一种基于鲁棒神经网络的光容积脉搏波估计动脉血压的方法。

Buddhishan Manamperi, Charith D. Chitraranjan
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引用次数: 4

摘要

高血压可导致各种心血管疾病,增加死亡风险。Photoplethysmography (PPG)是一种低成本、无创的连续测定动脉血压的光学技术。从PPG信号中可以提取出几种不同类别的特征。突出的特征包括基于宽度的特征、频域特征和从信号的二阶导数中提取的特征(加速PPG)。现有的方法主要使用一种或另一种类别的特征,但不使用来自多个类别的特征。我们提出了一种从PPG信号中提取特征组合的方法,这些特征跨越了上述类别,并使用它们来训练神经网络以估计血压值。此外,大多数现有的方法都没有对使用消费级/可穿戴设备在非临床环境中收集的PPG信号进行评估,这使得它们在这些环境中的适用性未经测试。我们使用在临床环境中收集的基准数据集(MIMIC II)以及在非临床环境中使用消费级设备收集的数据集来评估我们的方法。结果表明,我们的方法使用了53个特征,收缩压和舒张压的平均绝对误差分别为4.8 mmHg和2.5 mmHg,而在MIMIC II数据集的标准英国高血压协会的估计下,这两个估计都达到了A级。将相同的方法应用于第二个数据集,与使用标准振荡装置获得的读数(收缩压和舒张压分别为MAE 4.1和1.7 mmHg)吻合良好,这表明我们的方法具有稳健性。
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A Robust Neural Network-Based Method to Estimate Arterial Blood Pressure Using Photoplethysmography.
High Blood Pressure can lead to various cardiovascular diseases increasing the risk of death. Photoplethysmography (PPG) can be used as a low cost, optical technique to determine the arterial blood pressure continuously and noninvasively. Features of several different categories can be extracted from PPG signals. The prominent ones include width-based features, frequency domain features and features extracted from the second derivative of the signal (accelerated PPG). Existing methods primarily use one category of features or another but do not use features from multiple categories. We propose a method to extract a combination of characteristics from the PPG signal, which spans across the aforementioned categories and use them to train a neural network in order to estimate the Blood pressure values. Furthermore, most existing methods are not evaluated on PPG signals collected in a nonclinical setting using consumer-grade/wearable devices, which leaves their applicability to such settings untested. We evaluate our method using a benchmark dataset (MIMIC II) collected in a clinical setting as well a dataset collected using a consumer-grade device in a nonclinical setting. The results show that our method using 53 features achieves Mean Absolute Errors of 4.8 mmHg & 2.5 mmHg for Systolic Blood Pressure and Diastolic Blood Pressure respectively while reaching grade A for both the estimates under the standard British Hypertension Society for the MIMIC II dataset. The same methodology applied to the second dataset shows good agreement (MAE 4.1, 1.7 mmHg for SBP and DBP respectively) with readings taken using a standard oscillometric device, which suggests the robustness of our approach.
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