Global signal regression strengthens association between resting-state functional connectivity and behavior
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Mert R. Sabuncu | Tian Ge | Jingwei Li | Nanbo Sun | Ru Kong | Avram J. Holmes | Csaba Orban | B.T. Thomas Yeo | Yanrui Tan | A. Holmes | T. Ge | B. Yeo | M. Sabuncu | Raphaël Liégeois | C. Orban | Jingwei Li | Ru Kong | Nanbo Sun | Yanrui Tan | Raphael Liegeois
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