A neuromarker of sustained attention from whole-brain functional connectivity (original) (raw)
References
Cattell, R.B. Intelligence: Its Structure, Growth and Action (Elsevier, 1987).
Jaeggi, S.M., Buschkuehl, M., Jonides, J. & Perrig, W.J. Improving fluid intelligence with training on working memory. Proc. Natl. Acad. Sci. USA105, 6829–6833 (2008). ArticleCAS Google Scholar
Unsworth, N., Fukuda, K., Awh, E. & Vogel, E.K. Working memory and fluid intelligence: capacity, attention control, and secondary memory retrieval. Cognit. Psychol.71, 1–26 (2014). Article Google Scholar
Kyllonen, P.C. & Christal, R.E. Reasoning ability is (little more than) working-memory capacity?!. Intelligence14, 389–433 (1990). Article Google Scholar
Engle, R.W., Kane, M.J. & Tuholski, S.W. in Models of Working Memory: Mechanisms of Active Maintenance and Executive Control (eds. Miyake, A. & Shah, P.) 102–134 (1999).
Luck, S.J. & Vogel, E.K. Visual working memory capacity: from psychophysics and neurobiology to individual differences. Trends Cogn. Sci.17, 391–400 (2013). Article Google Scholar
Chun, M.M., Golomb, J.D. & Turk-Browne, N.B. A taxonomy of external and internal attention. Annu. Rev. Psychol.62, 73–101 (2011). Article Google Scholar
Rosenberg, M.D., Finn, E.S., Todd Constable, R. & Chun, M.M. Predicting moment-to-moment attentional state. Neuroimage114, 249–256 (2015). Article Google Scholar
Warm, J.S., Parasuraman, R. & Matthews, G. Vigilance requires hard mental work and is stressful. Hum. Factors50, 433–441 (2008). Article Google Scholar
Desimone, R. & Duncan, J. Neural mechanisms of selective visual attention. Annu. Rev. Neurosci.18, 193–222 (1995). ArticleCAS Google Scholar
Kastner, S. & Ungerleider, L.G. The neural basis of biased competition in human visual cortex. Neuropsychologia39, 1263–1276 (2001). ArticleCAS Google Scholar
Corbetta, M. & Shulman, G.L. Control of goal-directed and stimulus-driven attention in the brain. Nat. Rev. Neurosci.3, 201–215 (2002). ArticleCAS Google Scholar
Posner, M.I. & Rothbart, M.K. Research on attention networks as a model for the integration of psychological science. Annu. Rev. Psychol.58, 1–23 (2007). Article Google Scholar
deBettencourt, M.T., Cohen, J.D., Lee, R.F., Norman, K.A. & Turk-Browne, N.B. Closed-loop training of attention with real-time brain imaging. Nat. Neurosci.18, 470–475 (2015). ArticleCAS Google Scholar
Rosvold, H.E., Mirsky, A.F., Sarason, I., Bransome, E.D. & Beck, L.H. A continuous performance test of brain damage. J. Consult. Psychol.20, 343–350 (1956). Article Google Scholar
Riccio, C., Reynolds, C. & Lowe, P. Clinical applications of continuous performance tests: measuring attention and impulsive responding in children and adults. Arch. Clin. Neuropsychol.20, 559–560 (2001). Google Scholar
Esterman, M., Noonan, S.K., Rosenberg, M. & Degutis, J. In the zone or zoning out? Tracking behavioral and neural fluctuations during sustained attention. Cereb. Cortex23, 2712–2723 (2013). Article Google Scholar
Rosenberg, M., Noonan, S., DeGutis, J. & Esterman, M. Sustaining visual attention in the face of distraction: a novel gradual-onset continuous performance task. Atten. Percept. Psychophys.75, 426–439 (2013). Article Google Scholar
Fortenbaugh, F.C. et al. Sustained attention across the life span in a sample of 10,000 dissociating ability and strategy. Psychol. Sci.26, 1497–1510 (2015). Article Google Scholar
Barkley, R.A. Behavioral inhibition, sustained attention, and executive functions: constructing a unifying theory of ADHD. Psychol. Bull.121, 65–94 (1997). Article Google Scholar
Shen, X., Papademetris, X. & Constable, R.T. Graph-theory based parcellation of functional subunits in the brain from resting-state fMRI data. Neuroimage50, 1027–1035 (2010). ArticleCAS Google Scholar
Shen, X., Tokoglu, F., Papademetris, X. & Constable, R.T. Groupwise whole-brain parcellation from resting-state fMRI data for network node identification. Neuroimage82, 403–415 (2013). ArticleCAS Google Scholar
Rubinov, M. & Sporns, O. Complex network measures of brain connectivity: Uses and interpretations. Neuroimage52, 1059–1069 (2010). Article Google Scholar
Steiger, J.H. Tests for comparing elements of a correlation matrix. Psychol. Bull.87, 245–251 (1980). Article Google Scholar
The ADHD-200 Consortium. The ADHD-200 Consortium: a model to advance the translational potential of neuroimaging in clinical neuroscience. Front. Syst. Neurosci.6, 62 (2012).
DuPaul, G.J., Power, T.J., Anastopoulos, A.D. & Reid, R. ADHD Rating Scale-IV: Checklists, Norms, and Clinical Interpretation (Guilford Press, New York, 1998).
Li, D., Jin, Y., Vandenberg, S.G., Zhu, Y.M. & Tang, C.H. Report on Shanghai norms for the Chinese translation of the Wechsler Intelligence Scale for Children-Revised. Psychol. Rep.67, 531–541 (1990). CASPubMed Google Scholar
Finn, E.S. et al. Functional connectome fingerprinting: identifying individuals using patterns of brain connectivity. Nat. Neurosci.18, 1664–1671 (2015). ArticleCAS Google Scholar
Stoodley, C.J. The cerebellum and cognition: evidence from functional imaging studies. Cerebellum11, 352–365 (2012). Article Google Scholar
Buckner, R.L. The cerebellum and cognitive function: 25 years of insight from anatomy and neuroimaging. Neuron80, 807–815 (2013). ArticleCAS Google Scholar
Castellanos, F.X. & Proal, E. Large-scale brain systems in ADHD: beyond the prefrontal-striatal model. Trends Cogn. Sci.16, 17–26 (2012). Article Google Scholar
Krain, A.L. & Castellanos, F.X. Brain development and ADHD. Clin. Psychol. Rev.26, 433–444 (2006). Article Google Scholar
Huang, L., Mo, L. & Li, Y. Measuring the interrelations among multiple paradigms of visual attention: an individual differences approach. J. Exp. Psychol. Hum. Percept. Perform.38, 414–428 (2012). Article Google Scholar
Baldassarre, A. et al. From the cover: individual variability in functional connectivity predicts performance of a perceptual task. Proc. Natl. Acad. Sci. USA109, 3516–3521 (2012). ArticleCAS Google Scholar
Smith, S.M. et al. Functional connectomics from resting-state fMRI. Trends Cogn. Sci.17, 666–682 (2013). Article Google Scholar
Gabrieli, J.D.E., Ghosh, S.S. & Whitfield-Gabrieli, S. Prediction as a humanitarian and pragmatic contribution from human cognitive neuroscience. Neuron85, 11–26 (2015). ArticleCAS Google Scholar
Whelan, R. et al. Neuropsychosocial profiles of current and future adolescent alcohol misusers. Nature512, 185–189 (2014). ArticleCAS Google Scholar
Langner, R. & Eickhoff, S.B. Sustaining attention to simple tasks: a meta-analytic review of the neural mechanisms of vigilant attention. Psychol. Bull.139, 870–900 (2013). Article Google Scholar
Turk-Browne, N.B. Functional interactions as big data in the human brain. Science342, 580–584 (2013). ArticleCAS Google Scholar
Cao, Q. et al. Abnormal neural activity in children with attention deficit hyperactivity disorder: a resting-state functional magnetic resonance imaging study. Neuroreport17, 1033–1036 (2006). Article Google Scholar
Tian, L. et al. Altered resting-state functional connectivity patterns of anterior cingulate cortex in adolescents with attention deficit hyperactivity disorder. Neurosci. Lett.400, 39–43 (2006). ArticleCAS Google Scholar
Uddin, L.Q. et al. Network homogeneity reveals decreased integrity of default-mode network in ADHD. J. Neurosci. Methods169, 249–254 (2008). Article Google Scholar
Wang, L. et al. Altered small-world brain functional networks in children with attention-deficit/hyperactivity disorder. Hum. Brain Mapp.30, 638–649 (2009). ArticleCAS Google Scholar
Fair, D.A. et al. Atypical default network connectivity in youth with attention-deficit/hyperactivity disorder. Biol. Psychiatry68, 1084–1091 (2010). Article Google Scholar
Qiu, M.G. et al. Changes of brain structure and function in ADHD children. Brain Topogr.24, 243–252 (2011). Article Google Scholar
Tomasi, D. & Volkow, N.D. Abnormal functional connectivity in children with attention-deficit/hyperactivity disorder. Biol. Psychiatry71, 443–450 (2012). Article Google Scholar
Cocchi, L. et al. Altered functional brain connectivity in a non-clinical sample of young adults with attention-deficit/hyperactivity disorder. J. Neurosci.32, 17753–17761 (2012). ArticleCAS Google Scholar
Joshi, A. et al. Unified framework for development, deployment and robust testing of neuroimaging algorithms. Neuroinformatics9, 69–84 (2011). Article Google Scholar
Kaufman, J. et al. Schedule for Affective Disorders and Schizophrenia for School-Age Children-Present and Lifetime Version (K-SADS-PL): initial reliability and validity data. J. Am. Acad. Child Adolesc. Psychiatry36, 980–988 (1997). ArticleCAS Google Scholar
Friedman, L. & Glover, G.H. The FBIRN Consortium Reducing interscanner variability of activation in a multicenter fMRI study: controlling for signal-to-fluctuation-noise-ratio (SFNR) differences. Neuroimage33, 471–481 (2006). Article Google Scholar
Scheinost, D., Papademetris, X. & Constable, R.T. The impact of image smoothness on intrinsic functional connectivity and head motion confounds. Neuroimage95, 13–21 (2014). Article Google Scholar