Multivariate decoding of cerebral blood flow measures in a clinical model of on‐going postsurgical pain
暂无分享,去创建一个
Steven C. R. Williams | A. Marquand | M. Howard | W. Vennart | J. O’Muircheartaigh | T. Renton | D. Hodkinson | J. P. Huggins | K. Krause | N. Khawaja
[1] Ben Seymour,et al. Decoding the matrix: Benefits and limitations of applying machine learning algorithms to pain neuroimaging , 2014, PAIN®.
[2] Kevin A. Johnson,et al. Multivariate classification of structural MRI data detects chronic low back pain. , 2014, Cerebral cortex.
[3] C. Peck,et al. Differential brain activity in subjects with painful trigeminal neuropathy and painful temporomandibular disorder , 2014, PAIN®.
[4] John Ashburner,et al. Multivariate decoding of brain images using ordinal regression☆ , 2013, NeuroImage.
[5] Steven C.R. Williams,et al. Quantifying the test–retest reliability of cerebral blood flow measurements in a clinical model of on-going post-surgical pain: A study using pseudo-continuous arterial spin labelling☆ , 2013, NeuroImage: Clinical.
[6] Jonathan D. Cohen,et al. Confounds in multivariate pattern analysis: Theory and rule representation case study , 2013, NeuroImage.
[7] A. Vania Apkarian,et al. A brain signature for acute pain , 2013, Trends in Cognitive Sciences.
[8] M. Lindquist,et al. An fMRI-based neurologic signature of physical pain. , 2013, The New England journal of medicine.
[9] D. Price,et al. Pain measurement and brain activity: will neuroimages replace pain ratings? , 2013, The journal of pain : official journal of the American Pain Society.
[10] Jue Zhang,et al. Quantitative cerebral blood flow mapping and functional connectivity of postherpetic neuralgia pain: A perfusion fMRI study , 2013, PAIN®.
[11] Ajay D. Wasan,et al. Default mode network connectivity encodes clinical pain: An arterial spin labeling study , 2013, PAIN®.
[12] Steven C. R. Williams,et al. Alterations in resting-state regional cerebral blood flow demonstrate ongoing pain in osteoarthritis: An arterial spin-labeled magnetic resonance imaging study. , 2012, Arthritis and rheumatism.
[13] C. Liossi,et al. Remember, remember.... a child’s pain experience , 2012, Pain.
[14] David C. Alsop,et al. Dissociable effects of methylphenidate, atomoxetine and placebo on regional cerebral blood flow in healthy volunteers at rest: A multi-class pattern recognition approach , 2012, NeuroImage.
[15] A. Mechelli,et al. Using Support Vector Machine to identify imaging biomarkers of neurological and psychiatric disease: A critical review , 2012, Neuroscience & Biobehavioral Reviews.
[16] Thomas J. Schnitzer,et al. Brain Morphological Signatures for Chronic Pain , 2011, PloS one.
[17] V. Napadow,et al. Neural Correlates of Chronic Low Back Pain Measured by Arterial Spin Labeling , 2011, Anesthesiology.
[18] Philip K. McGuire,et al. Prognostic prediction of therapeutic response in depression using high-field MR imaging , 2011, NeuroImage.
[19] L. Becerra,et al. Biomarkers for chronic pain and analgesia. Part 2: how, where, and what to look for using functional imaging. , 2011, Discovery medicine.
[20] William Vennart,et al. Beyond Patient Reported Pain: Perfusion Magnetic Resonance Imaging Demonstrates Reproducible Cerebral Representation of Ongoing Post-Surgical Pain , 2011, PloS one.
[21] A. Mouraux,et al. The pain matrix reloaded A salience detection system for the body , 2011, Progress in Neurobiology.
[22] C. Woolf,et al. Overcoming obstacles to developing new analgesics , 2010, Nature Medicine.
[23] Kyungmo Park,et al. Intrinsic brain connectivity in fibromyalgia is associated with chronic pain intensity. , 2010, Arthritis and rheumatism.
[24] I. Tracey,et al. The pain matrix: Reloaded or reborn as we image tonic pain using arterial spin labelling , 2010, PAIN®.
[25] Janaina Mourão Miranda,et al. Quantitative prediction of subjective pain intensity from whole-brain fMRI data using Gaussian processes , 2010, NeuroImage.
[26] K. Schepelmann,et al. Menstrual Variation in Experimental Pain: Correlation with Gonadal Hormones , 2010, Neuropsychobiology.
[27] Carl E. Rasmussen,et al. Gaussian processes for machine learning , 2005, Adaptive computation and machine learning.
[28] D. Alsop,et al. Continuous flow‐driven inversion for arterial spin labeling using pulsed radio frequency and gradient fields , 2008, Magnetic resonance in medicine.
[29] Adrian M Owen,et al. Using neuroimaging to detect awareness in disorders of consciousness. , 2008, Functional neurology.
[30] C. Rasmussen,et al. Approximations for Binary Gaussian Process Classification , 2008 .
[31] A. May. Chronic pain may change the structure of the brain , 2008, PAIN®.
[32] J. Woodcock,et al. Stimulating the development of mechanism-based, individualized pain therapies , 2007, Nature Reviews Drug Discovery.
[33] Ron Kupers,et al. Brain imaging of clinical pain states: a critical review and strategies for future studies , 2006, The Lancet Neurology.
[34] D. Chialvo,et al. Chronic Pain and the Emotional Brain: Specific Brain Activity Associated with Spontaneous Fluctuations of Intensity of Chronic Back Pain , 2006, The Journal of Neuroscience.
[35] Sean M. Polyn,et al. Beyond mind-reading: multi-voxel pattern analysis of fMRI data , 2006, Trends in Cognitive Sciences.
[36] Janaina Mourão Miranda,et al. Classifying brain states and determining the discriminating activation patterns: Support Vector Machine on functional MRI data , 2005, NeuroImage.
[37] Christopher K. I. Williams,et al. Gaussian Processes for Machine Learning (Adaptive Computation and Machine Learning) , 2005 .
[38] Jeffrey Mogil,et al. Individual responder analyses for pain: does one pain scale fit all? , 2005, Trends in pharmacological sciences.
[39] J. Mogil,et al. What should we be measuring in behavioral studies of chronic pain in animals? , 2004, Pain.
[40] R. Moore,et al. Pain and analgesic response after third molar extraction and other postsurgical pain , 2004, Pain.
[41] S. Mehta,et al. Postoperative Pain Experience: Results from a National Survey Suggest Postoperative Pain Continues to Be Undermanaged , 2003, Anesthesia and analgesia.
[42] Joana,et al. Neuroimaging , 2002 .
[43] G. Aguirre,et al. Experimental Design and the Relative Sensitivity of BOLD and Perfusion fMRI , 2002, NeuroImage.
[44] J. Downar,et al. A multimodal cortical network for the detection of changes in the sensory environment , 2000, Nature Neuroscience.
[45] Thomas G. Dietterich. Adaptive computation and machine learning , 1998 .
[46] Richard Grossman,et al. The animals , 1983 .
[47] S. Holm. A Simple Sequentially Rejective Multiple Test Procedure , 1979 .