Melbourne School of Psychological Sciences - Research Publications

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    Brain structural covariance network differences in adults with alcohol dependence and heavy-drinking adolescents
    Ottino-Gonzalez, J ; Garavan, H ; Albaugh, MD ; Cao, Z ; Cupertino, RB ; Schwab, N ; Spechler, PA ; Allen, N ; Artiges, E ; Banaschewski, T ; Bokde, ALW ; Quinlan, EB ; Bruehl, R ; Orr, C ; Cousijn, J ; Desrivieres, S ; Flor, H ; Foxe, JJ ; Froehner, JH ; Goudriaan, AE ; Gowland, P ; Grigis, A ; Heinz, A ; Hester, R ; Hutchison, K ; Li, C-SR ; London, ED ; Lorenzetti, V ; Luijten, M ; Nees, F ; Martin-Santos, R ; Martinot, J-L ; Millenet, S ; Momenan, R ; Martinot, M-LP ; Orfanos, DP ; Paulus, MP ; Poustka, L ; Schmaal, L ; Schumann, G ; Sinha, R ; Smolka, MN ; Solowij, N ; Stein, DJ ; Stein, EA ; Uhlmann, A ; Holst, RJ ; Veltman, DJ ; Walter, H ; Whelan, R ; Wiers, RW ; Yucel, M ; Zhang, S ; Jahanshad, N ; Thompson, PM ; Conrod, P ; Mackey, S (WILEY, 2022-05)
    BACKGROUND AND AIMS: Graph theoretic analysis of structural covariance networks (SCN) provides an assessment of brain organization that has not yet been applied to alcohol dependence (AD). We estimated whether SCN differences are present in adults with AD and heavy-drinking adolescents at age 19 and age 14, prior to substantial exposure to alcohol. DESIGN: Cross-sectional sample of adults and a cohort of adolescents. Correlation matrices for cortical thicknesses across 68 regions were summarized with graph theoretic metrics. SETTING AND PARTICIPANTS: A total of 745 adults with AD and 979 non-dependent controls from 24 sites curated by the Enhancing NeuroImaging Genetics through Meta Analysis (ENIGMA)-Addiction consortium, and 297 hazardous drinking adolescents and 594 controls at ages 19 and 14 from the IMAGEN study, all from Europe. MEASUREMENTS: Metrics of network segregation (modularity, clustering coefficient and local efficiency) and integration (average shortest path length and global efficiency). FINDINGS: The younger AD adults had lower network segregation and higher integration relative to non-dependent controls. Compared with controls, the hazardous drinkers at age 19 showed lower modularity [area-under-the-curve (AUC) difference = -0.0142, 95% confidence interval (CI) = -0.1333, 0.0092; P-value = 0.017], clustering coefficient (AUC difference = -0.0164, 95% CI = -0.1456, 0.0043; P-value = 0.008) and local efficiency (AUC difference = -0.0141, 95% CI = -0.0097, 0.0034; P-value = 0.010), as well as lower average shortest path length (AUC difference = -0.0405, 95% CI = -0.0392, 0.0096; P-value = 0.021) and higher global efficiency (AUC difference = 0.0044, 95% CI = -0.0011, 0.0043; P-value = 0.023). The same pattern was present at age 14 with lower clustering coefficient (AUC difference = -0.0131, 95% CI = -0.1304, 0.0033; P-value = 0.024), lower average shortest path length (AUC difference = -0.0362, 95% CI = -0.0334, 0.0118; P-value = 0.019) and higher global efficiency (AUC difference = 0.0035, 95% CI = -0.0011, 0.0038; P-value = 0.048). CONCLUSIONS: Cross-sectional analyses indicate that a specific structural covariance network profile is an early marker of alcohol dependence in adults. Similar effects in a cohort of heavy-drinking adolescents, observed at age 19 and prior to substantial alcohol exposure at age 14, suggest that this pattern may be a pre-existing risk factor for problematic drinking.
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    Mapping cortical and subcortical asymmetries in substance dependence: Findings from the ENIGMA Addiction Working Group
    Cao, Z ; Ottino-Gonzalez, J ; Cupertino, RB ; Schwab, N ; Hoke, C ; Catherine, O ; Cousijn, J ; Dagher, A ; Foxe, JJ ; Goudriaan, AE ; Hester, R ; Hutchison, K ; Li, C-SR ; London, ED ; Lorenzetti, V ; Luijten, M ; Martin-Santos, R ; Momenan, R ; Paulus, MP ; Schmaal, L ; Sinha, R ; Sjoerds, Z ; Solowij, N ; Stein, DJ ; Stein, EA ; Uhlmann, A ; van Holst, RJ ; Veltman, DJ ; Wiers, RW ; Yucel, M ; Zhang, S ; Jahanshad, N ; Thompson, PM ; Conrod, P ; Mackey, S ; Garavan, H (WILEY, 2021-09)
    Brain asymmetry reflects left-right hemispheric differentiation, which is a quantitative brain phenotype that develops with age and can vary with psychiatric diagnoses. Previous studies have shown that substance dependence is associated with altered brain structure and function. However, it is unknown whether structural brain asymmetries are different in individuals with substance dependence compared with nondependent participants. Here, a mega-analysis was performed using a collection of 22 structural brain MRI datasets from the ENIGMA Addiction Working Group. Structural asymmetries of cortical and subcortical regions were compared between individuals who were dependent on alcohol, nicotine, cocaine, methamphetamine, or cannabis (n = 1,796) and nondependent participants (n = 996). Substance-general and substance-specific effects on structural asymmetry were examined using separate models. We found that substance dependence was significantly associated with differences in volume asymmetry of the nucleus accumbens (NAcc; less rightward; Cohen's d = 0.15). This effect was driven by differences from controls in individuals with alcohol dependence (less rightward; Cohen's d = 0.10) and nicotine dependence (less rightward; Cohen's d = 0.11). These findings suggest that disrupted structural asymmetry in the NAcc may be a characteristic of substance dependence.
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    Subcortical surface morphometry in substance dependence: An ENIGMA addiction working group study
    Chye, Y ; Mackey, S ; Gutman, BA ; Ching, CRK ; Batalla, A ; Blaine, S ; Brooks, S ; Caparelli, EC ; Cousijn, J ; Dagher, A ; Foxe, JJ ; Goudriaan, AE ; Hester, R ; Hutchison, K ; Jahanshad, N ; Kaag, AM ; Korucuoglu, O ; Li, C-SR ; London, ED ; Lorenzetti, V ; Luijten, M ; Martin-Santos, R ; Meda, SA ; Momenan, R ; Morales, A ; Orr, C ; Paulus, MP ; Pearlson, G ; Reneman, L ; Schmaal, L ; Sinha, R ; Solowij, N ; Stein, DJ ; Stein, EA ; Tang, D ; Uhlmann, A ; van Holst, R ; Veltman, DJ ; Verdejo-Garcia, A ; Wiers, RW ; Yuecel, M ; Thompson, PM ; Conrod, P ; Garavan, H (WILEY, 2020-11)
    While imaging studies have demonstrated volumetric differences in subcortical structures associated with dependence on various abused substances, findings to date have not been wholly consistent. Moreover, most studies have not compared brain morphology across those dependent on different substances of abuse to identify substance-specific and substance-general dependence effects. By pooling large multinational datasets from 33 imaging sites, this study examined subcortical surface morphology in 1628 nondependent controls and 2277 individuals with dependence on alcohol, nicotine, cocaine, methamphetamine, and/or cannabis. Subcortical structures were defined by FreeSurfer segmentation and converted to a mesh surface to extract two vertex-level metrics-the radial distance (RD) of the structure surface from a medial curve and the log of the Jacobian determinant (JD)-that, respectively, describe local thickness and surface area dilation/contraction. Mega-analyses were performed on measures of RD and JD to test for the main effect of substance dependence, controlling for age, sex, intracranial volume, and imaging site. Widespread differences between dependent users and nondependent controls were found across subcortical structures, driven primarily by users dependent on alcohol. Alcohol dependence was associated with localized lower RD and JD across most structures, with the strongest effects in the hippocampus, thalamus, putamen, and amygdala. Meanwhile, nicotine use was associated with greater RD and JD relative to nonsmokers in multiple regions, with the strongest effects in the bilateral hippocampus and right nucleus accumbens. By demonstrating subcortical morphological differences unique to alcohol and nicotine use, rather than dependence across all substances, results suggest substance-specific relationships with subcortical brain structures.
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    Gender-related neuroanatomical differences in alcohol dependence: findings from the ENIGMA Addiction Working Group
    Rossetti, MG ; Patalay, P ; Mackey, S ; Allen, NB ; Batalla, A ; Bellani, M ; Chye, Y ; Cousijn, J ; Goudriaan, AE ; Hester, R ; Hutchison, K ; Li, C-SR ; Martin-Santos, R ; Momenan, R ; Sinha, R ; Schmaal, L ; Sjoerds, Z ; Solowij, N ; Suo, C ; van Holst, RJ ; Veltman, DJ ; Yucel, M ; Thompson, PM ; Conrod, P ; Garavan, H ; Brambilla, P ; Lorenzetti, V (ELSEVIER SCI LTD, 2021)
    Gender-related differences in the susceptibility, progression and clinical outcomes of alcohol dependence are well-known. However, the neurobiological substrates underlying such differences remain unclear. Therefore, this study aimed to investigate gender differences in the neuroanatomy (i.e. regional brain volumes) of alcohol dependence. We examined the volume of a priori regions of interest (i.e., orbitofrontal cortex, hippocampus, amygdala, nucleus accumbens, caudate, putamen, pallidum, thalamus, corpus callosum, cerebellum) and global brain measures (i.e., total grey matter (GM), total white matter (WM) and cerebrospinal fluid). Volumes were compared between 660 people with alcohol dependence (228 women) and 326 controls (99 women) recruited from the ENIGMA Addiction Working Group, accounting for intracranial volume, age and education years. Compared to controls, individuals with alcohol dependence on average had (3-9%) smaller volumes of the hippocampus (bilateral), putamen (left), pallidum (left), thalamus (right), corpus callosum, total GM and WM, and cerebellar GM (bilateral), the latter more prominently in women (right). Alcohol-dependent men showed smaller amygdala volume than control men, but this effect was unclear among women. In people with alcohol dependence, more monthly standard drinks predicted smaller amygdala and larger cerebellum GM volumes. The neuroanatomical differences associated with alcohol dependence emerged as gross and widespread, while those associated with a specific gender may be confined to selected brain regions. These findings warrant future neuroscience research to account for gender differences in alcohol dependence to further understand the neurobiological effects of alcohol dependence.
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    Sex differences in the neuroanatomy of alcohol dependence: hippocampus and amygdala subregions in a sample of 966 people from the ENIGMA Addiction Working Group
    Grace, S ; Rossetti, MG ; Allen, N ; Batalla, A ; Bellani, M ; Brambilla, P ; Chye, Y ; Cousijn, J ; Goudriaan, AE ; Hester, R ; Hutchison, K ; Labuschagne, I ; Momenan, R ; Martin-Santos, R ; Rendell, P ; Solowij, N ; Sinha, R ; Li, C-SR ; Schmaal, L ; Sjoerds, Z ; Suo, C ; Terrett, G ; van Holst, RJ ; Veltman, DJ ; Yucel, M ; Thompson, P ; Conrod, P ; Mackey, S ; Garavan, H ; Lorenzetti, V (SPRINGERNATURE, 2021-03-04)
    Males and females with alcohol dependence have distinct mental health and cognitive problems. Animal models of addiction postulate that the underlying neurobiological mechanisms are partially distinct, but there is little evidence of sex differences in humans with alcohol dependence as most neuroimaging studies have been conducted in males. We examined hippocampal and amygdala subregions in a large sample of 966 people from the ENIGMA Addiction Working Group. This comprised 643 people with alcohol dependence (225 females), and a comparison group of 323 people without alcohol dependence (98 females). Males with alcohol dependence had smaller volumes of the total amygdala and its basolateral nucleus than male controls, that exacerbated with alcohol dose. Alcohol dependence was also associated with smaller volumes of the hippocampus and its CA1 and subiculum subfield volumes in both males and females. In summary, hippocampal and amygdalar subregions may be sensitive to both shared and distinct mechanisms in alcohol-dependent males and females.
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    Predicting alcohol dependence frommulti-sitebrain structural measures
    Hahn, S ; Mackey, S ; Cousijn, J ; Foxe, JJ ; Heinz, A ; Hester, R ; Hutchinson, K ; Kiefer, F ; Korucuoglu, O ; Lett, T ; Li, C-SR ; London, E ; Lorenzetti, V ; Maartje, L ; Momenan, R ; Orr, C ; Paulus, M ; Schmaal, L ; Sinha, R ; Sjoerds, Z ; Stein, DJ ; Stein, E ; van Holst, RJ ; Veltman, D ; Walter, H ; Wiers, RW ; Yucel, M ; Thompson, PM ; Conrod, P ; Allgaier, N ; Garavan, H (WILEY, 2022-01)
    To identify neuroimaging biomarkers of alcohol dependence (AD) from structural magnetic resonance imaging, it may be useful to develop classification models that are explicitly generalizable to unseen sites and populations. This problem was explored in a mega-analysis of previously published datasets from 2,034 AD and comparison participants spanning 27 sites curated by the ENIGMA Addiction Working Group. Data were grouped into a training set used for internal validation including 1,652 participants (692 AD, 24 sites), and a test set used for external validation with 382 participants (146 AD, 3 sites). An exploratory data analysis was first conducted, followed by an evolutionary search based feature selection to site generalizable and high performing subsets of brain measurements. Exploratory data analysis revealed that inclusion of case- and control-only sites led to the inadvertent learning of site-effects. Cross validation methods that do not properly account for site can drastically overestimate results. Evolutionary-based feature selection leveraging leave-one-site-out cross-validation, to combat unintentional learning, identified cortical thickness in the left superior frontal gyrus and right lateral orbitofrontal cortex, cortical surface area in the right transverse temporal gyrus, and left putamen volume as final features. Ridge regression restricted to these features yielded a test-set area under the receiver operating characteristic curve of 0.768. These findings evaluate strategies for handling multi-site data with varied underlying class distributions and identify potential biomarkers for individuals with current AD.