Classification of ocular surface diseases: Deep learning for distinguishing ocular surface squamous neoplasia from pterygium

被引:0
作者
Ramezani, Farshid [1 ,2 ]
Azimi, Hossein [3 ]
Delfanian, Behrouz [3 ]
Amanollahi, Mobina [2 ]
Saeidian, Jamshid [3 ]
Masoumi, Ahmad [2 ]
Farrokhpour, Hossein [2 ]
Pour, Elias Khalili [2 ,4 ]
Khodaparast, Mehdi [2 ]
机构
[1] Kermanshah Univ Med Sci, Mohammad Kermanshahi & Farabi Hosp, Clin Res Dev Ctr, Kermanshah, Iran
[2] Univ Tehran Med Sci, Farabi Eye Hosp, Translat Ophthalmol Res Ctr, Tehran, Iran
[3] Kharazmi Univ, Fac Math Sci & Comp, 50 Taleghani Ave, Tehran, Iran
[4] Univ Tehran Med Sci, Farabi Eye Hosp, Retina Serv, South Kargar St,Qazvin Sq,Qazvin St, Tehran, Iran
关键词
Classification; Ocular Surface Squamous Neoplasia; Pterygium; Deep Learning; Image processing;
D O I
10.1007/s00417-025-06804-x
中图分类号
R77 [眼科学];
学科分类号
100212 ;
摘要
PurposeGiven the significance and potential risks associated with Ocular Surface Squamous Neoplasia (OSSN) and the importance of its differentiation from other conditions, we aimed to develop a Deep Learning (DL) model differentiating OSSN from pterygium (PTG) using slit photographs.MethodsA dataset comprising slit photographs of 162 patients including 77 images of OSSN and 85 images of PTG was assembled. After manual segmentation of the images, a Python-based transfer learning approach utilizing the EfficientNet B7 network was employed for automated image segmentation. GoogleNet, a pre-trained neural network was used to categorize the images into OSSN or PTG. To evaluate the performance of our DL model, K-Fold 10 Cross Validation was implemented, and various performance metrics were measured.ResultsThere was a statistically significant difference in mean age between the OSSN (63.23 +/- 13.74 years) and PTG groups (47.18 +/- 11.53) (P-value =.000). Furthermore, 84.41% of patients in the OSSN group and 80.00% of the patients in the PTG group were male. Our classification model, trained on automatically segmented images, demonstrated reliable performance measures in distinguishing OSSN from PTG, with an Area Under Curve (AUC) of 98%, sensitivity, F1 score, and accuracy of 94%, and a Matthews Correlation Coefficient (MCC) of 88%.ConclusionsThis study presents a novel DL model that effectively segments and classifies OSSN from PTG images with a relatively high accuracy. In addition to its clinical use, this model can be potentially used as a telemedicine application.
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页数:10
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