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Exploitation of sensing structure in high-dimensional decision making motivated by computed tomography perfusion imaging.

机译:计算机断层扫描灌注成像在高维决策中的传感结构开发。

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摘要

In many medical, security or genomics applications, decisions must be made about the state of an object. An example is determination of a tumor's physiological state from CT perfusion imaging data, which is a dynamic imaging modality used for monitoring physiological changes in the body over a period of time. Such decision making problems arc challenging since the observations are high-dimensional and training data is very limited. Furthermore, the true object of interest (e.g. a physiological parameter in CT perfusion imaging) is not directly observable but it is indirectly related to the observations through a sensing process. When this sensing mechanism is known, the conventional approach is to invert it and design a classifier in the reconstructed domain. The first goal of this thesis is to develop novel inversion technics for CT perfusion imaging which will improve subsequent decision making in the reconstructed domain. Motivated by CT perfusion imaging and other problems that share the same structure, the second goal is to develop tools to exploit knowledge of the latent sensing structure and to contribute to the understanding of fundamental performance limits in the setting of high-dimensional decision making with limited training data.;The contributions of this thesis towards these two main goals are presented in two parts. In the first part, a detailed account of tracer kinetic methods for modeling the CT perfusion (CTp) imaging data is provided and it is shown that this type of modeling yields a linear sensing structure. Then, novel algorithms that incorporate spatial and temporal correlations into the reconstruction process are developed to solve the high-dimensional inversion problem. It is also shown that the new reconstruction method results in improved estimation of important physiological parameters which are used in a rectal cancer study to decide whether a voxel is in the cancerous region.;In the second part of the thesis an abstract classification problem with an underlying sensing structure is considered to explore fundamental limits to classification performance when data dimensionality is much larger than the number of training examples. To this end, the asymptotic performance of various classification strategies that incorporate different levels of prior knowledge on the sensing mechanism is analyzed. In particular it is first proven that strategies based on ignoring the sensing structure and naively estimating all model parameters will result in a classification performance asymptotically no better than guessing. Then it is shown that projection-based classification rules that properly utilize knowledge of the sensing structure can attain Bayes-optimal risk. Finally, the theoretical findings are validated through simulations and also the advantage of the sensing-aware classification approach over a well-known learning-based method (support vector machines), which ignores the underlying structure in the data, is demonstrated.
机译:在许多医疗,安全或基因组学应用中,必须对对象的状态做出决定。一个例子是从CT灌注成像数据确定肿瘤的生理状态,CT灌注成像数据是一种动态成像方式,用于监控一段时间内人体的生理变化。由于观测是高维的并且训练数据非常有限,因此此类决策问题极具挑战性。此外,不能直接观察到真正感兴趣的对象(例如,CT灌注成像中的生理参数),而是通过感测过程将其与观察结果间接相关。当这种检测机制已知时,常规方法是将其求逆并在重构域中设计分类器。本文的首要目标是开发用于CT灌注成像的新型反演技术,以改善重建领域的后续决策。受CT灌注成像和其他具有相同结构的问题的推动,第二个目标是开发工具,以利用对潜伏感测结构的了解,并有助于在有限的高维决策环境中理解基本性能极限培训数据。分两部分介绍了本文对这两个主要目标的贡献。在第一部分中,提供了对CT灌注(CTp)成像数据进行建模的示踪动力学方法的详细说明,并且表明这种类型的建模产生了线性传感结构。然后,开发了将空间和时间相关性纳入重构过程的新颖算法,以解决高维反演问题。还表明,新的重建方法可以改善重要的生理参数的估计,这些参数可用于直肠癌研究中以确定体素是否在癌变区域中。当数据维数远大于训练示例的数量时,可以考虑使用底层的感应结构来探索分类性能的基本限制。为此,分析了各种分类策略的渐近性能,这些策略在传感机制上结合了不同级别的先验知识。特别是,首先证明了基于忽略感知结构并天真地估计所有模型参数的策略将渐近地导致分类性能不如猜测。然后表明,正确利用传感结构知识的基于投影的分类规则可以获得贝叶斯最优风险。最后,通过仿真验证了理论发现,并且证明了感知感知分类方法相对于忽略数据中基础结构的众所周知的基于学习的方法(支持向量机)的优势。

著录项

  • 作者

    Orten, Burkay Birant.;

  • 作者单位

    Boston University.;

  • 授予单位 Boston University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 151 p.
  • 总页数 151
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:43:23

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