...
首页> 外文期刊>Advanced Biomedical Research >Nucleus and cytoplasm segmentation in microscopic images using K-means clustering and region growing
【24h】

Nucleus and cytoplasm segmentation in microscopic images using K-means clustering and region growing

机译:使用K-均值聚类和区域生长的显微图像中的核和细胞质分割

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Background: Segmentation of leukocytes acts as the foundation for all automated image-based hematological disease recognition systems. Most of the time, hematologists are interested in evaluation of white blood cells only. Digital image processing techniques can help them in their analysis and diagnosis. Materials and Methods: The main objective of this paper is to detect leukocytes from a blood smear microscopic image and segment them into their two dominant elements, nucleus and cytoplasm. The segmentation is conducted using two stages of applying K-means clustering. First, the nuclei are segmented using K-means clustering. Then, a proposed method based on region growing is applied to separate the connected nuclei. Next, the nuclei are subtracted from the original image. Finally, the cytoplasm is segmented using the second stage of K-means clustering. Results: The results indicate that the proposed method is able to extract the nucleus and cytoplasm regions accurately and works well even though there is no significant contrast between the components in the image. Conclusions: In this paper, a method based on K-means clustering and region growing is proposed in order to detect leukocytes from a blood smear microscopic image and segment its components, the nucleus and the cytoplasm. As region growing step of the algorithm relies on the information of edges, it will not able to separate the connected nuclei more accurately in poor edges and it requires at least a weak edge to exist between the nuclei. The nucleus and cytoplasm segments of a leukocyte can be used for feature extraction and classification which leads to automated leukemia detection.
机译:背景:白细胞的分割是所有基于图像的自动化血液疾病识别系统的基础。多数时候,血液学家只对白细胞的评估感兴趣。数字图像处理技术可以帮助他们进行分析和诊断。材料和方法:本文的主要目的是从血液涂片显微图像中检测白细胞,并将其分为两个主要成分,细胞核和细胞质。使用K-means聚类的两个阶段进行分割。首先,使用K-均值聚类对核进行分段。然后,提出了一种基于区域生长的方法来分离连接的原子核。接下来,从原始图像中减去原子核。最后,使用K-均值聚类的第二阶段分割细胞质。结果:结果表明,即使图像中各成分之间没有明显的对比度,该方法也能够准确地提取细胞核和细胞质区域,并且效果良好。结论:本文提出了一种基于K均值聚类和区域生长的方法,目的是从血液涂片显微图像中检测白细胞并分割其成分,细胞核和细胞质。由于算法的区域增长步骤依赖于边缘的信息,因此它将无法在不良边缘中更准确地分离连接的原子核,并且需要至少一个弱边缘存在于原子核之间。白细胞的核和细胞质部分可用于特征提取和分类,从而导致自动检测白血病。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号