Optimizing Data for Modeling Neuronal Responses
In this technical note, we address an unresolved challenge in neuroimaging statistics: how to determine which of several datasets is the best for inferring neuronal responses. Comparisons of this kind are important for experimenters when choosing an imaging protocol—and for developers of new acquisi...
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doaj-6a8163f9227446a1b4e54727abdeb2da2020-11-25T00:56:44ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2019-01-011210.3389/fnins.2018.00986411195Optimizing Data for Modeling Neuronal ResponsesPeter Zeidman0Samira M. Kazan1Nick Todd2Nikolaus Weiskopf3Nikolaus Weiskopf4Karl J. Friston5Martina F. Callaghan6Wellcome Centre for Human Neuroimaging, UCL Institute of Neurology, University College London, London, United KingdomWellcome Centre for Human Neuroimaging, UCL Institute of Neurology, University College London, London, United KingdomDepartment of Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, United StatesWellcome Centre for Human Neuroimaging, UCL Institute of Neurology, University College London, London, United KingdomDepartment of Neurophysics, Max Planck Institute for Human Cognition and Brain Sciences, Leipzig, GermanyWellcome Centre for Human Neuroimaging, UCL Institute of Neurology, University College London, London, United KingdomWellcome Centre for Human Neuroimaging, UCL Institute of Neurology, University College London, London, United KingdomIn this technical note, we address an unresolved challenge in neuroimaging statistics: how to determine which of several datasets is the best for inferring neuronal responses. Comparisons of this kind are important for experimenters when choosing an imaging protocol—and for developers of new acquisition methods. However, the hypothesis that one dataset is better than another cannot be tested using conventional statistics (based on likelihood ratios), as these require the data to be the same under each hypothesis. Here we present Bayesian data comparison (BDC), a principled framework for evaluating the quality of functional imaging data, in terms of the precision with which neuronal connectivity parameters can be estimated and competing models can be disambiguated. For each of several candidate datasets, neuronal responses are modeled using Bayesian (probabilistic) forward models, such as General Linear Models (GLMs) or Dynamic Casual Models (DCMs). Next, the parameters from subject-specific models are summarized at the group level using a Bayesian GLM. A series of measures, which we introduce here, are then used to evaluate each dataset in terms of the precision of (group-level) parameter estimates and the ability of the data to distinguish similar models. To exemplify the approach, we compared four datasets that were acquired in a study evaluating multiband fMRI acquisition schemes, and we used simulations to establish the face validity of the comparison measures. To enable people to reproduce these analyses using their own data and experimental paradigms, we provide general-purpose Matlab code via the SPM software.https://www.frontiersin.org/article/10.3389/fnins.2018.00986/fulldynamic causal modelingDCMfMRIPEBmultiband |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Peter Zeidman Samira M. Kazan Nick Todd Nikolaus Weiskopf Nikolaus Weiskopf Karl J. Friston Martina F. Callaghan |
spellingShingle |
Peter Zeidman Samira M. Kazan Nick Todd Nikolaus Weiskopf Nikolaus Weiskopf Karl J. Friston Martina F. Callaghan Optimizing Data for Modeling Neuronal Responses Frontiers in Neuroscience dynamic causal modeling DCM fMRI PEB multiband |
author_facet |
Peter Zeidman Samira M. Kazan Nick Todd Nikolaus Weiskopf Nikolaus Weiskopf Karl J. Friston Martina F. Callaghan |
author_sort |
Peter Zeidman |
title |
Optimizing Data for Modeling Neuronal Responses |
title_short |
Optimizing Data for Modeling Neuronal Responses |
title_full |
Optimizing Data for Modeling Neuronal Responses |
title_fullStr |
Optimizing Data for Modeling Neuronal Responses |
title_full_unstemmed |
Optimizing Data for Modeling Neuronal Responses |
title_sort |
optimizing data for modeling neuronal responses |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Neuroscience |
issn |
1662-453X |
publishDate |
2019-01-01 |
description |
In this technical note, we address an unresolved challenge in neuroimaging statistics: how to determine which of several datasets is the best for inferring neuronal responses. Comparisons of this kind are important for experimenters when choosing an imaging protocol—and for developers of new acquisition methods. However, the hypothesis that one dataset is better than another cannot be tested using conventional statistics (based on likelihood ratios), as these require the data to be the same under each hypothesis. Here we present Bayesian data comparison (BDC), a principled framework for evaluating the quality of functional imaging data, in terms of the precision with which neuronal connectivity parameters can be estimated and competing models can be disambiguated. For each of several candidate datasets, neuronal responses are modeled using Bayesian (probabilistic) forward models, such as General Linear Models (GLMs) or Dynamic Casual Models (DCMs). Next, the parameters from subject-specific models are summarized at the group level using a Bayesian GLM. A series of measures, which we introduce here, are then used to evaluate each dataset in terms of the precision of (group-level) parameter estimates and the ability of the data to distinguish similar models. To exemplify the approach, we compared four datasets that were acquired in a study evaluating multiband fMRI acquisition schemes, and we used simulations to establish the face validity of the comparison measures. To enable people to reproduce these analyses using their own data and experimental paradigms, we provide general-purpose Matlab code via the SPM software. |
topic |
dynamic causal modeling DCM fMRI PEB multiband |
url |
https://www.frontiersin.org/article/10.3389/fnins.2018.00986/full |
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