Literature DB >> 26095578

Machine learning on encephalographic activity may predict opioid analgesia.

M Gram1, C Graversen1, A E Olesen1,2, A M Drewes1,3.   

Abstract

BACKGROUND: Opioids are used for the treatment of pain. However, 30-50% of patients have insufficient effect to the opioid initially selected by the physician, and there is an urgent need for biomarkers to select responders to the most appropriate drug. Since opioids mediate their effect in the central nervous system, this study aimed to investigate if electroencephalography (EEG) during rest or pain before treatment could predict the analgesic response.
METHODS: EEG from 62 channels was recorded in volunteers during rest and tonic pain (cold pressor test). Morphine (30 mg) or placebo was then administered, and the pain test repeated 60 min after. Washout period between drugs was 7 days. Based on pain ratings, subjects were stratified into responders and non-responders. Spectral analysis was performed on the EEG. Conventional statistics on group basis were used and, furthermore, the most discriminative EEG features were subjected to support vector machine classification to predict the response for the individual subjects.
RESULTS: Conventional statistics on the frequency bands revealed no differences between responders and non-responders. On the individual basis, no differences between groups were found using resting EEG. However, EEG during cold pain was able to classify responders with an accuracy of 72% (p = 0.01) and the result was reproducible using baseline data from both study days.
CONCLUSIONS: Machine learning based on EEG before treatment enabled separation between responders and non-responders. This study represents the first step towards the prediction of opioid analgesia based on EEG features prior to drug administration, and advocates for the use of machine learning in future studies.
© 2015 European Pain Federation - EFIC®

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Year:  2015        PMID: 26095578     DOI: 10.1002/ejp.734

Source DB:  PubMed          Journal:  Eur J Pain        ISSN: 1090-3801            Impact factor:   3.931


  8 in total

1.  Characterization of cortical source generators based on electroencephalography during tonic pain.

Authors:  Tine Maria Hansen; Esben Bolvig Mark; Søren Schou Olesen; Mikkel Gram; Jens Brøndum Frøkjær; Asbjørn Mohr Drewes
Journal:  J Pain Res       Date:  2017-06-07       Impact factor: 3.133

2.  Predictors of opioid efficacy in patients with chronic pain: A prospective multicenter observational cohort study.

Authors:  Kasper Grosen; Anne E Olesen; Mikkel Gram; Torsten Jonsson; Michael Kamp-Jensen; Trine Andresen; Christian Nielsen; Gorazd Pozlep; Mogens Pfeiffer-Jensen; Bart Morlion; Asbjørn M Drewes
Journal:  PLoS One       Date:  2017-02-03       Impact factor: 3.240

3.  A Machine Learning Approach for the Identification of a Biomarker of Human Pain using fNIRS.

Authors:  Raul Fernandez Rojas; Xu Huang; Keng-Liang Ou
Journal:  Sci Rep       Date:  2019-04-04       Impact factor: 4.379

Review 4.  Neuroimaging-based biomarkers for pain: state of the field and current directions.

Authors:  Maite M van der Miesen; Martin A Lindquist; Tor D Wager
Journal:  Pain Rep       Date:  2019-08-07

5.  Sleep spindles as a diagnostic and therapeutic target for chronic pain.

Authors:  Bassir Caravan; Lizbeth Hu; Daniel Veyg; Prathamesh Kulkarni; Qiaosheng Zhang; Zhe S Chen; Jing Wang
Journal:  Mol Pain       Date:  2020 Jan-Dec       Impact factor: 3.395

6.  Prediction of opioid dose in cancer pain patients using genetic profiling: not yet an option with support vector machine learning.

Authors:  Anne Estrup Olesen; Debbie Grønlund; Mikkel Gram; Frank Skorpen; Asbjørn Mohr Drewes; Pål Klepstad
Journal:  BMC Res Notes       Date:  2018-01-27

Review 7.  Machine learning in pain research.

Authors:  Jörn Lötsch; Alfred Ultsch
Journal:  Pain       Date:  2018-04       Impact factor: 6.961

8.  Magnitude and Temporal Variability of Inter-stimulus EEG Modulate the Linear Relationship Between Laser-Evoked Potentials and Fast-Pain Perception.

Authors:  Linling Li; Gan Huang; Qianqian Lin; Jia Liu; Shengli Zhang; Zhiguo Zhang
Journal:  Front Neurosci       Date:  2018-05-31       Impact factor: 4.677

  8 in total

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