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Increasing signal processing sophistication in the calculation of the respiratory modulation of the photoplethysmogram (DPOP)

机译:在光电容积描记图(DPOP)呼吸调制的计算中信号处理的复杂性不断提高

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摘要

DPOP (∆POP or Delta-POP) is a non-invasive parameter which measures the strength of respiratory modulations present in the pulse oximetry photoplethysmogram (pleth) waveform. It has been proposed as a non-invasive surrogate parameter for pulse pressure variation (PPV) used in the prediction of the response to volume expansion in hypovolemic patients. Many groups have reported on the DPOP parameter and its correlation with PPV using various semi-automated algorithmic implementations. The study reported here demonstrates the performance gains made by adding increasingly sophisticated signal processing components to a fully automated DPOP algorithm. A DPOP algorithm was coded and its performance systematically enhanced through a series of code module alterations and additions. Each algorithm iteration was tested on data from 20 mechanically ventilated OR patients. Correlation coefficients and ROC curve statistics were computed at each stage. For the purposes of the analysis we split the data into a manually selected ‘stable’ region subset of the data containing relatively noise free segments and a ‘global’ set incorporating the whole data record. Performance gains were measured in terms of correlation against PPV measurements in OR patients undergoing controlled mechanical ventilation. Through increasingly advanced pre-processing and post-processing enhancements to the algorithm, the correlation coefficient between DPOP and PPV improved from a baseline value of R = 0.347 to R = 0.852 for the stable data set, and, correspondingly, R = 0.225 to R = 0.728 for the more challenging global data set. Marked gains in algorithm performance are achievable for manually selected stable regions of the signals using relatively simple algorithm enhancements. Significant additional algorithm enhancements, including a correction for low perfusion values, were required before similar gains were realised for the more challenging global data set.
机译:DPOP(∆POP或Delta-POP)是一种非侵入性参数,用于测量脉搏血氧定量光体积描记图(体积)波形中存在的呼吸调节强度。已经提出将其作为脉搏压力变化(PPV)的非侵入性替代参数,用于预测低血容量患者对体积膨胀的反应。许多小组已经使用各种半自动算法实现报告了DPOP参数及其与PPV的相关性。此处报道的研究表明,通过向全自动DPOP算法添加日益复杂的信号处理组件,可以提高性能。通过一系列代码模块的更改和添加,对DPOP算法进行了编码,并系统地提高了其性能。每次算法迭代均根据来自20名机械通气OR患者的数据进行了测试。在每个阶段计算相关系数和ROC曲线统计量。为了进行分析,我们将数据分为人工选择的“稳定”区域子集,该子集包含相对无噪声的片段和包含整个数据记录的“全局”集。在与接受受控机械通气的OR患者中,PPV测量值与PPV测量值的相关性衡量了性能提升。通过对算法进行越来越高级的预处理和后处理增强,对于稳定数据集,DPOP和PPV之间的相关系数从R = 0.347的基线值提高到R = 0.852的基线,相应地,R = 0.225到R更具挑战性的全球数据集= 0.728。使用相对简单的算法增强功能,对于手动选择的信号稳定区域,可以获得算法性能的显着提高。在为更具挑战性的全球数据集实现类似收益之前,还需要对算法进行其他重大改进,包括对低灌注值进行校正。

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