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Application of ridge regression for improved estimation of parameters in compartmental models.

机译:岭回归的应用改进了隔室模型中参数的估计。

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摘要

Ridge regression is a technique of fitting parametric models to the data arising from scientific experiments. A standard method of achieving this is the least squares technique. In ridge regression, the least square criterion is augmented by a penalty term which penalizes the parameter estimates which are too different from some specified value. Finding out the optimal value for the ridge parameter in a given problem is of great importance because desirable properties of the parameter estimates crucially depend on this choice.;The subject of this work is the application of ridge regression to a particular class of compartmental models and the design of good strategies for determination of ridge parameter. In this work attention has been devoted to the radiotracer models arising from the kinetic analysis of data obtained from Positron Emission Tomography (PET) studies. These are compartmental models describing the uptake and metabolism of the radiotracers injected in subject's body during a PET study. Currently nonlinear least squares (NLS) technique is used for the parameter estimation. This work has applied ridge regression, which is usually used for linear models, to this area of nonlinear models. Extensive simulation studies with different radiotracer models have shown that one particular strategy of Ridge regression has a great potential to improve upon NLS. Accurate estimation of parameters of these models are of great interest to the doctors dealing with nuclear medicine because that information is valuable for understanding of complex biochemical processes inside both normal and pathological tissues.;The main contribution of this work is the extension of an existing methodology like ridge regression to the area of estimation of parameters of an important class of nonlinear models. In context of nuclear medicine, integration of this methodology with the existing ones might prove to be very useful in diagnosis of diseases and clinical management of patients.
机译:Ridge回归是一种将参数模型拟合到科学实验产生的数据的技术。实现此目的的标准方法是最小二乘技术。在岭回归中,最小二乘标准由惩罚项增加,该惩罚项惩罚与某些指定值相差太大的参数估计值。找到给定问题中的脊参数的最佳值非常重要,因为参数估计的理想属性关键取决于此选择。本研究的主题是将脊回归应用于特定类别的区室模型和确定脊参数的良好策略的设计。在这项工作中,注意力集中在从示波正电子发射断层扫描(PET)研究获得的数据的动力学分析中产生的放射性示踪剂模型上。这些是隔室模型,描述了在PET研究期间注入到人体中的放射性示踪剂的吸收和代谢。当前,非线性最小二乘(NLS)技术用于参数估计。这项工作将通常用于线性模型的岭回归应用于非线性模型的这一区域。使用不同的放射性示踪剂模型进行的广泛仿真研究表明,Ridge回归的一种特殊策略具有很大的改进NLS的潜力。这些模型的参数的准确估计对于处理核医学的医生非常感兴趣,因为该信息对于理解正常组织和病理组织内部的复杂生化过程具有宝贵的价值。这项工作的主要贡献是对现有方法的扩展像岭回归到一类重要的非线性模型的参数估计区域。在核医学的背景下,将该方法与现有方法相集成可能被证明在疾病诊断和患者临床管理中非常有用。

著录项

  • 作者

    Saha, Angshuman.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Statistics.;Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 1998
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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