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首页> 外文期刊>BioMedical Engineering OnLine >Estimation of cardiac output and systemic vascular resistance using a multivariate regression model with features selected from the finger photoplethysmogram and routine cardiovascular measurements
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Estimation of cardiac output and systemic vascular resistance using a multivariate regression model with features selected from the finger photoplethysmogram and routine cardiovascular measurements

机译:使用多元回归模型估算心输出量和全身血管阻力,该模型具有从手指体积描记图和常规心血管测量中选择的特征

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摘要

Background Cardiac output (CO) and systemic vascular resistance (SVR) are two important parameters of the cardiovascular system. The ability to measure these parameters continuously and noninvasively may assist in diagnosing and monitoring patients with suspected cardiovascular diseases, or other critical illnesses. In this study, a method is proposed to estimate both the CO and SVR of a heterogeneous cohort of intensive care unit patients (N=48). Methods Spectral and morphological features were extracted from the finger photoplethysmogram, and added to heart rate and mean arterial pressure as input features to a multivariate regression model to estimate CO and SVR. A stepwise feature search algorithm was employed to select statistically significant features. Leave-one-out cross validation was used to assess the generalized model performance. The degree of agreement between the estimation method and the gold standard was assessed using Bland-Altman analysis. Results The Bland-Altman bias ±precision (1.96 times standard deviation) for CO was -0.01 ±2.70 L min-1 when only photoplethysmogram (PPG) features were used, and for SVR was -0.87 ±412 dyn.s.cm-5 when only one PPG variability feature was used. Conclusions These promising results indicate the feasibility of using the method described as a non-invasive preliminary diagnostic tool in supervised or unsupervised clinical settings.
机译:背景心输出量(CO)和全身血管阻力(SVR)是心血管系统的两个重要参数。连续且无创地测量这些参数的能力可能有助于诊断和监测患有可疑心血管疾病或其他严重疾病的患者。在这项研究中,提出了一种方法来估计重症监护病房患者异质队列的CO和SVR(N = 48)。方法从手指体积描记图中提取光谱和形态特征,并将其与心率和平均动脉压相加作为输入特征,以多元回归模型估算CO和SVR。采用逐步特征搜索算法来选择统计上重要的特征。留一法交叉验证用于评估广义模型的性能。估计方法与金标准之间的一致性程度使用Bland-Altman分析进行评估。结果当仅使用光电容积描记(PPG)功能时,CO的Bland-Altman偏差±精度(标准偏差的1.96倍)为-0.01±2.70 L min -1 ,而SVR的-BVR则为-0.87±412 dyn.s.cm -5 (仅使用一个PPG可变性功能时)。结论这些令人鼓舞的结果表明,在有监督或无监督的临床环境中,将该方法用作非侵入性初步诊断工具的可行性。

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