Litcius/Paper detail

<scp>ComBatLS</scp> : A Location‐ and Scale‐Preserving Method for Multi‐Site Image Harmonization

Margaret Gardner, Russell T. Shinohara, Richard A. I. Bethlehem, Rafael Romero-García, Varun Warrier, Lena Dorfschmidt, Sheila Shanmugan, Paul R. Thompson, Jakob Seidlitz, Aaron Alexander‐Bloch, Andrew A. Chen

2025Human Brain Mapping12 citationsDOIOpen Access PDF

Abstract

Recent study has leveraged massive datasets and advanced harmonization methods to construct normative models of neuroanatomical features and benchmark individuals' morphology. However, current harmonization tools do not preserve the effects of biological covariates including sex and age on features' variances; this failure may induce error in normative scores, particularly when such factors are distributed unequally across sites. Here, we introduce a new extension of the popular ComBat harmonization method, ComBatLS, that preserves biological variance in features' locations and scales. We use UK Biobank data to show that ComBatLS robustly replicates individuals' normative scores better than other ComBat methods when subjects are assigned to sex-imbalanced synthetic "sites." Additionally, we demonstrate that ComBatLS significantly reduces sex biases in normative scores compared to traditional methods. Finally, we show that ComBatLS successfully harmonizes consortium data collected across over 50 studies. R implementation of ComBatLS is available at https://github.com/andy1764/ComBatFamily.

Topics & Concepts

HarmonizationNormativeBenchmark (surveying)Construct (python library)Variance (accounting)Computer scienceCovariateBiobankScale (ratio)Artificial intelligenceData miningPsychologyMachine learningBiologyGeographyPolitical scienceCartographyBioinformaticsAccountingLawBusinessPhysicsProgramming languageAcousticsHealth, Environment, Cognitive AgingMachine Learning in HealthcareGenetic Associations and Epidemiology