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Development of CAD based on ANN analysis of power spectra for pneumoconiosis in chest radiographs: Effect of three new enhancement methods

机译:基于ANN功率谱分析的胸部X线片尘肺病CAD的开发:三种新型增强方法的效果

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We have been developing a computer-aided detection (CAD) scheme for pneumoconiosis based on a rule-based plus artificial neural network (ANN) analysis of power spectra. In this study, we have developed three enhancement methods for the abnormal patterns to reduce false-positive and false-negative values. The image database consisted of 2 normal and 15 abnormal chest radiographs. The International Labour Organization standard chest radiographs with pneumoconiosis were categorized as subcategory, size, and shape of pneumoconiosis. Regions of interest (ROIs) with a matrix size of 32 × 32 were selected from normal and abnormal lungs. Three new enhanced methods were obtained by window function, top-hat transformation, and gray-level co-occurrence matrix analysis. We calculated the power spectrum (PS) of all ROIs by Fourier transform. For the classification between normal and abnormal ROIs, we applied a combined analysis using the ruled-based plus the ANN method. To evaluate the overall performance of this CAD scheme, we employed ROC analysis for distinguishing between normal and abnormal ROIs. On the chest radiographs of the highest categories (severe pneumoconiosis) and the lowest categories (early pneumoconiosis), this CAD scheme achieved area under the curve (AUC) values of 0.93 ± 0.02 and 0.72 ± 0.03. The combined rule-based plus ANN method with the three new enhanced methods obtained the highest classification performance for distinguishing between abnormal and normal ROIs. Our CAD system based on the three new enhanced methods would be useful in assisting radiologists in the classification of pneumoconiosis.
机译:我们已经基于功率谱的基于规则的人工神经网络(ANN)分析,开发了一种用于尘肺的计算机辅助检测(CAD)方案。在这项研究中,我们为异常模式开发了三种增强方法,以减少假阳性和假阴性值。图像数据库由2张正常和15张异常胸部X光片组成。国际劳工组织关于尘肺病的标准胸部X光片被分类为尘肺病的子类别,大小和形状。从正常和异常肺中选择矩阵大小为32×32的目标区域(ROI)。通过窗口函数,高顶转换和灰度共现矩阵分析获得了三种新的增强方法。我们通过傅立叶变换计算了所有ROI的功率谱(PS)。对于正常和异常ROI的分类,我们使用基于规则的ANN方法进行了组合分析。为了评估此CAD方案的整体性能,我们采用了ROC分析来区分正常和异常的ROI。在最高类别(严重尘肺)和最低类别(早期尘肺)的胸部X光片上,此CAD方案获得的曲线下面积(AUC)值分别为0.93±0.02和0.72±0.03。基于规则的加ANN方法与三种新的增强方法相结合,在区分异常和正常ROI方面获得了最高的分类性能。我们基于三种新增强方法的CAD系统将有助于协助放射科医生对尘肺病进行分类。

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