Poon S S, Ward R K, Palcic B
Cancer Imaging, B.C. Cancer Agency, Vancouver, Canada.
Cytometry. 1992;13(7):766-74. doi: 10.1002/cyto.990130713.
A simple technique which automatically detects and then segments nucleated cells in Wright's giemsa-stained blood smears is presented. Our method differs from others in 1) the simplicity of our algorithms; 2) inclusion of touching (as well as nontouching) cells; and 3) use of these algorithms to segment as well as to detect nucleated cells employing conventionally prepared smears. Our method involves: 1) acquisition of spectral images; 2) preprocessing the acquired images; 3) detection of single and touching cells in the scene; 4) segmentation of the cells into nuclear and cytoplasmic regions; and 5) postprocessing of the segmented regions. The first two steps of this algorithm are employed to obtain high-quality images, to remove random noise, and to correct aberration and shading effects. Spectral information of the image is used in step 3 to segment the nucleated cells from the rest of the scene. Using the initial cell masks, nucleated cells which are just touching are detected and separated. Simple features are then extracted and conditions applied such that single nucleated cells are finally selected. In step 4, the intensity variations of the cells are then used to segment the nucleus from the cytoplasm. The success rate in segmenting the nucleated cells is between 81 and 93%. The major errors in segmentation of the nucleus and the cytoplasm in the recognized nucleated cells are 3.5% and 2.2%, respectively.
本文提出了一种简单的技术,可自动检测并分割瑞氏吉姆萨染色血涂片中有核细胞。我们的方法与其他方法的不同之处在于:1)算法简单;2)包含相互接触(以及不接触)的细胞;3)使用这些算法对常规制备的涂片进行有核细胞的分割和检测。我们的方法包括:1)获取光谱图像;2)对获取的图像进行预处理;3)检测场景中的单个细胞和相互接触的细胞;4)将细胞分割为细胞核和细胞质区域;5)对分割区域进行后处理。该算法的前两个步骤用于获取高质量图像、去除随机噪声以及校正像差和阴影效应。在步骤3中,利用图像的光谱信息将有核细胞与场景中的其他部分分割开。利用初始细胞掩码,检测并分离刚刚相互接触的有核细胞。然后提取简单特征并应用条件,最终选择单个有核细胞。在步骤4中,利用细胞的强度变化将细胞核与细胞质分割开。有核细胞分割的成功率在81%至93%之间。在识别出的有核细胞中,细胞核和细胞质分割的主要误差分别为3.5%和2.2%。