Study of malignancy associated changes in sputum images as an indicator of lung cancer

Remya K. Sudheesh, Jeny Rajan, V. Veena, K. Sujathan
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引用次数: 6

Abstract

Lung cancer is one among the major causes of cancer related deaths. Fortunately, an early stage diagnosis can increase the survival rates of the patients. Sputum cytology is one of the easiest and cost-effective method for lung cancer diagnosis. Chances of misdiagnosis and sampling error related to sputum cytology led to the concept of malignancy associated changes. Malignancy associated changes (MAC) are the subtle changes that happens to the normal appearing cells near or distant from the malignant cells. Literature suggests that these changes can be used as an indicator for lung cancer rather than using malignant cells which are very less in number compared to the normal appearing cells in sputum cytology images. The proposed work is intended to detect cells with MAC from sputum smear images. Analysis of nuclei texture features of sputum cell nuclei using Gray Level Co-occurrence Matrix and Gray Level Run Length Matrix from both normal and cancer patients revealed that both type of cells could be differentiated. Among 110 texture features calculated for each nuclei, a set of 35 features which clearly distinguishes normal cells and normal appearing cells were chosen. Support Vector Machine (SVM) classifier is used to classify the cells into two classes i.e cells with MAC and cells without MAC. This study demonstrates that the presence of MAC cells in conventional microscopic sputum cytology images can be identified using image processing techniques and it can have some significance in the early detection of lung cancer.
痰图像中恶性肿瘤相关改变作为肺癌指标的研究
肺癌是癌症相关死亡的主要原因之一。幸运的是,早期诊断可以提高患者的存活率。痰细胞学检查是诊断肺癌最简单、最经济的方法之一。与痰细胞学有关的误诊和抽样错误的机会导致了恶性肿瘤相关改变的概念。恶性肿瘤相关改变(MAC)是发生在离恶性肿瘤细胞近或远的正常细胞上的细微变化。文献提示,这些变化可以作为肺癌的指标,而不是使用与痰细胞学图像中正常细胞相比数量少得多的恶性细胞。提出的工作旨在从痰涂片图像中检测MAC细胞。利用灰度共现矩阵和灰度运行长度矩阵分析正常和癌患者的痰细胞核的细胞核结构特征,发现两种类型的细胞都可以分化。在每个细胞核计算的110个纹理特征中,选择了35个特征,可以明显区分正常细胞和正常外观细胞。采用支持向量机(Support Vector Machine, SVM)分类器将细胞分为有MAC细胞和无MAC细胞两类。本研究表明,通过图像处理技术可以识别常规显微镜下痰细胞学图像中是否存在MAC细胞,对肺癌的早期检测具有一定意义。
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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