Automated detection of lung cancer using statistical and morphological image processing techniques

A. Al-Fahoum, Eslam B. Jaber, M. Al-Jarrah
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引用次数: 23

Abstract

Lung cancer represents the second most commonly diagnosed cancer among Jordanian population. Evidence that early detection of lung cancer may allow for more timely therapeutic intervention has provided the momentum for lung cancer screening programs around the world. In this study, a computer aided detection (CAD) system is proposed in an attempt to detect the lung cancer areas using computed tomography (CT) images. It is implemented as a “second reader” to help radiologists focus their attention on regions that might be missed during visual interpretation. The proposed CAD system has three main stages; Segmentation by thresholding the CT images, labeling the founded regions and then extracting some diagnostic features of each region for further analysis and interpretation. The study is trained, tested, and validated using images obtained from forty five patients. The obtained results perfectly match the radiologist's diagnosis in detecting the defected areas and quantitatively measuring its size, location, borders as well as displaying its other diagnostic characteristics. Moreover, the proposed system can detect misclassified regions.
基于统计和形态学图像处理技术的肺癌自动检测
肺癌是约旦人口中第二大最常诊断的癌症。早期发现肺癌可能允许更及时的治疗干预的证据为世界各地的肺癌筛查项目提供了动力。在本研究中,提出了一种计算机辅助检测(CAD)系统,试图利用计算机断层扫描(CT)图像检测肺癌区域。它被实现为“第二阅读器”,以帮助放射科医生将注意力集中在视觉解释中可能遗漏的区域。本文提出的CAD系统主要分为三个阶段;通过对CT图像进行阈值分割,标记建立的区域,然后提取每个区域的一些诊断特征进行进一步的分析和解释。该研究使用来自45名患者的图像进行训练、测试和验证。所得结果与放射科医师的诊断完全吻合,在检测缺陷区域和定量测量其大小、位置、边界以及显示其其他诊断特征方面。此外,该系统还可以检测出错误分类的区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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