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Identification and functional characterization of HIV-associated neurocognitive disorders with large-scale Granger causality analysis on resting-state functional MRI

机译:静态状态MRI的大规模Granger因果关系分析与HIV相关的神经认知障碍的鉴定和功能表征

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Resting-state functional MRI (rs-fMRI), coupled with advanced multivariate time-series analysis methods such as Granger causality, is a promising tool for the development of novel functional connectivity biomarkers of neurologic and psychiatric disease. Recently large-scale Granger causality (lsGC) has been proposed as an alternative to conventional Granger causality (cGC) that extends the scope of robust Granger causal analyses to high-dimensional systems such as the human brain. In this study. lsGC and cGC were comparatively evaluated on their ability to capture neurologic damage associated with HIV-associated neurocognitive disorders (HAND). Functional brain network models were constructed from rs-fMRI data collected from a cohort of HIV~+ and HIVˉ subjects. Graph theoretic properties of the resulting networks were then used to train a support vector machine (SVM) model to predict clinically relevant parameters, such as HIV status and neuropsychomctric (NP) scores. For the HIV~(+/-) classification task, lsGC, which yielded a peak area under the receiver operating characteristic curve (AUC) of 0.83, significantly outperformed cGC, which yielded a peak AUC of 0.61. at all parameter settings tested. For the NP score regression task, lsGC, with a minimum mean squared error (MSE) of 0.75, significantly outperformed cGC, with a minimum MSE of 0.84 (p < 0.001, one-tailed paired t-test). These results show that, at optimal parameter settings, lsGC is better able to capture functional brain connectivity correlates of HAND than cGC. However, given the substantial variation in the performance of the two methods at different parameter settings, particularly for the regression task, improved parameter selection criteria are necessary and constitute an area for future research.
机译:静止状态功能MRI(rs-fMRI)与先进的多元时间序列分析方法(例如Granger因果关系)相结合,是开发神经病和精神病学新型功能连接性生物标记物的有前途的工具。最近,已提出大规模Granger因果关系(lsGC)作为常规Granger因果关系(cGC)的替代方法,该传统Granger因果关系将鲁棒的Granger因果关系分析的范围扩展到诸如人脑等高维系统。在这项研究中。对lsGC和cGC捕获与HIV相关的神经认知障碍(HAND)相关的神经系统损伤的能力进行了比较评估。根据从一组HIV〜+和HIVˉ受试者收集的rs-fMRI数据构建功能性大脑网络模型。然后,将所得网络的图论特性用于训练支持向量机(SVM)模型,以预测临床相关参数,例如HIV状况和神经心理(NP)得分。对于HIV〜(+/-)分类任务,在接收器工作特征曲线(AUC)下产生峰面积为0.83的lsGC明显优于cGC,后者产生0.61的峰值AUC。在测试的所有参数设置下。对于NP评分回归任务,最小均方误差(MSE)为0.75的lsGC明显优于cGC,最小MSE为0.84(p <0.001,单尾配对t检验)。这些结果表明,在最佳参数设置下,lsGC比cGC能够更好地捕获HAND的功能性大脑连接相关性。但是,鉴于这两种方法在不同参数设置下的性能存在很大差异,尤其是对于回归任务,有必要改进参数选择标准,这是未来研究的一个领域。

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