Model of Watershed Segmentation in Deep Learning Method to Improve Identification of Cervical Cancer at Overlay Cells
Model of Watershed Segmentation in Deep Learning Method to Improve Identification of Cervical Cancer at Overlay Cells
Author(s): Dwiza Riana, Muh Jamil, Sri Hadianti, Jufriadif Na’am, Hadi Sutanto, Ronald SukwadiSubject(s): Health and medicine and law, Family and social welfare
Published by: UIKTEN - Association for Information Communication Technology Education and Science
Keywords: cervical cancer; Pap Smear; segmentation; deep learning; overlay cell
Summary/Abstract: Cervical cancer is a disease that is very scary for women because it is the cause of death among women. To be aware of this disease is to do an early examination through the Pap Smear (PS) test. In terms identifying overlapping cancer cells, it still has low accuracy. Therefore, this research was carried out with the aim of getting the level of cell separation with high accuracy. This study uses a model to develop the Watershed segmentation technique in the Deep Learning Method. The data tested in this study comes from the RepomedUNM dataset. The amount of data tested is 420 overlapping images with the formulation of 1,260 test images. The results of this study can very well separate each overlapping cell with an average Intersection over Union (IoU) score of 0.9061. Each result can be divided fully by the whole of its area, so the final results of overlapping cells were successfully separated with an average score of 0.945. Therefore, this research can be used as a reference in identifying cervical cancer cells.
Journal: TEM Journal
- Issue Year: 12/2023
- Issue No: 2
- Page Range: 813-819
- Page Count: 7
- Language: English