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Original Article
Online Published: 13 Apr 2026
 


Resource-Efficient Conjunctivitis Screening Using MOGONET and VGG-Based Transfer Learning

Pranto Halder, Anurag Sinha, Md. Khalid Hasan, Amit Kumar, Jibran Gulzar, Anmol Chauhan, Divyank Sharma, Pratyush Singh, Sagar Singh, Kshitij Tandon, Kshitij Ranjan, Aditya Pandey.


Abstract
Background/Aim: Conjunctivitis, commonly known as pink eye, poses a significant diagnostic challenge due to overlapping presentations across viral, bacterial, and allergic subtypes. This study presents MOGONET, a multi-objective generalized normal distribution optimization framework built upon VGGNet, specifically designed to address conjunctivitis identification through resource-aware deep learning optimization.
Methods: The proposed pipeline integrates contrast-limited adaptive histogram equalization-based image enhancement, data augmentation, and multi-level Otsu thresholding segmentation with transfer learning using a VGG16 backbone. A MOGNDO-based outer-loop search simultaneously maximizes classification accuracy, minimizes binary cross-entropy loss, and minimizes computational cost (FLOPs) using Pareto-front-based non-dominated sorting. Experiments were conducted on 1,230 conjunctival eye images sourced from Kaggle and Shutterstock, with a stratified 72%/18%/10% train/validation/test split.
Results: MOGONET achieves 98.32% test accuracy, 97.54% precision, 96.92% recall, and 96.22% F1-score. Compared with the unoptimized Visual Geometry Group-based baseline, MOGONET reduces FLOPs by 79.18% (from 238.06M to 49.56M), and model parameters by 77.78% (from approximately 9M to 2M).
Conclusion: MOGONET demonstrates that multi-objective optimization can substantially reduce computational complexity in conjunctivitis classification without sacrificing diagnostic performance, offering a promising framework for deployment on resource-constrained clinical screening platforms.

Key words: Conjunctivitis, Generalized Normal Distribution Optimization, multi-thresholding, deep learning


 
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How to Cite this Article
Pubmed Style

Halder P, Sinha A, Hasan MK, Kumar A, Gulzar J, Chauhan A, Sharma D, Singh P, Singh S, Tandon K, Ranjan K, Pandey A. Resource-Efficient Conjunctivitis Screening Using MOGONET and VGG-Based Transfer Learning. Eu J Comp Sci Informatics. 2026; 3(2): 67-82. doi:10.5455/EJCSI.20251213060931


Web Style

Halder P, Sinha A, Hasan MK, Kumar A, Gulzar J, Chauhan A, Sharma D, Singh P, Singh S, Tandon K, Ranjan K, Pandey A. Resource-Efficient Conjunctivitis Screening Using MOGONET and VGG-Based Transfer Learning. https://www.wisdomgale.com/ejcsi/?mno=303056 [Access: April 17, 2026]. doi:10.5455/EJCSI.20251213060931


AMA (American Medical Association) Style

Halder P, Sinha A, Hasan MK, Kumar A, Gulzar J, Chauhan A, Sharma D, Singh P, Singh S, Tandon K, Ranjan K, Pandey A. Resource-Efficient Conjunctivitis Screening Using MOGONET and VGG-Based Transfer Learning. Eu J Comp Sci Informatics. 2026; 3(2): 67-82. doi:10.5455/EJCSI.20251213060931



Vancouver/ICMJE Style

Halder P, Sinha A, Hasan MK, Kumar A, Gulzar J, Chauhan A, Sharma D, Singh P, Singh S, Tandon K, Ranjan K, Pandey A. Resource-Efficient Conjunctivitis Screening Using MOGONET and VGG-Based Transfer Learning. Eu J Comp Sci Informatics. (2026), [cited April 17, 2026]; 3(2): 67-82. doi:10.5455/EJCSI.20251213060931



Harvard Style

Halder, P., Sinha, . A., Hasan, . M. K., Kumar, . A., Gulzar, . J., Chauhan, . A., Sharma, . D., Singh, . P., Singh, . S., Tandon, . K., Ranjan, . K. & Pandey, . A. (2026) Resource-Efficient Conjunctivitis Screening Using MOGONET and VGG-Based Transfer Learning. Eu J Comp Sci Informatics, 3 (2), 67-82. doi:10.5455/EJCSI.20251213060931



Turabian Style

Halder, Pranto, Anurag Sinha, Md. Khalid Hasan, Amit Kumar, Jibran Gulzar, Anmol Chauhan, Divyank Sharma, Pratyush Singh, Sagar Singh, Kshitij Tandon, Kshitij Ranjan, and Aditya Pandey. 2026. Resource-Efficient Conjunctivitis Screening Using MOGONET and VGG-Based Transfer Learning. European Journal of Computer Sciences and Informatics, 3 (2), 67-82. doi:10.5455/EJCSI.20251213060931



Chicago Style

Halder, Pranto, Anurag Sinha, Md. Khalid Hasan, Amit Kumar, Jibran Gulzar, Anmol Chauhan, Divyank Sharma, Pratyush Singh, Sagar Singh, Kshitij Tandon, Kshitij Ranjan, and Aditya Pandey. "Resource-Efficient Conjunctivitis Screening Using MOGONET and VGG-Based Transfer Learning." European Journal of Computer Sciences and Informatics 3 (2026), 67-82. doi:10.5455/EJCSI.20251213060931



MLA (The Modern Language Association) Style

Halder, Pranto, Anurag Sinha, Md. Khalid Hasan, Amit Kumar, Jibran Gulzar, Anmol Chauhan, Divyank Sharma, Pratyush Singh, Sagar Singh, Kshitij Tandon, Kshitij Ranjan, and Aditya Pandey. "Resource-Efficient Conjunctivitis Screening Using MOGONET and VGG-Based Transfer Learning." European Journal of Computer Sciences and Informatics 3.2 (2026), 67-82. Print. doi:10.5455/EJCSI.20251213060931



APA (American Psychological Association) Style

Halder, P., Sinha, . A., Hasan, . M. K., Kumar, . A., Gulzar, . J., Chauhan, . A., Sharma, . D., Singh, . P., Singh, . S., Tandon, . K., Ranjan, . K. & Pandey, . A. (2026) Resource-Efficient Conjunctivitis Screening Using MOGONET and VGG-Based Transfer Learning. European Journal of Computer Sciences and Informatics, 3 (2), 67-82. doi:10.5455/EJCSI.20251213060931