Analysis of statistical texture features for automatic lung cancer detection in PET/CT images

K. Punithavathy, M. Ramya, S. Poobal
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引用次数: 50

Abstract

Lung cancer is the most prevalent cancer and is the leading cause of cancer deaths worldwide. The overall survival rate of lung cancer patients is only 14%. Lives of cancer patients can be saved if the cancer is detected in the initial stages. Positron Emission Tomography / Computed Tomography (PET/CT) is the preferred imaging modality in cancer detection with improved diagnostic accuracy due to the integration of functional (PET) and anatomical (CT) information into a single scan. Although PET/CT is advantageous over other modalities, visual inspection of these images may be an error prone task, as it is difficult to distinguish between background tissues and lung nodules and subject to inter and intra observer variability. Therefore, computational systems are essential to assist radiologists in the elucidation of images and accurate diagnosis. This paper aims at developing a methodology for automatic detection of lung cancer from PET/CT images. Image pre-processing methods such as Contrast Limited Adaptive Histogram Equalization (CLAHE) and Wiener filtering were performed to remove the artifacts due to contrast variations and noise. Lung region of interest (ROI) were extracted from images using morphological operators. Haralick statistical texture features were preferred as they extract more texture information from the cancer regions than the visual assessment. Fuzzy C means (FCM) clustering was used to classify the regions as normal or abnormal. The proposed method was carried out using PET/CT images of lung cancer patients and implemented using MATLAB. The performance of the proposed methodology was evaluated using Receiver Operating Characteristics (ROC) curve. The proposed method provides better classification and cancer detection with an overall accuracy of 92.67%.
PET/CT图像肺癌自动检测统计纹理特征分析
肺癌是最普遍的癌症,也是全世界癌症死亡的主要原因。肺癌患者的总生存率只有14%。如果在早期阶段就发现癌症,就可以挽救癌症患者的生命。正电子发射断层扫描/计算机断层扫描(PET/CT)是癌症检测的首选成像方式,由于将功能(PET)和解剖(CT)信息整合到一次扫描中,诊断准确性得到了提高。尽管PET/CT优于其他方式,但这些图像的目视检查可能是一个容易出错的任务,因为很难区分背景组织和肺结节,并且受观察者之间和内部的变异性的影响。因此,计算系统是必不可少的,以协助放射科医生在阐明图像和准确诊断。本文旨在开发一种从PET/CT图像中自动检测肺癌的方法。图像预处理方法,如对比度有限自适应直方图均衡化(CLAHE)和维纳滤波,以消除由于对比度变化和噪声的伪影。利用形态学算子提取肺感兴趣区域。Haralick统计纹理特征是首选的,因为它们比视觉评估从癌症区域提取更多的纹理信息。使用模糊C均值(FCM)聚类对正常或异常区域进行分类。该方法采用肺癌患者的PET/CT图像,并利用MATLAB实现。采用受试者工作特征(ROC)曲线对该方法进行评价。该方法提供了更好的分类和癌症检测,总体准确率为92.67%。
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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