Department of Bio and Brain Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon, 34141, South Korea; Electronics and Telecommunications Research Institute (ETRI), Daejeon, 34129, South Korea.
Department of Bio and Brain Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon, 34141, South Korea; Department of Neuroscience, Washington University School of Medicine, St Louis, MO, 63110, USA.
Psychiatry Res Neuroimaging. 2023 Jul;332:111641. doi: 10.1016/j.pscychresns.2023.111641. Epub 2023 Apr 5.
The current study aimed to investigate the possibility of rapid and accurate diagnoses of Panic disorder (PD) and Major depressive disorder (MDD) using machine learning. The support vector machine method was applied to 2-channel EEG signals from the frontal lobes (Fp1 and Fp2) of 149 participants to classify PD and MDD patients from healthy individuals using non-linear measures as features. We found significantly lower correlation dimension and Lempel-Ziv complexity in PD patients and MDD patients in the left hemisphere compared to healthy subjects at rest. Most importantly, we obtained a 90% accuracy in classifying MDD patients vs. healthy individuals, a 68% accuracy in classifying PD patients vs. controls, and a 59% classification accuracy between PD and MDD patients. In addition to demonstrating classification performance in a simplified setting, the observed differences in EEG complexity between subject groups suggest altered cortical processing present in the frontal lobes of PD patients that can be captured through non-linear measures. Overall, this study suggests that machine learning and non-linear measures using only 2-channel frontal EEGs are useful for aiding the rapid diagnosis of panic disorder and major depressive disorder.
本研究旨在探讨使用机器学习进行惊恐障碍(PD)和重度抑郁症(MDD)快速准确诊断的可能性。研究采用支持向量机方法,对 149 名参与者额区(Fp1 和 Fp2)的 2 通道 EEG 信号进行分析,使用非线性指标作为特征,对 PD 和 MDD 患者与健康个体进行分类。结果发现,与健康个体相比,PD 患者和 MDD 患者在静息状态下左半球的关联维数和 Lempel-Ziv 复杂度明显较低。重要的是,我们可以 90%的准确率区分 MDD 患者与健康个体,68%的准确率区分 PD 患者与对照组,59%的准确率区分 PD 和 MDD 患者。除了在简化的设置中展示分类性能外,观察到的 EEG 复杂度在不同组间的差异表明,PD 患者额叶皮层处理发生改变,可通过非线性指标进行捕捉。总之,本研究表明,使用仅包含 2 通道额部 EEG 的机器学习和非线性指标有助于快速诊断惊恐障碍和重度抑郁症。