Literature DB >> 33017652

Meta-analysis of generalized additive models in neuroimaging studies.

Øystein Sørensen1, Andreas M Brandmaier2, Dídac Macià3, Klaus Ebmeier4, Paolo Ghisletta5, Rogier A Kievit6, Athanasia M Mowinckel7, Kristine B Walhovd8, Rene Westerhausen7, Anders Fjell8.   

Abstract

Analyzing data from multiple neuroimaging studies has great potential in terms of increasing statistical power, enabling detection of effects of smaller magnitude than would be possible when analyzing each study separately and also allowing to systematically investigate between-study differences. Restrictions due to privacy or proprietary data as well as more practical concerns can make it hard to share neuroimaging datasets, such that analyzing all data in a common location might be impractical or impossible. Meta-analytic methods provide a way to overcome this issue, by combining aggregated quantities like model parameters or risk ratios. Most meta-analytic tools focus on parametric statistical models, and methods for meta-analyzing semi-parametric models like generalized additive models have not been well developed. Parametric models are often not appropriate in neuroimaging, where for instance age-brain relationships may take forms that are difficult to accurately describe using such models. In this paper we introduce meta-GAM, a method for meta-analysis of generalized additive models which does not require individual participant data, and hence is suitable for increasing statistical power while upholding privacy and other regulatory concerns. We extend previous works by enabling the analysis of multiple model terms as well as multivariate smooth functions. In addition, we show how meta-analytic p-values can be computed for smooth terms. The proposed methods are shown to perform well in simulation experiments, and are demonstrated in a real data analysis on hippocampal volume and self-reported sleep quality data from the Lifebrain consortium. We argue that application of meta-GAM is especially beneficial in lifespan neuroscience and imaging genetics. The methods are implemented in an accompanying R package metagam, which is also demonstrated.
Copyright © 2020 The Author(s). Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Data protection; Distributed learning; Generalized additive mixed models; Generalized additive models; Meta-analysis; Privacy

Mesh:

Year:  2020        PMID: 33017652     DOI: 10.1016/j.neuroimage.2020.117416

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  3 in total

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Authors:  Stephan T Egger; Julio Bobes; Erich Seifritz; Stefan Vetter; Daniel Schuepbach
Journal:  Health Sci Rep       Date:  2021-10-06

2.  The dynamic changes and sex differences of 147 immune-related proteins during acute COVID-19 in 580 individuals.

Authors:  Guillaume Butler-Laporte; Edgar Gonzalez-Kozlova; Chen-Yang Su; Sirui Zhou; Tomoko Nakanishi; Elsa Brunet-Ratnasingham; David Morrison; Laetitia Laurent; Jonathan Afilalo; Marc Afilalo; Danielle Henry; Yiheng Chen; Julia Carrasco-Zanini; Yossi Farjoun; Maik Pietzner; Nofar Kimchi; Zaman Afrasiabi; Nardin Rezk; Meriem Bouab; Louis Petitjean; Charlotte Guzman; Xiaoqing Xue; Chris Tselios; Branka Vulesevic; Olumide Adeleye; Tala Abdullah; Noor Almamlouk; Yara Moussa; Chantal DeLuca; Naomi Duggan; Erwin Schurr; Nathalie Brassard; Madeleine Durand; Diane Marie Del Valle; Ryan Thompson; Mario A Cedillo; Eric Schadt; Kai Nie; Nicole W Simons; Konstantinos Mouskas; Nicolas Zaki; Manishkumar Patel; Hui Xie; Jocelyn Harris; Robert Marvin; Esther Cheng; Kevin Tuballes; Kimberly Argueta; Ieisha Scott; Celia M T Greenwood; Clare Paterson; Michael Hinterberg; Claudia Langenberg; Vincenzo Forgetta; Vincent Mooser; Thomas Marron; Noam Beckmann; Ephraim Kenigsberg; Alexander W Charney; Seunghee Kim-Schulze; Miriam Merad; Daniel E Kaufmann; Sacha Gnjatic; J Brent Richards
Journal:  Clin Proteomics       Date:  2022-09-28       Impact factor: 5.000

3.  Psychopathological Symptom Load and Distinguishable Cerebral Blood Flow Velocity Patterns in Patients With Schizophrenia and Healthy Controls: A Functional Transcranial Doppler Study.

Authors:  Stephan T Egger; Julio Bobes; Katrin Rauen; Erich Seifritz; Stefan Vetter; Daniel Schuepbach
Journal:  Front Psychiatry       Date:  2021-06-25       Impact factor: 4.157

  3 in total

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