Revisiting the importance of model fitting for model-based fMRI: It does matter in computational psychiatry.

Computational modeling has been applied for data analysis in psychology, neuroscience, and psychiatry. One of its important uses is to infer the latent variables underlying behavior by which researchers can evaluate corresponding neural, physiological, or behavioral measures. This feature is especia...

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Main Authors: Kentaro Katahira, Asako Toyama
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-02-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1008738
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spelling doaj-62032534c98d4b999f21c597b512fe522021-07-09T04:32:08ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582021-02-01172e100873810.1371/journal.pcbi.1008738Revisiting the importance of model fitting for model-based fMRI: It does matter in computational psychiatry.Kentaro KatahiraAsako ToyamaComputational modeling has been applied for data analysis in psychology, neuroscience, and psychiatry. One of its important uses is to infer the latent variables underlying behavior by which researchers can evaluate corresponding neural, physiological, or behavioral measures. This feature is especially crucial for computational psychiatry, in which altered computational processes underlying mental disorders are of interest. For instance, several studies employing model-based fMRI-a method for identifying brain regions correlated with latent variables-have shown that patients with mental disorders (e.g., depression) exhibit diminished neural responses to reward prediction errors (RPEs), which are the differences between experienced and predicted rewards. Such model-based analysis has the drawback that the parameter estimates and inference of latent variables are not necessarily correct-rather, they usually contain some errors. A previous study theoretically and empirically showed that the error in model-fitting does not necessarily cause a serious error in model-based fMRI. However, the study did not deal with certain situations relevant to psychiatry, such as group comparisons between patients and healthy controls. We developed a theoretical framework to explore such situations. We demonstrate that the parameter-misspecification can critically affect the results of group comparison. We demonstrate that even if the RPE response in patients is completely intact, a spurious difference to healthy controls is observable. Such a situation occurs when the ground-truth learning rate differs between groups but a common learning rate is used, as per previous studies. Furthermore, even if the parameters are appropriately fitted to individual participants, spurious group differences in RPE responses are observable when the model lacks a component that differs between groups. These results highlight the importance of appropriate model-fitting and the need for caution when interpreting the results of model-based fMRI.https://doi.org/10.1371/journal.pcbi.1008738
collection DOAJ
language English
format Article
sources DOAJ
author Kentaro Katahira
Asako Toyama
spellingShingle Kentaro Katahira
Asako Toyama
Revisiting the importance of model fitting for model-based fMRI: It does matter in computational psychiatry.
PLoS Computational Biology
author_facet Kentaro Katahira
Asako Toyama
author_sort Kentaro Katahira
title Revisiting the importance of model fitting for model-based fMRI: It does matter in computational psychiatry.
title_short Revisiting the importance of model fitting for model-based fMRI: It does matter in computational psychiatry.
title_full Revisiting the importance of model fitting for model-based fMRI: It does matter in computational psychiatry.
title_fullStr Revisiting the importance of model fitting for model-based fMRI: It does matter in computational psychiatry.
title_full_unstemmed Revisiting the importance of model fitting for model-based fMRI: It does matter in computational psychiatry.
title_sort revisiting the importance of model fitting for model-based fmri: it does matter in computational psychiatry.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2021-02-01
description Computational modeling has been applied for data analysis in psychology, neuroscience, and psychiatry. One of its important uses is to infer the latent variables underlying behavior by which researchers can evaluate corresponding neural, physiological, or behavioral measures. This feature is especially crucial for computational psychiatry, in which altered computational processes underlying mental disorders are of interest. For instance, several studies employing model-based fMRI-a method for identifying brain regions correlated with latent variables-have shown that patients with mental disorders (e.g., depression) exhibit diminished neural responses to reward prediction errors (RPEs), which are the differences between experienced and predicted rewards. Such model-based analysis has the drawback that the parameter estimates and inference of latent variables are not necessarily correct-rather, they usually contain some errors. A previous study theoretically and empirically showed that the error in model-fitting does not necessarily cause a serious error in model-based fMRI. However, the study did not deal with certain situations relevant to psychiatry, such as group comparisons between patients and healthy controls. We developed a theoretical framework to explore such situations. We demonstrate that the parameter-misspecification can critically affect the results of group comparison. We demonstrate that even if the RPE response in patients is completely intact, a spurious difference to healthy controls is observable. Such a situation occurs when the ground-truth learning rate differs between groups but a common learning rate is used, as per previous studies. Furthermore, even if the parameters are appropriately fitted to individual participants, spurious group differences in RPE responses are observable when the model lacks a component that differs between groups. These results highlight the importance of appropriate model-fitting and the need for caution when interpreting the results of model-based fMRI.
url https://doi.org/10.1371/journal.pcbi.1008738
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