Indiana University School of Medicine, Indianapolis, Indiana, USA.
School of Industrial Engineering, Purdue University, West Lafayette, Indiana, USA.
Hum Brain Mapp. 2021 Aug 1;42(11):3500-3516. doi: 10.1002/hbm.25448. Epub 2021 May 5.
Functional connectivity, as estimated using resting state functional MRI, has shown potential in bridging the gap between pathophysiology and cognition. However, clinical use of functional connectivity biomarkers is impeded by unreliable estimates of individual functional connectomes and lack of generalizability of models predicting cognitive outcomes from connectivity. To address these issues, we combine the frameworks of connectome predictive modeling and differential identifiability. Using the combined framework, we show that enhancing the individual fingerprint of resting state functional connectomes leads to robust identification of functional networks associated to cognitive outcomes and also improves prediction of cognitive outcomes from functional connectomes. Using a comprehensive spectrum of cognitive outcomes associated to Alzheimer's disease (AD), we identify and characterize functional networks associated to specific cognitive deficits exhibited in AD. This combined framework is an important step in making individual level predictions of cognition from resting state functional connectomes and in understanding the relationship between cognition and connectivity.
功能连接性,通过静息态功能磁共振成像来估计,已经显示出在连接病理生理学和认知之间的差距方面具有潜力。然而,功能连接生物标志物的临床应用受到个体功能连接图的不可靠估计和预测认知结果的模型的可推广性的限制。为了解决这些问题,我们结合了连接预测模型和差异可识别性的框架。使用联合框架,我们表明,增强静息态功能连接图的个体特征可导致与认知结果相关的功能网络的稳健识别,并且还提高了从功能连接图预测认知结果的能力。使用与阿尔茨海默病(AD)相关的全面认知结果谱,我们确定并描述了与 AD 中表现出的特定认知缺陷相关的功能网络。该联合框架是从静息态功能连接图对认知进行个体水平预测以及理解认知和连接之间关系的重要步骤。