首页> 外文期刊>NeuroImage >Kinetic modelling using basis functions derived from two-tissue compartmental models with a plasma input function: general principle and application to (18F)fluorodeoxyglucose positron emission tomography.
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Kinetic modelling using basis functions derived from two-tissue compartmental models with a plasma input function: general principle and application to (18F)fluorodeoxyglucose positron emission tomography.

机译:使用从具有血浆输入功能的两组织隔室模型得出的基本函数进行动力学建模:一般原理及其在(18F)氟脱氧葡萄糖正电子发射断层显像中的应用。

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摘要

A kinetic modelling method for the determination of influx constant, Ki is given that utilises basis functions derived from plasma input two-tissue compartmental models (BAFPIC). Two forms of the basis functions are given: BAFPICI with k4=0 (no product loss) and BAFPICR with k4 non-zero. Simulations were performed using literature rate constant values for [18F]fluorodeoxyglucose (FDG) in both normal and abnormal brain pathology. Both homogeneous and heterogeneous tissues were simulated and this data was also used as input for other methods commonly used to determine Ki: non-linear least squares compartmental modelling (NLLS), autoradiographic method and Patlak-Gjedde graphical analysis (PGA). The four methods were also compared for real FDG positron emission tomography (PET) data. For both k4=0 and k4 non-zero simulated data BAFPIC had the best bias properties of the four methods. The autoradiographic method was always the best for variability but BAFPICI had lower variability than PGA and NLLS. For non-zero k4 data, the variance of BAFPICR was inferior to PGA but still significantly superior to NLLS. Ki maps calculated from real data substantiate the simulation results, with BAFPICI having lower noise than PGA. Voxel Ki values from BAFPICI correlated well with those from PGA (r2=0.989). BAFPIC is easy to implement and combines low bias with good noise properties for voxel-wise determination of Ki for FDG. BAFPIC is suitable for determining Ki for other tracers well characterised by a serial two-tissue compartment model and has the advantage of also producing values for individual kinetic constants and blood volume.
机译:给出了一种用于确定流入常数Ki的动力学建模方法,该方法利用了从血浆输入两组织隔室模型(BAFPIC)导出的基函数。给出了两种形式的基本函数:k4 = 0(无乘积损失)的BAFPICI和k4非零的BAFPICR。使用文献[18F]氟脱氧葡萄糖(FDG)的速率常数值在正常和异常的脑部病理学中进行模拟。模拟了均质组织和异质组织,该数据还用作通常用于确定Ki的其他方法的输入:非线性最小二乘法隔室建模(NLLS),放射自显影方法和Patlak-Gjedde图形分析(PGA)。还比较了这四种方法的实际FDG正电子发射断层扫描(PET)数据。对于k4 = 0和k4而言,非零模拟数据BAFPIC具有四种方法中最佳的偏差属性。放射自显影方法始终是最佳的变异性,但BAFPICI的变异性低于PGA和NLLS。对于非零的k4数据,BAFPICR的方差低于PGA,但仍明显优于NLLS。根据实际数据计算得出的Ki映射可证明仿真结果,其中BAFPICI的噪声低于PGA。来自BAFPICI的Voxel Ki值与来自PGA的Voxel Ki值具有很好的相关性(r2 = 0.989)。 BAFPIC易于实施,并且结合了低偏差和良好的噪声特性,可用于体素确定FDG的Ki。 BAFPIC适用于确定其他示踪剂的Ki,这些示踪剂的特征是连续的两个组织隔室模型,并且具有产生单个动力学常数和血容量的值的优点。

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