From the Department of Biomedical Engineering, Lerner Research Institute, Cleveland Clinic, Cleveland, Ohio.
Cleveland Clinic Lerner College of Medicine of Case Western Reserve University, Cleveland Clinic, Cleveland, Ohio.
ASAIO J. 2023 Jul 1;69(7):649-657. doi: 10.1097/MAT.0000000000001926. Epub 2023 Apr 4.
The objective of this study was to compare the estimates of pump flow and systemic vascular resistance (SVR) derived from a mathematical regression model to those from an artificial deep neural network (ADNN). Hemodynamic and pump-related data were generated using both the Cleveland Clinic continuous-flow total artificial heart (CFTAH) and pediatric CFTAH on a mock circulatory loop. An ADNN was trained with generated data, and a mathematical regression model was also generated using the same data. Finally, the absolute error for the actual measured data and each set of estimated data were compared. A strong correlation was observed between the measured flow and the estimated flow using either method (mathematical, R = 0.97, p < 0.01; ADNN, R = 0.99, p < 0.01). The absolute error was smaller in the ADNN estimation (mathematical, 0.3 L/min; ADNN 0.12 L/min; p < 0.01). Furthermore, strong correlation was observed between measured and estimated SVR (mathematical, R = 0.97, p < 0.01; ADNN, R = 0.99, p < 0.01). The absolute error for ADNN estimation was also smaller than that of the mathematical estimation (mathematical, 463 dynes·sec·cm -5 ; ADNN, 123 dynes·sec·cm -5 , p < 0.01). Therefore, in this study, ADNN estimation was more accurate than mathematical regression estimation. http://links.lww.com/ASAIO/A991.
本研究的目的是比较从数学回归模型得出的泵流量和全身血管阻力(SVR)估计值与人工深度神经网络(ADNN)得出的估计值。使用克利夫兰诊所连续流全人工心脏(CFTAH)和儿科 CFTAH 在模拟循环回路中生成血流动力学和泵相关数据。使用生成的数据对 ADNN 进行训练,并使用相同的数据生成数学回归模型。最后,比较实际测量数据和每组估计数据的绝对误差。无论使用哪种方法(数学方法,R = 0.97,p < 0.01;ADNN 方法,R = 0.99,p < 0.01),测量流量与估计流量之间均存在很强的相关性。ADNN 估计的绝对误差较小(数学,0.3 L/min;ADNN 0.12 L/min;p < 0.01)。此外,还观察到测量和估计 SVR 之间存在很强的相关性(数学,R = 0.97,p < 0.01;ADNN,R = 0.99,p < 0.01)。ADNN 估计的绝对误差也小于数学估计的绝对误差(数学,463 dynes·sec·cm -5 ;ADNN,123 dynes·sec·cm -5 ,p < 0.01)。因此,在这项研究中,ADNN 估计比数学回归估计更准确。http://links.lww.com/ASAIO/A991.