光学投影体层摄影对结直肠息肉区域的分类

Wenqi Li, Jianguo Zhang, S. McKenna, M. Coats, F. Carey
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引用次数: 9

摘要

光学投影断层扫描(OPT)增强结肠直肠息肉诊断的潜力正在开始探索。据我们所知,本文首次研究了结肠直肠息肉OPT图像的自动图像分析。利用视觉词袋框架和支持向量机对三维区域进行分类。使用独立子空间分析来学习特定领域的特征字典。这与使用原始补丁(随机投影后)和局部二进制模式进行了比较。使用一组30张专家注释的OPT图像,在斑块水平和区域水平上进行(跨患者)分类实验。结果表明,该方法对三维OPT图像区域进行准确分类是可行的;鉴别低级别发育不良和浸润性癌的准确率约为90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of colorectal polyp regions in optical projection tomography
The potential of optical projection tomography (OPT) to enhance colorectal polyp diagnosis is beginning to be explored. This paper presents, to the best of our knowledge, the first study on automatic image analysis of OPT images of colorectal polyps. 3D regions are classified using the bag of visual words framework and support vector machines. Independent subspace analysis is used to learn a domain-specific feature dictionary. This is compared to the use of raw patches (after random projection) and local binary patterns. Classification experiments (across patients) at the patch level and at the region level are presented using a set of 30 expert-annotated OPT images. Results show that accurate classification of 3D OPT image regions is feasible using this approach; regions of low-grade dysplasia and invasive cancer were discriminated with approximately 90% accuracy.
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