Pinto Joana, Blockley Nicholas P, Harkin James W, Bulte Daniel P
Institute of Biomedical Engineering, Department of Engineering Science, University of Oxford, Oxford, United Kingdom.
David Greenfield Human Physiology Unit, School of Life Sciences, University of Nottingham, Nottingham, United Kingdom.
Front Physiol. 2023 May 26;14:1142359. doi: 10.3389/fphys.2023.1142359. eCollection 2023.
Cerebral blood flow (CBF) is an important physiological parameter that can be quantified non-invasively using arterial spin labelling (ASL) imaging. Although most ASL studies are based on single-timepoint strategies, multi-timepoint approaches (multiple-PLD) in combination with appropriate model fitting strategies may be beneficial not only to improve CBF quantification but also to retrieve other physiological information of interest. In this work, we tested several kinetic models for the fitting of multiple-PLD pCASL data in a group of 10 healthy subjects. In particular, we extended the standard kinetic model by incorporating dispersion effects and the macrovascular contribution and assessed their individual and combined effect on CBF quantification. These assessments were performed using two pseudo-continuous ASL (pCASL) datasets acquired in the same subjects but during two conditions mimicking different CBF dynamics: normocapnia and hypercapnia (achieved through a CO stimulus). All kinetic models quantified and highlighted the different CBF spatiotemporal dynamics between the two conditions. Hypercapnia led to an increase in CBF whilst decreasing arterial transit time (ATT) and arterial blood volume (aBV). When comparing the different kinetic models, the incorporation of dispersion effects yielded a significant decrease in CBF (∼10-22%) and ATT (∼17-26%), whilst aBV (∼44-74%) increased, and this was observed in both conditions. The extended model that includes dispersion effects and the macrovascular component has been shown to provide the best fit to both datasets. Our results support the use of extended models that include the macrovascular component and dispersion effects when modelling multiple-PLD pCASL data.
脑血流量(CBF)是一项重要的生理参数,可通过动脉自旋标记(ASL)成像进行无创定量。尽管大多数ASL研究基于单时间点策略,但多时间点方法(多个PLD)结合适当的模型拟合策略可能不仅有利于改善CBF定量,还能获取其他感兴趣的生理信息。在这项工作中,我们在一组10名健康受试者中测试了几种动力学模型,用于拟合多个PLD的伪连续动脉自旋标记(pCASL)数据。特别是,我们通过纳入弥散效应和大血管贡献扩展了标准动力学模型,并评估了它们对CBF定量的单独和综合影响。这些评估使用了在同一受试者中获取但处于模拟不同CBF动态的两种条件下的两个伪连续ASL(pCASL)数据集:正常碳酸血症和高碳酸血症(通过CO刺激实现)。所有动力学模型都对两种条件下不同的CBF时空动态进行了量化和突出显示。高碳酸血症导致CBF增加,同时动脉传输时间(ATT)和动脉血容量(aBV)减少。比较不同的动力学模型时,纳入弥散效应导致CBF(约10 - 22%)和ATT(约17 - 26%)显著降低,而aBV(约44 - 74%)增加,并且在两种条件下均观察到这种情况。已证明包含弥散效应和大血管成分的扩展模型对两个数据集的拟合效果最佳。我们的结果支持在对多个PLD的pCASL数据进行建模时使用包含大血管成分和弥散效应的扩展模型。