghese , Yongjun Wang , Annie W. Shieh , Jillian R. Haney , Sepideh Parhami , Judson Belmont , Minsoo Kim , Patricia Morán Losada , Zenab Khan , Justyna Mleczko , Yan Xia , Rujia Dai , Daifeng Wang , Yucheng Yang , Min Xu , Kenneth Fish , Patrick R. Hof , Jonathan Warrell , Dominic Fitzgerald , Kevin P. White , Andrew E. Jaffe , Mette A. Peters , Mark Gerstein , Chunyu Liu , Lilia M. Iakoucheva , Dalila Pinto , Daniel H. Geschwind , Allison E. Ashley‐Koch , Gregory E. Crawford , Melanie E. Garrett , Lingyun Song , Alexias Safi , Graham D. Johnson , Gregory A. Wray , Timothy E. Reddy , Fernando S. Goes , Peter P. Zandi , Julien Bryois , Andrew E. Jaffe , Amanda J. Price , Nikolay A. Ivanov , Leonardo Collado‐Torres , Thomas M. Hyde , Emily E. Burke , Joel E. Kleiman , Ran Tao , Joo Heon Shin , Schahram Akbarian , Kiran Girdhar , Yan Jiang , Marija Kundaković , Leanne Brown , Bibi Kassim , Royce Park , Jennifer Wiseman , Elizabeth Zharovsky , Rivka Jacobov , Olivia Devillers , Elie Flatow , Gabriel E. Hoffman , Barbara K. Lipska , David A. Lewis , Vahram Haroutunian , Chang-Gyu Hahn , Alexander W. Charney , Stella Dracheva , Alexey Kozlenkov , Judson Belmont , Diane M. Del Valle , Nancy Francoeur , Evi Hadjimichael , Dalila Pinto , Harm van Bakel , Panos Roussos , John F. Fullard , Jaroslav Bendl , Mads E. Hauberg , Lara M. Mangravite , Mette A. Peters , Yooree Chae , Junmin Peng , Mingming Niu , Xusheng Wang , Maree J. Webster , Thomas G. Beach , Chao Chen , Yi Jiang , Rujia Dai , Annie W. Shieh , Chunyu Liu , Kay Grennan , Yan Xia
2018 Science 1,257 citations

Abstract

INTRODUCTION Our understanding of the pathophysiology of psychiatric disorders, including autism spectrum disorder (ASD), schizophrenia (SCZ), and bipolar disorder (BD), lags behind other fields of medicine. The diagnosis and study of these disorders currently depend on behavioral, symptomatic characterization. Defining genetic contributions to disease risk allows for biological, mechanistic understanding but is challenged by genetic complexity, polygenicity, and the lack of a cohesive neurobiological model to interpret findings. RATIONALE The transcriptome represents a quantitative phenotype that provides biological context for understanding the molecular pathways disrupted in major psychiatric disorders. RNA sequencing (RNA-seq) in a large cohort of cases and controls can advance our knowledge of the biology disrupted in each disorder and provide a foundational resource for integration with genomic and genetic data. RESULTS Analysis across multiple levels of transcriptomic organization—gene expression, local splicing, transcript isoform expression, and coexpression networks for both protein-coding and noncoding genes—provides an in-depth view of ASD, SCZ, and BD molecular pathology. More than 25% of the transcriptome exhibits differential splicing or expression in at least one disorder, including hundreds of noncoding RNAs (ncRNAs), most of which have unexplored functions but collectively exhibit patterns of selective constraint. Changes at the isoform level, as opposed to the gene level, show the largest effect sizes and genetic enrichment and the greatest disease specificity. We identified coexpression modules associated with each disorder, many with enrichment for cell type–specific markers, and several modules significantly dysregulated across all three disorders. These enabled parsing of down-regulated neuronal and synaptic components into a variety of cell type– and disease-specific signals, including multiple excitatory neuron and distinct interneuron modules with differential patterns of disease association, as well as common and rare genetic risk variant enrichment. The glial-immune signal demonstrates shared disruption of the blood-brain barrier and up-regulation of NFkB-associated genes, as well as disease-specific alterations in microglial-, astrocyte-, and interferon-response modules. A coexpression module associated with psychiatric medication exposure in SCZ and BD was enriched for activity-dependent immediate early gene pathways. To identify causal drivers, we integrated polygenic risk scores and performed a transcriptome-wide association study and summary-data–based Mendelian randomization. Candidate risk genes—5 in ASD, 11 in BD, and 64 in SCZ, including shared genes between SCZ and BD—are supported by multiple methods. These analyses begin to define a mechanistic basis for the composite activity of genetic risk variants. CONCLUSION Integration of RNA-seq and genetic data from ASD, SCZ, and BD provides a quantitative, genome-wide resource for mechanistic insight and therapeutic development at Resource.PsychENCODE.org. These data inform the molecular pathways and cell types involved, emphasizing the importance of splicing and isoform-level gene regulatory mechanisms in defining cell type and disease specificity, and, when integrated with genome-wide association studies, permit the discovery of candidate risk genes. The PsychENCODE cross-disorder transcriptomic resource. Human brain RNA-seq was integrated with genotypes across individuals with ASD, SCZ, BD, and controls, identifying pervasive dysregulation, including protein-coding, noncoding, splicing, and isoform-level changes. Systems-level and integrative genomic analyses prioritize previously unknown neurogenetic mechanisms and provide insight into the molecular neuropathology of these disorders.

Keywords

TranscriptomeBiologySchizophrenia (object-oriented programming)Alternative splicingAutism spectrum disorderDiseaseNeuroscienceBipolar disorderImmune dysregulationRNA splicingGeneticsRNA-SeqGeneAutismGene expressionComputational biologyGene isoformMedicineRNAImmune systemPsychiatryPathology

Affiliated Institutions

Related Publications

Publication Info

Year
2018
Type
article
Volume
362
Issue
6420
Citations
1257
Access
Closed

External Links

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

1257
OpenAlex

Cite This

Michael J. Gandal, Pan Zhang, Evi Hadjimichael et al. (2018). Transcriptome-wide isoform-level dysregulation in ASD, schizophrenia, and bipolar disorder. Science , 362 (6420) . https://doi.org/10.1126/science.aat8127

Identifiers

DOI
10.1126/science.aat8127