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Upper gastrointestinal anatomy detection with multi-task convolutional neural networks

机译:多任务卷积神经网络的上消化道解剖学检测

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摘要

Esophagogastroduodenoscopy (EGD) has been widely applied for gastrointestinal (GI) examinations. However, there is a lack of mature technology to evaluate the quality of the EGD inspection process. In this Letter, the authors design a multi-task anatomy detection convolutional neural network (MT-AD-CNN) to evaluate the EGD inspection quality by combining the detection task of the upper digestive tract with ten anatomical structures and the classification task of informative video frames. The authors’ model is able to eliminate non-informative frames of the gastroscopic videos and detect the anatomies in real time. Specifically, a sub-branch is added to the detection network to classify NBI images, informative and non-informative images. By doing so, the detected box will be only displayed on the informative frames, which can reduce the false-positive rate. They can determine the video frames on which each anatomical location is effectively examined, so that they can analyse the diagnosis quality. Their method reaches the performance of 93.74% mean average precision for the detection task and 98.77% accuracy for the classification task. Their model can reflect the detailed circumstance of the gastroscopy examination process, which shows application potential in improving the quality of examinations.
机译:食管胃十二指肠镜检查(EGD)已广泛用于胃肠道(GI)检查。但是,缺乏评估EGD检查过程质量的成熟技术。在这封信中,作者设计了一个多任务解剖学检测卷积神经网络(MT-AD-CNN),通过结合具有十个解剖结构的上消化道检测任务和信息视频的分类任务来评估EGD检查质量。框架。作者的模型能够消除胃镜视频的非信息帧,并实时检测解剖结构。具体而言,将子分支添加到检测网络以对NBI图像,信息性和非信息性图像进行分类。这样,检测到的框将仅显示在信息框上,这可以降低假阳性率。他们可以确定有效检查每个解剖位置的视频帧,从而可以分析诊断质量。他们的方法对检测任务的平均平均准确度达到93.74%,对分类任务的准确度达到98.77%。他们的模型可以反映胃镜检查过程的详细情况,显示出在提高检查质量方面的应用潜力。

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