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Inverse decision theory with medical applications.

机译:逆决策理论在医学上的应用。

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摘要

Medical decision makers would like to use decision theory to determine optimal treatment strategies for patients, but it can be very difficult to specify loss functions in the medical setting, especially when trying to assign monetary value to health outcomes. These issues led to the development of an alternative approach, called Inverse Decision Theory (IDT), in which given a probability model and a specific decision rule, we determine the set of losses for which that decision rule is optimal. This thesis presents the evolution of the IDT method and its applications to medical treatment decision rules.; There are two ways in which we can use the IDT method. Under the first approach, we operate under the assumption that the decision rule of interest is optimal, and use the prior information that we have to make inferences on the losses. The second approach involves the use of the prior information to derive an optimal region and determine if the losses in this region are reasonable based on our prior information.; We illustrate the use of IDT by applying it to the current standard of care (SOC) for the detection and treatment of cervical neoplasias. First, we model the diagnostic and treatment process as a Bayesian sequential decision procedure. Then, we determine the Bayes risk expression for all decision rules and compare the Bayes risk expression for the current SOC decision rule to the Bayes risk expressions of all other decision rules, forming linear inequality constraints on a region under which the current SOC is optimal. The current standard of care has been in use for many years, but we find another decision rule to be optimal. We question whether the current standard of care is the optimal decision rule and will continue to examine these implications and the practicality of implementing this new decision rule.; The IDT method provides us with a mathematical technique for dealing with the challenges in formally quantifying patient experiences and outcomes. We believe that it will be applicable to many other disease conditions and become a valuable tool for determining optimal medical treatment standards of care.
机译:医疗决策者希望使用决策理论来确定患者的最佳治疗策略,但是要在医疗环境中指定损失函数可能非常困难,尤其是在尝试为健康结果分配货币价值时。这些问题导致了另一种方法的发展,称为逆向决策理论(IDT),其中给定了概率模型和特定的决策规则,我们确定了该决策规则最佳的损失集。本文介绍了IDT方法的发展及其在医疗决策规则中的应用。我们可以使用两种方法来使用IDT方法。在第一种方法下,我们假设感兴趣的决策规则是最优的,并且使用我们必须对损失进行推断的先验信息。第二种方法涉及使用先验信息得出最佳区域,并根据我们的先验信息确定该区域的损失是否合理。我们通过将IDT应用于当前的护理(SOC)标准来检测和治疗子宫颈瘤形成来说明IDT的使用。首先,我们将诊断和治疗过程建模为贝叶斯顺序决策程序。然后,我们确定所有决策规则的Bayes风险表达式,并将当前SOC决策规则的Bayes风险表达式与所有其他决策规则的Bayes风险表达式进行比较,从而在当前SOC最佳的区域上形成线性不等式约束。当前的护理标准已经使用了很多年,但是我们发现另一个决策规则是最佳的。我们质疑当前的护理标准是否是最佳决策规则,并将继续研究这些含义以及实施该新决策规则的实用性。 IDT方法为我们提供了一种数学技术,用于应对形式上量化患者体验和结果的挑战。我们相信它将适用于许多其他疾病,并成为确定最佳医疗护理标准的有价值的工具。

著录项

  • 作者

    Davies, Kalatu R.;

  • 作者单位

    Rice University.;

  • 授予单位 Rice University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 141 p.
  • 总页数 141
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 统计学;
  • 关键词

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