Binomial Logistic Regression and Artificial Neural Network Methods to Classify Opioid-Dependent Subjects and Control Group Using Quantitative EEG Power Measures
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Turker Tekin Erguzel | Nevzat Tarhan | Cumhur Tas | Merve Cebi | Gul Eryilmaz | Barış Önen Ünsalver | Cemal Onur Noyan | Nesrin Dilbaz | C. Tas | N. Tarhan | T. Erguzel | M. Çebi | C. Noyan | N. Dilbaz | B. Ünsalver | G. Eryilmaz | C. O. Noyan
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