Mackin R W, Newton L M, Turner J N, Holmes T J, Roysam B
Electrical, Computer, and Systems Engineering Department, Rensselaer Polytechnic Institute, Troy, New York, USA.
Anal Quant Cytol Histol. 1998 Apr;20(2):77-91.
To investigate the accuracy with which the nuclei of cells in overlapped and thick clusters in cervical/ vaginal smears can be classified independent of the segmentation algorithm used and to determine the influence of three-dimensional (3-D) processing as compared to two-dimensional (2-D) methods on classification of the nuclei.
Cell clusters were imaged from 31 ThinPrep smears composed of 808 nuclei, of which 420 were determined to be abnormal by a cytotechnologist. Sets of 2-D and 3-D volumetric features of the detected nuclei were formulated, and classifiers were constructed. The effect of computational deconvolution on classification was assessed using nearest-neighbor and Wiener filter in 2-D and 3-D before calculating features. A "best focus plane" was calculated for each nucleus from the 3-D data set, and the 2-D features in this plane were also analyzed.
研究在不考虑所使用的分割算法的情况下,对宫颈/阴道涂片重叠且密集细胞团中的细胞核进行分类的准确性,并确定与二维(2-D)方法相比,三维(3-D)处理对细胞核分类的影响。
从31份由808个细胞核组成的ThinPrep涂片对细胞团进行成像,其中420个细胞核经细胞技术人员判定为异常。制定了检测到的细胞核的二维和三维体积特征集,并构建了分类器。在计算特征之前,使用二维和三维中的最近邻和维纳滤波器评估计算去卷积对分类的影响。从三维数据集中为每个细胞核计算一个“最佳聚焦平面”,并分析该平面中的二维特征。