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Absolute cerebral blood flow with /sup 15/O-water and PET: determination without a measured input function

机译:/ sup 15 / O-水和PET的绝对脑血流量:在没有测量输入功能的情况下进行测定

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PET cerebral blood flow (CBF) methods require tissue and arterial blood radioactivity measurements to yield absolute values. The authors have developed a method to estimate CBF without a measured input function. For N pixels and M scan frames, the authors estimate N+M parameters (N flow values and M input function integrals) from N/spl times/M measurements with weighted least squares using the iterative Gauss-Newton (GN) algorithm. Tracer distribution volume is assumed to be known. This method was tested with simulated and human image data. Simulation GN errors in whole brain CBF were -3/spl plusmn/2%, with uniform percent errors for all flow values. GN image quality was comparable to that obtained from algorithms which require the measured input function. Results with actual scan data (8 subjects, 4 studies each) had errors in global flow of -77/spl plusmn/3% due to violations of the model assumptions, particularly tissue heterogeneity. Use of a modified algorithm which included inter-pixel variations in the distribution volume to account for heterogeneity reduced the bias but the results are overly sensitive to the assumed value of distribution volume variability. Although this method can theoretically provide absolute CBF, it will be useful in practice only if its large sensitivity to model inaccuracies can be controlled.
机译:PET脑血流(CBF)方法需要测量组织和动脉血放射性,以得出绝对值。作者开发了一种无需测量输入函数即可估算CBF的方法。对于N个像素和M个扫描帧,作者使用迭代高斯-牛顿(GN)算法从N / spl次/ M测量(具有加权最小二乘)估计N + M个参数(N个流量值和M个输入函数积分)。假定示踪剂分布量已知。该方法已通过模拟和人类图像数据进行了测试。全脑CBF中的模拟GN误差为-3 / spl plusmn / 2%,所有流量值的误差均等。 GN图像质量与从需要测量输入功能的算法获得的图像质量相当。由于违反了模型假设,特别是组织异质性,使用实际扫描数据(8名受试者,每项4项研究)的结果在全局流量中存在-77 / spl plusmn / 3%的错误。使用改进的算法(包括分布量中的像素间变化来解决异质性)可以减少偏差,但是结果对分布量变化的假定值过于敏感。尽管此方法理论上可以提供绝对的CBF,但只有在可以控制其对模型不准确度的较大敏感性的情况下,它才会在实践中有用。

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