Resting-State Brain Organization Revealed by Functional Covariance Networks

نویسندگان

  • Zhiqiang Zhang
  • Wei Liao
  • Xi-Nian Zuo
  • Zhengge Wang
  • Cuiping Yuan
  • Qing Jiao
  • Huafu Chen
  • Bharat B. Biswal
  • Guangming Lu
  • Yijun Liu
چکیده

BACKGROUND Brain network studies using techniques of intrinsic connectivity network based on fMRI time series (TS-ICN) and structural covariance network (SCN) have mapped out functional and structural organization of human brain at respective time scales. However, there lacks a meso-time-scale network to bridge the ICN and SCN and get insights of brain functional organization. METHODOLOGY AND PRINCIPAL FINDINGS We proposed a functional covariance network (FCN) method by measuring the covariance of amplitude of low-frequency fluctuations (ALFF) in BOLD signals across subjects, and compared the patterns of ALFF-FCNs with the TS-ICNs and SCNs by mapping the brain networks of default network, task-positive network and sensory networks. We demonstrated large overlap among FCNs, ICNs and SCNs and modular nature in FCNs and ICNs by using conjunctional analysis. Most interestingly, FCN analysis showed a network dichotomy consisting of anti-correlated high-level cognitive system and low-level perceptive system, which is a novel finding different from the ICN dichotomy consisting of the default-mode network and the task-positive network. CONCLUSION The current study proposed an ALFF-FCN approach to measure the interregional correlation of brain activity responding to short periods of state, and revealed novel organization patterns of resting-state brain activity from an intermediate time scale.

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عنوان ژورنال:

دوره 6  شماره 

صفحات  -

تاریخ انتشار 2011