4.6 Review

Site effects how-to and when: An overview of retrospective techniques to accommodate site effects in multi-site neuroimaging analyses

期刊

FRONTIERS IN NEUROLOGY
卷 13, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fneur.2022.923988

关键词

MRI; multi-site study; ComBat; normative modeling; site effect; neuroimaging; deep learning; generative adversarial networks (GANs)

资金

  1. NIH [R01AG059874, R01MH11760, R01AG058854, U01AG068057, RF1AG057892, R01AG060610, R01MH116147, P41EB015922, R01MH121246, R01NS107513, R01MH123163]
  2. U.S. Alzheimer's Association [ZEN-20-644609]
  3. NIA [T32AG058507]
  4. NIH grant from the Big Data to Knowledge (BD2K) Program [U54EB020403]
  5. National Institute of Neurological Disorders and Stroke [R01 NS085211, R01 NS060910]
  6. National Multiple Sclerosis Society [RG-1707-28586]
  7. University of Pennsylvania Center for Biomedical Image Computing and Analytics (CBICA)
  8. European Research Council (ERC) [10100118]
  9. Wellcome Trust [215698/Z/19/Z]
  10. DutchOrganization for Scientific Research [016.156.415]
  11. National Institute of Mental Health of the National Institutes of Health [R01MH117601]
  12. NHMRC [1140764]
  13. Wellcome Trust [215698/Z/19/Z] Funding Source: Wellcome Trust

向作者/读者索取更多资源

In this paper, we provide an overview of different statistical and machine learning methods developed to remove unwanted site effects from independently collected neuroimaging samples. We discuss the statistical foundation, strengths, weaknesses, and conditions of use for each method, and provide information on software availability and ease of use. We also provide guidance on when to use each method based on context and research questions.
Site differences, or systematic differences in feature distributions across multiple data-acquisition sites, are a known source of heterogeneity that may adversely affect large-scale meta- and mega-analyses of independently collected neuroimaging data. They influence nearly all multi-site imaging modalities and biomarkers, and methods to compensate for them can improve reliability and generalizability in the analysis of genetics, omics, and clinical data. The origins of statistical site effects are complex and involve both technical differences (scanner vendor, head coil, acquisition parameters, imaging processing) and differences in sample characteristics (inclusion/exclusion criteria, sample size, ancestry) between sites. In an age of expanding international consortium research, there is a growing need to disentangle technical site effects from sample characteristics of interest. Numerous statistical and machine learning methods have been developed to control for, model, or attenuate site effects - yet to date, no comprehensive review has discussed the benefits and drawbacks of each for different use cases. Here, we provide an overview of the different existing statistical and machine learning methods developed to remove unwanted site effects from independently collected neuroimaging samples. We focus on linear mixed effect models, the ComBat technique and its variants, adjustments based on image quality metrics, normative modeling, and deep learning approaches such as generative adversarial networks. For each method, we outline the statistical foundation and summarize strengths and weaknesses, including their assumptions and conditions of use. We provide information on software availability and comment on the ease of use and the applicability of these methods to different types of data. We discuss validation and comparative reports, mention caveats and provide guidance on when to use each method, depending on context and specific research questions.

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