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Improved Noninvasive Intracranial Pressure Assessment With Nonlinear Kernel Regression

机译:非线性核回归的改进无创颅内压评估

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摘要

The only established technique for intracranial pressure (ICP) measurement is an invasive procedure requiring surgically penetrating the skull for placing pressure sensors. However, there are many clinical scenarios where a noninvasive assessment of ICP is highly desirable. With an assumption of a linear relationship among arterial blood pressure (ABP), ICP, and flow velocity (FV) of major cerebral arteries, an approach has been previously developed to estimate ICP noninvasively, the core of which is the linear estimation of the coefficients $f$ between ABP and ICP from the coefficients $w$ calculated between ABP and FV. In this paper, motivated by the fact that the relationships among these three signals are so complex that simple linear models may be not adequate to depict the relationship between these two coefficients, i.e., $f$ and $w$ , we investigate the adoption of several nonlinear kernel regression approaches, including kernel spectral regression (KSR) and support vector machine (SVM) to improve the original linear ICP estimation approach. The ICP estimation results on a dataset consisting of 446 entries from 23 patients show that the mean ICP error by the nonlinear approaches can be reduced to below 6.0 mmHg compared to 6.7 mmHg of the original approach. The statistical test also demonstrates that the ICP error by the proposed nonlinear kernel approaches is statistically smaller than that estimated with the original linear model ( $p$ < 0.05). The current result confirms the potential of using nonlinear regression to achieve more accurate noninvasive ICP assessment.
机译:颅内压(ICP)测量的唯一建立的技术是一种侵入性手术,需要通过手术穿透颅骨来放置压力传感器。但是,在许多临床方案中,非常需要对ICP进行无创评估。假设动脉血压(ABP),ICP和主要脑动脉的流速(FV)之间存在线性关系,以前已经开发出一种无创估算ICP的方法,其核心是系数的线性估算根据ABP和FV之间计算的系数$ w $,得出ABP和ICP之间的$ f $。在本文中,出于以下事实的动机:这三个信号之间的关系是如此复杂,以至于简单的线性模型可能不足以描述这两个系数(即$ f $和$ w $)之间的关系,因此我们研究了采用几种非线性核回归方法,包括核谱回归(KSR)和支持向量机(SVM),以改进原始的线性ICP估计方法。在来自23位患者的446个条目的数据集上的ICP估计结果表明,与原始方法的6.7 mmHg相比,通过非线性方法的平均ICP误差可降低至6.0 mmHg以下。统计测试还表明,所提出的非线性核方法所产生的ICP误差在统计上要比原始线性模型估计的ICP误差小($ p $ <0.05)。目前的结果证实了使用非线性回归实现更准确的无创ICP评估的潜力。

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