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Fuzzy C-Mean clustering on kinetic parameter estimation with generalized linear least square algorithm in SPECT

机译:SPECT中广义线性最小二乘算法动力学参数估计的模糊C均值

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Dynamic Single Photon Emission Computed Tomography (SPECT) has the potential to quantitatively estimate physiological parameters by fitting compartment models to the tracer kinetics. The generalized linear least square method (GLLS) is an efficient method to estimate unbiased kinetic parameters and parametric images. However, due to the low sensitivity of SPECT, noisy data can cause voxel-wise parameter estimation by GLLS to fail. Fuzzy C-Mean (FCM) clustering and modified FCM, which also utilizes information from the immediate neighboring voxels, are proposed to improve the voxel-wise parameter estimation of GLLS. Monte Carlo simulations were performed to generate dynamic SPECT data with different noise levels and processed by general and modified FCM clustering. Parametric images were estimated by Logan and Yokoi graphical analysis and GLLS. The influx rate (K_1), volume of distribution (V_d) were estimated for the cerebellum, thalamus and frontal cortex. Our results show that (1) FCM reduces the bias and improves the reliability of parameter estimates for noisy data, (2) GLLS provides estimates of micro parameters (K_1-k_4) as well as macro parameters, such as volume of distribution (V_d) and binding potential (BP_1 & BP_2) and (3) FCM clustering incorporating neighboring voxel information does not improve the parameter estimates, but improves noise in the parametric images. These findings indicated that it is desirable for pre-segmentation with traditional FCM clustering to generate voxel-wise parametric images with GLLS from dynamic SPECT data.
机译:动态单光子发射计算断层摄影(SPECT)具有通过将隔室模型装配到示踪动力学来定量估计生理参数。广义线性最小二乘法(GLL)是估计非偏见的动力学参数和参数图像的有效方法。然而,由于SPECT的敏感性低,噪声数据可能会导致GLL的Voxel-Wise参数估计失败。模糊C均值(FCM)聚类和修改的FCM,其还利用即时相邻体素的信息,以改善GLL的Voxel-Wise参数估计。执行蒙特卡罗模拟以产生具有不同噪声水平的动态SPECT数据,并由一般和修改的FCM聚类处理。参数图像由逻辑和Yokoi图形分析和GLL估计。估计小脑,丘脑和前皮质的流入速率(K_1),分布量(V_D)。我们的结果表明,(1)FCM降低了偏差并提高了噪声数据的参数估计的可靠性,(2)GLL提供了微观参数(K_1-K_4)以及宏参数,例如分布(V_D)的宏观参数和绑定电位(BP_1&BP_2)和(3)包含相邻的体素信息的FCM聚类不会改善参数估计,但是可以改善参数图像中的噪声。这些发现表明,希望与传统的FCM聚类预先分割,以从动态SPECT数据生成具有GLL的Voxel-Wise参数图像。

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