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Alzheimers Disease Neuroimaging Initiative (1U01AG024904-01)
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2 Research products, page 1 of 1

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  • Alzheimers Disease Neuroimaging Initiative

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  • English
    Authors: 
    Kharabian Masouleh, Shahrzad; Eickhoff, Simon; Hoffstaedter, Felix; Genon, Sarah;
    Country: Belgium
    Project: EC | HBP SGA2 (785907), NIH | Alzheimers Disease Neuroi... (1U01AG024904-01), CIHR , EC | HBP SGA1 (720270)

    Linking interindividual differences in psychological phenotype to variations in brain structure is an old dream for psychology and a crucial question for cognitive neurosciences. Yet, replicability of the previously-reported “structural brain behavior” (SBB)-associations has been questioned, recently. Here, we conducted an empirical investigation, assessing replicability of SBB among heathy adults. For a wide range of psychological measures, the replicability of associations with gray matter volume was assessed. Our results revealed that among healthy individuals 1) finding an association between performance at standard psychological tests and brain morphology is relatively unlikely 2) significant associations, found using an exploratory approach, have overestimated effect sizes and 3) can hardly be replicated in an independent sample. After considering factors such as sample size and comparing our findings with more replicable SBB-associations in a clinical cohort and replicable associations between brain structure and non-psychological phenotype, we discuss the potential causes and consequences of these findings.

  • Open Access English
    Authors: 
    Bhagwat, Nikhil; Pipitone, Jon; Winterburn, Julie L.; Guo, Ting; Duerden, Emma G.; Voineskos, Aristotle N.; Lepage, Martin; Miller, Steven P.; Pruessner, Jens C.; Chakravarty, M. Mallar;
    Publisher: Frontiers Media S.A.
    Project: NIH | Alzheimers Disease Neuroi... (1U01AG024904-01), NIH | UC Davis Alzheimer's Core... (3P30AG010129-28S1), NSERC , NIH | Effects of Maintenance Tr... (5R01MH099167-04), CIHR , NIH | 1/3 - Social Processes In... (5R01MH102324-02), NIH | "MR Morphometrics and Cog... (5K01AG030514-02)

    Recent advances in multi-atlas based algorithms address many of the previous limitations in model-based and probabilistic segmentation methods. However, at the label fusion stage, a majority of algorithms focus primarily on optimizing weight-maps associated with the atlas library based on a theoretical objective function that approximates the segmentation error. In contrast, we propose a novel method—Autocorrecting Walks over Localized Markov Random Fields (AWoL-MRF)—that aims at mimicking the sequential process of manual segmentation, which is the gold-standard for virtually all the segmentation methods. AWoL-MRF begins with a set of candidate labels generated by a multi-atlas segmentation pipeline as an initial label distribution and refines low confidence regions based on a localized Markov random field (L-MRF) model using a novel sequential inference process (walks). We show that AWoL-MRF produces state-of-the-art results with superior accuracy and robustness with a small atlas library compared to existing methods. We validate the proposed approach by performing hippocampal segmentations on three independent datasets: (1) Alzheimer's Disease Neuroimaging Database (ADNI); (2) First Episode Psychosis patient cohort; and (3) A cohort of preterm neonates scanned early in life and at term-equivalent age. We assess the improvement in the performance qualitatively as well as quantitatively by comparing AWoL-MRF with majority vote, STAPLE, and Joint Label Fusion methods. AWoL-MRF reaches a maximum accuracy of 0.881 (dataset 1), 0.897 (dataset 2), and 0.807 (dataset 3) based on Dice similarity coefficient metric, offering significant performance improvements with a smaller atlas library (< 10) over compared methods. We also evaluate the diagnostic utility of AWoL-MRF by analyzing the volume differences per disease category in the ADNI1: Complete Screening dataset. We have made the source code for AWoL-MRF public at: https://github.com/CobraLab/AWoL-MRF.

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arrow_drop_down
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Alzheimers Disease Neuroimaging Initiative (1U01AG024904-01)
Include:
The following results are related to Canada. Are you interested to view more results? Visit OpenAIRE - Explore.
2 Research products, page 1 of 1
  • English
    Authors: 
    Kharabian Masouleh, Shahrzad; Eickhoff, Simon; Hoffstaedter, Felix; Genon, Sarah;
    Country: Belgium
    Project: EC | HBP SGA2 (785907), NIH | Alzheimers Disease Neuroi... (1U01AG024904-01), CIHR , EC | HBP SGA1 (720270)

    Linking interindividual differences in psychological phenotype to variations in brain structure is an old dream for psychology and a crucial question for cognitive neurosciences. Yet, replicability of the previously-reported “structural brain behavior” (SBB)-associations has been questioned, recently. Here, we conducted an empirical investigation, assessing replicability of SBB among heathy adults. For a wide range of psychological measures, the replicability of associations with gray matter volume was assessed. Our results revealed that among healthy individuals 1) finding an association between performance at standard psychological tests and brain morphology is relatively unlikely 2) significant associations, found using an exploratory approach, have overestimated effect sizes and 3) can hardly be replicated in an independent sample. After considering factors such as sample size and comparing our findings with more replicable SBB-associations in a clinical cohort and replicable associations between brain structure and non-psychological phenotype, we discuss the potential causes and consequences of these findings.

  • Open Access English
    Authors: 
    Bhagwat, Nikhil; Pipitone, Jon; Winterburn, Julie L.; Guo, Ting; Duerden, Emma G.; Voineskos, Aristotle N.; Lepage, Martin; Miller, Steven P.; Pruessner, Jens C.; Chakravarty, M. Mallar;
    Publisher: Frontiers Media S.A.
    Project: NIH | Alzheimers Disease Neuroi... (1U01AG024904-01), NIH | UC Davis Alzheimer's Core... (3P30AG010129-28S1), NSERC , NIH | Effects of Maintenance Tr... (5R01MH099167-04), CIHR , NIH | 1/3 - Social Processes In... (5R01MH102324-02), NIH | "MR Morphometrics and Cog... (5K01AG030514-02)

    Recent advances in multi-atlas based algorithms address many of the previous limitations in model-based and probabilistic segmentation methods. However, at the label fusion stage, a majority of algorithms focus primarily on optimizing weight-maps associated with the atlas library based on a theoretical objective function that approximates the segmentation error. In contrast, we propose a novel method—Autocorrecting Walks over Localized Markov Random Fields (AWoL-MRF)—that aims at mimicking the sequential process of manual segmentation, which is the gold-standard for virtually all the segmentation methods. AWoL-MRF begins with a set of candidate labels generated by a multi-atlas segmentation pipeline as an initial label distribution and refines low confidence regions based on a localized Markov random field (L-MRF) model using a novel sequential inference process (walks). We show that AWoL-MRF produces state-of-the-art results with superior accuracy and robustness with a small atlas library compared to existing methods. We validate the proposed approach by performing hippocampal segmentations on three independent datasets: (1) Alzheimer's Disease Neuroimaging Database (ADNI); (2) First Episode Psychosis patient cohort; and (3) A cohort of preterm neonates scanned early in life and at term-equivalent age. We assess the improvement in the performance qualitatively as well as quantitatively by comparing AWoL-MRF with majority vote, STAPLE, and Joint Label Fusion methods. AWoL-MRF reaches a maximum accuracy of 0.881 (dataset 1), 0.897 (dataset 2), and 0.807 (dataset 3) based on Dice similarity coefficient metric, offering significant performance improvements with a smaller atlas library (< 10) over compared methods. We also evaluate the diagnostic utility of AWoL-MRF by analyzing the volume differences per disease category in the ADNI1: Complete Screening dataset. We have made the source code for AWoL-MRF public at: https://github.com/CobraLab/AWoL-MRF.