Plechawska-Wójcik Małgorzata, Karczmarek Paweł, Krukow Paweł, Kaczorowska Monika, Tokovarov Mikhail, Jonak Kamil
Department of Computer Science, Lublin University of Technology, Lublin, Poland.
Department of Clinical Neuropsychiatry, Medical University of Lublin, Lublin, Poland.
Front Neuroinform. 2021 Dec 14;15:744355. doi: 10.3389/fninf.2021.744355. eCollection 2021.
In this study, we focused on the verification of suitable aggregation operators enabling accurate differentiation of selected neurophysiological features extracted from resting-state electroencephalographic recordings of patients who were diagnosed with schizophrenia (SZ) or healthy controls (HC). We built the Choquet integral-based operators using traditional classification results as an input to the procedure of establishing the fuzzy measure densities. The dataset applied in the study was a collection of variables characterizing the organization of the neural networks computed using the minimum spanning tree (MST) algorithms obtained from signal-spaced functional connectivity indicators and calculated separately for predefined frequency bands using classical linear Granger causality (GC) measure. In the series of numerical experiments, we reported the results of classification obtained using numerous generalizations of the Choquet integral and other aggregation functions, which were tested to find the most appropriate ones. The obtained results demonstrate that the classification accuracy can be increased by 1.81% using the extended versions of the Choquet integral called in the literature, namely, generalized Choquet integral or pre-aggregation operators.
在本研究中,我们专注于验证合适的聚合算子,以准确区分从被诊断为精神分裂症(SZ)的患者或健康对照(HC)的静息态脑电图记录中提取的选定神经生理特征。我们使用传统分类结果作为建立模糊测度密度过程的输入,构建了基于Choquet积分的算子。本研究中应用的数据集是一组变量,这些变量表征了使用最小生成树(MST)算法计算的神经网络组织,该算法从信号间隔功能连接指标中获得,并使用经典线性格兰杰因果关系(GC)测度针对预定义频段分别计算。在一系列数值实验中,我们报告了使用Choquet积分的多种推广形式和其他聚合函数获得的分类结果,对这些函数进行了测试以找到最合适的。所得结果表明,使用文献中所称的Choquet积分的扩展版本,即广义Choquet积分或预聚合算子,分类准确率可提高1.81%。