Open Access Multimodal fNIRS Resting State Dataset With and Without Synthetic Hemodynamic Responses
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David A. Boas | Meryem A. Yücel | Xinge Li | Alexander von Lühmann | Natalie Gilmore | D. Boas | M. A. Yücel | Natalie Gilmore | Alexander von Lühmann | Xinge Li | M. Yücel | A. von Lühmann
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