Whole-Brain Exploratory Analysis of Functional Task Response Following Erythropoietin Treatment in Mood Disorders: A Supervised Machine Learning Approach

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Whole-Brain Exploratory Analysis of Functional Task Response Following Erythropoietin Treatment in Mood Disorders : A Supervised Machine Learning Approach. / Nielsen, Søren Føns Vind; Madsen, Kristoffer H; Vinberg, Maj; Kessing, Lars Vedel; Siebner, Hartwig Roman; Miskowiak, Kamilla Woznica.

In: Frontiers in Neuroscience, Vol. 13, 1246, 2019.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Nielsen, SFV, Madsen, KH, Vinberg, M, Kessing, LV, Siebner, HR & Miskowiak, KW 2019, 'Whole-Brain Exploratory Analysis of Functional Task Response Following Erythropoietin Treatment in Mood Disorders: A Supervised Machine Learning Approach', Frontiers in Neuroscience, vol. 13, 1246. https://doi.org/10.3389/fnins.2019.01246

APA

Nielsen, S. F. V., Madsen, K. H., Vinberg, M., Kessing, L. V., Siebner, H. R., & Miskowiak, K. W. (2019). Whole-Brain Exploratory Analysis of Functional Task Response Following Erythropoietin Treatment in Mood Disorders: A Supervised Machine Learning Approach. Frontiers in Neuroscience, 13, [1246]. https://doi.org/10.3389/fnins.2019.01246

Vancouver

Nielsen SFV, Madsen KH, Vinberg M, Kessing LV, Siebner HR, Miskowiak KW. Whole-Brain Exploratory Analysis of Functional Task Response Following Erythropoietin Treatment in Mood Disorders: A Supervised Machine Learning Approach. Frontiers in Neuroscience. 2019;13. 1246. https://doi.org/10.3389/fnins.2019.01246

Author

Nielsen, Søren Føns Vind ; Madsen, Kristoffer H ; Vinberg, Maj ; Kessing, Lars Vedel ; Siebner, Hartwig Roman ; Miskowiak, Kamilla Woznica. / Whole-Brain Exploratory Analysis of Functional Task Response Following Erythropoietin Treatment in Mood Disorders : A Supervised Machine Learning Approach. In: Frontiers in Neuroscience. 2019 ; Vol. 13.

Bibtex

@article{c1813bd979fb47ee95e5ba3cb99b5cbf,
title = "Whole-Brain Exploratory Analysis of Functional Task Response Following Erythropoietin Treatment in Mood Disorders: A Supervised Machine Learning Approach",
abstract = "A core symptom of mood disorders is cognitive impairment in attention, memory and executive functions. Erythropoietin (EPO) is a candidate treatment for cognitive impairment in unipolar and bipolar disorders (UD and BD) and modulates cognition-related neural activity across a fronto-temporo-parietal network. This report investigates predicting the pharmacological treatment from functional magnetic resonance imaging (fMRI) data using a supervised machine learning approach. A total of 84 patients with UD or BD were included in a randomized double-blind parallel-group study in which they received eight weekly infusions of either EPO (40 000 IU) or saline. Task fMRI data were collected before EPO/saline infusions started (baseline) and 6 weeks after last infusion (follow-up). During the scanning sessions, participants were given an n-back working memory and a picture encoding task. Linear classification models with different regularization techniques were used to predict treatment status from both cross-sectional data (at follow-up) and longitudinal data (difference between baseline and follow-up). For the n-back and picture encoding tasks, data were available and analyzed for 52 (EPO; n = 28, Saline; n = 24) and 59 patients (EPO; n = 31, Saline; n = 28), respectively. We found limited evidence that the classifiers used could predict treatment status at a reliable level of performance (≤60% accuracy) when tested using repeated cross-validation. There was no difference in using cross-sectional versus longitudinal data. Whole-brain multivariate decoding applied to pharmaco-fMRI in small to moderate samples seems to be suboptimal for exploring data driven neuronal treatment mechanisms.",
author = "Nielsen, {S{\o}ren F{\o}ns Vind} and Madsen, {Kristoffer H} and Maj Vinberg and Kessing, {Lars Vedel} and Siebner, {Hartwig Roman} and Miskowiak, {Kamilla Woznica}",
note = "Copyright {\textcopyright} 2019 Nielsen, Madsen, Vinberg, Kessing, Siebner and Miskowiak.",
year = "2019",
doi = "10.3389/fnins.2019.01246",
language = "English",
volume = "13",
journal = "Frontiers in Neuroscience",
issn = "1662-4548",
publisher = "Frontiers Research Foundation",

}

RIS

TY - JOUR

T1 - Whole-Brain Exploratory Analysis of Functional Task Response Following Erythropoietin Treatment in Mood Disorders

T2 - A Supervised Machine Learning Approach

AU - Nielsen, Søren Føns Vind

AU - Madsen, Kristoffer H

AU - Vinberg, Maj

AU - Kessing, Lars Vedel

AU - Siebner, Hartwig Roman

AU - Miskowiak, Kamilla Woznica

N1 - Copyright © 2019 Nielsen, Madsen, Vinberg, Kessing, Siebner and Miskowiak.

PY - 2019

Y1 - 2019

N2 - A core symptom of mood disorders is cognitive impairment in attention, memory and executive functions. Erythropoietin (EPO) is a candidate treatment for cognitive impairment in unipolar and bipolar disorders (UD and BD) and modulates cognition-related neural activity across a fronto-temporo-parietal network. This report investigates predicting the pharmacological treatment from functional magnetic resonance imaging (fMRI) data using a supervised machine learning approach. A total of 84 patients with UD or BD were included in a randomized double-blind parallel-group study in which they received eight weekly infusions of either EPO (40 000 IU) or saline. Task fMRI data were collected before EPO/saline infusions started (baseline) and 6 weeks after last infusion (follow-up). During the scanning sessions, participants were given an n-back working memory and a picture encoding task. Linear classification models with different regularization techniques were used to predict treatment status from both cross-sectional data (at follow-up) and longitudinal data (difference between baseline and follow-up). For the n-back and picture encoding tasks, data were available and analyzed for 52 (EPO; n = 28, Saline; n = 24) and 59 patients (EPO; n = 31, Saline; n = 28), respectively. We found limited evidence that the classifiers used could predict treatment status at a reliable level of performance (≤60% accuracy) when tested using repeated cross-validation. There was no difference in using cross-sectional versus longitudinal data. Whole-brain multivariate decoding applied to pharmaco-fMRI in small to moderate samples seems to be suboptimal for exploring data driven neuronal treatment mechanisms.

AB - A core symptom of mood disorders is cognitive impairment in attention, memory and executive functions. Erythropoietin (EPO) is a candidate treatment for cognitive impairment in unipolar and bipolar disorders (UD and BD) and modulates cognition-related neural activity across a fronto-temporo-parietal network. This report investigates predicting the pharmacological treatment from functional magnetic resonance imaging (fMRI) data using a supervised machine learning approach. A total of 84 patients with UD or BD were included in a randomized double-blind parallel-group study in which they received eight weekly infusions of either EPO (40 000 IU) or saline. Task fMRI data were collected before EPO/saline infusions started (baseline) and 6 weeks after last infusion (follow-up). During the scanning sessions, participants were given an n-back working memory and a picture encoding task. Linear classification models with different regularization techniques were used to predict treatment status from both cross-sectional data (at follow-up) and longitudinal data (difference between baseline and follow-up). For the n-back and picture encoding tasks, data were available and analyzed for 52 (EPO; n = 28, Saline; n = 24) and 59 patients (EPO; n = 31, Saline; n = 28), respectively. We found limited evidence that the classifiers used could predict treatment status at a reliable level of performance (≤60% accuracy) when tested using repeated cross-validation. There was no difference in using cross-sectional versus longitudinal data. Whole-brain multivariate decoding applied to pharmaco-fMRI in small to moderate samples seems to be suboptimal for exploring data driven neuronal treatment mechanisms.

U2 - 10.3389/fnins.2019.01246

DO - 10.3389/fnins.2019.01246

M3 - Journal article

C2 - 31824247

VL - 13

JO - Frontiers in Neuroscience

JF - Frontiers in Neuroscience

SN - 1662-4548

M1 - 1246

ER -

ID: 240989541