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Colonoscopic Polyp Detection using Convolutional Neural Networks

机译:卷积神经网络的结肠镜息肉检测

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Computer aided diagnosis (CAD) systems for medical image analysis rely on accurate and efficient feature extraction methods. Regardless of which type of classifier is used, the results will be limited if the input features are not diagnostically relevant and do not properly discriminate between the different classes of images. Thus, a large amount of research has been dedicated to creating feature sets that capture the salient features that physicians are able to observe in the images. Successful feature extraction reduces the semantic gap between the physician's interpretation and the computer representation of images, and helps to reduce the variability in diagnosis between physicians. Due to the complexity of many medical image classification tasks, feature extraction for each problem often requires domain-specific knowledge and a carefully constructed feature set for the specific type of images being classified. In this paper, we describe a method for automatic diagnostic feature extraction from colonoscopy images that may have general application and require a lower level of domain-specific knowledge. The work in this paper expands on our previous CAD algorithm for detecting polyps in colonoscopy video. In that work, we applied an eigenimage model to extract features representing polyps, normal tissue, diverticula, etc. from colonoscopy videos taken from various viewing angles and imaging conditions. Classification was performed using a conditional random field (CRF) model that accounted for the spatial and temporal adjacency relationships present in colonoscopy video. In this paper, we replace the eigenimage feature descriptor with features extracted from a convolutional neural network (CNN) trained to recognize the same image types in colonoscopy video. The CNN-derived features show greater invariance to viewing angles and image quality factors when compared to the eigenimage model. The CNN features are used as input to the CRF classifier as before. We report testing results for the new algorithm using both human and mouse colonoscopy data.
机译:用于医学图像分析的计算机辅助诊断(CAD)系统依赖于准确而有效的特征提取方法。不管使用哪种类型的分类器,如果输入特征在诊断上都不相关并且不能正确地区分不同的图像类别,则结果将受到限制。因此,大量研究致力于创建可捕获医师能够在图像中观察到的显着特征的特征集。成功的特征提取减少了医生的解释和图像的计算机表示之间的语义鸿沟,并有助于减少医生之间的诊断差异。由于许多医学图像分类任务的复杂性,针对每个问题的特征提取通常需要特定领域的知识以及针对要分类的特定类型图像的精心构建的特征集。在本文中,我们描述了一种从结肠镜检查图像中自动诊断特征提取的方法,该方法可能具有普遍应用并且需要较低水平的领域特定知识。本文的工作扩展了我们先前用于检测结肠镜检查视频中息肉的CAD算法。在这项工作中,我们应用了本征图像模型,从各种角度和成像条件下拍摄的结肠镜检查视频中提取出代表息肉,正常组织,憩室等的特征。使用条件随机场(CRF)模型进行分类,该模型说明了结肠镜检查视频中存在的空间和时间邻接关系。在本文中,我们将特征图像描述符替换为从经训练可识别结肠镜检查视频中相同图像类型的卷积神经网络(CNN)提取的特征。与本征图像模型相比,CNN衍生的特征在视角和图像质量因子方面显示出更大的不变性。与以前一样,CNN功能用作CRF分类器的输入。我们报告使用人类和小鼠结肠镜检查数据的新算法的测试结果。

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