학술논문

Sample size requirement for achieving multisite harmonization using structural brain MRI features
Document Type
article
Source
NeuroImage, Vol 264, Iss , Pp 119768- (2022)
Subject
Neuroimaging
Harmonization
Sample size
Multisite
Mahalanobis distance
Cross-validation
Neurosciences. Biological psychiatry. Neuropsychiatry
RC321-571
Language
English
ISSN
1095-9572
Abstract
When data is pooled across multiple sites, the extracted features are confounded by site effects. Harmonization methods attempt to correct these site effects while preserving the biological variability within the features. However, little is known about the sample size requirement for effectively learning the harmonization parameters and their relationship with the increasing number of sites. In this study, we performed experiments to find the minimum sample size required to achieve multisite harmonization (using neuroHarmonize) using volumetric and surface features by leveraging the concept of learning curves. Our first two experiments show that site-effects are effectively removed in a univariate and multivariate manner; however, it is essential to regress the effect of covariates from the harmonized data additionally. Our following two experiments with actual and simulated data showed that the minimum sample size required for achieving harmonization grows with the increasing average Mahalanobis distances between the sites and their reference distribution. We conclude by positing a general framework to understand the site effects using the Mahalanobis distance. Further, we provide insights on the various factors in a cross-validation design to achieve optimal inter-site harmonization.