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Dissecting psychiatric spectrum disorders by generative embedding()()

This proof-of-concept study examines the feasibility of defining subgroups in psychiatric spectrum disorders by generative embedding, using dynamical system models which infer neuronal circuit mechanisms from neuroimaging data. To this end, we re-analysed an fMRI dataset of 41 patients diagnosed wit...

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Autores principales: Brodersen, Kay H., Deserno, Lorenz, Schlagenhauf, Florian, Lin, Zhihao, Penny, Will D., Buhmann, Joachim M., Stephan, Klaas E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3863808/
https://www.ncbi.nlm.nih.gov/pubmed/24363992
http://dx.doi.org/10.1016/j.nicl.2013.11.002
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author Brodersen, Kay H.
Deserno, Lorenz
Schlagenhauf, Florian
Lin, Zhihao
Penny, Will D.
Buhmann, Joachim M.
Stephan, Klaas E.
author_facet Brodersen, Kay H.
Deserno, Lorenz
Schlagenhauf, Florian
Lin, Zhihao
Penny, Will D.
Buhmann, Joachim M.
Stephan, Klaas E.
author_sort Brodersen, Kay H.
collection PubMed
description This proof-of-concept study examines the feasibility of defining subgroups in psychiatric spectrum disorders by generative embedding, using dynamical system models which infer neuronal circuit mechanisms from neuroimaging data. To this end, we re-analysed an fMRI dataset of 41 patients diagnosed with schizophrenia and 42 healthy controls performing a numerical n-back working-memory task. In our generative-embedding approach, we used parameter estimates from a dynamic causal model (DCM) of a visual–parietal–prefrontal network to define a model-based feature space for the subsequent application of supervised and unsupervised learning techniques. First, using a linear support vector machine for classification, we were able to predict individual diagnostic labels significantly more accurately (78%) from DCM-based effective connectivity estimates than from functional connectivity between (62%) or local activity within the same regions (55%). Second, an unsupervised approach based on variational Bayesian Gaussian mixture modelling provided evidence for two clusters which mapped onto patients and controls with nearly the same accuracy (71%) as the supervised approach. Finally, when restricting the analysis only to the patients, Gaussian mixture modelling suggested the existence of three patient subgroups, each of which was characterised by a different architecture of the visual–parietal–prefrontal working-memory network. Critically, even though this analysis did not have access to information about the patients' clinical symptoms, the three neurophysiologically defined subgroups mapped onto three clinically distinct subgroups, distinguished by significant differences in negative symptom severity, as assessed on the Positive and Negative Syndrome Scale (PANSS). In summary, this study provides a concrete example of how psychiatric spectrum diseases may be split into subgroups that are defined in terms of neurophysiological mechanisms specified by a generative model of network dynamics such as DCM. The results corroborate our previous findings in stroke patients that generative embedding, compared to analyses of more conventional measures such as functional connectivity or regional activity, can significantly enhance both the interpretability and performance of computational approaches to clinical classification.
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spelling pubmed-38638082013-12-20 Dissecting psychiatric spectrum disorders by generative embedding()() Brodersen, Kay H. Deserno, Lorenz Schlagenhauf, Florian Lin, Zhihao Penny, Will D. Buhmann, Joachim M. Stephan, Klaas E. Neuroimage Clin Article This proof-of-concept study examines the feasibility of defining subgroups in psychiatric spectrum disorders by generative embedding, using dynamical system models which infer neuronal circuit mechanisms from neuroimaging data. To this end, we re-analysed an fMRI dataset of 41 patients diagnosed with schizophrenia and 42 healthy controls performing a numerical n-back working-memory task. In our generative-embedding approach, we used parameter estimates from a dynamic causal model (DCM) of a visual–parietal–prefrontal network to define a model-based feature space for the subsequent application of supervised and unsupervised learning techniques. First, using a linear support vector machine for classification, we were able to predict individual diagnostic labels significantly more accurately (78%) from DCM-based effective connectivity estimates than from functional connectivity between (62%) or local activity within the same regions (55%). Second, an unsupervised approach based on variational Bayesian Gaussian mixture modelling provided evidence for two clusters which mapped onto patients and controls with nearly the same accuracy (71%) as the supervised approach. Finally, when restricting the analysis only to the patients, Gaussian mixture modelling suggested the existence of three patient subgroups, each of which was characterised by a different architecture of the visual–parietal–prefrontal working-memory network. Critically, even though this analysis did not have access to information about the patients' clinical symptoms, the three neurophysiologically defined subgroups mapped onto three clinically distinct subgroups, distinguished by significant differences in negative symptom severity, as assessed on the Positive and Negative Syndrome Scale (PANSS). In summary, this study provides a concrete example of how psychiatric spectrum diseases may be split into subgroups that are defined in terms of neurophysiological mechanisms specified by a generative model of network dynamics such as DCM. The results corroborate our previous findings in stroke patients that generative embedding, compared to analyses of more conventional measures such as functional connectivity or regional activity, can significantly enhance both the interpretability and performance of computational approaches to clinical classification. Elsevier 2013-11-16 /pmc/articles/PMC3863808/ /pubmed/24363992 http://dx.doi.org/10.1016/j.nicl.2013.11.002 Text en © 2013 The Authors http://creativecommons.org/licenses/by/3.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution and reproduction in any medium, provided the original author and source are credited.
spellingShingle Article
Brodersen, Kay H.
Deserno, Lorenz
Schlagenhauf, Florian
Lin, Zhihao
Penny, Will D.
Buhmann, Joachim M.
Stephan, Klaas E.
Dissecting psychiatric spectrum disorders by generative embedding()()
title Dissecting psychiatric spectrum disorders by generative embedding()()
title_full Dissecting psychiatric spectrum disorders by generative embedding()()
title_fullStr Dissecting psychiatric spectrum disorders by generative embedding()()
title_full_unstemmed Dissecting psychiatric spectrum disorders by generative embedding()()
title_short Dissecting psychiatric spectrum disorders by generative embedding()()
title_sort dissecting psychiatric spectrum disorders by generative embedding()()
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3863808/
https://www.ncbi.nlm.nih.gov/pubmed/24363992
http://dx.doi.org/10.1016/j.nicl.2013.11.002
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