Integrating large-scale neuroimaging research datasets: Harmonisation of white matter hyperintensity measurements across Whitehall and UK Biobank datasets
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Klaus P. Ebmeier | M. Jenkinson | N. Filippini | E. Duff | S. Suri | M. Kivimäki | C. Mackay | G. Baselli | E. Zsoldos | L. Griffanti | A. Singh‐Manoux | A. Mahmood | Paul McCarthy | G. Zamboni | M. M. Laganá | L. Melazzini | V. Sundaresan | V. Bordin | Ilaria Bertani | Irene Mattioli
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