Author:
Jian Tan Xiao,Nazahah Mustafa,Yusoff Mashor Mohd,Shakir Ab Rahman Khairul
Abstract
Abstract
This study proposes a modified initialization approach for the conventional FCM, namely FCM with guided initialization. The FCM with guided initialization was implemented to segment the relevant regions in the breast histopathology images. The initialization method to select initial centers is based on the Cyan (C) channel histogram. Area Overlap Measure (AOM) and Combined Equal Importance (CEI) were used to evaluate the performance of the proposed FCM with guided initialization. The obtained AOM and CEI for the overall dataset achieved promising results: 0.89 in AOM and 0.88 in CEI. When comparing the number of iterations required to complete the proposed FCM clustering algorithm, the FCM with guided initialization is found to be effective in reducing the search space by showing a lower number of iterations.
Subject
General Physics and Astronomy
Reference13 articles.
1. The Role of Malignant Tissue on the Thermal Distribution of Cancerous Breast;Ramírez-torres;J Theor Biol,2017
2. Challenges and Perspectives in the Treatment of Diabetes Associated Breast Cancer;Samuel;Cancer Treat Rev,2018
3. Hyperchromatic Nucleus Segmentation on Breast Histopathological Images for Mitosis Detection;Jian;J Telecommun Electron Comput Eng,2018
4. Segmentation Based Classification for Mitotic Cells Detection on Breast Histopathological Images;Jian;J Telecommun Electron Comput Eng,2018
5. Comparison of K-Means and Fuzzy C-Means Algorithms on Different Cluster Structures;Cebeci;J AgricInformatics,2015
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