Multi-Objective Whole Slide Image Segmentation Using Nature Inspired Whale Optimization Algorithm

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Abstract

For precise histopathological image analysis and classification, segmentation is a critical step that must be carried out accurately. Segmentation aids early detection and diagnosis of tumor and cancerous cells. Machine learning and artificial intelligence processes play a vital role in image processing applications. In this proposed work, the nature-inspired Whale Optimization Algorithm is used for the segmentation of whole slide images through multi-objective image thresholding. The images are subjected to initial pre-processing to eliminate disturbance and enhancement, followed by the application of the best threshold value. Various histopathology images are examined to validate the efficiency and versatility of the proposed methodology. A Dice coefficient of 50.8, a Jaccard index of 51.33, a Precision of 51.22, a Sensitivity of 71.59, an Accuracy of 91.86, an F-measure of 50.76, and a Specificity of 71.17 were the average results obtained for the tested images using the proposed system. The outcomes are assessed with other common segmentation approaches, validating the algorithm.

Year of Publication
2025
Journal
SSRG International Journal of Electrical and Electronics Engineering
Volume
12
Issue
9
Number of Pages
202-214,
Type of Article
Article
URL
https://www.internationaljournalssrg.org/IJEEE/paper-details?Id=1161
DOI
10.14445/23488379/IJEEE-V12I9P121
Alternate Journal
SSRG. Int. J. Electr. Electron. Eng.
Publisher
Seventh Sense Research Group
Journal Article
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