Segmentation of effective cells in multiple myeloma cancer using deformable models and K-means clustering

(2017) Segmentation of effective cells in multiple myeloma cancer using deformable models and K-means clustering. Journal of Isfahan Medical School. pp. 1276-1282. ISSN 10277595 (ISSN)

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Abstract

Background: Multiple myeloma is the second most common hematopoietic cancer. This disease is caused by the cancerous category of cells called plasma cells. Detecting and counting plasma cells provide valuable information for pathologists to diagnose this disease. The manual counting and considering of plasma cells are time consuming and due to the tedious nature of this process, it is subject to error. Thus, a computer-aided tool for pathologists to help in the diagnostic process can be very useful. For this purpose, this research presented a computer tool for segmentation of effective cells in multiple myeloma from microscopic images. Methods: In proposed method, after improving the quality of the images using histogram matching and median filter, the cells were extracted using the Chan-Vese deformable model. In addition, for splitting touching cells, the Modified Watershed algorithm was used. Then, the nuclei were extracted applying the k-means clustering method. Findings: The proposed method was evaluated on 30 microscopic images containing 370 cells. The calculated results of the proposed method showed that similarity measures, sensitivity, precision, accuracy and Dice Similarity Coefficient (DSC) respectively were 89.01, 89.95, 97.71, 98.63, and 93.86 for cell segmentation, and 91.43, 92.48, 96.13, 98.53, and 95.47 for nucleus segmentation. Conclusion: In this research, a novel method was presented for segmentation and extraction of effective cells in the diagnosis of multiple myeloma cancer from microscopic images using deformable models and clustering method. The evaluation results show that the proposed algorithm have improved segmentation performance compared to the previous methods. © (Publication Year), (publisher Name). All rights reserved.

Item Type: Article
Keywords: Image processing Multiple myeloma Plasma cells algorithm Article chan vese deformable model image quality k means clustering mathematical analysis measurement accuracy measurement precision
Divisions: Faculty of Medicine > Departments of Clinical Sciences > Department of Pathology
School of Advanced Technologies in Medicine > Department of Bioelectrics and Biomedical Engineering
Page Range: pp. 1276-1282
Journal or Publication Title: Journal of Isfahan Medical School
Journal Index: Scopus
Volume: 35
Number: 448
ISSN: 10277595 (ISSN)
Depositing User: مهندس مهدی شریفی
URI: http://eprints.mui.ac.ir/id/eprint/1777

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