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Dive into the research topics where Rastko Ciric is active.

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Featured researches published by Rastko Ciric.


NeuroImage | 2017

Benchmarking of participant-level confound regression strategies for the control of motion artifact in studies of functional connectivity.

Rastko Ciric; Daniel H. Wolf; Jonathan D. Power; David R. Roalf; Graham L. Baum; Kosha Ruparel; Russell T. Shinohara; Mark A. Elliott; Simon B. Eickhoff; Christos Davatzikos; Ruben C. Gur; Raquel E. Gur; Danielle S. Bassett; Theodore D. Satterthwaite

&NA; Since initial reports regarding the impact of motion artifact on measures of functional connectivity, there has been a proliferation of participant‐level confound regression methods to limit its impact. However, many of the most commonly used techniques have not been systematically evaluated using a broad range of outcome measures. Here, we provide a systematic evaluation of 14 participant‐level confound regression methods in 393 youths. Specifically, we compare methods according to four benchmarks, including the residual relationship between motion and connectivity, distance‐dependent effects of motion on connectivity, network identifiability, and additional degrees of freedom lost in confound regression. Our results delineate two clear trade‐offs among methods. First, methods that include global signal regression minimize the relationship between connectivity and motion, but result in distance‐dependent artifact. In contrast, censoring methods mitigate both motion artifact and distance‐dependence, but use additional degrees of freedom. Importantly, less effective de‐noising methods are also unable to identify modular network structure in the connectome. Taken together, these results emphasize the heterogeneous efficacy of existing methods, and suggest that different confound regression strategies may be appropriate in the context of specific scientific goals. HighlightsWe evaluate 14 participant‐level de‐noising pipelines for functional connectivity.Pipeline performance is markedly heterogeneous.GSR minimizes the impact of motion but introduces distance dependence.Censoring reduces motion and improves network identifiability.


American Journal of Psychiatry | 2017

Common Dimensional Reward Deficits Across Mood and Psychotic Disorders: A Connectome-Wide Association Study

Anup Sharma; Daniel H. Wolf; Rastko Ciric; Joseph W. Kable; Tyler M. Moore; Simon N. Vandekar; Natalie Katchmar; Aylin Daldal; Kosha Ruparel; Christos Davatzikos; Mark A. Elliott; Monica E. Calkins; Russell T. Shinohara; Danielle S. Bassett; Theodore D. Satterthwaite

OBJECTIVE Anhedonia is central to multiple psychiatric disorders and causes substantial disability. A dimensional conceptualization posits that anhedonia severity is related to a transdiagnostic continuum of reward deficits in specific neural networks. Previous functional connectivity studies related to anhedonia have focused on case-control comparisons in specific disorders, using region-specific seed-based analyses. Here, the authors explore the entire functional connectome in relation to reward responsivity across a population of adults with heterogeneous psychopathology. METHOD In a sample of 225 adults from five diagnostic groups (major depressive disorder, N=32; bipolar disorder, N=50; schizophrenia, N=51; psychosis risk, N=39; and healthy control subjects, N=53), the authors conducted a connectome-wide analysis examining the relationship between a dimensional measure of reward responsivity (the reward sensitivity subscale of the Behavioral Activation Scale) and resting-state functional connectivity using multivariate distance-based matrix regression. RESULTS The authors identified foci of dysconnectivity associated with reward responsivity in the nucleus accumbens, the default mode network, and the cingulo-opercular network. Follow-up analyses revealed dysconnectivity among specific large-scale functional networks and their connectivity with the nucleus accumbens. Reward deficits were associated with decreased connectivity between the nucleus accumbens and the default mode network and increased connectivity between the nucleus accumbens and the cingulo-opercular network. In addition, impaired reward responsivity was associated with default mode network hyperconnectivity and diminished connectivity between the default mode network and the cingulo-opercular network. CONCLUSIONS These results emphasize the centrality of the nucleus accumbens in the pathophysiology of reward deficits and suggest that dissociable patterns of connectivity among large-scale networks are critical to the neurobiology of reward dysfunction across clinical diagnostic categories.


The Journal of Neuroscience | 2017

Age-Related Effects and Sex Differences in Gray Matter Density, Volume, Mass, and Cortical Thickness from Childhood to Young Adulthood

Efstathios D. Gennatas; Brian B. Avants; Daniel H. Wolf; Theodore D. Satterthwaite; Kosha Ruparel; Rastko Ciric; Hakon Hakonarson; Raquel E. Gur; Ruben C. Gur

Developmental structural neuroimaging studies in humans have long described decreases in gray matter volume (GMV) and cortical thickness (CT) during adolescence. Gray matter density (GMD), a measure often assumed to be highly related to volume, has not been systematically investigated in development. We used T1 imaging data collected on the Philadelphia Neurodevelopmental Cohort to study age-related effects and sex differences in four regional gray matter measures in 1189 youths ranging in age from 8 to 23 years. Custom T1 segmentation and a novel high-resolution gray matter parcellation were used to extract GMD, GMV, gray matter mass (GMM; defined as GMD × GMV), and CT from 1625 brain regions. Nonlinear models revealed that each modality exhibits unique age-related effects and sex differences. While GMV and CT generally decrease with age, GMD increases and shows the strongest age-related effects, while GMM shows a slight decline overall. Females have lower GMV but higher GMD than males throughout the brain. Our findings suggest that GMD is a prime phenotype for the assessment of brain development and likely cognition and that periadolescent gray matter loss may be less pronounced than previously thought. This work highlights the need for combined quantitative histological MRI studies. SIGNIFICANCE STATEMENT This study demonstrates that different MRI-derived gray matter measures show distinct age and sex effects and should not be considered equivalent but complementary. It is shown for the first time that gray matter density increases from childhood to young adulthood, in contrast with gray matter volume and cortical thickness, and that females, who are known to have lower gray matter volume than males, have higher density throughout the brain. A custom preprocessing pipeline and a novel high-resolution parcellation were created to analyze brain scans of 1189 youths collected as part of the Philadelphia Neurodevelopmental Cohort. A clear understanding of normal structural brain development is essential for the examination of brain–behavior relationships, the study of brain disease, and, ultimately, clinical applications of neuroimaging.


Network Neuroscience | 2017

Evolution of brain network dynamics in neurodevelopment

Lucy R. Chai; Ankit N. Khambhati; Rastko Ciric; Tyler M. Moore; Ruben C. Gur; Raquel E. Gur; Theodore D. Satterthwaite; Danielle S. Bassett

Cognitive function evolves significantly over development, enabling flexible control of human behavior. Yet, how these functions are instantiated in spatially distributed and dynamically interacting networks, or graphs, that change in structure from childhood to adolescence is far from understood. Here we applied a novel machine-learning method to track continuously overlapping and time-varying subgraphs in the brain at rest within a sample of 200 healthy youth (ages 8–11 and 19–22) drawn from the Philadelphia Neurodevelopmental Cohort. We uncovered a set of subgraphs that capture surprisingly integrated and dynamically changing interactions among known cognitive systems. We observed that subgraphs that were highly expressed were especially transient, flexibly switching between high and low expression over time. This transience was particularly salient in a subgraph predominantly linking frontoparietal regions of the executive system, which increases in both expression and flexibility from childhood to young adulthood. Collectively, these results suggest that healthy development is accompanied by an increasing precedence of executive networks and a greater switching of the regions and interactions subserving these networks. AUTHOR SUMMARY Our ability to thoughtfully engage with the world around us changes appreciably as we transition from childhood to adulthood. Yet, how our brains develop to enable that change remains far from understood. Here we used network science—traditionally applied to the study of social networks like Facebook or Twitter—and machine learning to show that growing cognitive abilities are accompanied by greater flexibility of brain regions within distributed networks. This flexibility is greatest in the executive system, which is critical for higher-order cognitive functions and increases in expression and flexibility from childhood to young adulthood. These results suggest that healthy development is facilitated by an increasing precedence of executive networks and a greater switching of the regions and interactions subserving these networks.


Biological Psychiatry | 2016

Elevated Amygdala Perfusion Mediates Developmental Sex Differences in Trait Anxiety

Antonia N. Kaczkurkin; Tyler M. Moore; Kosha Ruparel; Rastko Ciric; Monica E. Calkins; Russell T. Shinohara; Mark A. Elliott; Ryan Hopson; David R. Roalf; Simon N. Vandekar; Efstathios D. Gennatas; Daniel H. Wolf; J. Cobb Scott; Daniel S. Pine; Ellen Leibenluft; John A. Detre; Edna B. Foa; Raquel E. Gur; Ruben C. Gur; Theodore D. Satterthwaite

BACKGROUND Adolescence is a critical period for emotional maturation and is a time when clinically significant symptoms of anxiety and depression increase, particularly in females. However, few studies relate developmental differences in symptoms of anxiety and depression to brain development. Cerebral blood flow is one brain phenotype that is known to have marked developmental sex differences. METHODS We investigated whether developmental sex differences in cerebral blood flow mediated sex differences in anxiety and depression symptoms by capitalizing on a large sample of 875 youths who completed cross-sectional imaging as part of the Philadelphia Neurodevelopmental Cohort. Perfusion was quantified on a voxelwise basis using arterial spin-labeled magnetic resonance imaging at 3T. Perfusion images were related to trait and state anxiety using general additive models with penalized splines, while controlling for gray matter density on a voxelwise basis. Clusters found to be related to anxiety were evaluated for interactions with age, sex, and puberty. RESULTS Trait anxiety was associated with elevated perfusion in a network of regions including the amygdala, anterior insula, and fusiform cortex, even after accounting for prescan state anxiety. Notably, these relationships strengthened with age and the transition through puberty. Moreover, higher trait anxiety in postpubertal females was mediated by elevated perfusion of the left amygdala. CONCLUSIONS Taken together, these results demonstrate that differences in the evolution of cerebral perfusion during adolescence may be a critical element of the affective neurobiological characteristics underlying sex differences in anxiety and mood symptoms.


Human Brain Mapping | 2017

Motion artifact in studies of functional connectivity: Characteristics and mitigation strategies

Theodore D. Satterthwaite; Rastko Ciric; David R. Roalf; Christos Davatzikos; Danielle S. Bassett; Daniel H. Wolf

Motion artifacts are now recognized as a major methodological challenge for studies of functional connectivity. As in‐scanner motion is frequently correlated with variables of interest such as age, clinical status, cognitive ability, and symptom severity, in‐scanner motion has the potential to introduce systematic bias. In this article, we describe how motion‐related artifacts influence measures of functional connectivity and discuss the relative strengths and weaknesses of commonly used denoising strategies. Furthermore, we illustrate how motion can bias inference, using a study of brain development as an example. Finally, we highlight directions of ongoing and future research, and provide recommendations for investigators in the field. Hum Brain Mapp, 40:2033–2051, 2019.


NeuroImage | 2018

Brain state expression and transitions are related to complex executive cognition in normative neurodevelopment

John D. Medaglia; Theodore D. Satterthwaite; Apoorva Kelkar; Rastko Ciric; Tyler M. Moore; Kosha Ruparel; Ruben C. Gur; Raquel E. Gur; Danielle S. Bassett

&NA; Adolescence is marked by rapid development of executive function. Mounting evidence suggests that executive function in adults may be driven by dynamic control of neurophysiological processes. Yet, how these dynamics evolve over adolescence and contribute to cognitive development is unknown. In a sample of 780 youth aged 8–22 yr (42.7% male) from the Philadelphia Neurodevelopment Cohort, we use a dynamic graph approach to extract activation states in BOLD fMRI data from 264 brain regions. We construct a graph in which each observation in time is a node and the similarity in brain states at two different times is an edge. Using this graphical approach, we identify two primary brain states reminiscent of intrinsic and task‐evoked systems. We show that time spent in these two states is higher in older adolescents, as is the flexibility with which the brain switches between them. Increasing time spent in primary states and flexibility among states relates to increases in a complex executive accuracy factor score over adolescence. Flexibility is more positively associated with accuracy toward early adulthood. These findings suggest that brain state dynamics are associated with complex executive function across a critical period of adolescence. HighlightsWe uncover two primary brain states in 780 subjects from 8yr to 22yr of age.Primary states correspond to “Task‐Positive” and “Task‐Negative” networks.Greater time spent in primary states is associated with better executive function.Flexibility is differentially linked to executive function in younger/older youth.State‐level analysis identifies behaviorally relevant features of neurodevelopment.


NeuroImage | 2018

Quantitative assessment of structural image quality

Adon Rosen; David R. Roalf; Kosha Ruparel; Jason Blake; Kevin Seelaus; Lakshmi P. Villa; Rastko Ciric; Philip A. Cook; Christos Davatzikos; Mark A. Elliott; Angel Garcia de La Garza; Efstathios D. Gennatas; Megan Quarmley; J. Eric Schmitt; Russell T. Shinohara; M. Dylan Tisdall; R. Cameron Craddock; Raquel E. Gur; Ruben C. Gur; Theodore D. Satterthwaite

ABSTRACT Data quality is increasingly recognized as one of the most important confounding factors in brain imaging research. It is particularly important for studies of brain development, where age is systematically related to in‐scanner motion and data quality. Prior work has demonstrated that in‐scanner head motion biases estimates of structural neuroimaging measures. However, objective measures of data quality are not available for most structural brain images. Here we sought to identify quantitative measures of data quality for T1‐weighted volumes, describe how these measures relate to cortical thickness, and delineate how this in turn may bias inference regarding associations with age in youth. Three highly‐trained raters provided manual ratings of 1840 raw T1‐weighted volumes. These images included a training set of 1065 images from Philadelphia Neurodevelopmental Cohort (PNC), a test set of 533 images from the PNC, as well as an external test set of 242 adults acquired on a different scanner. Manual ratings were compared to automated quality measures provided by the Preprocessed Connectomes Projects Quality Assurance Protocol (QAP), as well as FreeSurfers Euler number, which summarizes the topological complexity of the reconstructed cortical surface. Results revealed that the Euler number was consistently correlated with manual ratings across samples. Furthermore, the Euler number could be used to identify images scored “unusable” by human raters with a high degree of accuracy (AUC: 0.98–0.99), and out‐performed proxy measures from functional timeseries acquired in the same scanning session. The Euler number also was significantly related to cortical thickness in a regionally heterogeneous pattern that was consistent across datasets and replicated prior results. Finally, data quality both inflated and obscured associations with age during adolescence. Taken together, these results indicate that reliable measures of data quality can be automatically derived from T1‐weighted volumes, and that failing to control for data quality can systematically bias the results of studies of brain maturation.


NeuroImage | 2018

The impact of in-scanner head motion on structural connectivity derived from diffusion MRI

Graham L. Baum; David R. Roalf; Philip A. Cook; Rastko Ciric; Adon Rosen; Cedric Xia; Mark A. Elliott; Kosha Ruparel; Ragini Verma; Birkan Tunç; Ruben C. Gur; Raquel E. Gur; Danielle S. Bassett; Theodore D. Satterthwaite

&NA; Multiple studies have shown that data quality is a critical confound in the construction of brain networks derived from functional MRI. This problem is particularly relevant for studies of human brain development where important variables (such as participant age) are correlated with data quality. Nevertheless, the impact of head motion on estimates of structural connectivity derived from diffusion tractography methods remains poorly characterized. Here, we evaluated the impact of in‐scanner head motion on structural connectivity using a sample of 949 participants (ages 8‐23 years old) who passed a rigorous quality assessment protocol for diffusion magnetic resonance imaging (dMRI) acquired as part of the Philadelphia Neurodevelopmental Cohort. Structural brain networks were constructed for each participant using both deterministic and probabilistic tractography. We hypothesized that subtle variation in head motion would systematically bias estimates of structural connectivity and confound developmental inference, as observed in previous studies of functional connectivity. Even following quality assurance and retrospective correction for head motion, eddy currents, and field distortions, in‐scanner head motion significantly impacted the strength of structural connectivity in a consistency‐ and length‐dependent manner. Specifically, increased head motion was associated with reduced estimates of structural connectivity for network edges with high inter‐subject consistency, which included both short‐ and long‐range connections. In contrast, motion inflated estimates of structural connectivity for low‐consistency network edges that were primarily shorter‐range. Finally, we demonstrate that age‐related differences in head motion can both inflate and obscure developmental inferences on structural connectivity. Taken together, these data delineate the systematic impact of head motion on structural connectivity, and provide a critical context for identifying motion‐related confounds in studies of structural brain network development.


Molecular Psychiatry | 2017

Common and dissociable regional cerebral blood flow differences associate with dimensions of psychopathology across categorical diagnoses

Antonia N. Kaczkurkin; Tyler M. Moore; Monica E. Calkins; Rastko Ciric; J A Detre; Mark A. Elliott; E B Foa; A Garcia de la Garza; David R. Roalf; Adon Rosen; Kosha Ruparel; Russell T. Shinohara; Cedric Xia; Daniel H. Wolf; Raquel E. Gur; Ruben C. Gur; Theodore D. Satterthwaite

The high comorbidity among neuropsychiatric disorders suggests a possible common neurobiological phenotype. Resting-state regional cerebral blood flow (CBF) can be measured noninvasively with magnetic resonance imaging (MRI) and abnormalities in regional CBF are present in many neuropsychiatric disorders. Regional CBF may also provide a useful biological marker across different types of psychopathology. To investigate CBF changes common across psychiatric disorders, we capitalized upon a sample of 1042 youths (ages 11–23 years) who completed cross-sectional imaging as part of the Philadelphia Neurodevelopmental Cohort. CBF at rest was quantified on a voxelwise basis using arterial spin labeled perfusion MRI at 3T. A dimensional measure of psychopathology was constructed using a bifactor model of item-level data from a psychiatric screening interview, which delineated four factors (fear, anxious-misery, psychosis and behavioral symptoms) plus a general factor: overall psychopathology. Overall psychopathology was associated with elevated perfusion in several regions including the right dorsal anterior cingulate cortex (ACC) and left rostral ACC. Furthermore, several clusters were associated with specific dimensions of psychopathology. Psychosis symptoms were related to reduced perfusion in the left frontal operculum and insula, whereas fear symptoms were associated with less perfusion in the right occipital/fusiform gyrus and left subgenual ACC. Follow-up functional connectivity analyses using resting-state functional MRI collected in the same participants revealed that overall psychopathology was associated with decreased connectivity between the dorsal ACC and bilateral caudate. Together, the results of this study demonstrate common and dissociable CBF abnormalities across neuropsychiatric disorders in youth.

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Kosha Ruparel

University of Pennsylvania

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Raquel E. Gur

University of Pennsylvania

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Ruben C. Gur

University of Pennsylvania

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David R. Roalf

University of Pennsylvania

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Tyler M. Moore

University of Pennsylvania

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Daniel H. Wolf

University of Pennsylvania

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