Abstract

Breast cancer is one of the most common types of cancer and early detection can significantly decrease the associated mortality rate. Different kinds of segmentation methods were applied to extract regions of interest from breast cancer images that are necessary to improve the classification. In this paper, a segmentation method for breast cancer from thermal images is introduced based on a proposed Chaotic Salp Swarm Algorithm (CSSA). Although the Salp Swarm Algorithm (SSA) shows superiority in single-objective optimization problems, it suffers from a low convergence rate and local optima stagnation. In the proposed method, a segmentation algorithm is formulated using the quick-shift method for superpixels extraction whose parameters are optimized by CSSA. The quick-shift method generates compact and nearly uniform superpixels by clustering the breast thermal image pixels. CSSA algorithm is developed based on ten chaotic maps to enhance the original SSA convergence rate while accuracy could be improved by controlling the balance between exploration and exploitation. The proposed algorithm is applied to real-world thermal images for the breast area. The results demonstrate that the proposed CSSA algorithm achieves fast convergence for the unimodal benchmark functions and outperforms the original SSA algorithm. Moreover, a dataset from Mastology Research with Infrared Image (DMR-IR) is used to test the performance of the proposed algorithm. In experiments, the proposed optimized segmentation algorithm extracts the breast area from the background accurately where the region of interest is focused on the breast area and removes the unwanted area such as underarms and stomach which intern can enhance the results of cancer detection. Furthermore, the proposed algorithms achieve robustness for the segmentation of different healthy and unhealthy cases images compared to the state-of-the-art methods.

Highlights

  • Breast cancer is one of the most common types of cancer that affects both women and men which is leading to sudden death in critical cases

  • This paper proposes a segmentation method for breast cancer from thermal images based on a proposed chaotic salp swarm algorithm (CSSA)

  • This paper proposes a segmentation algorithm from thermal images for breast cancer based on a proposed optimization algorithm

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Summary

INTRODUCTION

Breast cancer is one of the most common types of cancer that affects both women and men which is leading to sudden death in critical cases. Thermal image analysis, which includes several stages such as preprocessing, segmentation, feature extraction, and classification, can be employed in detecting breast cancer. Preprocessing and segmentation stages in thermal image analysis are considered as the main major steps in detecting breast cancer since they can improve the accuracy of extracting features and the classification of healthy and unhealthy cases. In [18], the authors proposed a classification algorithm for thermal images based on a quick-shift segmentation method with parameters optimization by the gray wolf optimizer. This paper proposes a segmentation method for breast cancer from thermal images based on a proposed chaotic salp swarm algorithm (CSSA). CSSA algorithm is proposed to optimize the quick-shift method parameters by enhancing the original SSA accuracy. The proposed segmentation algorithm is applied to thermal images for the problem of breast cancer.

RELATED WORK
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OTSU’S THRESHOLDING METHOD
PROPOSED ALGORITHMS
16: Adjust salps using lower and upper bounds
PERFORMANCE EVALUATION
DISCUSSION
CONCLUSION
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