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Technology for Medical Education, Research, and Disease Screening by Exploitation of Biomarkers in a Large Collection of Uterine Cervix Images

机译:利用大量子宫颈图像中生物标志物进行医学教育,研究和疾病筛查的技术

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The Communications Engineering Branch of the National Library of Medicine is collaborating with the National Cancer Institute (NCI) in developing applications for medical education, research, and disease screening for precancer detection in the uterine cervix. These applications include (1) expert marking/labeling of tissue regions, (2) Web viewing/ interpretation of histology images, (3) image database/retrieval, and (4) training/testing in clinical image interpretation. Initial NCI studies have been conducted in expert cervicography marking and histology evaluation. We are working toward making cervix images searchable by content-based image retrieval (CBIR). Image pre-processing to remove specular reflection artifacts has achieved 90% success (120 images). Similar results have been obtained for automated location of cervix regions, using Gaussian Mixture Modeling (GMM) with Lab color and one geometric feature. We describe initial classification experiments to discriminate clinically significant tissue, using RGB, HSV, Lab, and YCbCr color models, texture measures, and GMM, Fuzzy C-means, and deterministic annealing algorithms.
机译:美国国家医学图书馆通信工程分会正在与美国国家癌症研究所(NCI)合作,开发用于医学教育,研究和疾病筛查的应用程序,以检测子宫颈的癌前病变。这些应用程序包括(1)组织区域的专家标记/标签;(2)组织学图像的Web查看/解释;(3)图像数据库/检索;以及(4)临床图像解释方面的培训/测试。最初的NCI研究已经在专家宫颈造影标记和组织学评估中进行。我们正在努力通过基于内容的图像检索(CBIR)使子宫颈图像可搜索。去除镜面反射伪像的图像预处理已获得90%的成功率(120张图像)。使用具有Lab颜色和一个几何特征的高斯混合模型(GMM),对于子宫颈区域的自动定位也获得了类似的结果。我们描述了使用RGB,HSV,Lab和YCbCr颜色模型,纹理度量以及GMM,Fuzzy C均值和确定性退火算法来区分临床上重要组织的初始分类实验。

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