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A fast nonlinear method for parametric imaging of positron emission tomography data.

机译:用于正电子发射断层扫描数据参数成像的快速非线性方法。

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摘要

The goal of this work was to develop a novel method for analyzing positron emission tomography data. Parametric imaging is the part of the PET data analysis process whereby images of physiologic and biochemical parameters are generated. Parametric images represent a stage beyond a typical PET image, and reflect physiologic function in a quantitative way. There are several known methods for parametric imaging, but all have some drawbacks. The proposed new method is a very fast nonlinear method. All other methods are fast or nonlinear but not both.; PET data analysis proceeds in two stages. Image reconstruction yields an estimate of radiation intensity as a function of space and time: a dynamic PET image. Each pixel in a dynamic image is a time series: a time-activity curve (TAC). Parametric imaging is accomplished by fitting a mathematical model to TAC data to estimate physiologic parameters: a tracer kinetic model. An example of parametric imaging is estimation of myocardial perfusion in units of ml/min/g from dynamic 13N ammonia PET data.; Weighted nonlinear regression (WNLR) is the gold standard method for parameter estimation and parametric imaging with tracer kinetic models. The WNLR method has a strong theory and is quite general. But it is iterative and expensive to compute. Further, the iteration will not converge in the presence of the high noise typical of human studies. A fast alternative to WNLR methods are linearizing methods, which speed solution by using some form of integration followed by linear regression. Linearizing methods can be fast and accurate, but still have some drawbacks. No linearizing method handles nonlinear tracer kinetic models. And such methods require model-specific nonlinear algebra to recover the parameters of the tracer kinetic model.; We propose a new nonlinear method based on sigmoidal networks. Sigmoidal networks are a general method for the estimation of nonlinear functions by simulation. A model of TAC data is developed from which simulated data are drawn. A sigmoidal network is then optimized to fit the data. Once fit, the network produces nonlinear parametric images in only seconds. Further, we preprocesses the network training data by an optimal WNLR method computable by simulation only. Therefore, the method is a hybrid nonlinear method that combines the accuracy of WNLR with the speed of sigmoidal networks.; We have compared sigmoidal network methods to WNLR methods and linearizing methods for estimation of model parameters from 13N ammonia and 18F fluorodeoxyglucose data. Simulation studies have validated the sigmoidal network approach relative to WNLR using ranges of models parameters very similar to experimental data. Parametric images of experimental data generated by sigmoidal networks compare favorably to WNLR in statistical performance, but can be computed in just seconds versus hours for WNLR. Though linearizing methods for parameter estimation can be quite good, under some circumstances sigmoidal networks are closer to WNLR and even cheaper to compute than linearizing methods.
机译:这项工作的目的是开发一种分析正电子发射断层扫描数据的新方法。参数成像是PET数据分析过程的一部分,通过该过程可以生成生理和生化参数的图像。参数图像表示超出典型PET图像的阶段,并以定量方式反映生理功能。有几种已知的参数成像方法,但是所有方法都有一些缺点。所提出的新方法是一种非常快速的非线性方法。所有其他方法都是快速的或非线性的,但不能同时使用。 PET数据分析分两个阶段进行。图像重建可得出辐射强度随时间和空间变化的估计值:动态PET图像。动态图像中的每个像素都是一个时间序列:时间活动曲线(TAC)。参数成像是通过将数学模型拟合到TAC数据以估算生理参数来完成的:示踪剂动力学模型。参数成像的一个例子是从动态 13 N氨PET数据估算以ml / min / g为单位的心肌灌注。加权非线性回归(WNLR)是使用示踪动力学模型进行参数估计和参数成像的金标准方法。 WNLR方法具有很强的理论并且很通用。但这是迭代的并且计算昂贵。此外,在人类研究中典型的高噪声存在下,迭代将不会收敛。线性化方法是WNLR方法的快速替代方法,它通过使用某种形式的积分然后进行线性回归来加快求解速度。线性化方法可以快速而准确,但是仍然存在一些缺点。没有线性化方法可以处理非线性示踪剂动力学模型。并且这些方法需要模型特定的非线性代数来恢复示踪动力学模型的参数。我们提出了一种基于S形网络的非线性方法。 S形网络是通过仿真估计非线性函数的通用方法。建立了TAC数据模型,从中可以得出模拟数据。然后优化S形网络以适合数据。拟合后,网络仅需几秒钟即可生成非线性参数图像。此外,我们通过仅可通过仿真计算的最佳WNLR方法对网络训练数据进行预处理。因此,该方法是一种混合非线性方法,将WNLR的精度与S型网络的速度相结合。我们比较了S形网络方法,WNLR方法和线性化方法,以根据 13 N氨和 18 F氟脱氧葡萄糖数据估算模型参数。仿真研究使用与实验数据非常相似的模型参数范围,验证了相对于WNLR的S形网络方法。由S形网络生成的实验数据的参数图像在统计性能上优于WNLR,但对于WNLR,只需几秒钟即可计算出几小时。尽管用于参数估计的线性化方法可能相当不错,但在某些情况下,S型网络更接近WNLR,并且比线性化方法更便宜。

著录项

  • 作者

    Golish, Stanley Raymond.;

  • 作者单位

    University of California, Los Angeles.;

  • 授予单位 University of California, Los Angeles.;
  • 学科 Engineering General.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 131 p.
  • 总页数 131
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 工程基础科学;
  • 关键词

  • 入库时间 2022-08-17 11:46:39

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