An Effective Method for Lung Tumor Screening Using CT Dataset

Islem Daassi, A. B. Slama, Sabri Barbaria, Mounir Sayadi, Hedi Trabelsi
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Abstract

Lung tumors are one of the most dangerous forms of cancer. It has a high incidence and mortality rate because it is frequently found at a later stage. Computed tomography (CT) scans are frequently used to distinguish between illnesses. Computerized systems have been created to analyze disease in its early phases. This paper describes a completely automated framework for detecting nodules in lung CT images. Grayscale CT image histograms are computed to automatically separate lung regions from the underlying tissue. Morphological operators are used to refine the output. The internal anatomy of the parenchyma should then be extracted. In order to differentiate candidate nodules from other structures, a threshold-based technique has been suggested. For these node candidates, various statistical and shape-based features are extracted to create a node feature vector that is classified using a support vector machine. The proposed method is tested on a large lung CT data collection gathered by the Lung Imaging Database Consortium. (LIDC). When compared to comparable existing methods, the proposed strategy produced better results. Its efficacy has been demonstrated by a sensitivity rate of 84.6%.
一种基于CT数据集的肺癌筛查方法
肺肿瘤是最危险的癌症之一。它有很高的发病率和死亡率,因为它经常在晚期被发现。计算机断层扫描(CT)经常用于区分疾病。计算机化的系统已经被用来分析疾病的早期阶段。本文描述了一种完全自动化的肺CT图像结节检测框架。计算灰度CT图像直方图,自动将肺区域与下层组织分离。形态学运算符用于细化输出。然后取出实质的内部解剖结构。为了从其他结构中区分候选结节,已经提出了一种基于阈值的技术。对于这些候选节点,提取各种基于统计和形状的特征来创建节点特征向量,使用支持向量机对其进行分类。该方法在肺成像数据库联盟收集的大量肺部CT数据集上进行了测试。(LIDC)。与可比较的现有方法相比,所提出的策略产生了更好的结果。其敏感性为84.6%。
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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