School of Artificial Intelligent, Chongqing University of Technology, Chongqing 400050, China.
School of Artificial Intelligent, Chongqing University of Technology, Chongqing 400050, China.
Comput Methods Programs Biomed. 2022 May;218:106738. doi: 10.1016/j.cmpb.2022.106738. Epub 2022 Mar 8.
Stroke volume (SV) and cardiac output (CO) are the key indicators for the evaluation of cardiac function and hemodynamic status during the perioperative period, which are very important in the detection and treatment of cardiovascular diseases. Traditional CO and SV measurement methods have problems such as complex operation, low precision and poor generalization ability.
In this paper, a method for estimating stroke volume based on cascade artificial neural network (ANN) and time domain features of radial pulse waveform (SV) was proposed. The simulation datasets of 4000 radial pulse waveforms and stroke volume (SV) were generated by a 55 segment transmission line model of the human systemic vasculature and a recursive algorithm. The ANN was trained and tested by 10-fold cross-validation, and compared with 12 traditional models.
Experimental results showed that the Pearson correlation coefficients and mean difference between SV and SV (R=0.95, mean standard deviation (SD) = 0.00 ± 6.45) were better than the best results of the 12 traditional models. Moreover, as increasing the number of training samples, the performance improvement of the ANN (R=0.94(Δ + 0.04), mean ± SD = 0.00 ± 6.38(Δ± 2.02)) was better than the other best model, namely, multiple linear regression model (MLR) (R=0.93(Δ + 0.03), mean ± SD = 0.00 ± 6.99(Δ± 1.50)).
A method is proposed to estimate cardiac stroke volume by the ANN with time domain features of radial pulse wave. It avoids the complicated modeling process based on hemodynamics within traditional models, improves the estimation accuracy of SV, and has a good generalization ability.
心排量(CO)和每搏量(SV)是评估围术期心功能和血流动力学状态的关键指标,在心脑血管疾病的检测和治疗中具有十分重要的作用。传统的 CO 和 SV 测量方法存在操作复杂、精度低、泛化能力差等问题。
本文提出了一种基于级联人工神经网络(ANN)和桡动脉脉搏波时域特征的 SV 估算方法。通过 55 节段的人体系统血管传输线模型和递归算法生成了 4000 个桡动脉脉搏波和 SV 模拟数据集。通过 10 折交叉验证对 ANN 进行训练和测试,并与 12 种传统模型进行比较。
实验结果表明,SV 与 SV 的 Pearson 相关系数和平均差值(R=0.95,平均标准差(SD)=0.00±6.45)优于 12 种传统模型的最佳结果。此外,随着训练样本数量的增加,ANN 的性能提高(R=0.94(Δ+0.04),平均±SD=0.00±6.38(Δ±2.02))优于其他最佳模型,即多元线性回归模型(MLR)(R=0.93(Δ+0.03),平均±SD=0.00±6.99(Δ±1.50))。
本文提出了一种基于桡动脉脉搏波时域特征的 ANN 方法来估算心搏量。它避免了传统模型中基于血液动力学的复杂建模过程,提高了 SV 的估计精度,具有良好的泛化能力。