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Development and validation of a sample entropy-based method to identify complex patient-ventilator interactions during mechanical ventilation

机译:基于样本熵的方法的开发与验证识别机械通气期间复杂患者通风机相互作用的方法

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Patient-ventilator asynchronies can be detected by close monitoring of ventilator screens by clinicians or through automated algorithms. However, detecting complex patient-ventilator interactions (CP-VI), consisting of changes in the respiratory rate and/or clusters of asynchronies, is a challenge. Sample Entropy (SE) of airway flow (SE-Flow) and airway pressure (SE-Paw) waveforms obtained from 27 critically ill patients was used to develop and validate an automated algorithm for detecting CP-VI. The algorithm’s performance was compared versus the gold standard (the ventilator’s waveform recordings for CP-VI were scored visually by three experts; Fleiss’ kappa?=?0.90 (0.87–0.93)). A repeated holdout cross-validation procedure using the Matthews correlation coefficient (MCC) as a measure of effectiveness was used for optimization of different combinations of SE settings (embedding dimension, m, and tolerance value, r), derived SE features (mean and maximum values), and the thresholds of change (Th) from patient’s own baseline SE value. The most accurate results were obtained using the maximum values of SE-Flow (m?=?2, r?=?0.2, Th?=?25%) and SE-Paw (m?=?4, r?=?0.2, Th?=?30%) which report MCCs of 0.85 (0.78–0.86) and 0.78 (0.78–0.85), and accuracies of 0.93 (0.89–0.93) and 0.89 (0.89–0.93), respectively. This approach promises an improvement in the accurate detection of CP-VI, and future study of their clinical implications.
机译:通过临床医生或通过自动算法密切监控呼吸机屏幕,可以检测患者通风机异步。然而,检测复杂的患者通风机相互作用(CP-VI),由呼吸速率和/或异步簇的变化组成,是一个挑战。从27名批判性患者获得的气道流(SE流动)和气道压力(SE-PAW)波形的样本熵(SE)用于开发和验证用于检测CP-VI的自动化算法。该算法的性能与黄金标准进行了比较(CP-VI的呼吸机的波形记录,通过三位专家在视觉上得分; Fleiss'Kappa?=?0.90(0.87-0.93))。使用Matthews相关系数(MCC)作为有效程度的重复闭合交叉验证过程用于优化SE设置(嵌入维度,M和公差值,R)的不同组合(均值和最大值值),以及来自患者自己的基线SE值的变化阈值(th)。使用最大se流动的值(m?=Δ2,r?= 0.2,th?=Δ25%)和se-paw(m?=Δ4,r?=?0.2 ,TH?= 30%)报告0.85(0.78-0.86)和0.78(0.78-0.85)的MCC,分别为0.93(0.89-0.93)和0.89(0.89-0.93)的准确度。这种方法有助于提高CP-VI的准确检测,以及对其临床意义的未来研究。

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