4.6 Article

Breast Cancer Detection in Mammogram Images Using K-Means++ Clustering Based on Cuckoo Search Optimization

期刊

DIAGNOSTICS
卷 12, 期 12, 页码 -

出版社

MDPI
DOI: 10.3390/diagnostics12123088

关键词

breast cancer; mammogram images; K-means++ clustering; cuckoo search optimization

资金

  1. Mahasarakham University, Thailand
  2. [6516006-2565]

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This study proposes a new breast cancer detection method based on K-means++ clustering and Cuckoo Search Optimization. By improving the preprocessing and using mathematical morphology, the accuracy and interpretability of the detection are enhanced. Experimental results show that the method achieves an accuracy of over 95% on three datasets, demonstrating its effectiveness.
Traditional breast cancer detection algorithms require manual extraction of features from mammogram images and professional medical knowledge. Still, the quality of mammogram images hampers this and extracting high-quality features, which can result in very long processing times. Therefore, this paper proposes a new K-means++ clustering based on Cuckoo Search Optimization (KM++CSO) for breast cancer detection. The pre-processing method is used to improve the proposed KM++CSO method more segmentation efficiently. Furthermore, the interpretability is further enhanced using mathematical morphology and OTSU's threshold. To this end, we tested the effectiveness of the KM++CSO methods on the mammogram image analysis society of the Mini-Mammographic Image Analysis Society (Mini-MIAS), the Digital Database for Screening Mammography (DDSM), and the Breast Cancer Digital Repository (BCDR) dataset through cross-validation. We maximize the accuracy and Jaccard index score, which is a measure that indicates the similarity between detected cancer and their corresponding reference cancer regions. The experimental results showed that the detection method obtained an accuracy of 96.42% (Mini-MIAS), 95.49% (DDSM), and 96.92% (BCDR). On overage, the KM++CSO method obtained 96.27% accuracy for three publicly available datasets. In addition, the detection results provided the 91.05% Jaccard index score.

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