基于深度卷积神经网络的内窥镜视频伪影检测

Chenxi Zhang, Ning Zhang, Dechun Wang, Yu Cao, Benyuan Liu
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引用次数: 3

摘要

胃肠癌是一种常见的致命疾病,影响着世界上许多人。2019年,胃肠道癌症是美国最常见的癌症,也是第二大死亡原因。早期发现胃肠道肿瘤是提高生存率的最有效途径。内镜检查是早期发现胃肠道肿瘤常用的临床检查方法之一。高质量内窥镜手术的主要挑战是手术过程中存在各种形式的伪影,例如像素饱和、运动模糊、散焦、镜面反射、气泡、流体、碎片。这些伪影不仅增加了诊断过程中检查底层组织的难度,而且还影响了随访所需的后期分析方法(例如,用于随访和存档目的的视频拼接以及用于报告的视频帧检索)。此外,这些伪影的存在通常会干扰内窥镜检查中各种病变的计算机辅助诊断。基于卷积神经网络(CNN)的目标检测方法已被证明是自然图像目标检测和结肠镜检查应用(如息肉检测)的有效方法。然而,由于缺乏训练数据,致力于内窥镜伪影检测的努力较少。在本文中,我们使用来自EAD2019挑战的数据,并研究了两种改进的基于cnn的七类内窥镜伪影检测(EAD)方法的性能。实验结果表明,我们提出的基于SSD和Faster-RCNN的目标检测器的性能明显优于基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artifact Detection in Endoscopic Video with Deep Convolutional Neural Networks
Gastrointestinal cancer is a common and deadly disease that affects many people in the world. In 2019, Gastrointestinal cancer was the most common cancer and the second leading cause of death in the US. Detecting gastrointestinal cancer during the early stage is the most effective way to improve the survival rate. One of the commonly used clinical procedures for early detection of gastrointestinal cancer is endoscopy. The main challenge of a high-quality endoscopy operation is the presence of various forms of artifacts during the operation, e.g., pixel saturation, motion blur, defocus, specular reflections, bubbles, fluid, debris. These artifacts not only increase the difficulty in examining the underlying tissues during diagnosis but also affect the post-analysis methods required for follow-ups (e.g., video mosaicking for follow-ups and archival purposes and video-frame retrieval for reporting). Also, the presence of these artifacts often interferes with the computer-aided diagnosis of various lesions in endoscopy. The Convolutional Neural Network (CNN) based object detection methods have proved to be an effective approach for nature image object detection and colonoscopy applications (e.g., polyp detection). However, fewer efforts have been devoted to endoscopic artifact detection due to the lack of training data. In this paper, we use data from the EAD2019 challenge and investigate the performance of two improved CNN-based methods for seven-class endoscopic artifact detection (EAD). Experiment results show that our proposed objection detectors based on SSD and Faster-RCNN significantly outperform the baseline.
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