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首页> 外文期刊>Journal of medical systems >An Appraisal of Nodule Diagnosis for Lung Cancer in CT Images
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An Appraisal of Nodule Diagnosis for Lung Cancer in CT Images

机译:CT图像中肺癌结节诊断评估

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As the second eyes of radiologists, computer-aided diagnosis systems play a significant role in nodule detection and diagnosis for lung cancer. In this paper, we aim to provide a systematic survey of state-of-the-art techniques (both traditional techniques and deep learning techniques) for nodule diagnosis from computed tomography images. This review first introduces the current progress and the popular structure used for nodule diagnosis. In particular, we provide a detailed overview of the five major stages in the computer-aided diagnosis systems: data acquisition, nodule segmentation, feature extraction, feature selection and nodule classification. Second, we provide a detailed report of the selected works and make a comprehensive comparison between selected works. The selected papers are from the IEEE Xplore, Science Direct, PubMed, and Web of Science databases up to December 2018. Third, we discuss and summarize the better techniques used in nodule diagnosis and indicate the existing future challenges in this field, such as improving the area under the receiver operating characteristic curve and accuracy, developing new deep learning-based diagnosis techniques, building efficient feature sets (fusing traditional features and deep features), developing high-quality labeled databases with malignant and benign nodules and promoting the cooperation between medical organizations and academic institutions.
机译:作为放射科医生的第二个眼睛,计算机辅助诊断系统在结节检测和肺癌诊断中发挥着重要作用。在本文中,我们的目的是提供对从计算机断层摄影图像的结节诊断的最先进技术(传统技术和深度学习技术)的系统调查。本综述首先介绍了用于结节诊断的当前进度和流行结构。特别是,我们详细概述了计算机辅助诊断系统中的五个主要阶段:数据采集,结节分割,特征提取,特征选择和结核分类。其次,我们提供所选工作的详细报告,并在所选工作之间进行全面比较。所选论文来自IEEE XPLORE,科学直接,PUBMED和科学数据库网络,高达2018年12月。三,我们讨论并总结了结节诊断中使用的更好技术,并表明了该领域的未来未来挑战,如改善该地区根据接收器运行特征曲线和准确性,开发新的深度学习的诊断技术,建立高效的功能集(融合传统功能和深度特征),开发出具有恶性和良性结节的高质量标记数据库,促进医疗之间的合作组织和学术机构。

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