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http://irepo.futminna.edu.ng:8080/jspui/handle/123456789/31366| Title: | An optimized deep neural network and transfer learning approaches for endometriosis classification. |
| Authors: | Abisoye, Opeyemi Aderiike Ailoyafen, Ruth Adepoju, Solomon Adelowo Abisoye, Blessing Olatunde Akinwande, Tosin Oladayo Ikouwen, Ufort Usoh |
| Keywords: | Endometriosis Laracsopy Transfer Learning ResNet101V2 MobileNet VGG16 Classification |
| Issue Date: | 2026 |
| Publisher: | Nature Journal of Emerging Sciences, Technologies, & Innovations https://naturerust.com/index.php/njesti |
| Series/Report no.: | Vol. 6, No. 3, pp. 315 – 336; |
| Abstract: | The prevalence of endometriosis is underestimated because of the need for laparoscopy an invasive diagnostic method, which is considered the gold standard. Advanced stages of endometriosis may lead to endometrial cancer, infertility, psychological depression, leading to further complications. Endometriosis has multiple appearances; the lesions may be confused with other nonendometriotic lesions, also endometriotic lesions that are nonendometriotic by appearance or deep infiltrating ones may be missed on visual diagnosis. Therefore, this research aims to developed an endometriosis prediction by utilizing four different deep and transfer learning architecture including CNN, RestNet101V2, MobileNet, and VGG16 The proposed model employs Pelican Optimization Algorithm (POA) to extract predominant features for CNN, ResNet101V2, MobileNet, and VGG16 endometriosis classification. Image Dataset was obtained from Gynecologic Laparoscopy Endometriosis (GLENDA) repository containing 25,683 sample laparoscopic images of both pathological and non-pathological identified endometriosis regions. The experimental analysis revealed that POA_ResNet101V2, POA_MobileNet, and POA_VGG16 perform efficiently better than CNN during the classification of endometriosis (pathology and non-pathology). Betterstill, MobileNet achieved a general accuracy of 100%, precision 99.5%, Recall 99.5%, and F1-score of 100%. The model demonstrates the effectiveness of transfer learning, MobileNet better than other transfer Learning in the existing studies. To address the diagnostic challenges of endometriosis, this study developed an optimized endometriosis prediction model with deep and transfer learning techniques, perform comparative analysis on the developed model and benchmark the results with existing ones. This model will assist health practitioners to early detect endometriosis and proffer appropriate solutions for patients |
| URI: | http://irepo.futminna.edu.ng:8080/jspui/handle/123456789/31366 |
| Appears in Collections: | Computer Science |
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|---|---|---|---|---|
| 70+Abisoye+et+al+-+An+Optimized+Deep+Neural+Network+and+Transfer+Learning+Approaches+for+Endometriosis+Classification.pdf | 1.5 MB | Adobe PDF | View/Open |
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