Sarah J. A. Carr’s research while affiliated with King's College London and other places

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Publications (16)


A worldwide ENIGMA study on epilepsy-related gray and white matter compromise across the adult lifespan
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March 2024

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233 Reads

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2 Citations

Judy Chen

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Boris C. Bernhardt

Objectives: Temporal lobe epilepsy (TLE) is commonly associated with mesiotemporal pathology and widespread alterations of grey and white matter structures. Evidence supports a progressive condition although the temporal evolution of TLE is poorly defined. This ENIGMA-Epilepsy study utilized multimodal magnetic resonance imaging (MRI) data to investigate structural alterations in TLE patients across the adult lifespan. We charted both grey and white matter changes and explored the covariance of age-related alterations in both compartments. Methods: We studied 769 TLE patients and 885 healthy controls across an age range of 17-73 years, from multiple international sites. To assess potentially non-linear lifespan changes in TLE, we harmonized data and combined median split assessments with cross-sectional sliding window analyses of grey and white matter age-related changes. Covariance analyses examined the coupling of grey and white matter lifespan curves. Results: In TLE, age was associated with a robust grey matter thickness/volume decline across a broad cortico-subcortical territory, extending beyond the mesiotemporal disease epicentre. White matter changes were also widespread across multiple tracts with peak effects in temporo-limbic fibers. While changes spanned the adult time window, changes accelerated in cortical thickness, subcortical volume, and fractional anisotropy (all decreased), and mean diffusivity (increased) after age 55 years. Covariance analyses revealed strong limbic associations between white matter tracts and subcortical structures with cortical regions. Conclusions: This study highlights the profound impact of TLE on lifespan changes in grey and white matter structures, with an acceleration of aging-related processes in later decades of life. Our findings motivate future longitudinal studies across the lifespan and emphasize the importance of prompt diagnosis as well as intervention in patients.

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Median accuracy rates for the mixed and improper fractions tasks performed during 877 fMRI. Easy and Hard is the overall rates for the improper or mixed fractions. SD = standard 878 deviation. 879
Between group differences in hemodynamic responses for Item Types for each fraction 881 strategy. P = 0.001, minimum cluster extent = 10 voxels. 882
Fractions strategy differences in those born extremely preterm

December 2022

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58 Reads

Introduction To investigate the effects of different strategies and cognitive load we explored brain hemodynamic responses associated with the use of different strategies to solve subtraction of fractions. We focused on those born extremely preterm (EPT; <28 weeks’ gestation) as they are known to have cognitive challenges and struggle with mathematics. We also included a group of full-term (FT) peers for comparison. Methods Functional MRI was acquired while the participants mentally solved fraction equations using either a strategy based on improper or mixed fractions. Different fraction item types were given, which affected respective required cognitive loads per strategy. Diffusion and T1-weighted structural images were also acquired. Results The EPT and FT groups differed in terms of task-related hemodynamic responses. Functional group differences were greatest when strategies were applied to item types that result in high cognitive load. Other findings showed reduced white and grey matter volume and reduced white matter connectivity in widespread areas in the EPT group compared to the FT group. Conclusion The understanding of function and structure presented here may help inform pedagogical practices by allowing for tailoring of mathematical education through identifying suitable strategy adoption that depends on item type, to circumvent weaknesses in cognitive skills.


Structural covariance networks in the common epilepsies
a Schematic showing the construction of group- and site-specific structural covariance networks from morphometric correlations. b Two graph theoretical parameters characterized network topology: clustering coefficient, which measures connection density among neighboring nodes (orange) and path length, which measures the number of shortest steps between any two given nodes (purple). The interplay between clustering coefficient and path length can describe three distinct topological organizations: regular networks with high clustering and path length (left), small-world networks with high clustering and low path length (middle), and random networks with low clustering and path length (right). c Global differences in clustering coefficient (left) and path length (right) between TLE and HC (top) and between IGE and HC (bottom) are plotted as a function of network density. Increased small-worldness (i.e., increased clustering and decreased path length) was observed in individuals with TLE, whereas individuals with IGE showed decreases in clustering and path length, suggesting a more random configuration. Two-tailed student’s t-tests were performed at each density value, comparing global measures in patients (TLE or IGE) to controls; bold asterisks indicate pFDR < 0.1, semi-transparent asterisks indicate puncorr < 0.05. Thin lines represent data from individual sites. Error bars indicate standard error of the mean. HC = healthy control, IGE = idiopathic generalized epilepsy, TLE = temporal lobe epilepsy, pFDR = p-value adjusted for false discovery rate, puncorr = uncorrected p-value.
Nodal network alterations
a Graph theoretical analysis of structural covariance between individuals with TLE and controls revealed increased clustering and path length in bilateral orbitofrontal, temporal, and angular cortices, caudate, and putamen, as well as ipsilateral amygdala, revealing a regularized, “lattice-like,” arrangement. b In IGE, widespread multivariate topological alterations were observed in bilateral fronto-temporo-parietal cortices, right nucleus accumbens, and left pallidum. Clustering and path length effect sizes in these regions suggest a randomized network configuration (decreased clustering and path length). HC = healthy control, IGE = idiopathic generalized epilepsy, TLE = temporal lobe epilepsy.
Imaging-transcriptomic associations
a Schematic of the approaches for statistical testing of imaging-transcriptomic associations. Gene expression data for a subset of phenotype- or disease-specific genes are averaged and spatially compared to the patterns of multivariate topological changes in TLE and IGE independently. Spatial correlations are statistically assessed using one-tailed, non-parametric tests: (i) spatial permutation models, which preserve the spatial autocorrelation of brain maps (pspin; 10,000 permutations), and (ii) permutation models, which generate null distributions from randomised gene expression data with identical length as the original gene set (prand; 10,000 permutations). b Gene expression levels associated with two distinct epilepsy subtypes (focal epilepsy with hippocampal sclerosis and generalized epilepsy) were mapped to cortical and subcortical surface templates and spatially compared to patterns of multivariate topological alterations (which combined clustering and path length; see Fig. 2) across cortical and subcortical regions (n = 82) using one-tailed, non-parametric tests. In TLE, spatial associations between microarray data and multivariate topological changes were strongest for expression levels of hippocampal sclerosis genes (r = 0.33, pspin = 0.0028). On the other hand, in IGE, spatial associations were strongest for expression levels of generalized epilepsy genes (r = 0.31, pspin = 0.0032). Both TLE- and IGE-specific imaging-transcriptomic associations were robust against null distributions of effects based on selecting random genes from the full gene set (TLE: prand = 0.0030, IGE: prand = 0.018). HC = healthy control, IGE = idiopathic generalized epilepsy, TLE = temporal lobe epilepsy, pspin = p-value corrected against a null distribution of effects using a spatial permutation model, prand = p-value corrected against a null distribution of effects using a “random-gene” permutation model.
Relations between epilepsy gene expression and network topology
Gene expression levels associated with (i) all other epilepsy subtypes (all epilepsy, focal epilepsy, juvenile myoclonic epilepsy, and childhood absence epilepsy), (ii) monogenic epilepsy, and (iii) anti-epileptic drug targets were mapped to cortical and subcortical surface templates. Spatial correlations were performed between each of these transcriptomic maps and the patterns of multivariate topological alterations in TLE and IGE across cortical and subcortical regions (n = 82) and were statistically assessed using one-tailed, non-parametric tests. In IGE, spatial associations between microarray data and multivariate topological changes were significant for expression levels of all epilepsy genes (r = 0.37, pspin = 0.0019) and focal epilepsy (r = 0.27, pspin = 0.015). In TLE, network associations did not correlate with any other epilepsy-related transcriptomic maps. HC = healthy control, IGE = idiopathic generalized epilepsy, TLE = temporal lobe epilepsy, pspin = p-value corrected against a null distribution of effects using a spatial permutation model, prand = p-value corrected against a null distribution of effects using a “random-gene” permutation model.
Relations between disease-related gene expression and network topology
Gene expression levels associated with six common neuropsychiatric conditions and/or comorbidities of epilepsy (attention deficit/hyperactivity disorder, autism spectrum disorder, bipolar disorder, major depressive disorder, migraine, and schizophrenia) were mapped to cortical and subcortical surface templates. Spatial correlations were performed between each of these transcriptomic maps and the patterns of multivariate topological alterations in TLE and IGE across cortical and subcortical regions (n = 82) and were statistically assessed using one-tailed, non-parametric tests. In IGE, a spatial association between microarray data and multivariate topological changes was significant for expression levels of major depression disorder genes (r = 0.19, pspin = 0.015). This association, however, did not survive correction against a null distribution of effects based on selecting random genes (prand = 0.18). In TLE, network associations did not correlate with any other disease-related transcriptomic maps. HC = healthy control, IGE = idiopathic generalized epilepsy, TLE = temporal lobe epilepsy, pspin = p-value corrected against a null distribution of effects using a spatial permutation model, prand = p-value corrected against a null distribution of effects using a “random-gene” permutation model.
Structural network alterations in focal and generalized epilepsy assessed in a worldwide ENIGMA study follow axes of epilepsy risk gene expression

July 2022

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388 Reads

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55 Citations

Epilepsy is associated with genetic risk factors and cortico-subcortical network alterations, but associations between neurobiological mechanisms and macroscale connectomics remain unclear. This multisite ENIGMA-Epilepsy study examined whole-brain structural covariance networks in patients with epilepsy and related findings to postmortem epilepsy risk gene expression patterns. Brain network analysis included 578 adults with temporal lobe epilepsy (TLE), 288 adults with idiopathic generalized epilepsy (IGE), and 1328 healthy controls from 18 centres worldwide. Graph theoretical analysis of structural covariance networks revealed increased clustering and path length in orbitofrontal and temporal regions in TLE, suggesting a shift towards network regularization. Conversely, people with IGE showed decreased clustering and path length in fronto-temporo-parietal cortices, indicating a random network configuration. Syndrome-specific topological alterations reflected expression patterns of risk genes for hippocampal sclerosis in TLE and for generalized epilepsy in IGE. These imaging-transcriptomic signatures could potentially guide diagnosis or tailor therapeutic approaches to specific epilepsy syndromes.


Figure 1 Topography of atypical cortical asymmetry and atrophy patterns in TLE. (A) Atypical inter-hemispheric asymmetry of cortical thickness and regional cortical atrophy between individuals with TLE relative to controls, calculated using ENIGMA-Epilepsy dataset. Blue regions indicate significant ipsilateral versus contralateral cortical thickness asymmetry/atrophy in TLE relative to controls. Patient hemispheres are sorted into ipsilateral/ contralateral to the seizure focus. (B) Effects (i.e. asymmetry index and cortical thickness) are stratified according to seven intrinsic functional communities 67 and major lobes. (C) Associations between epilepsy-related findings and microstructural/functional gradients calculated using HCP dataset. Cortex-wide microstructural profile similarity matrix and scree plot describing connectome variance after identification of principal eigenvectors are shown. The first principal eigenvector (microstructural gradient) is shown on the cortical surface. Spatial correlations between the principal microstructural gradient and TLE-related effects (i.e. atypical cortical asymmetry and atrophy) are reported with scatter plots. (D) Identical analysis to C but based on functional gradients. Cing = cingulate; DAN = dorsal attention network; DMN = default mode network; FPN = frontoparietal control network; Front = frontal; Ins = insular; LBN = limbic network; Occ = occipital; Par = parietal; SMN = somatomotor network; Temp = temporal; VAN = ventral attention network; VN = visual network.
Figure 2 Consistency of atypical cortical asymmetry and atrophy. (A) World map of data acquisition sites. (B) Spatial correlations between topographic gradients and atypical cortical asymmetry/atrophy patterns of all sites. (C) Schema describing the computation of patient-wise consistency probability. The number of patients with large deviations of cortical features (i.e. atypical inter-hemispheric asymmetry or regional cortical atrophy) was counted. (D) Consistency probability of atypical cortical asymmetry and atrophy. (E) Spatial correlations between consistency probability and topographic gradients.
Figure 3 Associations between cortical features and clinical variables. (A) Probability of regions being selected across 5-fold nested cross-validation and 100 repetitions for predicting duration of epilepsy using atypical asymmetry index (left) and regional atrophy (right). Correlations between actual and predicted values of epilepsy duration are reported in the scatter plots. Black lines indicate the mean correlation and grey lines represent the 95% CI for 100 iterations with different training/test datasets. (B) Linear correlations between gradients and selected probability. (C) Spatial correlations between duration of epilepsy and atypical asymmetry index (left), as well as cortical atrophy (right) in highly probable (selected probability 4 0.5) regions. (D-F) Identical analysis to A-C, but with respect to age at seizure onset. MAE = mean absolute error.
Topographic divergence of atypical cortical asymmetry and atrophy patterns in temporal lobe epilepsy

November 2021

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135 Reads

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35 Citations

Brain

Temporal lobe epilepsy, a common drug-resistant epilepsy in adults, is primarily a limbic network disorder associated with predominant unilateral hippocampal pathology. Structural MRI has provided an in vivo window into whole-brain grey matter structural alterations in temporal lobe epilepsy relative to controls, by either mapping (i) atypical inter-hemispheric asymmetry; or (ii) regional atrophy. However, similarities and differences of both atypical asymmetry and regional atrophy measures have not been systematically investigated. Here, we addressed this gap using the multisite ENIGMA-Epilepsy dataset comprising MRI brain morphological measures in 732 temporal lobe epilepsy patients and 1418 healthy controls. We compared spatial distributions of grey matter asymmetry and atrophy in temporal lobe epilepsy, contextualized their topographies relative to spatial gradients in cortical microstructure and functional connectivity calculated using 207 healthy controls obtained from Human Connectome Project and an independent dataset containing 23 temporal lobe epilepsy patients and 53 healthy controls and examined clinical associations using machine learning. We identified a marked divergence in the spatial distribution of atypical inter-hemispheric asymmetry and regional atrophy mapping. The former revealed a temporo-limbic disease signature while the latter showed diffuse and bilateral patterns. Our findings were robust across individual sites and patients. Cortical atrophy was significantly correlated with disease duration and age at seizure onset, while degrees of asymmetry did not show a significant relationship to these clinical variables. Our findings highlight that the mapping of atypical inter-hemispheric asymmetry and regional atrophy tap into two complementary aspects of temporal lobe epilepsy-related pathology, with the former revealing primary substrates in ipsilateral limbic circuits and the latter capturing bilateral disease effects. These findings refine our notion of the neuropathology of temporal lobe epilepsy and may inform future discovery and validation of complementary MRI biomarkers in temporal lobe epilepsy.


Early Stopping in Experimentation With Real-Time Functional Magnetic Resonance Imaging Using a Modified Sequential Probability Ratio Test

November 2021

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42 Reads

Introduction: Functional magnetic resonance imaging (fMRI) often involves long scanning durations to ensure the associated brain activity can be detected. However, excessive experimentation can lead to many undesirable effects, such as from learning and/or fatigue effects, discomfort for the subject, excessive motion artifacts and loss of sustained attention on task. Overly long experimentation can thus have a detrimental effect on signal quality and accurate voxel activation detection. Here, we propose dynamic experimentation with real-time fMRI using a novel statistically driven approach that invokes early stopping when sufficient statistical evidence for assessing the task-related activation is observed. Methods: Voxel-level sequential probability ratio test (SPRT) statistics based on general linear models (GLMs) were implemented on fMRI scans of a mathematical 1-back task from 12 healthy teenage subjects and 11 teenage subjects born extremely preterm (EPT). This approach is based on likelihood ratios and allows for systematic early stopping based on target statistical error thresholds. We adopt a two-stage estimation approach that allows for accurate estimates of GLM parameters before stopping is considered. Early stopping performance is reported for different first stage lengths, and activation results are compared with full durations. Finally, group comparisons are conducted with both early stopped and full duration scan data. Numerical parallelization was employed to facilitate completion of computations involving a new scan within every repetition time (TR). Results: Use of SPRT demonstrates the feasibility and efficiency gains of automated early stopping, with comparable activation detection as with full protocols. Dynamic stopping of stimulus administration was achieved in around half of subjects, with typical time savings of up to 33% (4 min on a 12 min scan). A group analysis produced similar patterns of activity for control subjects between early stopping and full duration scans. The EPT group, individually, demonstrated more variability in location and extent of the activations compared to the normal term control group. This was apparent in the EPT group results, reflected by fewer and smaller clusters. Conclusion: A systematic statistical approach for early stopping with real-time fMRI experimentation has been implemented. This dynamic approach has promise for reducing subject burden and fatigue effects.


FIGURE 1. Structural covariance networks in the common epilepsies. (a) Schematic showing the construction of groupand site-specific structural covariance networks from morphometric correlations. (b) Two graph theoretical parameters characterized network topology: clustering coefficient, which measures connection density among neighboring nodes (orange) and path length, which measures the number of shortest steps between any two given nodes (purple). The interplay between clustering coefficient and path length can describe three distinct topological organizations: regular networks with high clustering and path length (left), small-world networks with high clustering and low path length (middle), and random networks with low clustering and path length (right). (c) Global differences in clustering coefficient (left) and path length (right) between TLE and HC (top) and between IGE and HC (bottom) are plotted as a function of network density. Increased small-worldness (i.e., increased clustering and decreased path length) was observed in individuals with TLE, whereas individuals with IGE showed decreases in clustering and path length, suggesting a more random configuration. Student's t-tests were performed at each density value; bold asterisks indicate p FDR <0.1, semitransparent asterisks indicate p uncorr <0.05. Thin lines represent data from individual sites.
Structural network alterations in focal and generalized epilepsy follow axes of epilepsy risk gene expression: An ENIGMA study

October 2021

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127 Reads

Epilepsy is associated with genetic risk factors and cortico-subcortical network alterations, but associations between neurobiological mechanisms and macroscale connectomics remain unclear. This multisite ENIGMA-Epilepsy study examined whole-brain structural covariance networks in patients with epilepsy and related findings to postmortem co-expression patterns of epilepsy risk genes. Brain network analysis included 578 adults with temporal lobe epilepsy (TLE), 288 adults with idiopathic generalized epilepsy (IGE), and 1,328 healthy controls from 18 centres worldwide. Graph theoretical analysis of structural covariance networks revealed increased clustering and path length in orbitofrontal and temporal regions in TLE, suggesting a shift towards network regularization. Conversely, people with IGE showed decreased clustering and path length in fronto-temporo-parietal cortices, indicating a random network configuration. Syndrome-specific topological alterations reflected expression patterns of risk genes for hippocampal sclerosis in TLE and for generalized epilepsy in IGE. These imaging-genetic signatures could guide diagnosis, and ultimately, tailor therapeutic approaches to specific epilepsy syndromes.


Fig. 2. Presence of excess activated microglia in post mortem brain tissue from people with epilepsy Panel A: High magnification of morphological types of Iba1-labelled cells including (bottom row; left to right): 'rod' cells, ramified microglia, perivascular macrophage and amoeboid forms. Fixation time in illustration of ramified microglia was 467 days (bar = 30 microns).
Abbreviations AHBA = Allen Human Brain Atlas BA = Brodmann Area DEE = developmental and epileptic encephalopathies eQTL = expression Quantitative Trait Locus EP-L = Lesional Epilepsy EP-NL = Non-Lesional Epilepsy FDR = False Discovery Rate GO = Gene Ontology GWAS = Genome Wide Association Study IFN-γ = Interferon γ KEGG = Kyoto Encyclopaedia of Genes and Genomes LD = Linkage Disequilibrium LI = Labelling Index LPS = Lipopolysaccharide MTLE = Mesial Temporal Lobe Epilepsy MNI = Montreal Neurological Institute NEC = Non-Epilepsy Controls ROI = region of interest SE = status epilepticus
A systems‐level analysis highlights microglial activation as a modifying factor in common epilepsies

August 2021

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317 Reads

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31 Citations

Neuropathology and Applied Neurobiology

Aims The causes of distinct patterns of reduced cortical thickness in the common human epilepsies, detectable on neuroimaging and with important clinical consequences, are unknown. We investigated the underlying mechanisms of cortical thinning using a systems-level analysis. Methods Imaging-based cortical structural maps from a large-scale epilepsy neuroimaging study were overlaid with highly spatially resolved human brain gene expression data from the Allen Human Brain Atlas. Cell-type deconvolution, differential expression analysis and cell-type enrichment analyses were used to identify differences in cell-type distribution. These differences were followed up in post-mortem brain tissue from humans with epilepsy using Iba1 immunolabelling. Furthermore, to investigate a causal effect in cortical thinning, cell-type specific depletion was used in a murine model of acquired epilepsy. Results We identified elevated fractions of microglia and endothelial cells in regions of reduced cortical thickness. Differentially expressed genes showed enrichment for microglial markers, and in particular, activated microglial states. Analysis of post-mortem brain tissue from humans with epilepsy confirmed excess activated microglia. In the murine model, transient depletion of activated microglia during the early phase of the disease development prevented cortical thinning and neuronal cell loss in the temporal cortex. Although the development of chronic seizures was unaffected, the epileptic mice with early depletion of activated microglia did not develop deficits in a non-spatial memory test seen in epileptic mice not depleted of microglia. Conclusions These convergent data strongly implicate activated microglia in cortical thinning, representing a new dimension for concern and disease modification in the epilepsies, potentially distinct from seizure control.


Topographic Divergence of Atypical Cortical Asymmetry and Regional Atrophy Patterns in Temporal Lobe Epilepsy: A Worldwide ENIGMA Study

June 2021

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279 Reads

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1 Citation

A bstract Temporal lobe epilepsy (TLE), a common drug-resistant epilepsy in adults, is primarily a limbic network disorder associated with predominant unilateral hippocampal pathology. Structural MRI has provided an in vivo window into whole-brain grey matter pathology in TLE relative to controls, by either mapping (i) atypical inter-hemispheric asymmetry or (ii) regional atrophy. However, similarities and differences of both atypical asymmetry and regional atrophy measures have not been systematically investigated. Here, we addressed this gap using the multi-site ENIGMA-Epilepsy dataset comprising MRI brain morphological measures in 732 TLE patients and 1,418 healthy controls. We compared spatial distributions of grey matter asymmetry and atrophy in TLE, contextualized their topographies relative to spatial gradients in cortical microstructure and functional connectivity, and examined clinical associations using machine learning. We identified a marked divergence in the spatial distribution of atypical inter-hemispheric asymmetry and regional atrophy mapping. The former revealed a temporo-limbic disease signature while the latter showed diffuse and bilateral patterns. Our findings were robust across individual sites and patients. Cortical atrophy was significantly correlated with disease duration and age at seizure onset, while degrees of asymmetry did not show a significant relationship to these clinical variables. Our findings highlight that the mapping of atypical inter-hemispheric asymmetry and regional atrophy tap into two complementary aspects of TLE-related pathology, with the former revealing primary substrates in ipsilateral limbic circuits and the latter capturing bilateral disease effects. These findings refine our notion of the neuropathology of TLE and may inform future discovery and validation of complementary MRI biomarkers in TLE.


Figure 2: Schematic of the experimental setup of the dynamic real-time fMRI process. The equations were presented to the subject while the scans were acquired and exported to the Linux workstation for processing with SPRT statistics. The results were relayed back to the presentation program with instruction to either continue or terminate the stimulus.
Figure 3: Full brain activation t-score maps that are associated with the easy and hard level 1-back task for 1 EPT subject (number 20). Left in red shows SPRT results with early stopping. Right in blue shows full duration results (activations at scan 238). P ≤ 0.001 uncorrected. Shown in subject own space. R = right, L = left, A = anterior, P = posterior.
Early Stopping in Experimentation with Real-time Functional Magnetic Resonance Imaging Using the Sequential Probability Ratio

January 2021

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48 Reads

Introduction: Functional magnetic resonance imaging (fMRI) often involves long scanning durations to ensure the associated brain activity can be detected. However, excessive experimentation can lead to many undesirable effects, such as from learning and/or fatigue effects, as well as undue discomfort for the subject, which can lead to motion artifact and loss of sustained attention on task. Overly long experimentation ironically can thus have a detrimental effect on signal quality and accurate voxel activation detection. Here, we propose a method of dynamic experimentation with realtime fMRI using a novel statistically driven approach to fMRI analytics. This new approach to experimental design invokes early stopping when sufficient statistical evidence for assessing the task-related activation is observed. Methods: Voxel level sequential probability ratio test (SPRT) statistics based on general linear models (GLM) were implemented on fMRI scans of a mathematical 1back task from 25 subjects, 14 healthy controls and 11 subjects born extremely preterm. This approach is based on likelihood ratios and allows for systematic early stopping based on statistical error thresholds being satisfied. We explored voxel-level serial covariance estimation in realtime using the sandwich estimator. We adopted a two-stage estimation approach that allows for the hypothesis tests to be formulated in terms of t statistic scale, which enhances interpretability. Scan data was collected using a dynamic feedback system that allowed for adaptive experimentation. Numerical parallelization was employed to facilitate completion of computations involving a new scan within every repetition time (TR). Results: SPRT analytics demonstrate the feasibility and efficiency gains of automated early stopping, while performing comparably in activation detection with full protocols analyzed through standard fMRI software. Dynamic stopping of stimulus administration was achieved in all subjects with typical time savings between 33 to 66% (4 to 8 minutes on a 12 minute scan). Conclusion: A systematic statistical approach for early stopping with real-time fMRI experimentation has been implemented. This allows for great savings in scan times, while still eliciting comparable activation patterns as full protocols. This dynamic approach has promise for reducing subject burden and fatigue effects.


An Integrative Approach to Study Structural and Functional Network Connectivity in Epilepsy Using Imaging and Signal Data

January 2021

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102 Reads

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6 Citations

Frontiers in Integrative Neuroscience

A key area of research in epilepsy neurological disorder is the characterization of epileptic networks as they form and evolve during seizure events. In this paper, we describe the development and application of an integrative workflow to analyze functional and structural connectivity measures during seizure events using stereotactic electroencephalogram (SEEG) and diffusion weighted imaging data (DWI). We computed structural connectivity measures using electrode locations involved in recording SEEG signal data as reference points to filter fiber tracts. We used a new workflow-based tool to compute functional connectivity measures based on non-linear correlation coefficient, which allows the derivation of directed graph structures to represent coupling between signal data. We applied a hierarchical clustering based network analysis method over the functional connectivity data to characterize the organization of brain network into modules using data from 27 events across 8 seizures in a patient with refractory left insula epilepsy. The visualization of hierarchical clustering values as dendrograms shows the formation of connected clusters first within each insulae followed by merging of clusters across the two insula; however, there are clear differences between the network structures and clusters formed across the 8 seizures of the patient. The analysis of structural connectivity measures showed strong connections between contacts of certain electrodes within the same brain hemisphere with higher prevalence in the perisylvian/opercular areas. The combination of imaging and signal modalities for connectivity analysis provides information about a patient-specific dynamical functional network and examines the underlying structural connections that potentially influences the properties of the epileptic network. We also performed statistical analysis of the absolute changes in correlation values across all 8 seizures during a baseline normative time period and different seizure events, which showed decreased correlation values during seizure onset; however, the changes during ictal phases were varied.


Citations (10)


... Prior research has characterized network-related disruptions in epilepsy, collectively contributing to the growing recognition of pharmaco-resistant epilepsies as network disorders 19,20,22,24,26,48 . Indeed, alterations in intrinsic neural timescales, cortical thickness, and diffusion properties have been shown to extend bilaterally in patients with temporal lobe epilepsy and in populations suffering from other epilepsy syndromes 19,22,26 . ...

Reference:

Structural compromise in spiking cortex and connected networks
A worldwide ENIGMA study on epilepsy-related gray and white matter compromise across the adult lifespan

... Studies have shown that there is a link between FC and structural connectivity patterns, however, often studies characterize this relationship by focussing on global network patterns [39][40][41][42] . More recent studies have begun to suggest that ictal oscillations likely propagate through direct corticocortical and additional subcortical and multisynaptic white matter pathways 43,44 . ...

Structural network alterations in focal and generalized epilepsy assessed in a worldwide ENIGMA study follow axes of epilepsy risk gene expression

... This connectivity is essential for providing spatial information for episodic memory, with attenuations in this connectivity leading to amnesia (Rolls et al., 2023a(Rolls et al., , 2023b(Rolls et al., , 2023c. In patients with memoryimpairing conditions, such as medial temporal lobe epilepsy and Alzheimer's disease, cortical atrophy and tau protein deposition were also evident in the connected limbic regions other than MTL (Franzmeier et al., 2019;Tavakol et al., 2019;Tetreault et al., 2020;Park et al., 2022). Our previous studies corroborated these findings, demonstrating that the cortical atrophy distributions in patients with medial temporal lobe epilepsy correlated with the spread of abnormal discharges and that the patterns of cortical atrophy were correlating with the memory function (Li et al., 2021;Li et al., 2022;Li et al., 2023). ...

Topographic divergence of atypical cortical asymmetry and atrophy patterns in temporal lobe epilepsy

Brain

... These factors may contribute to cortical thinning 42 . Cortical thinning may also result from pathophysiological changes, including neuronal loss, synaptic pruning, reactive gliosis, and alterations in blood flow or interstitial fluid 43 . Increased white matter volume may also contribute to cortical thinning. ...

A systems‐level analysis highlights microglial activation as a modifying factor in common epilepsies

Neuropathology and Applied Neurobiology

... Studies have explored the complex relationships and communication patterns between different brain areas in various neurological disorders. For example such analysis in epilepsy helps to map the seizure network by exploring the relationships between the structural and functional networks responsible for conduction of epileptic activity [22]. Moreover, such studies have been conducted on healthy subjects to find the correlation between DTI measures and resting state functional MRI (fMRI). ...

An Integrative Approach to Study Structural and Functional Network Connectivity in Epilepsy Using Imaging and Signal Data

Frontiers in Integrative Neuroscience

... The ALE meta-analysis of coordinate locations identified the anterior, mediodorsal, and ventral posterolateral thalamus as the brain regions most consistently implicated across both structural and functional MRI studies of IGE. This finding is consistent with a previous ALE meta-analysis of structural brain abnormalities in IGE 25 , the worldwide ENIGMA study, which identified thalamic volume loss in IGE 6,17 and thalamic activation in simultaneous EEG-fMRI studies 46 . The boxplot shows the center line as the median network overlaps for each effector and inter-effector region (dots) enclosed by the 25th and 75th percentiles of the data, while the whiskers extend to the maximum and minimum (C). ...

Network-based atrophy modeling in the common epilepsies: A worldwide ENIGMA study

Science Advances

... TLE is associated with hippocampal sclerosis in 60-70% cases. [3] Changes or evolution in seizure type can sometimes occur. The most known seizure type evolution is focal onset to bilateral tonic-clonic seizure. ...

White matter abnormalities across different epilepsy syndromes in adults: An ENIGMA-Epilepsy study

Brain

... Identification of a structural lesion on MRI is associated with favorable seizure outcomes after surgery [40]; therefore, it is critical to integrate complex imaging techniques into routine clinical practice [41][42][43]. ...

The ENIGMA‐Epilepsy working group: Mapping disease from large data sets

... An objective of neuropsychological assessment is to determine differences in cognitive functioning in clinical settings. Carr et al. [92] used poset classification models of neuropsychological test data to classify samples into detailed cognitive profiles using ADNI2(Alzheimer's Disease Neuroimaging Initiative) and AIBL(Australian Imaging, Biomarker & Lifestyle ) datasets. In the risk of disease progression of Alzheimer disease for individuals with mild cognitive impairment (MCI), Tatsuoka et al. [277] suggest that poset-based modeling methods may be useful in providing more precise classification of cognitive subgroups among MCI for imaging and genetics studies, and for developing more efficient and focused cognitive test batteries. ...

Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis

... ;Jensen, Helpern, Ramani, Lu, & Kaczynski, 2005;Jin et al., 2019;Tournier, Calamante, Gadian, & Connelly, 2004;Wedeen, Hagmann, Tseng, Reese, & Weisskoff, 2005;Yang et al., 2019;Yeh, Wedeen, & Tseng, 2010) and pulse sequences, such as generalized q-sampling imaging ...

A Simplified Crossing Fiber Model in Diffusion Weighted Imaging