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An Appraisal of Lung Nodules Automatic Classification Algorithms for CT Images

机译:CT图像肺结节自动分类算法的评价

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摘要

Lung cancer is one of the most deadly diseases around the world representing about 26% of all cancers in 2017. The five-year cure rate is only 18% despite great progress in recent diagnosis and treatment. Before diagnosis, lung nodule classification is a key step, especially since automatic classification can help clinicians by providing a valuable opinion. Modern computer vision and machine learning technologies allow very fast and reliable CT image classification. This research area has become very hot for its high efficiency and labor saving. The paper aims to draw a systematic review of the state of the art of automatic classification of lung nodules. This research paper covers published works selected from the Web of Science, IEEEXplore, and DBLP databases up to June 2018. Each paper is critically reviewed based on objective, methodology, research dataset, and performance evaluation. Mainstream algorithms are conveyed and generic structures are summarized. Our work reveals that lung nodule classification based on deep learning becomes dominant for its excellent performance. It is concluded that the consistency of the research objective and integration of data deserves more attention. Moreover, collaborative works among developers, clinicians, and other parties should be strengthened.
机译:肺癌是全球最致命的疾病之一,2017年约占所有癌症的26%。尽管最近的诊断和治疗取得了很大进展,但五年治愈率仅为18%。在诊断之前,肺结节分类是关键步骤,尤其是因为自动分类可以通过提供有价值的意见来帮助临床医生。现代计算机视觉和机器学习技术可实现非常快速和可靠的CT图像分类。该研究领域因其高效和省力而变得非常热门。本文旨在对肺结节自动分类的技术现状进行系统的回顾。该研究论文涵盖了截止至2018年6月选自Web of Science,IEEEXplore和DBLP数据库的已发表作品。每篇论文均根据目标,方法论,研究数据集和性能评估进行了严格审查。传达了主流算法并总结了通用结构。我们的工作表明,基于深度学习的肺结节分类因其出色的性能而占主导地位。结论是研究目标的一致性和数据的整合值得进一步关注。此外,应加强开发人员,临床医生和其他各方之间的协作。

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