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The attenuation of very low frequency brain oscillations in transitions from a rest state to active attention

(2009) JOURNAL OF PSYCHOPHYSIOLOGY. 23(4). p.191-198
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Abstract
Background: The default mode interference hypothesis (Sonuga-Barke & Castellanos, 2007) predicts (1) the attenuation of very low frequency oscillations (VLFO; e.g.,.05 Hz) in brain activity within the default mode network during the transition from rest to task, and (2) that failures to attenuate in this way will lead to an increased likelihood of periodic attention lapses that are synchronized to the VLFO pattern. Here, we tested these predictions using DC-EEG recordings within and outside of a previously identified network of electrode locations hypothesized to reflect DMN activity (i.e., S3 network; Helps et al., 2008). Method: 24 young adults (mean age 22.3 years; 8 male), sampled to include a wide range of ADHD symptoms, took part in a study of rest to task transitions. Two conditions were compared: 5min of rest (eyes open) and a 10-min simple 2-choice RT task with a relatively high sampling rate (ISI 1 s). DC-EEG was recorded during both conditions, and the low-frequency spectrum was decomposed and measures of the power within specific bands extracted. Results: Shift from rest to task led to an attenuation of VLFO activity within the S3 network which was inversely associated with ADHD symptoms. RT during task also showed a VLFO signature. During task there was a small but significant degree of synchronization between EEG and RT in the VLFO band. Attenuators showed a lower degree of synchrony than nonattenuators. Discussion: The results provide some initial EEG-based support for the default mode interference hypothesis and suggest that failure to attenuate VLFO in the S3 network is associated with higher synchrony between low-frequency brain activity and RT fluctuations during a simple RT task. Although significant, the effects were small and future research should employ tasks with a higher sampling rate to increase the possibility of extracting robust and stable signals.
Keywords
DEFICIT HYPERACTIVITY DISORDER, INTRA-SUBJECT VARIABILITY, CORTEX, HYPOTHESIS, NETWORKS, FUNCTIONAL CONNECTIVITY, INTRAINDIVIDUAL VARIABILITY, DEFICIT/HYPERACTIVITY DISORDER, DEFAULT-MODE, BOLD SIGNAL FLUCTUATIONS

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Chicago
Helps, Suzannah K, Samantha J Broyd, Christopher J James, Anke Karl, and Edmund Barke. 2009. “The Attenuation of Very Low Frequency Brain Oscillations in Transitions from a Rest State to Active Attention.” Journal of Psychophysiology 23 (4): 191–198.
APA
Helps, S. K., Broyd, S. J., James, C. J., Karl, A., & Barke, E. (2009). The attenuation of very low frequency brain oscillations in transitions from a rest state to active attention. JOURNAL OF PSYCHOPHYSIOLOGY, 23(4), 191–198.
Vancouver
1.
Helps SK, Broyd SJ, James CJ, Karl A, Barke E. The attenuation of very low frequency brain oscillations in transitions from a rest state to active attention. JOURNAL OF PSYCHOPHYSIOLOGY. 2009;23(4):191–8.
MLA
Helps, Suzannah K, Samantha J Broyd, Christopher J James, et al. “The Attenuation of Very Low Frequency Brain Oscillations in Transitions from a Rest State to Active Attention.” JOURNAL OF PSYCHOPHYSIOLOGY 23.4 (2009): 191–198. Print.
@article{1106431,
  abstract     = {Background: The default mode interference hypothesis (Sonuga-Barke & Castellanos, 2007) predicts (1) the attenuation of very low frequency oscillations (VLFO; e.g.,.05 Hz) in brain activity within the default mode network during the transition from rest to task, and (2) that failures to attenuate in this way will lead to an increased likelihood of periodic attention lapses that are synchronized to the VLFO pattern. Here, we tested these predictions using DC-EEG recordings within and outside of a previously identified network of electrode locations hypothesized to reflect DMN activity (i.e., S3 network; Helps et al., 2008). Method: 24 young adults (mean age 22.3 years; 8 male), sampled to include a wide range of ADHD symptoms, took part in a study of rest to task transitions. Two conditions were compared: 5min of rest (eyes open) and a 10-min simple 2-choice RT task with a relatively high sampling rate (ISI 1 s). DC-EEG was recorded during both conditions, and the low-frequency spectrum was decomposed and measures of the power within specific bands extracted. Results: Shift from rest to task led to an attenuation of VLFO activity within the S3 network which was inversely associated with ADHD symptoms. RT during task also showed a VLFO signature. During task there was a small but significant degree of synchronization between EEG and RT in the VLFO band. Attenuators showed a lower degree of synchrony than nonattenuators. Discussion: The results provide some initial EEG-based support for the default mode interference hypothesis and suggest that failure to attenuate VLFO in the S3 network is associated with higher synchrony between low-frequency brain activity and RT fluctuations during a simple RT task. Although significant, the effects were small and future research should employ tasks with a higher sampling rate to increase the possibility of extracting robust and stable signals.},
  author       = {Helps, Suzannah K and Broyd, Samantha J and James, Christopher J and Karl, Anke and Barke, Edmund},
  issn         = {0269-8803},
  journal      = {JOURNAL OF PSYCHOPHYSIOLOGY},
  keywords     = {DEFICIT HYPERACTIVITY DISORDER,INTRA-SUBJECT VARIABILITY,CORTEX,HYPOTHESIS,NETWORKS,FUNCTIONAL CONNECTIVITY,INTRAINDIVIDUAL VARIABILITY,DEFICIT/HYPERACTIVITY DISORDER,DEFAULT-MODE,BOLD SIGNAL FLUCTUATIONS},
  language     = {eng},
  number       = {4},
  pages        = {191--198},
  title        = {The attenuation of very low frequency brain oscillations in transitions from a rest state to active attention},
  url          = {http://dx.doi.org/10.1027/0269-8803.23.4.191},
  volume       = {23},
  year         = {2009},
}

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