论文标题

从计算机断层扫描(Lotus)基准的肺部肿瘤分割

Lung-Originated Tumor Segmentation from Computed Tomography Scan (LOTUS) Benchmark

论文作者

Afshar, Parnian, Mohammadi, Arash, Plataniotis, Konstantinos N., Farahani, Keyvan, Kirby, Justin, Oikonomou, Anastasia, Asif, Amir, Wee, Leonard, Dekker, Andre, Wu, Xin, Haque, Mohammad Ariful, Hossain, Shahruk, Hasan, Md. Kamrul, Kamal, Uday, Hsu, Winston, Lin, Jhih-Yuan, Rahman, M. Sohel, Ibtehaz, Nabil, Foisol, Sh. M. Amir, Lam, Kin-Man, Guang, Zhong, Zhang, Runze, Channappayya, Sumohana S., Gupta, Shashank, Dev, Chander

论文摘要

肺癌是最致命的癌症之一,在某种程度上,其有效的诊断和治疗取决于肿瘤的准确描述。以人为本的方法是以人间的变异性约束,并且考虑到只有专家才能提供注释的事实,这是当前最常见的方法。自动和半自动肿瘤分割方法最近显示出令人鼓舞的结果。但是,由于不同的研究人员使用各种数据集和性能指标验证了其算法,因此可靠地评估这些方法仍然是一个开放的挑战。通过2018年IEEE视频和图像处理(VIP)杯竞争创建的计算机断层扫描(Lotus)基准的肺部肿瘤分割的目的是提供独特的数据集和预先定义的指标,以便不同的研究人员可以以统一的方式开发和评估他们的方法。 2018年VIP杯始于42个国家 /地区的全球参与,以访问竞争数据。在注册阶段,有129名成员聚集在10个国家 /地区的28个团队中,其中9支球队进入了最后阶段,6个团队成功完成了所有必要的任务。简而言之,竞争期间提出的所有算法都基于深度学习模型与假阳性还原技术相结合。由三名决赛入围者开发的方法显示出令人鼓舞的肿瘤分割结果,但是,应付出更多的精力来降低假阳性率。该竞赛手稿概述了VIP杯挑战,以及拟议的算法和结果。

Lung cancer is one of the deadliest cancers, and in part its effective diagnosis and treatment depend on the accurate delineation of the tumor. Human-centered segmentation, which is currently the most common approach, is subject to inter-observer variability, and is also time-consuming, considering the fact that only experts are capable of providing annotations. Automatic and semi-automatic tumor segmentation methods have recently shown promising results. However, as different researchers have validated their algorithms using various datasets and performance metrics, reliably evaluating these methods is still an open challenge. The goal of the Lung-Originated Tumor Segmentation from Computed Tomography Scan (LOTUS) Benchmark created through 2018 IEEE Video and Image Processing (VIP) Cup competition, is to provide a unique dataset and pre-defined metrics, so that different researchers can develop and evaluate their methods in a unified fashion. The 2018 VIP Cup started with a global engagement from 42 countries to access the competition data. At the registration stage, there were 129 members clustered into 28 teams from 10 countries, out of which 9 teams made it to the final stage and 6 teams successfully completed all the required tasks. In a nutshell, all the algorithms proposed during the competition, are based on deep learning models combined with a false positive reduction technique. Methods developed by the three finalists show promising results in tumor segmentation, however, more effort should be put into reducing the false positive rate. This competition manuscript presents an overview of the VIP-Cup challenge, along with the proposed algorithms and results.

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