
Validation of Performance Homogeneity of Chan-Vese Model on Selected Tumour Cells
Publication year - 2021
Publication title -
international journal of e-health and medical communications
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.151
H-Index - 12
eISSN - 1947-3168
pISSN - 1947-315X
DOI - 10.4018/ijehmc.20211101oa05
Subject(s) - jaccard index , segmentation , breast tumor , artificial intelligence , homogeneity (statistics) , computer science , pattern recognition (psychology) , nuclear medicine , breast cancer , medicine , machine learning , cancer
This study aims to analyze the Chan-Vese model's performance using a variety of tumor images. The processes involve the tumors' segmentation, detecting the tumors, identifying the segmented tumor region, and extracting the features before classification occurs. In the findings, the Chan-Vese model performed well with brain and breast tumor segmentation. The model on the skin performed poorly. The brain recorded DSC 0.6949903, Jaccard 0.532558; the time elapsed 7.389940 with an iteration of 100. The breast recorded a DSC of 0.554107, Jaccard 0.383228; the time elapsed 9.577161 with an iteration of 100. According to this study, a higher DSC does not signify a well-segmented image, as the breast had a lower DSC than the skin. The skin recorded a DSC of 0.620420, Jaccard 0.449717; the time elapsed 17.566681 with an iteration of 200.