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使用脑图谱指标预测治疗反应并个体化识别短期戒断的甲基苯丙胺依赖

Treatment Response Prediction and Individualized Identification of Short-Term Abstinence Methamphetamine Dependence Using Brain Graph Metrics.

作者信息

Yan Cui, Yang Xuefei, Yang Ru, Yang Wenhan, Luo Jing, Tang Fei, Huang Sihong, Liu Jun

机构信息

Department of Radiology, Second Xiangya Hospital of Central South University, Changsha, China.

The Key Laboratory of Biomedical Information Engineering, Ministry of Education, Department of Biomedical Engineering, School of Life Science and Technology, Xi'an Jiaotong University, Xi'an, China.

出版信息

Front Psychiatry. 2021 Mar 3;12:583950. doi: 10.3389/fpsyt.2021.583950. eCollection 2021.

Abstract

The abuse of methamphetamine (MA) worldwide has gained international attention as the most rapidly growing illicit drug problem. The classification and treatment response prediction of MA addicts are thereby paramount, in order for effective treatments to be more targeted to individuals. However, there has been limited progress. In the present study, 43 MA-dependent participants and 38 age- and gender-matched healthy controls were enrolled, and their resting-state functional magnetic resonance imaging data were collected. MA-dependent participants who showed 50% reduction in craving were defined as responders to treatment. The present study used the machine learning method, which is a support vector machine (SVM), to detect the most relevant features for discriminating and predicting the treatment response for MA-dependent participants based on the features extracted from the functional graph metrics. A classifier was able to differentiate MA-dependent subjects from normal controls, with a cross-validated prediction accuracy, sensitivity, and specificity of 73.2% [95% confidence interval (CI) = 71.23-74.17%), 66.05% (95% CI = 63.06-69.04%), and 80.35% (95% CI = 77.77-82.93%), respectively, at the individual level. The most accurate combination of classifier features included the nodal efficiency in the right middle temporal gyrus and the community index in the left precentral gyrus and cuneus. Between these two, the community index in the left precentral gyrus had the highest importance. In addition, the classification performance of the other classifier used to predict the treatment response of MA-dependent subjects had an accuracy, sensitivity, and specificity of 71.2% (95% CI = 69.28-73.12%), 86.75% (95% CI = 84.48-88.92%), and 55.65% (95% CI = 52.61-58.79%), respectively, at the individual level. Furthermore, the most accurate combination of classifier features included the nodal clustering coefficient in the right orbital part of the superior frontal gyrus, the nodal local efficiency in the right orbital part of the superior frontal gyrus, and the right triangular part of the inferior frontal gyrus and right temporal pole of middle temporal gyrus. Among these, the nodal local efficiency in the right temporal pole of the middle temporal gyrus had the highest feature importance. The present study identified the most relevant features of MA addiction and treatment based on SVMs and the features extracted from the graph metrics and provided possible biomarkers to differentiate and predict the treatment response for MA-dependent patients. The brain regions involved in the best combinations should be given close attention during the treatment of MA.

摘要

甲基苯丙胺(MA)在全球范围内的滥用已成为增长最为迅速的非法药物问题,受到国际关注。因此,对MA成瘾者进行分类并预测其治疗反应至关重要,以便使有效治疗更具针对性。然而,进展有限。在本研究中,招募了43名MA依赖参与者和38名年龄及性别匹配的健康对照者,并收集了他们的静息态功能磁共振成像数据。将渴望减少50%的MA依赖参与者定义为治疗反应者。本研究采用机器学习方法,即支持向量机(SVM),基于从功能图指标中提取的特征,检测用于区分和预测MA依赖参与者治疗反应的最相关特征。在个体水平上,一个分类器能够区分MA依赖受试者与正常对照者,交叉验证的预测准确率、敏感性和特异性分别为73.2%[95%置信区间(CI)=71.23 - 74.17%]、66.05%(95%CI = 63.06 - 69.04%)和80.35%(95%CI = 77.77 - 82.93%)。分类器特征的最准确组合包括右侧颞中回的节点效率以及左侧中央前回和楔叶的社区指数。在这两者之间,左侧中央前回的社区指数重要性最高。此外,用于预测MA依赖受试者治疗反应的另一个分类器在个体水平上的分类性能的准确率、敏感性和特异性分别为71.2%(95%CI = 69.28 - 73.12%)、86.75%(95%CI = 84.48 - 88.92%)和55.65%(95%CI = 52.61 - 58.79%)。此外,分类器特征的最准确组合包括额上回右侧眶部的节点聚类系数、额上回右侧眶部的节点局部效率、额下回右侧三角部以及颞中回右侧颞极。其中,颞中回右侧颞极的节点局部效率特征重要性最高。本研究基于支持向量机以及从图指标中提取的特征,确定了MA成瘾和治疗的最相关特征,并提供了可能的生物标志物以区分和预测MA依赖患者的治疗反应。在MA治疗过程中,应密切关注涉及最佳组合的脑区。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2eaa/7965948/3e378d1a987f/fpsyt-12-583950-g0001.jpg

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