Department Biomedical Engineering, University of Rochester, NY, USA.
Department of Electrical Engineering, University of Rochester, NY, USA.
Neuroimage Clin. 2017 Dec 7;17:768-777. doi: 10.1016/j.nicl.2017.11.025. eCollection 2018.
HIV is capable of invading the brain soon after seroconversion. This ultimately can lead to deficits in multiple cognitive domains commonly referred to as HIV-associated neurocognitive disorders (HAND). Clinical diagnosis of such deficits requires detailed neuropsychological assessment but clinical signs may be difficult to detect during asymptomatic injury of the central nervous system (CNS). Therefore neuroimaging biomarkers are of particular interest in HAND. In this study, we constructed brain connectivity profiles of 40 subjects (20 HIV positive subjects and 20 age-matched seronegative controls) using two different methods: a non-linear mutual connectivity analysis approach and a conventional method based on Pearson's correlation. These profiles were then summarized using graph-theoretic methods characterizing their topological network properties. Standard clinical and laboratory assessments were performed and a battery of neuropsychological (NP) tests was administered for all participating subjects. Based on NP testing, 14 of the seropositive subjects exhibited mild neurologic impairment. Subsequently, we analyzed associations between the network derived measures and neuropsychological assessment scores as well as common clinical laboratory plasma markers (CD4 cell count, HIV RNA) after adjusting for age and gender. Mutual connectivity analysis derived graph-theoretic measures, and , were significantly ( < 0.05, FDR adjusted) associated with the Executive as well as Overall z-score of NP performance. In contrast, network measures derived from conventional correlation-based connectivity did not yield any significant results. Thus, changes in connectivity can be captured using advanced time-series analysis techniques. The demonstrated associations between imaging-derived graph-theoretic properties of brain networks with neuropsychological performance, provides opportunities to further investigate the evolution of HAND in larger, longitudinal studies. Our analysis approach, involving non-linear time-series analysis in conjunction with graph theory, is promising and it may prove to be useful not only in HAND but also in other neurodegenerative disorders.
HIV 能够在血清转换后不久侵入大脑。这最终可能导致多个认知领域的缺陷,通常被称为 HIV 相关神经认知障碍 (HAND)。这种缺陷的临床诊断需要详细的神经心理学评估,但在中枢神经系统 (CNS) 无症状损伤期间,临床症状可能难以检测到。因此,神经影像学生物标志物在 HAND 中特别有趣。在这项研究中,我们使用两种不同的方法构建了 40 名受试者的大脑连接图谱(20 名 HIV 阳性受试者和 20 名年龄匹配的血清阴性对照者):一种是基于非线性互连接分析的方法,另一种是基于 Pearson 相关的传统方法。然后,使用图论方法总结这些图谱,这些方法描述了它们的拓扑网络特性。对所有参与者进行了标准的临床和实验室评估,并进行了一系列神经心理学(NP)测试。基于 NP 测试,14 名血清阳性受试者表现出轻度神经功能障碍。随后,我们分析了在调整年龄和性别后,网络衍生测量值与神经心理学评估评分以及常见的临床实验室血浆标志物(CD4 细胞计数、HIV RNA)之间的关联。互连接分析衍生的图论度量, 和 ,与执行以及 NP 表现的整体 z 分数显著相关(<0.05,经 FDR 调整)。相比之下,基于传统相关连接的网络度量没有产生任何显著结果。因此,使用先进的时间序列分析技术可以捕捉到连接的变化。影像学衍生的大脑网络连接图论特性与神经心理学表现之间的关联为在更大的纵向研究中进一步研究 HAND 的演变提供了机会。我们的分析方法涉及非线性时间序列分析与图论的结合,具有很大的潜力,它不仅在 HAND 中而且在其他神经退行性疾病中可能被证明是有用的。