College of Medicine and Biological Information Engineering, Northeastern University, Shenyang, 110167, China.
College of Medicine and Biological Information Engineering, Northeastern University, Shenyang, 110167, China.
Comput Biol Med. 2022 Jul;146:105528. doi: 10.1016/j.compbiomed.2022.105528. Epub 2022 Apr 15.
The central aortic pressure (CAP) provides insights into the prediction, prevention, diagnosis, and treatment of cardiovascular disease, but can't be directly measured non-invasively. Therefore, the development of a noninvasive CAP estimation method based on the non-invasively measured peripheral pressure waveform is critical for clinical decisions based on the CAP. Some existing widely applied methods, such as the generalized transfer function (GTF) method relating measured peripheral pressure to the CAP, do not or only partly account for inter-subject or intra-subject variability of the cardiovascular system. To overcome this pitfall, we propose a subject-specific central aortic pressure estimation method in this paper. The novel method presented can derive an accurate aortic pressure from the peripheral pressure based on an individualized pulse wave propagation model using a GTF method as a first guess. To develop a strategy to personalize a pulse wave propagation model one usually needs to optimize many input parameters. Therefore, we present a two-step approach with the screening method of Morris and the adaptive sparse generalized polynomial chaos expansion (agPCE) algorithm for the sensitivity analysis of the wave propagation model. First, for a-priori defined output of the model, a subset of important parameters is identified using the screening method of Morris. Next, a quantitative variance-based sensitivity analysis is performed using agPCE. This approach is applied to a 1D pulse wave propagation model to get the personalized parameters of the pulse wave propagation model for the estimation of a subject-specific central aortic pressure waveform and is validated with 26 patients. Compared with the GTF method, the proposed method showed better performance in estimating the central aortic pulse wave and predicting the parameters.
中心动脉压(CAP)为心血管疾病的预测、预防、诊断和治疗提供了重要信息,但不能直接进行无创测量。因此,开发一种基于外周压力波形无创测量的非侵入性 CAP 估计方法对于基于 CAP 的临床决策至关重要。一些现有的广泛应用的方法,如将外周压力与 CAP 相关联的广义传递函数(GTF)方法,没有或仅部分考虑了心血管系统的个体间或个体内变异性。为了克服这一缺陷,我们在本文中提出了一种基于个体的中心动脉压估计方法。该方法基于 GTF 方法作为初始猜测,使用个体化脉搏波传播模型从外周压力中得出准确的主动脉压力。为了开发个性化脉搏波传播模型的策略,通常需要优化许多输入参数。因此,我们提出了一种两步法,结合了 Morris 筛选法和自适应稀疏广义多项式混沌扩展(agPCE)算法,用于对波传播模型进行敏感性分析。首先,对于模型的预先定义的输出,使用 Morris 筛选法确定一组重要参数。接下来,使用 agPCE 进行定量方差敏感性分析。该方法应用于 1D 脉搏波传播模型,以获得个体脉搏波传播模型的个性化参数,用于估计个体特定的中心主动脉脉搏波,并通过 26 名患者进行验证。与 GTF 方法相比,该方法在估计中心主动脉脉搏波和预测参数方面表现出更好的性能。