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Review
. 2020 Mar 20;10(1):100.
doi: 10.1038/s41398-020-0705-1.

ENIGMA and global neuroscience: A decade of large-scale studies of the brain in health and disease across more than 40 countries

Paul M Thompson  1 Neda Jahanshad  2 Christopher R K Ching  2 Lauren E Salminen  2 Sophia I Thomopoulos  2 Joanna Bright  2 Bernhard T Baune  3   4   5 Sara Bertolín  6 Janita Bralten  7   8 Willem B Bruin  9 Robin Bülow  10 Jian Chen  11 Yann Chye  12 Udo Dannlowski  3 Carolien G F de Kovel  13   14 Gary Donohoe  15 Lisa T Eyler  16   17 Stephen V Faraone  18 Pauline Favre  19   20 Courtney A Filippi  21 Thomas Frodl  22   23   24 Daniel Garijo  25 Yolanda Gil  25   26 Hans J Grabe  27   28 Katrina L Grasby  29 Tomas Hajek  30   31 Laura K M Han  32 Sean N Hatton  33   34 Kevin Hilbert  35 Tiffany C Ho  36   37 Laurena Holleran  15 Georg Homuth  38 Norbert Hosten  10 Josselin Houenou  19   20   39 Iliyan Ivanov  40 Tianye Jia  41   42   43 Sinead Kelly  44   45 Marieke Klein  7   8   46 Jun Soo Kwon  47   48 Max A Laansma  49 Jeanne Leerssen  50 Ulrike Lueken  35 Abraham Nunes  30   51 Joseph O' Neill  52 Nils Opel  3 Fabrizio Piras  53 Federica Piras  53 Merel C Postema  14 Elena Pozzi  54   55 Natalia Shatokhina  2 Carles Soriano-Mas  6   56   57 Gianfranco Spalletta  53   58 Daqiang Sun  59   60 Alexander Teumer  61 Amanda K Tilot  2 Leonardo Tozzi  36 Celia van der Merwe  62   63 Eus J W Van Someren  50   64 Guido A van Wingen  9 Henry Völzke  61   65 Esther Walton  66 Lei Wang  67   68 Anderson M Winkler  21 Katharina Wittfeld  27   28 Margaret J Wright  69   70 Je-Yeon Yun  71   72 Guohao Zhang  73 Yanli Zhang-James  18   74 Bhim M Adhikari  75 Ingrid Agartz  76   77   78 Moji Aghajani  79   80 André Aleman  81 Robert R Althoff  82 Andre Altmann  83 Ole A Andreassen  76   84 David A Baron  85 Brenda L Bartnik-Olson  86 Janna Marie Bas-Hoogendam  87   88   89 Arielle R Baskin-Sommers  90 Carrie E Bearden  59   91 Laura A Berner  40 Premika S W Boedhoe  79 Rachel M Brouwer  46 Jan K Buitelaar  92 Karen Caeyenberghs  93 Charlotte A M Cecil  94   95 Ronald A Cohen  96   97 James H Cole  98   99 Patricia J Conrod  100 Stephane A De Brito  101 Sonja M C de Zwarte  46 Emily L Dennis  2   102   103 Sylvane Desrivieres  104 Danai Dima  105   106 Stefan Ehrlich  107 Carrie Esopenko  108 Graeme Fairchild  66 Simon E Fisher  8   14 Jean-Paul Fouche  109   110 Clyde Francks  8   14 Sophia Frangou  111   112 Barbara Franke  7   8   113 Hugh P Garavan  114 David C Glahn  115   116 Nynke A Groenewold  109 Tiril P Gurholt  76   84 Boris A Gutman  117   118 Tim Hahn  3 Ian H Harding  119 Dennis Hernaus  120 Derrek P Hibar  121 Frank G Hillary  122   123 Martine Hoogman  7   8 Hilleke E Hulshoff Pol  46 Maria Jalbrzikowski  124 George A Karkashadze  125 Eduard T Klapwijk  87   89 Rebecca C Knickmeyer  126   127   128 Peter Kochunov  75 Inga K Koerte  103   129 Xiang-Zhen Kong  14 Sook-Lei Liew  130   131 Alexander P Lin  132   133 Mark W Logue  134   135   136 Eileen Luders  137   138 Fabio Macciardi  139 Scott Mackey  114 Andrew R Mayer  140 Carrie R McDonald  33   141 Agnes B McMahon  2   142 Sarah E Medland  29 Gemma Modinos  106   143 Rajendra A Morey  144   145 Sven C Mueller  146   147 Pratik Mukherjee  148 Leyla Namazova-Baranova  125   149 Talia M Nir  2 Alexander Olsen  150   151 Peristera Paschou  152 Daniel S Pine  153 Fabrizio Pizzagalli  2 Miguel E Rentería  154 Jonathan D Rohrer  155 Philipp G Sämann  156 Lianne Schmaal  55   157 Gunter Schumann  43   158 Mark S Shiroishi  2   159 Sanjay M Sisodiya  160   161 Dirk J A Smit  9 Ida E Sønderby  76   84   162 Dan J Stein  163 Jason L Stein  164 Masoud Tahmasian  165 David F Tate  166   167 Jessica A Turner  168 Odile A van den Heuvel  49   79 Nic J A van der Wee  88   89 Ysbrand D van der Werf  49 Theo G M van Erp  169   170 Neeltje E M van Haren  46   94 Daan van Rooij  171 Laura S van Velzen  55   157 Ilya M Veer  172 Dick J Veltman  79 Julio E Villalon-Reina  2 Henrik Walter  172 Christopher D Whelan  173   174 Elisabeth A Wilde  102   175   176 Mojtaba Zarei  165 Vladimir Zelman  177   178 ENIGMA Consortium
Affiliations
Review

ENIGMA and global neuroscience: A decade of large-scale studies of the brain in health and disease across more than 40 countries

Paul M Thompson et al. Transl Psychiatry. .

Abstract

This review summarizes the last decade of work by the ENIGMA (Enhancing NeuroImaging Genetics through Meta Analysis) Consortium, a global alliance of over 1400 scientists across 43 countries, studying the human brain in health and disease. Building on large-scale genetic studies that discovered the first robustly replicated genetic loci associated with brain metrics, ENIGMA has diversified into over 50 working groups (WGs), pooling worldwide data and expertise to answer fundamental questions in neuroscience, psychiatry, neurology, and genetics. Most ENIGMA WGs focus on specific psychiatric and neurological conditions, other WGs study normal variation due to sex and gender differences, or development and aging; still other WGs develop methodological pipelines and tools to facilitate harmonized analyses of "big data" (i.e., genetic and epigenetic data, multimodal MRI, and electroencephalography data). These international efforts have yielded the largest neuroimaging studies to date in schizophrenia, bipolar disorder, major depressive disorder, post-traumatic stress disorder, substance use disorders, obsessive-compulsive disorder, attention-deficit/hyperactivity disorder, autism spectrum disorders, epilepsy, and 22q11.2 deletion syndrome. More recent ENIGMA WGs have formed to study anxiety disorders, suicidal thoughts and behavior, sleep and insomnia, eating disorders, irritability, brain injury, antisocial personality and conduct disorder, and dissociative identity disorder. Here, we summarize the first decade of ENIGMA's activities and ongoing projects, and describe the successes and challenges encountered along the way. We highlight the advantages of collaborative large-scale coordinated data analyses for testing reproducibility and robustness of findings, offering the opportunity to identify brain systems involved in clinical syndromes across diverse samples and associated genetic, environmental, demographic, cognitive, and psychosocial factors.

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Conflict of interest statement

Individual authors’ disclosures and conflicts of interest are listed in Supplementary Appendix C.

Figures

Fig. 1
Fig. 1. World Map of ENIGMA’s Working Groups.
The ENIGMA Consortium has grown to include over 1400 participating scientists from over 200 institutions, across 43 countries worldwide. ENIGMA is organized as a set of 50 WGs, studying 26 major brain diseases (see color key). Each group works closely with the others and consists of worldwide teams of experts in each brain disorder as well as experts in the major methods used to study each disorder. The diseases studied include major depressive disorder, bipolar disorder, schizophrenia, substance use disorder, post-traumatic stress disorder, attention-deficit/hyperactivity disorder, obsessive-compulsive disorder, and autism spectrum disorder, and several neurological disorders, including Parkinson’s disease, epilepsy, ataxia, and stroke. In recent years, new WGs were created that grew into worldwide consortia on epilepsy (Whelan et al.), eating disorders (King et al.), anxiety disorders (Groenewold et al.), antisocial behavior, and infant neuroimaging.
Fig. 2
Fig. 2. ENIGMA’s Working Group Flowchart.
ENIGMA’s working groups are divided into technical groups that work on testing harmonized methods, and clinical groups that study different disorders and conditions across psychiatry and neurology, as well as some behaviors (e.g., schizotypy and antisocial behaviors). The use of harmonized analysis methods across all the working groups has enabled cross-disorder comparisons (e.g., in the affective/psychosis spectrum of depression to bipolar disorder to schizophrenia), and transdiagnostic analyses of risk factors such as childhood trauma across a number of disorders (such as major depressive disorder (MDD) and post-traumatic stress disorder (PTSD)). Several working groups, such as brain trauma and anxiety, consist of several subgroups examining subtypes (e.g., panic disorder or social anxiety), and allow analyses of overlap and differences (e.g., between military and civilian brain trauma).
Fig. 3
Fig. 3. Genetic Influences on brain structure: effects of common and rare genetic variants.
ENIGMA’s large-scale genetic analyses study the effects of both common and rare genetic variants on brain measures. a A series of progressively larger genome-wide association studies have revealed over 45 genetic loci associated with subcortical structure volumes (Hibar et al., Satizabal et al.) and over 200 genetic loci associated with cortical thickness and surface area Grasby et al.. The Manhattan plots here (adapted from Hibar et al., show the genome (on the x-axis) and the evidence for association (as a logarithm of the p-value, on the y-axis) for each common genetic variant (or SNP) with the volume of each brain structure shown. b Genetics of Hippocampal Volume. A subsequent genome-wide association study (GWAS) of 33,536 individuals discovered six independent loci significantly associated with hippocampal volume, four of them novel. Of the novel loci, two lie within key genes involved in neuronal migration and microtubule assembly (ASTN2 and MAST4) (Hibar et al.). An interactive browser, ENIGMA-Vis—http://enigma-brain.org/enigmavis—can be used to navigate ENIGMA’s genomic data. Initially started as a web page to plot ENIGMA summary statistics data for a specific genomic region, ENIGMA-Vis grew over the years into a portal with tools to query, visualize, and navigate the effects, and relate them to other GWAS. c In complementary work on rare variants by the ENIGMA-CNV Working Group, Sønderby and colleagues (2018) examined effects of the 16p11.2 distal CNV that predisposes to psychiatric conditions including autism spectrum disorder and schizophrenia. ENIGMA (including the 16p11.2 European Consortium) and deCODE datasets were combined to discover negative dose-response associations with copy number on intracranial volume and regional caudate, pallidum and putamen volumes—suggesting a neuropathological pattern that may underlie the neurodevelopmental syndromes. The agreement across datasets is apparent in the Forest plots for each brain region. [Data adapted, with permission from the authors and publishers].
Fig. 4
Fig. 4. ENIGMA’s large-scale studies of nine brain disorders.
Cortical gray matter thickness abnormalities as Cohen’s d, are mapped for nine different disorders, for which worldwide data were analyzed with the same harmonized methods. Although the cohorts included in the studies differed, as did the scanning sites and age ranges studied, some common and distinct patterns are apparent. Cortical maps for major depressive disorder (MDD), bipolar disorder (BD) and schizophrenia show gradually more extensive profiles of deficits. Across all disorders, the less prevalent disorders tend to show greater effects in the brain: the relatively subtle pattern of hippocampal-limbic deficits in MDD broadens to include frontal deficits in bipolar disorder (consistent with frontal lobe dysfunction and impaired self-control). In schizophrenia, deficits widen to include almost the entire cortex—only the primary visual cortex (specifically the calcarine cortex) failed to show thickness alterations in patients, after meta-analysis. Autism spectrum disorder (ASD) and the 22q deletion syndrome (22q11DS)—a risk condition for ASD—are associated with hypertrophy in frontal brain regions, while patients with obsessive-compulsive disorder (OCD) and alcohol use disorder tend to show deficits in frontal brain regions involved in self-control and inhibition. More refined analyses are now relating symptom domains to these and other brain metrics, within and across these and other disorders.
Fig. 5
Fig. 5. Subcortical abnormalities in schizophrenia, bipolar disorder, major depressive disorder, and ADHD.
a ENIGMA’s publications of the three largest neuroimaging papers on schizophrenia (SCZ), bipolar disorder (BD), and major depressive disorder (MDD), suggested widespread cross-disorder differences in effects (van Erp et al., Hibar et al.). By processing 21,199 people’s brain MRI scans consistently, we found greater brain structural abnormalities in SCZ and BD versus MDD, and a very different pattern in attention-deficit/hyperactivity disorder (ADHD; Hoogman et al.). Subcortically, all three disorders involve hippocampal volume deficits—greatest in SCZ, least in MDD, and intermediate in BD. As a slightly simplified ‘rule of thumb’, the hippocampus, ventricles, thalamus, amygdala and nucleus accumbens show volume reductions in MDD that are around half the magnitude of those seen in BD, which in turn are about half the magnitude of those seen in SCZ. The basal ganglia are an exception to this rule—perhaps because some antipsychotic treatments have hypertrophic effects on the basal ganglia, leading to volume excesses in medicated patients. In ADHD, however, the amygdala, caudate and putamen, and nucleus accumbens all show deficits, as does ICV (ventricular data is not included here for ADHD, as it was not measured in the ADHD study). A web portal, the ENIGMA Viewer, provides access to these summary statistics from ENIGMA’s published studies of psychiatric and neurological disorders (http://enigma-viewer.org/About_the_projects.html). b Independent work by the Japanese Consortium, COCORO, found a very similar set of effect sizes for group differences in subcortical volumes between schizophrenia patients and matched controls.
Fig. 6
Fig. 6. White matter microstructure in schizophrenia, major depressive disorder, and 22q11.2 deletion syndrome.
a White matter microstructural abnormalities are shown, by tract, based on the largest-ever diffusion MRI studies of these three disorders. In schizophrenia (SCZ), fractional anisotropy, a measure of white matter microstructure, is lower in almost all individual regions, and in the full skeleton. In major depressive disorder (MDD), a weak pattern of effects is observed, again with MDD patients showing on average lower FA across the full white matter skeleton, when compared to controls. In comparisons between 22q11.2 deletion syndrome (22q11DS) and matched controls, by contrast, the average FA along the full white matter skeleton does not show systematic differences; instead, while some regions do show on average lower FA in affected individuals compared with controls, several white matter regions show higher FA. b Relative to appropriately matched groups of healthy controls (HC), group differences in fractional anisotropy are shown for ENIGMA’s studies of SCZ, MDD (both in adults), and 22q11.2 deletion syndrome. [Data adapted, with permission of the authors and publishers, from Kelly et al., van Velzen et al., and Villalón-Reina et al.; a key to the tract names appears in the original papers; some tracts (i.e. the hippocampal portion of the cingulum) were omitted from the 22q11DS analysis as they were not consistently in the field of view for some cohorts of the working group].
Fig. 7
Fig. 7. Topology of large-scale scientific collaboration.
a The topology of scientific collaboration in ENIGMA has some properties that resemble a modular hierarchical network (Ravasz and Barabasi, Slaughter). In this diagram (a), nodes represent individual scientists working on a project, and links denote active scientific collaborations (that might result in co-authored publications, like this review, for example). ENIGMA’s WGs resemble the yellow sets of nodes: guided by a small group of WG chairs, several clusters of scientists coordinate projects applying various methods to the same datasets (e.g., MRI and DTI meta-analysis, machine learning, and modeling of clinical outcomes). WGs study different disorders with the same harmonized methods, enabling to cross-disorder collaborations across WGs. The modular organization allows independent and coordinated projects to proceed in parallel, distributing work and coordination, without requiring a central hub for all communication. Real clusters may differ in their number of members and links [(b) shows a different graph with a similar hierarchical modular form], and may change dynamically over time as new groups and projects form and projects end.

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