Machine learning on encephalographic activity may predict opioid analgesia
Published 2015 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Machine learning on encephalographic activity may predict opioid analgesia
Authors
Keywords
-
Journal
EUROPEAN JOURNAL OF PAIN
Volume 19, Issue 10, Pages 1552-1561
Publisher
Wiley
Online
2015-06-20
DOI
10.1002/ejp.734
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Reliability of the Conditioned Pain Modulation Paradigm to Assess Endogenous Inhibitory Pain Pathways
- (2016) Gwyn N Lewis et al. Pain Research & Management
- Dynamic spectral indices of the electroencephalogram provide new insights into tonic pain
- (2015) M. Gram et al. CLINICAL NEUROPHYSIOLOGY
- Sensitivity of quantitative sensory models to morphine analgesia in humans
- (2014) Anne Estrup Olesen et al. Journal of Pain Research
- Can quantitative sensory testing predict responses to analgesic treatment?
- (2013) K. Grosen et al. EUROPEAN JOURNAL OF PAIN
- Personalized Medicine and Opioid Analgesic Prescribing for Chronic Pain: Opportunities and Challenges
- (2013) Stephen Bruehl et al. JOURNAL OF PAIN
- Morphine modifies the cingulate–operculum network underlying painful rectal evoked potentials
- (2013) D. Lelic et al. NEUROPHARMACOLOGY
- Quantitative Sensory Testing Predicts Pregabalin Efficacy in Painful Chronic Pancreatitis
- (2013) Søren S. Olesen et al. PLoS One
- Impact of Perioperative Pain Intensity, Pain Qualities, and Opioid Use on Chronic Pain After Surgery
- (2012) Elizabeth G. VanDenKerkhof et al. REGIONAL ANESTHESIA AND PAIN MEDICINE
- LIBSVM
- (2012) Chih-Chung Chang et al. ACM Transactions on Intelligent Systems and Technology
- The analgesic effect of pregabalin in patients with chronic pain is reflected by changes in pharmaco-EEG spectral indices
- (2011) Carina Graversen et al. BRITISH JOURNAL OF CLINICAL PHARMACOLOGY
- Neurophysiological Coding of Traits and States in the Perception of Pain
- (2011) Enrico Schulz et al. CEREBRAL CORTEX
- Tonic pain and continuous EEG: Prediction of subjective pain perception by alpha-1 power during stimulation and at rest
- (2011) Rony-Reuven Nir et al. CLINICAL NEUROPHYSIOLOGY
- Towards a Physiology-Based Measure of Pain: Patterns of Human Brain Activity Distinguish Painful from Non-Painful Thermal Stimulation
- (2011) Justin E. Brown et al. PLoS One
- Different effects of morphine and oxycodone in experimentally evoked hyperalgesia: a human translational study
- (2010) Anne Estrup Olesen et al. BRITISH JOURNAL OF CLINICAL PHARMACOLOGY
- A pilot study to determine whether machine learning methodologies using pre-treatment electroencephalography can predict the symptomatic response to clozapine therapy
- (2010) Ahmad Khodayari-Rostamabad et al. CLINICAL NEUROPHYSIOLOGY
- Gastrointestinal symptoms in type-1 diabetes: Is it all about brain plasticity?
- (2010) Jens Brøndum Frøkjaerl et al. EUROPEAN JOURNAL OF PAIN
- Genetics of pain, opioids, and opioid responsiveness
- (2010) Johanne Tremblay et al. METABOLISM-CLINICAL AND EXPERIMENTAL
- Prognostic prediction of therapeutic response in depression using high-field MR imaging
- (2010) Qiyong Gong et al. NEUROIMAGE
- Predicting the analgesic effect to oxycodone by ‘static’ and ‘dynamic’ quantitative sensory testing in healthy subjects
- (2010) Elon Eisenberg et al. PAIN
- Imaging pain
- (2008) I. Tracey BRITISH JOURNAL OF ANAESTHESIA
- Early reduction in prefrontal theta QEEG cordance value predicts response to venlafaxine treatment in patients with resistant depressive disorder
- (2008) Martin Bares et al. EUROPEAN PSYCHIATRY
- Pre-stimulus alpha power affects vertex N2–P2 potentials evoked by noxious stimuli
- (2007) Claudio Babiloni et al. BRAIN RESEARCH BULLETIN
- The prevalence of postoperative pain in a sample of 1490 surgical inpatients
- (2007) M. Sommer et al. EUROPEAN JOURNAL OF ANAESTHESIOLOGY
Publish scientific posters with Peeref
Peeref publishes scientific posters from all research disciplines. Our Diamond Open Access policy means free access to content and no publication fees for authors.
Learn MoreCreate your own webinar
Interested in hosting your own webinar? Check the schedule and propose your idea to the Peeref Content Team.
Create Now