Luo Xiaodong, Zhou Bin, Fang Jiaqi, Cherif-Riahi Yassine, Li Gang, Shen Xueqian
The Second Hospital of Jinhua, Jinhua 321016, China.
College of Mathematical Medicine, Zhejiang Normal University, Jinhua 321004, China.
Diagnostics (Basel). 2024 May 28;14(11):1122. doi: 10.3390/diagnostics14111122.
Current assessments for generalized anxiety disorder (GAD) are often subjective and do not rely on a standardized measure to evaluate the GAD across its severity levels. The lack of objective and multi-level quantitative diagnostic criteria poses as a significant challenge for individualized treatment strategies. To address this need, this study aims to establish a GAD grading and quantification diagnostic model by integrating an electroencephalogram (EEG) and ensemble learning. In this context, a total of 39 normal subjects and 80 GAD patients were recruited and divided into four groups: normal control, mild GAD, moderate GAD, and severe GAD. Ten minutes resting state EEG data were collected for every subject. Functional connectivity features were extracted from each EEG segment with different time windows. Then, ensemble learning was employed for GAD classification studies and brain mechanism analysis. Hence, the results showed that the Catboost model with a 10 s time window achieved an impressive 98.1% accuracy for four-level classification. Particularly, it was found that those functional connections situated between the frontal and temporal lobes were significantly more abundant than in other regions, with the beta rhythm being the most prominent. The analysis framework and findings of this study provide substantial evidence for the applications of artificial intelligence in the clinical diagnosis of GAD.
目前对广泛性焦虑症(GAD)的评估往往具有主观性,且不依赖标准化测量方法来评估不同严重程度的GAD。缺乏客观的多层次定量诊断标准对个体化治疗策略构成了重大挑战。为满足这一需求,本研究旨在通过整合脑电图(EEG)和集成学习来建立GAD分级和量化诊断模型。在此背景下,共招募了39名正常受试者和80名GAD患者,并将其分为四组:正常对照组、轻度GAD组、中度GAD组和重度GAD组。为每位受试者采集了10分钟的静息态EEG数据。从每个具有不同时间窗口的EEG片段中提取功能连接特征。然后,将集成学习用于GAD分类研究和脑机制分析。结果表明,具有10秒时间窗口的Catboost模型在四级分类中达到了令人印象深刻的98.1%的准确率。特别地,发现额叶和颞叶之间的功能连接明显比其他区域更丰富,其中β节律最为突出。本研究的分析框架和结果为人工智能在GAD临床诊断中的应用提供了大量证据。