Islam Abrar, Stein Kevin Y, Griesdale Donald, Sekhon Mypinder, Raj Rahul, Bernard Francis, Gallagher Clare, Thelin Eric P, Mathieu Francois, Kramer Andreas, Aries Marcel, Froese Logan, Zeiler Frederick A
Department of Biomedical Engineering, Price Faculty of Engineering, University of Manitoba, Winnipeg, MB R3T 5V6, Canada.
Department of Anesthesiology, Pharmacology, and Therapeutics, University of British Columbia, Vancouver, BC V6T 1Z3, Canada.
Bioengineering (Basel). 2025 Sep 22;12(9):1006. doi: 10.3390/bioengineering12091006.
The cerebral compliance (or compensatory reserve) index, RAP, is a critical yet underutilized physiological marker in the management of moderate-to-severe traumatic brain injury (TBI). While RAP offers promise as a continuous bedside metric, its broader cerebral physiological context remains partly understood. This study aims to characterize the burden of impaired RAP in relation to other key components of cerebral physiology.
Archived data from 379 moderate-to-severe TBI patients were analyzed using descriptive and threshold-based methods across three RAP states (impaired, intact/transitional, and exhausted). Agglomerative hierarchical clustering, principal component analysis, and kernel-based clustering were applied to explore multivariate covariance structures. Then, high-frequency temporal analyses, including vector autoregressive integrated moving average impulse response functions (VARIMA IRF), cross-correlation, and Granger causality, were performed to assess dynamic coupling between RAP and other physiological signals.
Impaired and exhausted RAP states were associated with elevated intracranial pressure ( = 0.021). Regarding AMP, impaired RAP was associated with elevated levels, while exhausted RAP was associated with reduced pulse amplitude ( = 3.94 × 10). These two RAP states were also associated with compromised autoregulation and diminished perfusion. Clustering analyses consistently grouped RAP with its constituent signals (ICP and AMP), followed by brain oxygenation parameters (brain tissue oxygenation (PbtO) and regional cerebral oxygen saturation (rSO)). Cerebral autoregulation (CA) indices clustered more closely with RAP under impaired autoregulatory states. Temporal analyses revealed that RAP exhibited comparatively stronger responses to ICP and arterial blood pressure (ABP) at 1-min resolution. Moreover, when comparing ICP-derived and near-infrared spectroscopy (NIRS)-derived CA indices, they clustered more closely to RAP, and RAP demonstrated greater sensitivity to changes in these ICP-derived CA indices in high-frequency temporal analyses. These trends remained consistent at lower temporal resolutions as well.
RAP relationships with other parameters remain consistent and differ meaningfully across compliance states. Integrating RAP into patient trajectory modelling and developing predictive frameworks based on these findings across different RAP states can map the evolution of cerebral physiology over time. This approach may improve prognostication and guide individualized interventions in TBI management. Therefore, these findings support RAP's potential as a valuable metric for bedside monitoring and its prospective role in guiding patient trajectory modeling and interventional studies in TBI.
脑顺应性(或代偿储备)指数RAP是中重度创伤性脑损伤(TBI)管理中一个关键但未得到充分利用的生理指标。虽然RAP有望成为一种连续的床边指标,但其更广泛的脑生理背景仍部分有待了解。本研究旨在描述受损RAP相对于脑生理其他关键组成部分的负担情况。
使用描述性和基于阈值的方法,对379例中重度TBI患者的存档数据在三种RAP状态(受损、完整/过渡和耗竭)下进行分析。应用凝聚层次聚类、主成分分析和基于核的聚类来探索多变量协方差结构。然后,进行高频时间分析,包括向量自回归积分移动平均脉冲响应函数(VARIMA IRF)、互相关和格兰杰因果关系分析,以评估RAP与其他生理信号之间的动态耦合。
受损和耗竭的RAP状态与颅内压升高相关( = 0.021)。关于平均动脉压(MAP),受损的RAP与水平升高相关,而耗竭的RAP与脉搏幅度降低相关( = 3.94×10)。这两种RAP状态还与自动调节受损和灌注减少有关。聚类分析始终将RAP与其组成信号(颅内压和平均动脉压)归为一组,其次是脑氧合参数(脑组织氧分压(PbtO₂)和局部脑氧饱和度(rSO₂))。在自动调节受损状态下,脑自动调节(CA)指数与RAP聚类更紧密。时间分析表明,在1分钟分辨率下,RAP对颅内压和动脉血压(ABP)表现出相对更强的反应。此外,在比较基于颅内压和近红外光谱(NIRS)得出的CA指数时,它们与RAP聚类更紧密,并且在高频时间分析中,RAP对这些基于颅内压得出的CA指数的变化表现出更高的敏感性。这些趋势在较低时间分辨率下也保持一致。
RAP与其他参数的关系在不同顺应性状态下保持一致且有显著差异。将RAP纳入患者轨迹建模,并基于这些在不同RAP状态下的发现开发预测框架,可以描绘脑生理随时间的演变。这种方法可能改善中重度TBI管理中的预后并指导个体化干预。因此,这些发现支持RAP作为床边监测有价值指标的潜力及其在指导中重度TBI患者轨迹建模和干预研究中的前瞻性作用。