Li Xiang, Towe Sheri L, Bell Ryan P, Jiang Rongtao, Hall Shana A, Calhoun Vince D, Meade Christina S, Sui Jing
IEEE J Biomed Health Inform. 2023 Apr;27(4):2094-2104. doi: 10.1109/JBHI.2023.3240508. Epub 2023 Apr 4.
Neurocognitive impairment continues to be common comorbidity for people living with HIV (PLWH). Given the chronic nature of HIV disease, identifying reliable biomarkers of these impairments is essential to advance our understanding of the underlying neural foundation and facilitate screening and diagnosis in clinical care. While neuroimaging provides immense potential for such biomarkers, to date, investigations in PLWH have been mostly limited to either univariate mass techniques or a single neuroimaging modality. In the present study, connectome-based predictive modeling (CPM) was proposed to predict individual differences of cognitive functioning in PLWH, using resting-state functional connectivity (FC), white matter structural connectivity (SC), and clinical relevant measures. We also adopted an efficient feature selection approach to identify the most predictive features, which achieved an optimal prediction accuracy of r = 0.61 in the discovery dataset (n = 102) and r = 0.45 in an independent validation HIV cohort (n = 88). Two brain templates and nine distinct prediction models were also tested for better modeling generalizability. Results show that combining multimodal FC and SC features enabled higher prediction accuracy of cognitive scores in PLWH, while adding clinical and demographic metrics may further improve the prediction by introducing complementary information, which may help better evaluate the individual-level cognitive performance in PLWH.
神经认知障碍仍然是艾滋病毒感染者(PLWH)常见的合并症。鉴于艾滋病毒疾病的慢性性质,确定这些障碍的可靠生物标志物对于加深我们对潜在神经基础的理解以及促进临床护理中的筛查和诊断至关重要。虽然神经影像学为这类生物标志物提供了巨大潜力,但迄今为止,对PLWH的研究大多局限于单变量质量技术或单一神经影像学模式。在本研究中,我们提出基于连接组的预测模型(CPM),利用静息态功能连接(FC)、白质结构连接(SC)和临床相关指标来预测PLWH认知功能的个体差异。我们还采用了一种有效的特征选择方法来识别最具预测性的特征,在发现数据集(n = 102)中实现了r = 0.61的最佳预测准确率,在独立验证的艾滋病毒队列(n = 88)中实现了r = 0.45的最佳预测准确率。还测试了两种脑模板和九个不同的预测模型,以获得更好的建模通用性。结果表明,结合多模态FC和SC特征能够在PLWH中实现更高的认知分数预测准确率,而添加临床和人口统计学指标可能通过引入补充信息进一步提高预测准确率,这可能有助于更好地评估PLWH的个体水平认知表现。