Skip to main content
. 2021 Jun 5;18(11):6099. doi: 10.3390/ijerph18116099

Table 4.

Summary of work and predictions relating to the detection of SZ using data from electroencephalogram scans via various artificial intelligence techniques and machine learning algorithms.

Study Year Subjects Prediction AI/ML Technique
Patients Control
Knott et al. [126] 1999 14 14 at least 89.3% DFA, Jackknife classification
Neuhaus et al. [127] 2011 40 40 (matched) 79.9% (balanced) SVM (linear, quadratic and radial basis kernels), LDA, Quadratic discriminant analysis (QDA), KNN, naïve Bayes with equal and unequal variances and Mahalanobis classification
Iyer et al. [128] 2012 13 20 max 76% (ensemble averaging)
100% (single-trial)
Random Forest, 10-fold stratified cross-validation
Laton et al. [129] 2014 54 54 (sex- and age-matched) up to 84.7% Naïve Bayes, SVM and decision tree, with two of its improvements: adaboost and Random Forest
Neuhaus et al. [130] 2014 144 144 (matched) 74% (balanced) LDA and QDA (with their diagonal variants), SVM (linear, polynomial, radial basis and multilayer perceptron kernels), Naïve Bayes, KNN (Euclidean and cosine distance measures) and Mahalanobis classification
Johannesen et al. [131] 2016 40 12 up to 87% 1-norm SVM
Shim et al. [132] 2016 34 34 Maximum: 88.24% (combined)
80.88% (sensor-level)
85.29% (source-level)
SVM, Leave-one-out cross-validation
Taylor et al. [133] 2017 21 22 80.84% SVM, Gaussian processes classifiers, MVPA
Krishnan et al. [134] 2020 14 14 (sex- and age-matched) up to 93% Various, SVM (Radial Basis Function)