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Error analysis of the quantification of hepatic perfusion using a dual-input single-compartment model.

机译:使用双输入单隔室模型量化肝灌注的误差分析。

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We performed an error analysis of the quantification of liver perfusion from dynamic contrast-enhanced computed tomography (DCE-CT) data using a dual-input single-compartment model for various disease severities, based on computer simulations. In the simulations, the time-density curves (TDCs) in the liver were generated from an actually measured arterial input function using a theoretical equation describing the kinetic behavior of the contrast agent (CA) in the liver. The rate constants for the transfer of CA from the hepatic artery to the liver (K(1a)), from the portal vein to the liver (K(1p)), and from the liver to the plasma (k(2)) were estimated from simulated TDCs with various plasma volumes (V(0)s). To investigate the effect of the shapes of input functions, the original arterial and portal-venous input functions were stretched in the time direction by factors of 2, 3 and 4 (stretching factors). The above parameters were estimated with the linear least-squares (LLSQ) and nonlinear least-squares (NLSQ) methods, and the root mean square errors (RMSEs) between the true and estimated values were calculated. Sensitivity and identifiability analyses were also performed. The RMSE of V(0) was the smallest, followed by those of K(1a), k(2) and K(1p) in an increasing order. The RMSEs of K(1a), K(1p) and k(2) increased with increasing V(0), while that of V(0) tended to decrease. The stretching factor also affected parameter estimation in both methods. The LLSQ method estimated the above parameters faster and with smaller variations than the NLSQ method. Sensitivity analysis showed that the magnitude of the sensitivity function of V(0) was the greatest, followed by those of K(1a), K(1p) and k(2) in a decreasing order, while the variance of V(0) obtained from the covariance matrices was the smallest, followed by those of K(1a), K(1p) and k(2) in an increasing order. The magnitude of the sensitivity function and the variance increased and decreased, respectively, with increasing disease severity anddecreased and increased, respectively, with increasing stretching factor except for V(0). Identifiability analysis showed that the identifiability between K(1)(p) and k(2) was lower than that between K(1)(a) and k(2) or between K(1a) and K(1p). In conclusion, this study will be useful for understanding the accuracy and reliability of the quantitative measurement of liver perfusion using a dual-input single-compartment model and DCE-CT data.
机译:基于计算机模拟,我们使用双输入单室模型针对各种疾病的严重程度,对来自动态对比增强计算机断层扫描(DCE-CT)数据的肝脏灌注定量进行了误差分析。在模拟中,使用描述肝脏中造影剂(CA)动力学行为的理论方程,从实际测量的动脉输入函数生成肝脏中的时间密度曲线(TDC)。 CA从肝动脉到肝脏(K(1a)),门静脉到肝脏(K(1p))以及从肝脏到血浆(k(2))的传输速率常数为从具有各种血浆体积(V(0)s)的模拟TDC估算。为了研究输入函数形状的影响,将原始的动脉和门静脉输入函数在时间方向上拉伸了2、3和4因子(拉伸因子)。使用线性最小二乘(LLSQ)和非线性最小二乘(NLSQ)方法估计上述参数,并计算真实值和估计值之间的均方根误差(RMSE)。还进行了敏感性和可识别性分析。 V(0)的RMSE最小,其次是K(1a),k(2)和K(1p)。随着V(0)的增加,K(1a),K(1p)和k(2)的RMSE增大,而V(0)的RMSE趋于减小。两种方法中的拉伸因子也影响参数估计。与NLSQ方法相比,LLSQ方法估计上述参数的速度更快且变化较小。灵敏度分析显示,V(0)的灵敏度函数的幅度最大,其次是K(1a),K(1p)和k(2)的降序,而V(0)的方差从协方差矩阵获得的值最小,其次是K(1a),K(1p)和k(2)。灵敏度函数的大小和方差分别随疾病严重性的增加而增加和减少,以及除V(0)以外的随着拉伸因子的增加而分别减小和增加。可识别性分析表明,K(1)(p)和k(2)之间的可识别性低于K(1)(a)和k(2)之间或K(1a)和K(1p)之间的可识别性。总之,这项研究将有助于理解使用双输入单室模型和DCE-CT数据进行的肝脏灌注定量测量的准确性和可靠性。

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