Title of article :
Unsupervised segmentation method for cuboidal cell nuclei in histological prostate images based on minimum cross entropy
Author/Authors :
de Oliveira، نويسنده , , Domingos Lucas Latorre and do Nascimento، نويسنده , , Marcelo Zanchetta and Neves، نويسنده , , Leandro Alves and de Godoy، نويسنده , , Moacir Fernandes and de Arruda، نويسنده , , Pedro Francisco Ferraz and de Santi Neto، نويسنده , , Dalisio، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
This paper presents a novel segmentation method for cuboidal cell nuclei in images of prostate tissue stained with hematoxylin and eosin. The proposed method allows segmenting normal, hyperplastic and cancerous prostate images in three steps: pre-processing, segmentation of cuboidal cell nuclei and post-processing. The pre-processing step consists of applying contrast stretching to the red (R) channel to highlight the contrast of cuboidal cell nuclei. The aim of the second step is to apply global thresholding based on minimum cross entropy to generate a binary image with candidate regions for cuboidal cell nuclei. In the post-processing step, false positives are removed using the connected component method. The proposed segmentation method was applied to an image bank with 105 samples and measures of sensitivity, specificity and accuracy were compared with those provided by other segmentation approaches available in the specialized literature. The results are promising and demonstrate that the proposed method allows the segmentation of cuboidal cell nuclei with a mean accuracy of 97%.
Keywords :
Minimum cross entropy , prostate cancer , Segmentation of nuclei , Segmentation of cuboidal cells
Journal title :
Expert Systems with Applications
Journal title :
Expert Systems with Applications