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Artificial arterial blood pressure artifact models and an evaluation of a robust blood pressure and heart rate estimator

机译:人工动脉血压伪影模型以及可靠的血压和心率估算器的评估

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Background Within the intensive care unit (ICU), arterial blood pressure (ABP) is typically recorded at different (and sometimes uneven) sampling frequencies, and from different sensors, and is often corrupted by different artifacts and noise which are often non-Gaussian, nonlinear and nonstationary. Extracting robust parameters from such signals, and providing confidences in the estimates is therefore difficult and requires an adaptive filtering approach which accounts for artifact types. Methods Using a large ICU database, and over 6000 hours of simultaneously acquired electrocardiogram (ECG) and ABP waveforms sampled at 125 Hz from a 437 patient subset, we documented six general types of ABP artifact. We describe a new ABP signal quality index (SQI), based upon the combination of two previously reported signal quality measures weighted together. One index measures morphological normality, and the other degradation due to noise. After extracting a 6084-hour subset of clean data using our SQI, we evaluated a new robust tracking algorithm for estimating blood pressure and heart rate (HR) based upon a Kalman Filter (KF) with an update sequence modified by the KF innovation sequence and the value of the SQI. In order to do this, we have created six novel models of different categories of artifacts that we have identified in our ABP waveform data. These artifact models were then injected into clean ABP waveforms in a controlled manner. Clinical blood pressure (systolic, mean and diastolic) estimates were then made from the ABP waveforms for both clean and corrupted data. The mean absolute error for systolic, mean and diastolic blood pressure was then calculated for different levels of artifact pollution to provide estimates of expected errors given a single value of the SQI. Results Our artifact models demonstrate that artifact types have differing effects on systolic, diastolic and mean ABP estimates. We show that, for most artifact types, diastolic ABP estimates are less noise-sensitive than mean ABP estimates, which in turn are more robust than systolic ABP estimates. We also show that our SQI can provide error bounds for both HR and ABP estimates. Conclusion The KF/SQI-fusion method described in this article was shown to provide an accurate estimate of blood pressure and HR derived from the ABP waveform even in the presence of high levels of persistent noise and artifact, and during extreme bradycardia and tachycardia. Differences in error between artifact types, measurement sensors and the quality of the source signal can be factored into physiological estimation using an unbiased adaptive filter, signal innovation and signal quality measures.
机译:背景技术在重症监护病房(ICU)中,通常以不同的(有时是不均匀的)采样频率并通过不同的传感器记录动脉血压(ABP),并经常因不同的伪影和噪声(通常不是高斯噪声)而被破坏,非线性和非平稳的。因此,从这样的信号中提取鲁棒参数并提供估计的置信度是困难的,并且需要考虑伪像类型的自适应滤波方法。方法使用一个大型ICU数据库,并从437个患者亚群中以125 Hz的频率同时采集超过6000小时的心电图(ECG)和ABP波形,我们记录了六种常规类型的ABP伪影。我们基于加权的两个先前报告的信号质量度量值的组合,描述了一种新的ABP信号质量指数(SQI)。一个指标测量形态正常性,另一个指标测量噪声引起的退化。在使用我们的SQI提取了6084小时的干净数据子集之后,我们评估了一种新的鲁棒跟踪算法,该算法基于卡尔曼滤波器(KF)估算了血压和心率(HR),该更新序列由KF创新序列和SQI的值。为了做到这一点,我们创建了六个新的模型,这些模型在ABP波形数据中已经确定了不同类别的伪像。然后将这些伪影模型以受控方式注入到干净的ABP波形中。然后根据ABP波形对干净和损坏的数据进行临床血压(收缩压,平均压和舒张压)估计。然后针对不同水平的人工污染,计算收缩压,平均压和舒张压的平均绝对误差,以在给定单个SQI值的情况下提供预期误差的估计值。结果我们的人工产物模型表明,人工产物类型对收缩压,舒张压和平均ABP估计值有不同的影响。我们表明,对于大多数伪像类型,舒张期ABP估计值对噪声的敏感性低于平均ABP估计值,而平均ABP估计值比收缩期ABP估计值更可靠。我们还表明,我们的SQI可以为HR和ABP估计值提供误差范围。结论本文描述的KF / SQI融合方法显示出即使在持续存在高水平的持续噪声和伪影以及极端心动过缓和心动过速的情况下,也可以准确估算从ABP波形得出的血压和HR。可以使用无偏自适应滤波器,信号创新和信号质量度量将假象类型,测量传感器和源信号质量之间的误差差异纳入生理估计中。

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