Stroh J N, Foreman Brandon, Bennett Tellen D, Briggs Jennifer K, Park Soojin, Albers David J
Department of Biomedical Informatics, University of Colorado Anschutz Medical Campus, Aurora, CO, United States.
Department of Bioengineering, University of Colorado Denver |Anschutz Medical Campus, Denver, CO, United States.
Front Physiol. 2024 Aug 12;15:1381127. doi: 10.3389/fphys.2024.1381127. eCollection 2024.
The protocols and therapeutic guidance established for treating traumatic brain injury (TBI) in neurointensive care focus on managing cerebral blood flow (CBF) and brain tissue oxygenation based on pressure signals. The decision support process relies on assumed relationships between cerebral perfusion pressure (CPP) and blood flow, pressure-flow relationships (PFRs), and shares this framework of assumptions with mathematical intracranial hemodynamics models. These foundational assumptions are difficult to verify, and their violation can impact clinical decision-making and model validity. A hypothesis- and model-driven method for verifying and understanding the foundational intracranial hemodynamic PFRs is developed and applied to a novel multi-modality monitoring dataset. Model analysis of joint observations of CPP and CBF validates the standard PFR when autoregulatory processes are impaired as well as unmodelable cases dominated by autoregulation. However, it also identifies a dynamical regime -or behavior pattern-where the PFR assumptions are wrong in a precise, data-inferable way due to negative CPP-CBF coordination over long timescales. This regime is of both clinical and research interest: its dynamics are modelable under modified assumptions while its causal direction and mechanistic pathway remain unclear. Motivated by the understanding of mathematical physiology, the validity of the standard PFR can be assessed ) directly by analyzing pressure reactivity and mean flow indices (PRx and Mx) or ) indirectly through the relationship between CBF and other clinical observables. This approach could potentially help to personalize TBI care by considering intracranial pressure and CPP in relation to other data, particularly CBF. The analysis suggests a threshold using clinical indices of autoregulation jointly generalizes independently set indicators to assess CA functionality. These results support the use of increasingly data-rich environments to develop more robust hybrid physiological-machine learning models.
神经重症监护中用于治疗创伤性脑损伤(TBI)的方案和治疗指南侧重于根据压力信号管理脑血流量(CBF)和脑组织氧合。决策支持过程依赖于脑灌注压(CPP)与血流之间的假定关系、压力-流量关系(PFRs),并与数学颅内血流动力学模型共享这一假设框架。这些基本假设难以验证,其违背可能会影响临床决策和模型有效性。本文开发了一种基于假设和模型驱动的方法来验证和理解颅内血流动力学基本PFRs,并将其应用于一个新创建的多模态监测数据集。当自动调节过程受损以及以自动调节为主导的无法建模的情况时,对CPP和CBF联合观测值进行模型分析可验证标准PFR。然而,它也识别出一种动态状态或行为模式,由于在长时间尺度上CPP-CBF的负协调作用,PFR假设在这种状态下以一种精确的、可从数据推断的方式是错误的。这种状态在临床和研究方面都具有重要意义:其动力学在修改后的假设下是可建模的,但其因果方向和机制途径仍不清楚。基于对数学生理学的理解,可以通过直接分析压力反应性和平均流量指数(PRx和Mx)或通过CBF与其他临床可观测指标之间的关系间接评估标准PFR的有效性。这种方法通过考虑颅内压和CPP与其他数据(特别是CBF)的关系,有可能有助于实现TBI护理的个性化。分析表明,使用自动调节的临床指标的阈值可以共同概括独立设置的指标,以评估脑血管自动调节功能(CA)。这些结果支持利用日益丰富的数据环境来开发更强大的混合生理-机器学习模型。