An optimized two stage U-Net approach for segmentation of pancreas and pancreatic tumor Journal Article


Authors: Ghorpade, H.; Kolhar, S.; Jagtap, J.; Chakraborty, J.
Article Title: An optimized two stage U-Net approach for segmentation of pancreas and pancreatic tumor
Abstract: The segmentation of pancreas and pancreatic tumor remain a persistent challenge for radiologists. Consequently, it is essential to develop automated segmentation methods to address this task. U-Net based models are most often used among various deep learning-based techniques in tumor segmentation. This paper introduces an innovative hybrid two-stage U-Net model for segmenting both the pancreas and pancreatic tumors. The optimization technique, used in this approach, involves a combination of meta-heuristic optimization algorithms namely, Grey Wolf Border Collie Optimization (GWBCO) technique, combining the Grey Wolf Optimization algorithm and the Border Collie Optimization algorithm. Our approach is evaluated using key parameters, such as Dice Similarity Coefficient (DSC), Jaccard Index (JI), sensitivity, specificity and precision to assess its effectiveness and achieves a DSC of 93.33 % for pancreas segmentation. Additionally, the model also achieves high DSC of 91.46 % for pancreatic tumor segmentation. This method helps in improving the diagnostic accuracy and assists medical professionals to provide treatment at an early stage with precise intervention. The method offers • Two-stage U-Net model addresses both pancreas and tumor segmentation. • Combination of two metaheuristic optimization algorithms, Grey Wolf and Border Collie for enhanced performance. • High dice similarity coefficient for pancreas and tumor segmentation. © 2024 The Author(s)
Keywords: diagnostic accuracy; sensitivity and specificity; pancreas; computer assisted tomography; validation study; total quality management; pancreas tumor; clinical evaluation; intermethod comparison; clinical effectiveness; segmentation; tumor diagnosis; mathematical parameters; image segmentation; pancreatic tumor; process optimization; dice similarity coefficient; jaccard index; article; constants and coefficients; measurement precision; u-net; segmentation algorithm; performance indicator; border collie optimization; grey wolf optimization; grey wolf border collie optimization; metaheuristics; u net model
Journal Title: MethodsX
Volume: 13
ISSN: 2215-0161
Publisher: Elsevier B.V.  
Date Published: 2024-12-01
Start Page: 102995
Language: English
DOI: 10.1016/j.mex.2024.102995
PROVIDER: scopus
PMCID: PMC11491966
PUBMED: 39435045
DOI/URL:
Notes: Article -- Source: Scopus
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