Current Status and Issues Regarding Pre-processing of fNIRS Neuroimaging Data: An Investigation of Diverse Signal Filtering Methods Within a General Linear Model Framework
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Ilias Tachtsidis | Felix Scholkmann | Paola Pinti | Antonia Hamilton | Paul Burgess | F. Scholkmann | P. Burgess | I. Tachtsidis | P. Pinti | Antonia Hamilton
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