28 research outputs found

    Neural correlates of training and transfer

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    Cognitive training holds promise to improve cognitive ability in many people, young, old, both healthy, and those with psychiatric or neurological illness, but this field largely lacks a mechanistic understanding of the process by which training demonstrates transfer to improve underlying cognitive abilities. In Chapter 1, we examine how mapping the neural correlates of training and transfer is critical for developing a mechanistic explanation of how training drives transfer. In the current study, we trained 45 young adults with Mind Frontiers, an adaptive cognitive training game that targets executive function, attention, and reasoning. We investigate how both brain structure and resting state networks are associated with training gain and transfer. In Chapter 2, we investigate how both pre-existing and training-induced differences in brain structure are predictive of training and transfer. In Chapter 3, we assess how both pre-existing, and training-induced differences in resting state network connectivity in the default mode, cingulo-opercular, frontal-parietal, and subcortical networks predict training gain and transfer. In Chapter 4, we examine the relationship of the structural and resting state data in predicting training and transfer. We assess the extent to which these predictors overlap and dissociate with one another over predictions of training gain and transfer. To make our predictions, we utilize a simple machine learning paradigm that we developed to maximize the reliability and interpretability of our findings. We found extensive overlap in structural predictions of training gain and transfer in low level visual and auditory areas, suggesting that greater fidelity in low level sensory systems may contribute to greater signal to noise ratios during training, enabling better training quality and transfer. Furthermore, our resting state results also highlight the importance of training quality through demonstrating the importance of the cingulo-opercular network, which is critical for both the regulation of the default mode network and deployment of sustained attention during training. These results suggest that greater training fidelity through lessened distraction may play an important role in maximizing the benefits of an intervention

    Cardiovascular Fitness and Creativity in Children

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    Creativity permeates virtually all aspects of humanity, as human-made creations and connections are all around us. Another common human phenomenon is aerobic exercise, and its corresponding, longer-term condition, cardiovascular fitness. Multiple studies support cardiovascular fitness as a positive correlate of, and aerobic exercise as an inducer of, cognitive benefits and both structural and functional brain changes, across ages and species. From an understanding of the relationships between aerobic exercise/cardiovascular fitness and certain neurocognitive changes, along with an understanding of the neural processes underlying creativity, a theoretical psychophysiological relationship between aerobic exercise/cardiovascular fitness and creativity appears. There is indirect support that neural and behavioral changes induced by exercise, or consistent with high cardiovascular fitness, may result in improved creativity. However, there is currently little research examining this relationship. Additionally, the relationship of aerobic exercise/cardiovascular fitness and creativity has seemingly been unexamined in children. In this study, cardiovascular fitness levels of eight 9-11 year olds, as determined by a maximal oxygen consumption test, were related to both the number and uniqueness of appropriate responses in creativity tasks. There were no significant correlations between cardiovascular fitness and these creativity measures. The limited sample size hindered the ability to ascertain a more complete analysis of these relationships. Future research should include a larger sample size, take into consideration factors such as motivation, sleep, and stress, and perform neuroimaging. These would allow a more comprehensive understanding of the relationship between cardiovascular fitness and creativity.Ope

    Real Time Tracking of Magmatic Intrusions by means of Ground Deformation Modeling during Volcanic Crises

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    Volcano observatories provide near real-time information and, ultimately, forecasts about volcano activity. For this reason, multiple physical and chemical parameters are continuously monitored. Here, we present a new method to efficiently estimate the location and evolution of magmatic sources based on a stream of real-time surface deformation data, such as High-Rate GPS, and a free-geometry magmatic source model. The tool allows tracking inflation and deflation sources in time, providing estimates of where a volcano might erupt, which is important in understanding an on-going crisis. We show a successful simulated application to the pre-eruptive period of May 2008, at Mount Etna (Italy). The proposed methodology is able to track the fast dynamics of the magma migration by inverting the real-time data within seconds. This general method is suitable for integration in any volcano observatory. The method provides first order unsupervised and realistic estimates of the locations of magmatic sources and of potential eruption sites, information that is especially important for civil protection purposes

    CRISIS AFAR: an international collaborative study of the impact of the COVID-19 pandemic on mental health and service access in youth with autism and neurodevelopmental conditions

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    BackgroundHeterogeneous mental health outcomes during the COVID-19 pandemic are documented in the general population. Such heterogeneity has not been systematically assessed in youth with autism spectrum disorder (ASD) and related neurodevelopmental disorders (NDD). To identify distinct patterns of the pandemic impact and their predictors in ASD/NDD youth, we focused on pandemic-related changes in symptoms and access to services.MethodsUsing a naturalistic observational design, we assessed parent responses on the Coronavirus Health and Impact Survey Initiative (CRISIS) Adapted For Autism and Related neurodevelopmental conditions (AFAR). Cross-sectional AFAR data were aggregated across 14 European and North American sites yielding a clinically well-characterized sample of N = 1275 individuals with ASD/NDD (age = 11.0 ± 3.6 years; n females = 277). To identify subgroups with differential outcomes, we applied hierarchical clustering across eleven variables measuring changes in symptoms and access to services. Then, random forest classification assessed the importance of socio-demographics, pre-pandemic service rates, clinical severity of ASD-associated symptoms, and COVID-19 pandemic experiences/environments in predicting the outcome subgroups.ResultsClustering revealed four subgroups. One subgroup-broad symptom worsening only (20%)-included youth with worsening across a range of symptoms but with service disruptions similar to the average of the aggregate sample. The other three subgroups were, relatively, clinically stable but differed in service access: primarily modified services (23%), primarily lost services (6%), and average services/symptom changes (53%). Distinct combinations of a set of pre-pandemic services, pandemic environment (e.g., COVID-19 new cases, restrictions), experiences (e.g., COVID-19 Worries), and age predicted each outcome subgroup.LimitationsNotable limitations of the study are its cross-sectional nature and focus on the first six months of the pandemic.ConclusionsConcomitantly assessing variation in changes of symptoms and service access during the first phase of the pandemic revealed differential outcome profiles in ASD/NDD youth. Subgroups were characterized by distinct prediction patterns across a set of pre- and pandemic-related experiences/contexts. Results may inform recovery efforts and preparedness in future crises; they also underscore the critical value of international data-sharing and collaborations to address the needs of those most vulnerable in times of crisis

    The past, present, and future of the Brain Imaging Data Structure (BIDS)

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    The Brain Imaging Data Structure (BIDS) is a community-driven standard for the organization of data and metadata from a growing range of neuroscience modalities. This paper is meant as a history of how the standard has developed and grown over time. We outline the principles behind the project, the mechanisms by which it has been extended, and some of the challenges being addressed as it evolves. We also discuss the lessons learned through the project, with the aim of enabling researchers in other domains to learn from the success of BIDS

    Toward a connectivity gradient-based framework for reproducible biomarker discovery

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    © 2020 The Authors. Published by Elsevier Inc. Despite myriad demonstrations of feasibility, the high dimensionally of fMRI data remains a critical barrier to its utility for reproducible biomarker discovery. Recent efforts to address this challenge have capitalized on dimensionality reduction techniques applied to resting-state fMRI, identifying principal components of intrinsic connectivity which describe smooth transitions across different cortical systems, so called "connectivity gradients". These gradients recapitulate neurocognitively meaningful organizational principles that are present in both human and primate brains, and also appear to differ among individuals and clinical populations. Here, we provide a critical assessment of the suitability of connectivity gradients for biomarker discovery. Using the Human Connectome Project (discovery subsample=209; two replication subsamples= 209 x 2) and the Midnight scan club (n = 9), we tested the following key biomarker traits - reliability, reproducibility and predictive validly - of functional gradients. In doing so, we systematically assessed the effects of three analytical settings, including i) dimensionally reduction algorithms (i.e., linear vs. non-linear methods), ii) input data types (i.e., raw time series, [un-] thresholded functional connectivity), and iii) amount of the data (resting-state fMRI time-series lengths). We found that the reproducibility of functional gradients across algorithms and subsamples is generally higher for those explaining more variances of whole-brain connectivity data, as well as those having higher reliability. Notably, among different analytical settings, a linear dimensionally reduction (principal component analysis in our study), more conservatively thresholded functional connectivity (e.g., 95-97%) and longer time-series data (at least >= 20mins) was found to be preferential conditions to obtain higher reliability. Those gradients with higher reliability were able to predict unseen phenotypic scores with a higher accuracy, highlighting reliability as a critical prerequisite for validity. Importantly, prediction accuracy with connectivity gradients exceeded that observed with more traditional edge-based connectivity measures, suggesting the added value of a low-dimensional and multivariate gradient approach. Finally, the present work highlights the importance and benefits of systematically exploring the parameter space for new imaging methods before widespread deployment11sciescopu
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