High-order brain network feature extraction and classification method of first-episode schizophrenia: an EEG study.

IF 2.4 3区 医学 Q3 NEUROSCIENCES Frontiers in Human Neuroscience Pub Date : 2024-10-23 eCollection Date: 2024-01-01 DOI:10.3389/fnhum.2024.1452197
Yanxia Kang, Jianghao Zhao, Yanli Zhao, Zilong Zhao, Yuan Dong, Manjie Zhang, Guimei Yin, Shuping Tan
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Abstract

Introduction: A multimodal persistent topological feature extraction and classification method is proposed to enhance the recognition accuracy of first-episode schizophrenia patients. This approach addresses the limitations of traditional higher-order brain network analyses that rely on single persistent features (e.g., persistent images).

Methods: The study utilized resting-state EEG data from 198 subjects recruited at Huilongguan Hospital in Beijing, comprising 102 males and 96 females, with a mean age of 30 years and mean education of 14 years. Persistent topological features were extracted using adaptive thresholding during persistent homology (PH) filtrations. The distribution of these features was visualized through heatmaps and persistence entropies, while the generation process was elucidated using Betti curves and persistence landscapes.

Results: The classification performance of the multimodal persistent topological features was assessed using various machine learning classifiers. The classifier yielding the highest performance was selected for comparison with traditional brain network features derived from graph theory and single persistent topological features. The results revealed significant topological changes in first-episode schizophrenia patients throughout the persistent homology filtering compared to healthy subjects. The univariate feature selection algorithm achieved a classification accuracy of 94.6% with a combination of attributes meeting the criterion of AC ≥ 0.6.

Discussion: The proposed method demonstrates clinical significance for the early identification and diagnosis of first-episode schizophrenia patients, offering a new research perspective for constructing higher-order functional connectivity networks and extracting topological structure features.

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首发精神分裂症的高阶脑网络特征提取和分类方法:一项脑电图研究。
简介本文提出了一种多模态持续拓扑特征提取和分类方法,以提高首发精神分裂症患者的识别准确率。该方法解决了传统的高阶脑网络分析依赖于单一持久性特征(如持久性图像)的局限性:研究利用了北京回龙观医院 198 名受试者的静息态脑电数据,其中男性 102 人,女性 96 人,平均年龄 30 岁,平均受教育年限 14 年。在持续同源性(PH)过滤过程中,使用自适应阈值法提取了持续拓扑特征。这些特征的分布通过热图和持久性熵可视化,而生成过程则通过贝蒂曲线和持久性景观来阐明:使用各种机器学习分类器评估了多模态持久拓扑特征的分类性能。结果:使用各种机器学习分类器评估了多模态持久拓扑特征的分类性能,并选择了性能最高的分类器与源自图论的传统脑网络特征和单一持久拓扑特征进行比较。结果显示,与健康受试者相比,首发精神分裂症患者在整个持续同源性过滤过程中发生了明显的拓扑变化。单变量特征选择算法的分类准确率达到 94.6%,属性组合符合 AC ≥ 0.6 的标准:所提出的方法对首发精神分裂症患者的早期识别和诊断具有重要的临床意义,为构建高阶功能连接网络和提取拓扑结构特征提供了新的研究视角。
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来源期刊
Frontiers in Human Neuroscience
Frontiers in Human Neuroscience 医学-神经科学
CiteScore
4.70
自引率
6.90%
发文量
830
审稿时长
2-4 weeks
期刊介绍: Frontiers in Human Neuroscience is a first-tier electronic journal devoted to understanding the brain mechanisms supporting cognitive and social behavior in humans, and how these mechanisms might be altered in disease states. The last 25 years have seen an explosive growth in both the methods and the theoretical constructs available to study the human brain. Advances in electrophysiological, neuroimaging, neuropsychological, psychophysical, neuropharmacological and computational approaches have provided key insights into the mechanisms of a broad range of human behaviors in both health and disease. Work in human neuroscience ranges from the cognitive domain, including areas such as memory, attention, language and perception to the social domain, with this last subject addressing topics, such as interpersonal interactions, social discourse and emotional regulation. How these processes unfold during development, mature in adulthood and often decline in aging, and how they are altered in a host of developmental, neurological and psychiatric disorders, has become increasingly amenable to human neuroscience research approaches. Work in human neuroscience has influenced many areas of inquiry ranging from social and cognitive psychology to economics, law and public policy. Accordingly, our journal will provide a forum for human research spanning all areas of human cognitive, social, developmental and translational neuroscience using any research approach.
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