Comparative Study on Automated Cell Nuclei Segmentation Methods for Cytology Pleural Effusion Images

dc.contributor.authorKhin Yadanar Win
dc.contributor.authorSomsak Choomchuay
dc.contributor.authorKazuhiko Hamamoto
dc.contributor.authorManasanan Raveesunthornkiat
dc.date.accessioned2025-07-21T06:00:29Z
dc.date.issued2018-09-12
dc.description.abstractAutomated cell nuclei segmentation is the most crucial step toward the implementation of a computer-aided diagnosis system for cancer cells. Studies on the automated analysis of cytology pleural effusion images are few because of the lack of reliable cell nuclei segmentation methods. Therefore, this paper presents a comparative study of twelve nuclei segmentation methods for cytology pleural effusion images. Each method involves three main steps: preprocessing, segmentation, and postprocessing. The preprocessing and segmentation stages help enhancing the image quality and extracting the nuclei regions from the rest of the image, respectively. The postprocessing stage helps in refining the segmented nuclei and removing false findings. The segmentation methods are quantitatively evaluated for 35 cytology images of pleural effusion by computing five performance metrics. The evaluation results show that the segmentation performances of the Otsu, k-means, mean shift, Chan–Vese, and graph cut methods are 94, 94, 95, 94, and 93%, respectively, with high abnormal nuclei detection rates. The average computational times per image are 1.08, 36.62, 50.18, 330, and 44.03 seconds, respectively. The findings of this study will be useful for current and potential future studies on cytology images of pleural effusion.
dc.identifier.doi10.1155/2018/9240389
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/7756
dc.subjectAutomated method
dc.subject.classificationAI in cancer detection
dc.titleComparative Study on Automated Cell Nuclei Segmentation Methods for Cytology Pleural Effusion Images
dc.typeArticle

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