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A computational intelligence and machine learning-based framework for improving case-based computer-aided medical decision systems with application to mammography.

机译:一种基于计算智能和机器学习的框架,用于改进基于案例的计算机辅助医疗决策系统,并将其应用于乳房X线照相。

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In case-based computer-aided decision systems (CB-CAD), previously acquired examples associated with different disease states are used to classify new cases. The case-based paradigm is becoming increasingly popular in computer-aided diagnosis. The primary reason is that large digital medical databases are now available, mainly of medical images. This incurs a need for efficient storage and use of the cases for medical decision making. Case-based systems are up to the task since new examples can be simply added to the system without the need for retraining. Further, the operating principles of case-based systems resemble the decision making process of physicians. Thus, case-based CAD systems are accepted more easily in the medical environment. Such systems, however; face certain limitations. Since all examples are stored in the system's database, the system induces large storage requirements. Furthermore, individual comparisons of a query case to all case-base examples increase the system's response time per query.;In this dissertation, a comprehensive computational intelligence and machine learning-based framework is proposed for optimization of case-based medical decision systems. It applies to two crucial components of case-based systems: decision algorithm and case base. The study is performed in the context of a computer-aided decision system for detecting breast cancer in screening mammograms that has been previously published. Although the study is based on the specific CAD system, efforts were made to ensure that the proposed techniques will be easily applicable to other case-based CAD systems.;In the first stage of the research, an improvement of the decision function is proposed for the CAD system. The study hypothesis at this stage is that differentiating the importance of each case in the knowledge database may improve the system's performance. A problem of finding an optimal vector of importance weights is formalized as an optimization problem and a genetic algorithm is applied to solve it. The initial experimental results show that the proposed technique results in a statistically significant improvement of the classification performance.;In the second stage of the research some computational intelligence and machine learning techniques were used to optimize the case base of the CAD system by removing superfluous/detrimental examples. This type of optimization is of great significance since it can reduce storage requirements of the system, decrease response time of the system, and possibly improve system classification performance by removing misleading patterns. The results show that using computational intelligence and machine learning techniques allows for the database of examples to be significantly reduced while increasing performance of the system.;The third part of the dissertation research is devoted to building ensemble classifiers for improving the classification performance and reducing storage requirements of case-based systems. Two methods are proposed that automatically adapt the ensemble size to the problem. The new methods are compared to more traditional approaches. Experimental results show that the ensemble techniques provide a significant improvement, in the classification performance of the CAD system while at the same time reducing the total number of examples used for classification.;The last part of this dissertation is devoted to comparison of all the proposed techniques, an extension of the ensemble approach and application of the ensemble approach to evaluate case-specific reliability of classifier decisions. Some insight into combining the proposed techniques to further improve performance is also offered.
机译:在基于案例的计算机辅助决策系统(CB-CAD)中,先前获取的与不同疾病状态相关的示例用于对新案例进行分类。基于案例的范例在计算机辅助诊断中变得越来越流行。主要原因是现在可以使用大型数字医学数据库,主要是医学图像。这就需要有效地存储和使用病例以进行医疗决策。基于案例的系统可以完成任务,因为可以将新示例简单地添加到系统中,而无需重新培训。此外,基于案例的系统的操作原理类似于医师的决策过程。因此,在医疗环境中更容易接受基于案例的CAD系统。但是,这种系统;面临一定的局限性。由于所有示例都存储在系统的数据库中,因此系统会产生大量的存储需求。此外,将一个查询案例与所有基于案例的案例进行个体比较会增加系统对每个查询的响应时间。本文针对基于案例的医疗决策系统,提出了一种基于计算智能和机器学习的综合框架。它适用于基于案例的系统的两个关键组件:决策算法和案例库。这项研究是在计算机辅助决策系统的背景下进行的,该系统以前已发表过,用于筛查乳房X线照片中的乳腺癌。尽管研究是基于特定的CAD系统进行的,但已努力确保所提出的技术将易于应用于其他基于案例的CAD系统。;在研究的第一阶段,提出了对决策功能的改进CAD系统。在此阶段的研究假设是,在知识数据库中区分每个案例的重要性可以提高系统的性能。将找到重要权重的最优向量的问题形式化为优化问题,并应用遗传算法对其进行求解。初步的实验结果表明,所提出的技术在统计学上显着提高了分类性能。在研究的第二阶段,一些计算智能和机器学习技术被用于通过去除多余的/有害的例子。这种类型的优化非常重要,因为它可以减少系统的存储需求,减少系统的响应时间,并可能通过消除误导性模式来提高系统分类性能。结果表明,利用计算智能和机器学习技术可以大大减少实例数据库,同时提高系统性能。论文研究的第三部分致力于构建集成分类器,以提高分类性能,减少存储量。基于案例的系统的要求。提出了两种方法来使集合大小自动适应该问题。将新方法与更传统的方法进行比较。实验结果表明,该集成技术在CAD系统的分类性能上有显着提高,同时减少了用于分类的实例总数。本论文的最后一部分致力于比较所有提出的方法。技术,集成方法的扩展以及集成方法在评估分类器决策的特定案例可靠性方面的应用。还提供了一些对组合提出的技术以进一步提高性能的见解。

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