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First steps into endoscopic video analysis for Barrett's cancer detection: challenges and opportunities

机译:内窥镜视频分析中巴雷特癌症检测的第一步:挑战和机遇

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Routine surveillance endoscopies are currently used to detect dysplasia in patient with Barrett's Esophagus (BE). However, most of these procedures are performed by non-expert endoscopists in community hospitals. Leading to many missed dysplastic lesions, which can progress into advanced esophagcal adenocarcinoma if left untreated.1 In recent years, several successful algorithms have been proposed for the detection of cancer in BE using high-quality overview images. This work addresses the first steps towards clinical application on endoscopic surveillance videos. Several challenges are identified that occur when moving from image-based to video-based analysis. (1) It is shown that algorithms trained on high-quality overview images do not naively transfer to endoscopic videos due to e.g. non-informative frames. (2) Video quality is shown to be an important factor in algorithm performance. Specifically, temporal location performance is highly correlated with video quality. (3) When moving to real-time algorithms, the additional compute necessary to address the challenges in videos will become a burden on the computational budget. However, in addition to challenges, videos also bring new opportunities not available in the current image-based methods such as the inclusion of temporal information. This work shows that a multi-frame approach increases performance compared to a naive single-image method when the above challenges are addressed.
机译:目前,常规监测内窥镜检查用于检测Barrett食管(BE)患者的异型增生。但是,这些程序大多数都是由社区医院的非专业内镜医师执行的。导致许多遗漏的增生性病变,如果不及时治疗,可发展为晚期食管腺癌。1近年来,已提出了几种成功的算法,可使用高质量的概览图像检测BE中的癌症。这项工作解决了将临床应用应用于内窥镜监视视频的第一步。从基于图像的分析过渡到基于视频的分析时,发现了一些挑战。 (1)表明,由于例如图像质量等原因,在高质量概观图像上训练的算法不会天真地转移到内窥镜视频上。非信息框架。 (2)视频质量是影响算法性能的重要因素。具体而言,时间位置性能与视频质量高度相关。 (3)当转向实时算法时,解决视频挑战所需的额外计算将成为计算预算的负担。但是,除了挑战之外,视频还带来了新的机会,这是当前基于图像的方法所不具备的,例如包含时间信息。这项工作表明,在解决上述挑战时,与单纯的单图像方法相比,多帧方法可以提高性能。

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