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Efficient change detection methods for bio and healthcare surveillance .

机译:用于生物和医疗监控的高效变化检测方法。

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摘要

For the last several decades, sequential change point problems have been studied in both the theoretical area (sequential analysis) and the application area (industrial SPC). In the conventional application, the baseline process is assumed to be stationary, and the shift pattern is a step function that is sustained after the shift. However, in biosurveillance, the underlying assumptions of problems are more complicated. This thesis investigates several issues in biosurveillance such as non-homogeneous populations, spatiotemporal surveillance methods, and correlated structures in regional data.;The first part of the thesis discusses popular surveillance methods in sequential change point problems and off-line problems based on count data. For sequential change point problems, the CUSUM and the EWMA have been used in healthcare and public health surveillance to detect increases in the rates of diseases or symptoms. On the other hand, for off-line problems, scan statistics are widely used. In this chapter, we link the method for off-line problems to those for sequential change point problems. We investigate three methods---the CUSUM, the EWMA, and the scan statistics---and compare them by conditional expected delay (CED).;The second part of the thesis pertains to the on-line monitoring problem of detecting a change in the mean of Poisson count data with non-homogeneous population sizes. The most common detection schemes are based on generalized likelihood ratio statistics, known as an optimal method for the i.i.d. models. We propose alternative detection schemes based on the weighted likelihood ratios and the adaptive threshold method, which perform better than generalized likelihood ratio statistics in an increasing population. The properties of these three detection schemes are investigated by both theoretical analysis and numerical simulation.;The third part of the thesis investigates spatiotemporal surveillance based on likelihood ratios. This chapter proposes a general framework for spatiotemporal surveillance based on likelihood ratio statistics over time windows. We show that the CUSUM and other popular likelihood ratio statistics are the special cases under such a general framework. We compare the efficiency of these surveillance methods in spatiotemporal cases for detecting clusters of incidence using both Monte Carlo simulations and a real example.;The fourth part proposes multivariate surveillance methods based on likelihood ratio tests in the presence of spatial correlations. By taking advantage of spatial correlations, the proposed methods can perform better than existing surveillance methods by providing the faster and more accurate detection. We illustrate the application of these methods with a breast cancer case in New Hampshire when observations are spatially correlated.
机译:在过去的几十年中,已经在理论领域(顺序分析)和应用领域(工业SPC)中研究了顺序变化点问题。在常规应用中,假定基线过程是固定的,并且变速模式是在变速后保持的阶跃函数。但是,在生物监视中,问题的基本假设更为复杂。本文研究了生物监测中的几个问题,如非均匀种群,时空监测方法以及区域数据中的相关结构。本文的第一部分讨论了基于计数数据的顺序变化点问题和离线问题中流行的监测方法。 。对于顺序变更点问题,CUSUM和EWMA已用于医疗保健和公共卫生监视中,以检测疾病或症状的发生率增加。另一方面,对于离线问题,扫描统计数据被广泛使用。在本章中,我们将离线问题的方法与顺序变更点问题的方法联系起来。我们研究了CUSUM,EWMA和扫描统计信息这三种方法,并通过条件期望延迟(CED)进行了比较。;论文的第二部分涉及检测变化的在线监视问题。泊松计数均值与非均质人口数据的平均值。最常见的检测方案是基于广义似然比统计信息,这被称为i.d.楷模。我们提出了基于加权似然比和自适应阈值方法的替代检测方案,在增长的人群中,它们的性能要优于广义似然比统计。通过理论分析和数值模拟研究了这三种检测方案的性质。第三部分基于似然比研究时空监视。本章提出了基于时间窗口内似然比统计的时空监视的通用框架。我们表明,CUSUM和其他流行似然比统计数据是在这种一般框架下的特殊情况。我们使用蒙特卡洛模拟和一个实际例子比较了这些监视方法在时空情况下检测事件簇的效率。第四部分提出了在存在空间相关性的情况下基于似然比检验的多变量监视方法。通过利用空间相关性,通过提供更快,更准确的检测,所提出的方法可以比现有的监视方法执行得更好。当观测值在空间上相关时,我们说明了这些方法在新罕布什尔州的乳腺癌病例中的应用。

著录项

  • 作者

    Han, Sung Won.;

  • 作者单位

    Georgia Institute of Technology.;

  • 授予单位 Georgia Institute of Technology.;
  • 学科 Statistics.;Engineering Industrial.;Health Sciences Epidemiology.
  • 学位 Ph.D.
  • 年度 2010
  • 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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