Srivastava Saurabh, Rodríguez Jeffrey J, Rouse Andrew R, Brewer Molly A, Gmitro Arthur F
University of Arizona, Department of Electrical & Computer Engineering, 360 W. 34th St., Apt. K, New York, New York 10001, USA.
J Biomed Opt. 2008 Mar-Apr;13(2):024021. doi: 10.1117/1.2907167.
The confocal microendoscope is an instrument for imaging the surface of the human ovary. Images taken with this instrument from normal and diseased tissue show significant differences in cellular distribution. A real-time computer-aided system to facilitate the identification of ovarian cancer is introduced. The cellular-level structure present in ex vivo confocal microendoscope images is modeled as texture. Features are extracted based on first-order statistics, spatial gray-level-dependence matrices, and spatial-frequency content. Selection of the features is performed using stepwise discriminant analysis, forward sequential search, a nonparametric method, principal component analysis, and a heuristic technique that combines the results of these other methods. The selected features are used for classification, and the performance of various machine classifiers is compared by analyzing areas under their receiver operating characteristic curves. The machine classifiers studied included linear discriminant analysis, quadratic discriminant analysis, and the k-nearest-neighbor algorithm. The results suggest it is possible to automatically identify pathology based on texture features extracted from confocal microendoscope images and that the machine performance is superior to that of a human observer.
共聚焦显微内镜是一种用于对人体卵巢表面进行成像的仪器。用该仪器拍摄的正常组织和病变组织图像显示出细胞分布存在显著差异。本文介绍了一种有助于识别卵巢癌的实时计算机辅助系统。将离体共聚焦显微内镜图像中呈现的细胞水平结构建模为纹理。基于一阶统计、空间灰度依赖矩阵和空间频率内容提取特征。使用逐步判别分析、向前顺序搜索、非参数方法、主成分分析以及一种结合这些其他方法结果的启发式技术来进行特征选择。所选特征用于分类,并通过分析各种机器分类器的接收器操作特征曲线下的面积来比较它们的性能。所研究的机器分类器包括线性判别分析、二次判别分析和k近邻算法。结果表明,基于从共聚焦显微内镜图像中提取的纹理特征自动识别病变是可行的,并且机器的性能优于人类观察者。