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Texture Classification of Lung Computed Tomography Images

机译:肺部CT图像的纹理分类

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Current development of algorithms in computer-aided diagnosis (CAD) scheme is growing rapidly to assist the radiologist in medical image interpretation. Texture analysis of computed tomography (CT) scans is one of important preliminary stage in the computerized detection system and classification for lung cancer. Among different types of images features analysis, Haralick texture with variety of statistical measures has been used widely in image texture description. The extraction of texture feature values is essential to be used by a CAD especially in classification of the normal and abnormal tissue on the cross sectional CT images. This paper aims to compare experimental results using texture extraction and different machine leaning methods in the classification normal and abnormal tissues through lung CT images. The machine learning methods involve in this assessment are Artificial Immune Recognition System (AIRS), Naive Bayes, Decision Tree (J48) and Backpropagation Neural Network. AIRS is found to provide high accuracy (99.2%) and sensitivity (98.0%) in the assessment. For experiments and testing purpose, publicly available datasets in the Reference Image Database to Evaluate Therapy Response (RIDER) are used as study cases.
机译:当前,计算机辅助诊断(CAD)方案中算法的发展正在迅速发展,以协助放射科医生进行医学图像解释。计算机断层扫描(CT)扫描的纹理分析是肺癌计算机化检测系统和分类的重要初始阶段之一。在不同类型的图像特征分析中,具有各种统计量度的Haralick纹理已广泛用于图像纹理描述中。纹理特征值的提取对于CAD必不可少,特别是在横截面CT图像上正常组织和异常组织的分类中。本文旨在比较使用纹理提取和不同机器学习方法通​​过肺部CT图像对正常和异常组织进行分类的实验结果。评估中涉及的机器学习方法是人工免疫识别系统(AIRS),朴素贝叶斯,决策树(J48)和反向传播神经网络。发现AIRS在评估中具有很高的准确性(99.2%)和敏感性(98.0%)。为了进行实验和测试,将参考图像数据库中用于评估治疗反应的公共数据集(RIDER)用作研究案例。

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