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EditorialsFull Access

Coordinate Network Mapping: An Emerging Approach for Morphometric Meta-Analysis

Neuroimaging is one of many research fields that have been appropriately scrutinized for irreproducible results (13). Such scrutiny highlights underlying methodological and statistical issues that limit neuroimaging’s impact on psychiatric diagnosis and treatment (4, 5). Some of these issues may be addressed with larger sample sizes. Neuroimaging consortia facilitate large-scale data collection and harmonization, resulting in data sets with thousands of patients (6). However, cost and time remain noteworthy barriers to this approach. Meta-analysis is a complementary approach that may help circumvent these barriers while also boosting statistical power. There are various strategies for conducting a neuroimaging meta-analysis, most of which involve harvesting the coordinates of peak structural or functional changes from published studies. The most popular coordinate-based meta-analytic method is activation or anatomic likelihood estimation (ALE), which evaluates the spatial convergence of coordinates associated with a given disorder (7). ALE searches for this spatial convergence across brain regions. However, coordinate convergence onto a single brain region may not tell the full story; many symptoms and disorders may map to brain circuits better than they do to individual brain regions (3, 8, 9).

In this issue of the Journal, Zhukovsky et al. (10) use a relatively new meta-analytic technique called coordinate network mapping. This technique leverages the human connectome, a normative wiring diagram of the human brain, to map coordinates onto brain circuits rather than individual brain regions (3, 8, 9). Zhukovsky et al. begin by highlighting a recent multimodal ALE meta-analysis that found no significant coordinate convergence in patients with major depressive disorder (11). Do the results from the studies in this previous meta-analysis fail to converge, or is it possible that they actually have something in common? Zhukovsky et al. address this question by conducting an updated systematic review and meta-analysis of adults with major depressive disorder, older adults with late-life depression, and control participants without psychiatric diagnoses. Data from 14,318 participants in 143 studies were analyzed in two ways: conventional ALE meta-analysis and coordinate network mapping.

Zhukovsky et al. outline several important findings, but they emphasize the brain circuit similarities between major depressive disorder and late-life depression that were detectable with coordinate network mapping but not ALE meta-analysis. More specifically, coordinate network mapping showed that neuroimaging coordinates associated with major depressive disorder and late-life depression were both significantly connected to the frontoparietal control network and the dorsal attention network. The authors suggest that impairment in these networks might relate to hallmark emotional, motivational, and attentional abnormalities in major depressive disorder and late-life depression. Although there were some unique elements of major depressive disorder compared with late-life depression, Zhukovsky and colleagues’ coordinate network mapping results highlight common brain circuitry findings in depression across adulthood.

The study findings also raise several questions that could be addressed in future studies. First, are these results specific to major depressive disorder? Diagnostic specificity could be assessed by adding control coordinates from patients with psychiatric disorders other than major depressive disorder or from patients with neurological conditions. Zhukovsky et al. assess age and antidepressant treatment, but not diagnostic specificity (3). The results of a specificity analysis would be important even if the findings were not specific to major depressive disorder. Neuroimaging studies typically focus on single DSM diagnoses despite mounting evidence of genetic, epidemiological, and neurobiological overlap between disorders (12). For example, the largest transdiagnostic ALE meta-analysis of voxel-based morphometry studies suggests that there are convergent morphometric changes across DSM categories (13). It would be interesting to study transdiagnostic convergence using coordinate network mapping, as Zhukovsky et al. have demonstrated that this network mapping technique may reveal novel insights into psychiatric disorders that are otherwise undetected with ALE meta-analysis.

A second question is whether these network results are different for different symptoms of major depressive disorder. For example, a previous coordinate network mapping study (8) teased apart the circuits underlying cognitive deficits and hallucinations in patients with Parkinson’s disease. A similar approach could be taken with major depressive disorder by breaking apart the diagnostic construct into individual symptoms or symptom clusters. For example, a recent network mapping study found that distinct clusters of depressive symptoms respond preferentially to distinct transcranial magnetic stimulation (TMS) targets across independent retrospective data sets (14). Zhukovsky et al. discuss clinical heterogeneity, but they had limited data with which to assess specific depressive symptoms.

Finally, an important question is whether these abnormalities are causally involved in major depressive disorder. It is challenging to make causal inferences with neuroimaging studies that identify correlates of symptoms or disorders (15). Are morphometric changes associated with major depression causal, compensatory, or something else? The answer to this question may have therapeutic implications; focal brain stimulation techniques like TMS and deep brain stimulation (DBS) might alleviate, exacerbate, or have no effect on major depressive disorder, depending on which respective explanation is accurate (9). Interestingly, the frontoparietal control and dorsal attention networks that Zhukovsky et al. implicate in major depressive disorder across the adult lifespan are functionally connected to brain lesion locations that cause depression as well as TMS and DBS sites that relieve depression (16, 17). These convergent results across independent data sets and network mapping approaches may help to improve reproducibility and maximize the impact of neuroimaging on psychiatric diagnosis and treatment.

Center for Brain Circuit Therapeutics (all authors), Department of Psychiatry (Taylor, Siddiqi), and Department of Neurology (Fox), Brigham and Women’s Hospital, Harvard Medical School, Boston
Send correspondence to Dr. Taylor ().

The authors are supported in part by a Philanthropic Gift from Jan Ellison Baszucki and David Baszucki. Dr. Taylor is supported in part by a Dupont Warren Fellowship at Harvard Medical School, and the Sidney R. Baer, Jr., Foundation. Dr. Siddiqi is supported in part by a NARSAD Young Investigator Grant. Dr. Fox is supported in part by the Nancy Lurie Marks Foundation, the Kaye Family Endowment, and NIH grants R01MH113929, R01MH115949, R01AG060987, R21MH126271, and R56AG069086.

Dr. Siddiqi and Dr. Fox have received investigator-initiated research support from Neuronetics and own intellectual property related to functional connectivity–guided neuromodulation. Dr. Siddiqi has served as a scientific consultant for Magnus Medical; he has produced educational materials on behalf of Otsuka; and he has received speaking fees from BrainsWay. Dr. Taylor reports no financial relationships with commercial interests.

References

1 Baker M: 1,500 scientists lift the lid on reproducibility. Nature 2016; 533:452–454Crossref, MedlineGoogle Scholar

2 Poldrack RA, Baker CI, Durnez J, et al.: Scanning the horizon: towards transparent and reproducible neuroimaging research. Nat Rev Neurosci 2017; 18:115–126Crossref, MedlineGoogle Scholar

3 Darby RR, Joutsa J, Fox MD: Network localization of heterogeneous neuroimaging findings. Brain 2019; 142:70–79Crossref, MedlineGoogle Scholar

4 Etkin A: A reckoning and research agenda for neuroimaging in psychiatry. Am J Psychiatry 2019; 176:507–511LinkGoogle Scholar

5 Taylor JJ, Kurt HG, Anand A: Resting state functional connectivity biomarkers of treatment response in mood disorders: a review. Front Psychiatry 2021; 12:565136Crossref, MedlineGoogle Scholar

6 Cutcher-Gershenfeld J, Baker KS, Berente N, et al.: Five ways consortia can catalyse open science. Nature 2017; 543:615–617Crossref, MedlineGoogle Scholar

7 Eickhoff SB, Laird AR, Grefkes C, et al.: Coordinate-based activation likelihood estimation meta-analysis of neuroimaging data: a random-effects approach based on empirical estimates of spatial uncertainty. Hum Brain Mapp 2009; 30:2907–2926Crossref, MedlineGoogle Scholar

8 Weil RS, Hsu JK, Darby RR, et al.: Neuroimaging in Parkinson’s disease dementia: connecting the dots. Brain Commun 2019; 1:fcz006Crossref, MedlineGoogle Scholar

9 Fox MD: Mapping symptoms to brain networks with the human connectome. N Engl J Med 2018; 379:2237–2245Crossref, MedlineGoogle Scholar

10 Zhukovsky P, Anderson JAE, Coughlan G, et al.: Coordinate-based network mapping of brain structure in major depressive disorder in younger and older adults: a systematic review and meta-analysis. Am J Psychiatry 2021; 178:1119–1128AbstractGoogle Scholar

11 Gray JP, Müller VI, Eickhoff SB, et al.: Multimodal abnormalities of brain structure and function in major depressive disorder: a meta-analysis of neuroimaging studies. Am J Psychiatry 2020; 177:422–434LinkGoogle Scholar

12 Taquet M, Smith SM, Prohl AK, et al.: A structural brain network of genetic vulnerability to psychiatric illness. Mol Psychiatry 2021; 26:2089–2100Crossref, MedlineGoogle Scholar

13 Goodkind M, Eickhoff SB, Oathes DJ, et al.: Identification of a common neurobiological substrate for mental illness. JAMA Psychiatry 2015; 72:305–315Crossref, MedlineGoogle Scholar

14 Siddiqi SH, Taylor SF, Cooke D, et al.: Distinct symptom-specific treatment targets for circuit-based neuromodulation. Am J Psychiatry 2020; 177:435–446LinkGoogle Scholar

15 Etkin A: Addressing the causality gap in human psychiatric neuroscience. JAMA Psychiatry 2017; 75:3–4CrossrefGoogle Scholar

16 Padmanabhan JL, Cooke D, Joutsa J, et al.: A human depression circuit derived from focal brain lesions. Biol Psychiatry 2019; 86:749–758Crossref, MedlineGoogle Scholar

17 Siddiqi SH, Schaper F, Horn A, et al.: Convergent causal mapping of human neuropsychiatric symptoms using brain stimulation and brain lesions. Nat Hum Behav 2021; (in press)Crossref, MedlineGoogle Scholar