Quantitative analysis of MRI signal abnormalities of brain white matter with high reproducibility and accuracy

To assess the reproducibility and accuracy compared to radiologists of three automated segmentation pipelines for quantitative magnetic resonance imaging (MRI) measurement of brain white matter signal abnormalities (WMSA).

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