Xu Tingting, Stephane Massoud, Parhi Keshab K
Department of Electrical and Computer Engineering, University of Minnesota, MN 55455, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:4923-6. doi: 10.1109/EMBC.2012.6347098.
Language disorder is one of the core symptoms in schizophrenia. We propose a new framework based on machine intelligence techniques to investigate abnormal neural oscillations related to this impairment. Schizophrenia patients and healthy control subjects were instructed to discriminate semantically and syntactically correct sentences from syntactically correct but semantically incorrect sentences presented visually, and 248-channel MEG signals were recorded with a whole head machine during the task performance. Oscillation patterns were extracted from the MEG recordings in 8 frequency sub-bands throughout sentence processing, which form a large feature set. A two-step feature selection algorithm combining F-score filtering and Support Vector Machine recursive feature elimination (SVM-RFE) was designed to pick out a small subset of features which could discriminate patients and controls with high accuracy. We achieved a 90.48% prediction accuracy based on the selected top features, following the leave-one-out cross validation procedure. These top features provide interpretable spectral, spatial, and temporal information about the electrophysiological basis of sentence processing abnormality in schizophrenia which may help understand the underlying mechanism of this disease.
语言障碍是精神分裂症的核心症状之一。我们提出了一个基于机器智能技术的新框架,以研究与这种障碍相关的异常神经振荡。指导精神分裂症患者和健康对照受试者从视觉呈现的句法正确但语义不正确的句子中辨别语义和句法正确的句子,并在任务执行期间使用全头机器记录248通道的脑磁图(MEG)信号。在整个句子处理过程中,从MEG记录中提取8个频率子带中的振荡模式,形成一个大的特征集。设计了一种结合F分数滤波和支持向量机递归特征消除(SVM-RFE)的两步特征选择算法,以挑选出一小部分能够高精度区分患者和对照的特征。按照留一法交叉验证程序,基于所选的顶级特征,我们实现了90.48%的预测准确率。这些顶级特征提供了关于精神分裂症句子处理异常的电生理基础的可解释的频谱、空间和时间信息,这可能有助于理解这种疾病的潜在机制。