首页> 外文会议>Digital Society, 2010. ICDS '10 >A Fuzzy Logic System for Classification of the Lung Nodule in Digital Images in Computer Aided Detection
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A Fuzzy Logic System for Classification of the Lung Nodule in Digital Images in Computer Aided Detection

机译:用于计算机辅助检测的数字图像肺结节分类的模糊逻辑系统

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Digital image analysis technology suffers from imperfection, imprecision and vagueness of the input data and its propagation in all individual components of the technology including image enhancement, segmentation and pattern recognition. Furthermore, a Medical Digital Image Analysis System (MDIAS) such as computer aided detection (CAD) technology deals with another source of uncertainty that is inherent in an image-based practice of medicine. While there are several technology-oriented studies reported in developing CAD applications, no attempt has been made to address, model and integrate these types of uncertainty in the design of the system components even though uncertainty issues directly affect the performance and its accuracy. In order to tackle the problem of uncertainty in the classification design of the system two fuzzy methods are employed and are evaluated for the lung nodule CAD application. The Mamdani model and the Sugeno model of the fuzzy logic system are implemented and the classification results are compared and evaluated through ROC curve analysis and root mean squared error methods. The novelty of the study is to investigate the effect of training algorithms on the performance of the CAD system. The results reveal that the fuzzy logic system with hybrid-training is superior to the other models in terms of root-mean-squared error and ROC curve sensitivity and specificity rates.
机译:数字图像分析技术的缺陷在于输入数据的不完善,不精确和模糊不清,以及其在该技术的所有各个组成部分(包括图像增强,分割和模式识别)中的传播。此外,诸如计算机辅助检测(CAD)技术之类的医学数字图像分析系统(MDIAS)处理基于图像的医学实践中固有的另一种不确定性来源。尽管在开发CAD应用程序中已报告了几项面向技术的研究,但是尽管不确定性问题直接影响性能及其准确性,也没有尝试在系统组件的设计中解决,建模和集成这些类型的不确定性。为了解决系统分类设计中的不确定性问题,采用了两种模糊方法,并对肺结节CAD应用进行了评估。实现了模糊逻辑系统的Mamdani模型和Sugeno模型,并通过ROC曲线分析和均方根误差方法对分类结果进行了比较和评估。这项研究的新颖性是研究训练算法对CAD系统性能的影响。结果表明,采用混合训练的模糊逻辑系统在均方根误差,ROC曲线敏感性和特异性率方面均优于其他模型。

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