Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:3981-3984. doi: 10.1109/EMBC48229.2022.9871581.
In recent decades, many researches have proposed various models for continuous, cuffless blood pressure (BP) estimation. However, due to aleatoric uncertainty and epistemic uncertainty existing in the problem, it is very challenging to evaluate cuffless BP with acceptable accuracy. This paper innovatively proposes a cuffless BP ensemble estimation model based on Bayesian Model Average (BMA) method to reduce the epistemic uncertainty. We combine four most frequently cited physiological models and four regression models based on Photoplethysmogram (PPG) and Electrocardiogram (ECG) signals, and use the BMA method to assign weights to each model to achieve accurate cuffless BP prediction. The proposed method was validated on 17 healthy and 13 hypertensive subjects with continuous Finometer BP as a reference. The results showed that the error mean ± SD (standard deviations) of both SBP and DBP predicted by the proposed method were 2.13 ± 5.68 mmHg and 1.42 ± 5.11 mmHg, respectively, which were both lower than each of the model. And the MAE was 6% and 8% lower than the best member of the model ensemble. We also analyzed the relationship between the number of training epochs and model prediction performance. When 15 cardiac cycles were choosed for training, it could get a good balance between model prediction accuracy and algorithm complexity. Therefore, the proposed BMA method can solve the model uncertainty problem, providing robust and deterministic BP prediction. Clinical relevance- This paper proposes a new method for wearable BP estimation which enables BP monitoring in both clinical settings and home settings. It offers a stable way to monitor BP to help patients detect disease early.
近几十年来,许多研究提出了各种连续无袖带血压(BP)估计模型。然而,由于该问题存在随机性不确定性和认知不确定性,因此很难以可接受的精度评估无袖带 BP。本文创新性地提出了一种基于贝叶斯模型平均(BMA)方法的无袖带 BP 集成估计模型,以降低认知不确定性。我们结合了四个最常引用的生理模型和四个基于光体积描记图(PPG)和心电图(ECG)信号的回归模型,并使用 BMA 方法为每个模型分配权重,以实现准确的无袖带 BP 预测。该方法在 17 名健康人和 13 名高血压患者上进行了验证,以连续的 Finometer BP 作为参考。结果表明,所提出方法预测的 SBP 和 DBP 的误差均值±SD(标准偏差)分别为 2.13±5.68mmHg 和 1.42±5.11mmHg,均低于每个模型。MAE 比模型集成的最佳成员低 6%和 8%。我们还分析了训练轮数与模型预测性能之间的关系。当选择 15 个心动周期进行训练时,它可以在模型预测精度和算法复杂度之间取得良好的平衡。因此,所提出的 BMA 方法可以解决模型不确定性问题,提供稳健且确定的 BP 预测。临床相关性-本文提出了一种新的可穿戴 BP 估计方法,它可以在临床环境和家庭环境中进行 BP 监测。它提供了一种稳定的监测 BP 的方法,有助于患者早期发现疾病。