Linear regression models and k-means clustering for statistical analysis of fNIRS data.
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Davide Contini | Alessandro Torricelli | Rebecca Re | Francesca Ieva | Lucia Zucchelli | Lorenzo Spinelli | Viola Bonomini | Anna Paganoni | A. Torricelli | L. Spinelli | D. Contini | F. Ieva | A. Paganoni | R. Re | L. Zucchelli | Viola Bonomini
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