利用BOLD信号的区域同质性识别甲基苯丙胺依赖

Hufei Yu, Shucai Huang, Xiaojie Zhang, Qiuping Huang, Jun Liu, Hong-xian Chen, Yan Tang
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引用次数: 14

摘要

甲基苯丙胺是一种高度成瘾性的药物,滥用后会对人的身心造成一系列异常后果。本文旨在利用机器学习方法研究区域同质性异常(ReHo)是否可以作为区分甲基苯丙胺依赖(MAD)个体与对照组的有效特征。我们利用静息状态fMRI测量了41名MAD个体和42名年龄和性别匹配的对照组的区域均匀性,发现与对照组相比,MAD个体在右侧内侧额上回的ReHo值较低,而在右侧颞下梭状回的ReHo值较高。此外,采用AdaBoost分类器,这是一种非常有效的机器学习集成学习,用于将MAD个体与ReHo值异常的对照受试者进行分类。利用留一交叉验证方法,我们得到了超过84.3%的准确率,这意味着我们可以通过机器学习的方法在ReHo值上基本区分出MAD个体和对照组。总之,我们的研究结果表明,AdaBoost分类器-神经成像方法可能是一种很有前途的方法,可以发现一个人是否对甲基苯丙胺上瘾,同时,本文也表明静息状态fMRI应该被视为一种生物标志物,一种无创的有效的辅助工具来评估MAD。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Methamphetamine Dependence Using Regional Homogeneity in BOLD Signals
Methamphetamine is a highly addictive drug of abuse, which will cause a series of abnormal consequences mentally and physically. This paper is aimed at studying whether the abnormalities of regional homogeneity (ReHo) could be effective features to distinguish individuals with methamphetamine dependence (MAD) from control subjects using machine-learning methods. We made use of resting-state fMRI to measure the regional homogeneity of 41 individuals with MAD and 42 age- and sex-matched control subjects and found that compared with control subjects, individuals with MAD have lower ReHo values in the right medial superior frontal gyrus but higher ReHo values in the right temporal inferior fusiform. In addition, AdaBoost classifier, a pretty effective ensemble learning of machine learning, was employed to classify individuals with MAD from control subjects with abnormal ReHo values. By utilizing the leave-one-out cross-validation method, we got the accuracy more than 84.3%, which means we can almost distinguish individuals with MAD from the control subjects in ReHo values via machine-learning approaches. In a word, our research results suggested that the AdaBoost classifier-neuroimaging approach may be a promising way to find whether a person has been addicted to methamphetamine, and also, this paper shows that resting-state fMRI should be considered as a biomarker, a noninvasive and effective assistant tool for evaluating MAD.
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