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Differentiation of Several Interstitial Lung Disease Patterns in HRCT Images using Support Vector Machine: Role of Databases on Performance

机译:支持向量机在HRCT图像中区分几种间质性肺疾病模式:数据库对性能的作用

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Interstitial lung disease (ILD) is complicated group of pulmonary disorders. High Resolution Computed Tomography (HRCT) considered to be best imaging technique for analysis of different pulmonary disorders. HRCT findings can be categorised in several patterns viz. Consolidation, Emphysema, Ground Glass Opacity, Nodular, Normal etc. based on their texture like appearance. Clinician often find it difficult to diagnosis these pattern because of their complex nature. In such scenario computer-aided diagnosis system could help clinician to identify patterns. Several approaches had been proposed for classification of ILD patterns. This includes computation of textural feature and training /testing of classifier such as artificial neural network (ANN), support vector machine (SVM) etc. In this paper, wavelet features are calculated from two different ILD database, publically available MedGIFT ILD database and private ILD database, followed by performance evaluation of ANN and SVM classifiers in terms of average accuracy. It is found that average classification accuracy by SVM is greater than ANN where trained and tested on same database. Investigation continued further to test variation in accuracy of classifier when training and testing is performed with alternate database and training and testing of classifier with database formed by merging samples from same class from two individual databases. The average classification accuracy drops when two independent databases used for training and testing respectively. There is significant improvement in average accuracy when classifiers are trained and tested with merged database. It infers dependency of classification accuracy on training data. It is observed that SVM outperforms ANN when same database is used for training and testing.
机译:间质性肺疾病(ILD)是一组复杂的肺部疾病。高分辨率计算机断层扫描(HRCT)被认为是分析不同肺部疾病的最佳成像技术。 HRCT的发现可以分为几种模式。固结,肺气肿,毛玻璃不透明,结节状,正常等,基于它们的外观外观。由于其复杂性,临床医生经常发现很难诊断这些模式。在这种情况下,计算机辅助诊断系统可以帮助临床医生识别模式。已经提出了几种方法来对ILD模式进行分类。这包括纹理特征的计算和分类器的训练/测试,例如人工神经网络(ANN),支持向量机(SVM)等。在本文中,小波特征是从两个不同的ILD数据库,可公开获得的MedGIFT ILD数据库和私有ILD数据库中计算得出的ILD数据库,然后根据平均准确性对ANN和SVM分类器进行性能评估。发现在同一数据库上经过训练和测试的SVM的平均分类准确度高于ANN。当使用备用数据库进行训练和测试,并通过合并来自两个单独数据库的同一类别的样本形成的数据库进行分类器的训练和测试时,调查继续进行,以检验分类器准确性的变化。当两个独立的数据库分别用于训练和测试时,平均分类准确率下降。使用合并的数据库对分类器进行训练和测试时,平均准确度有了显着提高。它推断出分类精度对训练数据的依赖性。可以看出,当使用相同的数据库进行训练和测试时,SVM的性能优于ANN。

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