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Trevino G, Lee JJ, Shimony JS, Luckett PH, Leuthardt EC. Complexity organization of resting-state functional-MRI networks. Hum Brain Mapp. 2024;45(12):e26809. \par \par Luckett PH, Olufawo MO, Park KYun, Lamichhane B, Dierker D, Verastegui GTrevino, et al.. Predicting post-surgical functional status in high-grade glioma with resting state fMRI and machine learning. J Neurooncol. 2024;169(1):175-185. \par \par Luckett PH, Park KYun, Lee JJ, Lenze EJ, Wetherell JLoebach, Eyler LT, et al.. Data-efficient resting-state functional magnetic resonance imaging brain mapping with deep learning. J Neurosurg. 2023;:1-12. \par \par Luckett PH, Lee JJ, Park KYun, Raut RV, Meeker KL, Gordon EM, et al.. Resting state network mapping in individuals using deep learning. Front Neurol. 2023;13:1055437. \par \par }