A guide for researchers seeking training in retrospective data harmonization for population neuroscience studies of Alzheimer's disease and related dementias

  • Shaaban C
  • Tudorascu D
  • Glymour M
  • et al.
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Abstract

Due to needs surrounding rigor and reproducibility, subgroup specific disease knowledge, and questions of external validity, data harmonization is an essential tool in population neuroscience of Alzheimer's disease and related dementias (ADRD). Systematic harmonization of data elements is necessary to pool information from heterogeneous samples, and such pooling allows more expansive evaluations of health disparities, more precise effect estimates, and more opportunities to discover effective prevention or treatment strategies. The key goal of this Tutorial in Population Neuroimaging Curriculum, Instruction, and Pedagogy article is to guide researchers in creating a customized population neuroscience of ADRD harmonization training plan to fit their needs or those of their mentees. We provide brief guidance for retrospective data harmonization of multiple data types in this area, including: (1) clinical and demographic, (2) neuropsychological, and (3) neuroimaging data. Core competencies and skills are reviewed, and resources are provided to fill gaps in training as well as data needs. We close with an example study in which harmonization is a critical tool. While several aspects of this tutorial focus specifically on ADRD, the concepts and resources are likely to benefit population neuroscientists working in a range of research areas.

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APA

Shaaban, C. E., Tudorascu, D. L., Glymour, M. M., Cohen, A. D., Thurston, R. C., Snyder, H. M., … Snitz, B. E. (2022). A guide for researchers seeking training in retrospective data harmonization for population neuroscience studies of Alzheimer’s disease and related dementias. Frontiers in Neuroimaging, 1. https://doi.org/10.3389/fnimg.2022.978350

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