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A Hierarchical Multi-task Approach to Gastrointestinal Image Analysis

机译:胃肠型图像分析的分层多任务方法

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A large number of different lesions and pathologies can affect the human digestive system, resulting in life-threatening situations. Early detection plays a relevant role in the successful treatment and the increase of current survival rates to, e.g., colorectal cancer. The standard procedure enabling detection, endoscopic video analysis, generates large quantities of visual data that need to be carefully analyzed by an specialist. Due to the wide range of color, shape, and general visual appearance of pathologies, as well as highly varying image quality, such process is greatly dependent on the human operator experience and skill. In this work, we detail our solution to the task of multi-category classification of images from the gastrointestinal (GI) human tract within the 2020 Endotect Challenge. Our approach is based on a Convolutional Neural Network minimizing a hierarchical error function that takes into account not only the finding category, but also its location within the GI tract (lower/upper tract), and the type of finding (pathological finding/therapeutic intervention/anatomical landmark/mucosal views' quality). We also describe in this paper our solution for the challenge task of polyp segmentation in colonoscopies, which was addressed with a pre-trained double encoder-decoder network. Our internal cross-validation results show an average performance of 91.25 Mathews Correlation Coefficient (MCC) and 91.82 Micro-F1 score for the classification task, and a 92.30 F1 score for the polyp segmentation task. The organization provided feedback on the performance in a hidden test set for both tasks, which resulted in 85.61 MCC and 86.96 Fl score for classification, and 91.97 Fl score for polyp segmentation. At the time of writing no public ranking for this challenge had been released.
机译:大量不同的病变和病理可以影响人体消化系统,导致危及生命的情况。早期检测在成功的治疗中起着相关的作用,以及当前存活率的增加,例如结直肠癌。标准程序启用检测,内窥镜视频分析,产生了由专家仔细分析的大量视觉数据。由于彩色,形状和病态的一般视觉外观,以及高度不同的图像质量,这种过程极大地依赖于人工经验和技能。在这项工作中,我们将我们的解决方案详细说明了2020年在2020内部挑战内从胃肠道(GI)人类的多类图像分类的任务。我们的方法基于卷积神经网络,最小化了不仅考虑了查找类别的分层错误函数,而且还考虑了Gi arract(较低/上部)内的位置,以及发现的类型(病理发现/治疗干预/解剖标志性/粘膜意见'质量)。我们还在本文中描述了我们在结肠镜片中的息肉分割的挑战任务的解决方案,该方法通过预先培训的双编码器 - 解码器网络进行了解决。我们的内部交叉验证结果显示了91.25 Mathews相关系数(MCC)和91.82微F1分数的平均性能,为息肉分割任务的92.30 F1分数。该组织提供了关于两个任务的隐藏测试集中的性能的反馈,这些任务导致了85.61 MCC和分类86.96次FL分数,息肉分割91.97 FL得分。在撰写本文时,没有公众排名这一挑战。

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