Research has developed machine-learning models to predict cognitive and clinical outcomes from neuroimaging data, yet fairness and generalizability remain key challenges. Large scale datasets are often demographically imbalanced, leading to systematic performance disparities across ethnic groups, with models typically performing better for majority populations. Here, we examine whether supervised domain adaptation can mitigate such bias. Using the ABCD dataset, we treat White American participants as the source domain and African American participants as the target domain. We compare four domain-adaptation methods, balanced weighting, two-stage TrAdaBoost, feature augmentation with SrcOnly prediction, and linear interpolation against standard training in predicting cognition from 80 MRI measures. All methods reduced prediction error for African American participants, particularly for MRI measures with large baseline disparities (e.g., structural MRI), while offering limited gains where initial gaps were small (e.g., functional connectivity). Balanced weighting performed best, highlighting that simple, low-cost approaches can effectively reduce cross-ethnicity performance gaps for underrepresented populations.
Lal Khakpoor, F., van der Vliet, W., Deng, J., Wang, Y., Pat, N.
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