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Support vector machine‐based multivariate pattern classification of methamphetamine dependence using arterial spin labeling

机译:支持甲基苯丙胺依赖性基于甲基苯丙胺依赖性的甲基苯丙胺依赖性的基于甲基苯丙胺的多变量分类

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摘要

Abstract Arterial spin labeling (ASL) magnetic resonance imaging has been widely applied to identify cerebral blood flow (CBF) abnormalities in a number of brain disorders. To evaluate its significance in detecting methamphetamine (MA) dependence, this study used a multivariate pattern classification algorithm, ie, a support vector machine (SVM), to construct classifiers for discriminating MA‐dependent subjects from normal controls. Forty‐five MA‐dependent subjects, 45 normal controls, and 36 heroin‐dependent subjects were enrolled. Classifiers trained with ASL‐CBF data from the left or right cerebrum showed significant hemispheric asymmetry in their cross‐validated prediction performance ( P ??0.001 for accuracy, sensitivity, specificity, kappa, and area under the curve [AUC] of the receiver operating characteristics [ROC] curve). A classifier trained with ASL‐CBF data from all cerebral regions (bilateral hemispheres and corpus callosum) was able to differentiate MA‐dependent subjects from normal controls with a cross‐validated prediction accuracy, sensitivity, specificity, kappa, and AUC of 89%, 94%, 84%, 0.78, and 0.95, respectively. The discrimination map extracted from this classifier covered multiple brain circuits that either constitute a network related to drug abuse and addiction or could be impaired in MA‐dependence. The cerebral regions contribute most to classification include occipital lobe, insular cortex, postcentral gyrus, corpus callosum, and inferior frontal cortex. This classifier was also specific to MA‐dependence rather than substance use disorders in general (ie, 55.56% accuracy for heroin dependence). These results support the future utilization of ASL with an SVM‐based classifier for the diagnosis of MA‐dependence and could help improve the understanding of MA‐related neuropathology.
机译:摘要动脉旋转标签(ASL)磁共振成像已被广泛应用于鉴定许多脑疾病中的脑血流(CBF)异常。为了评估其在检测甲基苯丙胺(MA)依赖时的意义,该研究使用了多变量模式分类算法,即支持向量机(SVM),构建用于区分MA依赖性对象的分类器。注册了四十五个MA依赖性受试者,45个正常对照和36名海洛因依赖性受试者。从左或右脑室的ASL-CBF数据接受培训的分类器在交叉验证的预测性能下显示出显着的半球不对称性(P = 0.001,用于精度,敏感性,特异性,κBAPH和区域下的曲线[AUC]接收器操作特征[ROC]曲线)。具有来自所有脑区的ASL-CBF数据(双侧半球和胼callosum)培训的分类器能够将MA依赖性受试者区分不同的正常对照,具有89%的交叉验证的预测准确度,敏感性,特异性,κ和AUC, 94%,84%,0.78和0.95分别。从该分类器提取的鉴别图覆盖了多个大脑电路,它们构成与药物滥用和成瘾有关的网络,或者在诸如依赖中可能受损。脑区对分类的大部分贡献最多包括枕叶,肌肉皮质,后中央转象,语料库胼um和劣质前皮层。该分类器也特定于MA依赖而不是物质使用障碍,即,海洛因依赖的55.56%的准确性)。这些结果支持与基于SVM的分类器的ASL的未来利用,用于诊断MA依赖性,并有助于提高对MA相关神经病理学的理解。

著录项

  • 来源
    《Addiction biology》 |2019年第6期|共1页
  • 作者单位

    Department of Radiology Ningbo Medical Center Lihuili HospitalNingbo UniversityNingbo China;

    Department of Psychiatry Perelman School of MedicineUniversity of PennsylvaniaPhiladelphia;

    Department of Preventative Medicine Zhejiang Provincial Key Laboratory of PathophysiologyMedical;

    Department of Radiology Ningbo Medical Center Lihuili HospitalNingbo UniversityNingbo China;

    Laboratory of Behavioral Neuroscience Ningbo Addiction Research and Treatment CenterNingbo China;

    Laboratory of Behavioral Neuroscience Ningbo Addiction Research and Treatment CenterNingbo China;

    Laboratory of Behavioral Neuroscience Ningbo Addiction Research and Treatment CenterNingbo China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 神经病学与精神病学;
  • 关键词

    arterial spin labeling; cerebral blood flow; machine learning; methamphetamine;

    机译:动脉旋转标记;脑血流量;机器学习;甲基苯丙胺;

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