Literature DB >> 22255807

Using pre-treatment electroencephalography data to predict response to transcranial magnetic stimulation therapy for major depression.

Ahmad Khodayari-Rostamabad1, James P Reilly, Gary M Hasey, Hubert deBruin, Duncan MacCrimmon.   

Abstract

We investigate the use of machine learning methods based on the pre-treatment electroencephalograph (EEG) to predict response to repetitive transcranial magnetic stimulation (rTMS), which is a non-pharmacological form of therapy for treating major depressive disorder (MDD). The learning procedure involves the extraction of a large number of candidate features from EEG data, from which a very small subset of most statistically relevant features is selected for further processing. A statistical prediction model based on mixture of factor analysis (MFA) model is constructed from a training set that classifies the respective subject into responder and non-responder classes. A leave-2-out (L2O) cross-validation procedure is used to evaluate the prediction performance. This pilot study involves 27 subjects who received either left high-frequency (HF) active rTMS therapy or simultaneous left HF and right low-frequency active rTMS therapy. Our results indicate that it is possible to predict rTMS treatment efficacy of either treatment modality with a specificity of 83% and a sensitivity of 78%, for a combined accuracy of 80%.

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Year:  2011        PMID: 22255807     DOI: 10.1109/IEMBS.2011.6091584

Source DB:  PubMed          Journal:  Conf Proc IEEE Eng Med Biol Soc        ISSN: 1557-170X


  7 in total

1.  Repetitive transcranial magnetic stimulation over the dorsolateral prefrontal cortex for treating posttraumatic stress disorder: an exploratory meta-analysis of randomized, double-blind and sham-controlled trials.

Authors:  Marcelo T Berlim; Frederique Van Den Eynde
Journal:  Can J Psychiatry       Date:  2014-09       Impact factor: 4.356

2.  Electroencephalographic Biomarkers for Treatment Response Prediction in Major Depressive Illness: A Meta-Analysis.

Authors:  Alik S Widge; M Taha Bilge; Rebecca Montana; Weilynn Chang; Carolyn I Rodriguez; Thilo Deckersbach; Linda L Carpenter; Ned H Kalin; Charles B Nemeroff
Journal:  Am J Psychiatry       Date:  2018-10-03       Impact factor: 18.112

3.  Use of the Temperament and Character Inventory to Predict Response to Repetitive Transcranial Magnetic Stimulation for Major Depression.

Authors:  Shan H Siddiqi; Ravikumar Chockalingam; C Robert Cloninger; Eric J Lenze; Pilar Cristancho
Journal:  J Psychiatr Pract       Date:  2016-05       Impact factor: 1.325

Review 4.  Biological markers in noninvasive brain stimulation trials in major depressive disorder: a systematic review.

Authors:  Thiago M Fidalgo; J Leon Morales-Quezada; Guilherme S C Muzy; Noelle M Chiavetta; Mariana E Mendonca; Marcus V B Santana; Oscar F Goncalves; Andre R Brunoni; Felipe Fregni
Journal:  J ECT       Date:  2014-03       Impact factor: 3.635

5.  Ant Colony Optimization Based Feature Selection Method for QEEG Data Classification.

Authors:  Turker Tekin Erguzel; Serhat Ozekes; Selahattin Gultekin; Nevzat Tarhan
Journal:  Psychiatry Investig       Date:  2014-07-21       Impact factor: 2.505

6.  Neural Network Based Response Prediction of rTMS in Major Depressive Disorder Using QEEG Cordance.

Authors:  Turker Tekin Erguzel; Serhat Ozekes; Selahattin Gultekin; Nevzat Tarhan; Gokben Hizli Sayar; Ali Bayram
Journal:  Psychiatry Investig       Date:  2015-01-12       Impact factor: 2.505

7.  Predictive power of abnormal electroencephalogram for post-cerebral infarction depression.

Authors:  Yan-Ping Zheng; Fu-Xi Wang; De-Qiang Zhao; Yan-Qing Wang; Zi-Wei Zhao; Zhan-Wen Wang; Jun Liu; Jun Wang; Ping Luan
Journal:  Neural Regen Res       Date:  2018-02       Impact factor: 5.135

  7 in total

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