首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.8,no.31; Proceedings of SPIE-The International Society for Optical Engineering; vol.6512 pt.3 >Performance comparison of classifiers for differentiation among obstructive lung diseases based on features of texture analysis at HRCT
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Performance comparison of classifiers for differentiation among obstructive lung diseases based on features of texture analysis at HRCT

机译:基于HRCT纹理分析特征的阻塞性肺疾病分类器性能比较

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The performance of classification algorithms for differentiating among obstructive lung diseases based on features from texture analysis using HRCT (High Resolution Computerized Tomography) images was compared. HRCT can provide accurate information for the detection of various obstructive lung diseases, including centrilobular emphysema, panlobular emphysema and bronchiolitis obliterans. Features on HRCT images can be subtle, however, particularly in the early stages of disease, and image-based diagnosis is subject to inter-observer variation. To automate the diagnosis and improve the accuracy, we compared three types of automated classification systems, naieve Bayesian classifier, ANN (Artificial Neural Net) and SVM (Support Vector Machine), based on their ability to differentiate among normal lung and three types of obstructive lung diseases. To assess the performance and cross-validation of these three classifiers, 5 folding methods with 5 randomly chosen groups were used. For a more robust result, each validation was repeated 100 times. SVM showed the best performance, with 86.5% overall sensitivity, significantly different from the other classifiers (one way ANOVA, p < 0.01). We address the characteristics of each classifier affecting performance and the issue of which classifier is the most suitable for clinical applications, and propose an appropriate method to choose the best classifier and determine its optimal parameters for optimal disease discrimination. These results can be applied to classifiers for differentiation of other diseases.
机译:比较了使用HRCT(高分辨率计算机断层扫描)图像进行纹理分析得出的特征来区分阻塞性肺疾病的分类算法的性能。 HRCT可以为检测各种阻塞性肺部疾病(包括小叶性肺气肿,小叶性肺气肿和闭塞性细支气管炎)提供准确的信息。然而,HRCT图像上的特征可能很微妙,尤其是在疾病的早期阶段,基于图像的诊断受观察者间差异的影响。为了使诊断自动化并提高准确性,我们基于三种类型的自动分类系统进行了比较,它们分别是朴素贝叶斯分类器,ANN(人工神经网络)和SVM(支持向量机),基于它们能够区分正常肺和三种阻塞性疾病肺部疾病。为了评估这三个分类器的性能和交叉验证,使用了5种折叠方法以及5个随机选择的组。为了获得更可靠的结果,每个验证重复100次。 SVM表现最佳,总体灵敏度为86.5%,与其他分类器有显着差异(一种方差分析,p <0.01)。我们解决了影响性能的每个分类器的特性,以及哪个分类器最适合临床应用的问题,并提出了一种选择最佳分类器并确定其最佳参数以进行最佳疾病区分的合适方法。这些结果可用于分类器以区分其他疾病。

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