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  1.  23
    Interpretation of Social Interactions: Functional Imaging of Cognitive-Semiotic Categories During Naturalistic Viewing.Dhana Wolf, Irene Mittelberg, Linn-Marlen Rekittke, Saurabh Bhavsar, Mikhail Zvyagintsev, Annina Haeck, Fengyu Cong, Martin Klasen & Klaus Mathiak - 2018 - Frontiers in Human Neuroscience 12.
  2.  13
    Aberrant brain functional networks in type 2 diabetes mellitus: A graph theoretical and support-vector machine approach.Lin Lin, Jindi Zhang, Yutong Liu, Xinyu Hao, Jing Shen, Yang Yu, Huashuai Xu, Fengyu Cong, Huanjie Li & Jianlin Wu - 2022 - Frontiers in Human Neuroscience 16:974094.
    ObjectiveType 2 diabetes mellitus (T2DM) is a high risk of cognitive decline and dementia, but the underlying mechanisms are not yet clearly understood. This study aimed to explore the functional connectivity (FC) and topological properties among whole brain networks and correlations with impaired cognition and distinguish T2DM from healthy controls (HC) to identify potential biomarkers for cognition abnormalities.MethodsA total of 80 T2DM and 55 well-matched HC were recruited in this study. Subjects’ clinical data, neuropsychological tests and resting-state functional magnetic resonance (...)
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  3.  13
    Dissociable Effects of Reward on P300 and EEG Spectra Under Conditions of High vs. Low Vigilance During a Selective Visual Attention Task.Jia Liu, Chi Zhang, Yongjie Zhu, Yunmeng Liu, Hongjin Sun, Tapani Ristaniemi, Fengyu Cong & Tiina Parviainen - 2020 - Frontiers in Human Neuroscience 14.
  4.  12
    Shared and Unshared Feature Extraction in Major Depression During Music Listening Using Constrained Tensor Factorization.Xiulin Wang, Wenya Liu, Xiaoyu Wang, Zhen Mu, Jing Xu, Yi Chang, Qing Zhang, Jianlin Wu & Fengyu Cong - 2021 - Frontiers in Human Neuroscience 15.
    Ongoing electroencephalography signals are recorded as a mixture of stimulus-elicited EEG, spontaneous EEG and noises, which poses a huge challenge to current data analyzing techniques, especially when different groups of participants are expected to have common or highly correlated brain activities and some individual dynamics. In this study, we proposed a data-driven shared and unshared feature extraction framework based on nonnegative and coupled tensor factorization, which aims to conduct group-level analysis for the EEG signals from major depression disorder patients and (...)
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