Dept. of Comput. Sci., Sydney Univ., NSW.
IEEE Trans Med Imaging. 1996;15(4):512-8. doi: 10.1109/42.511754.
An unbiased algorithm of generalized linear least squares (GLLS) for parameter estimation of nonuniformly sampled biomedical systems is proposed. The basic theory and detailed derivation of the algorithm are given. This algorithm removes the initial values required and computational burden of nonlinear least regression and achieves a comparable estimation quality in terms of the estimates' bias and standard deviation. Therefore, this algorithm is particular useful in image-wide (pixel-by-pixel based) parameter estimation, e.g., to generate parametric images from tracer dynamic studies with positron emission tomography. An example is presented to demonstrate the performance of this new technique. This algorithm is also generally applicable to other continuous system parameter estimation.
提出了一种用于非均匀采样生物医学系统参数估计的广义线性最小二乘(GLLS)无偏算法。给出了算法的基本原理和详细推导。该算法消除了非线性最小回归所需的初始值和计算负担,并在估计值的偏差和标准差方面达到了可比的估计质量。因此,该算法特别适用于图像宽(基于像素的)参数估计,例如,从正电子发射断层扫描示踪剂动态研究生成参数图像。给出了一个示例来演示该新技术的性能。该算法也可普遍应用于其他连续系统参数估计。