Classification of internet addiction using machine learning on electroencephalography synchronization and functional connectivity.

IF 5.5 2区 医学 Q1 PSYCHIATRY
Hsu-Wen Huang, Po-Yu Li, Meng-Cin Chen, You-Xun Chang, Chih-Ling Liu, Po-Wei Chen, Qiduo Lin, Chemin Lin, Chih-Mao Huang, Shun-Chi Wu
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引用次数: 0

Abstract

Background: Internet addiction (IA) refers to excessive internet use that causes cognitive impairment or distress. Understanding the neurophysiological mechanisms underpinning IA is crucial for enabling an accurate diagnosis and informing treatment and prevention strategies. Despite the recent increase in studies examining the neurophysiological traits of IA, their findings often vary. To enhance the accuracy of identifying key neurophysiological characteristics of IA, this study used the phase lag index (PLI) and weighted PLI (WPLI) methods, which minimize volume conduction effects, to analyze the resting-state electroencephalography (EEG) functional connectivity. We further evaluated the reliability of the identified features for IA classification using various machine learning methods.

Methods: Ninety-two participants (42 with IA and 50 healthy controls (HCs)) were included. PLI and WPLI values for each participant were computed, and values exhibiting significant differences between the two groups were selected as features for the subsequent classification task.

Results: Support vector machine (SVM) achieved an 83% accuracy rate using PLI features and an improved 86% accuracy rate using WPLI features. t-test results showed analogous topographical patterns for both the WPLI and PLI. Numerous connections were identified within the delta and gamma frequency bands that exhibited significant differences between the two groups, with the IA group manifesting an elevated level of phase synchronization.

Conclusions: Functional connectivity analysis and machine learning algorithms can jointly distinguish participants with IA from HCs based on EEG data. PLI and WPLI have substantial potential as biomarkers for identifying the neurophysiological traits of IA.

基于脑电图同步和功能连接的机器学习网络成瘾分类。
背景:网络成瘾(Internet addiction, IA)是指过度使用网络导致认知障碍或痛苦。了解支持IA的神经生理机制对于准确诊断和告知治疗和预防策略至关重要。尽管最近对IA神经生理特征的研究有所增加,但他们的发现往往各不相同。为了提高识别IA关键神经生理特征的准确性,本研究采用最小体积传导效应的相位滞后指数(PLI)和加权PLI (WPLI)方法分析静息状态脑电图(EEG)功能连通性。我们使用各种机器学习方法进一步评估识别特征用于IA分类的可靠性。方法:纳入92名参与者(42名IA患者和50名健康对照者)。计算每个参与者的PLI和WPLI值,并选择两组之间有显著差异的值作为后续分类任务的特征。结果:支持向量机(SVM)使用PLI特征实现了83%的准确率,使用WPLI特征提高了86%的准确率。t检验结果显示WPLI和PLI的地形模式相似。在delta和gamma频段内发现了许多连接,这在两组之间表现出显著差异,IA组表现出更高水平的相位同步。结论:基于脑电数据,功能连接分析和机器学习算法可以共同区分IA参与者和hc参与者。PLI和WPLI作为鉴别IA神经生理特征的生物标志物具有很大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Psychological Medicine
Psychological Medicine 医学-精神病学
CiteScore
11.30
自引率
4.30%
发文量
711
审稿时长
3-6 weeks
期刊介绍: Now in its fifth decade of publication, Psychological Medicine is a leading international journal in the fields of psychiatry, related aspects of psychology and basic sciences. From 2014, there are 16 issues a year, each featuring original articles reporting key research being undertaken worldwide, together with shorter editorials by distinguished scholars and an important book review section. The journal''s success is clearly demonstrated by a consistently high impact factor.
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