首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Content Analysis of Uterine Cervix Images: Initial Steps Towards Content Based Indexing and Retrieval of Cervigrams
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Content Analysis of Uterine Cervix Images: Initial Steps Towards Content Based Indexing and Retrieval of Cervigrams

机译:子宫子宫颈图像的内容分析:基于内容的子宫颈索引和检索的初始步骤

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This work is motivated by the need for visual information extraction and management in the growing field of medical image archives. In particular the work focuses on a unique medical repository of digital cervicographic images ("Cervigrams") collected by the National Cancer Institute (NCI) in a longitudinal multi-year study carried out in Guanacaste, Costa Rica. NCI together with the National Library of Medicine (NLM) is developing a unique Web-based database of the digitized cervix images to study the evolution of lesions related to cervical cancer. Such a database requires specific tools that can analyze the cervigram content and represent it in a way that can be efficiently searched and compared. We present a multi-step scheme for segmenting and labeling regions of medical and anatomical interest within the cervigram, utilizing statistical tools and adequate features. The multi-step structure is motivated by the large diversity of the images within the database. The algorithm identifies the cervix region within the image. It than separates the cervix region into three main tissue types: the columnar epithelium (CE), the squamous epithelium (SE), and the acetowhite (AW), which is visible for a short time following the application of acetic acid. The algorithm is developed and tested on a subset of 120 cervigrams that were manually labeled by NCI experts. Initial segmentation results are presented and evaluated.
机译:这项工作的动机是在医学图像档案的增长领域中对视觉信息的提取和管理的需求。特别是,这项工作着重于由国家癌症研究所(NCI)在哥斯达黎加瓜纳卡斯特进行的一项为期多年的纵向研究中收集的独特的数字宫颈图像医学图像(宫颈)。 NCI与国家医学图书馆(NLM)一起开发了一个基于Web的独特数字化宫颈图像数据库,以研究与宫颈癌相关的病变的演变。这样的数据库需要特定的工具,这些工具可以分析子宫颈图内容并以可以有效搜索和比较的方式表示子宫颈图。我们利用统计工具和适当的功能,为分割和标记宫颈内的医学和解剖学区域提出了一种多步骤方案。数据库内图像的多样性极大地激发了多步结构。该算法识别图像内的子宫颈区域。然后它将子宫颈区域分为三种主要的组织类型:柱状上皮(CE),鳞状上皮(SE)和乙酰白(AW),在使用乙酸后短时间内可见。该算法是在由NCI专家手动标记的120个子宫颈图的子集上开发和测试的。最初的分割结果被呈现和评估。

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