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A. Q. M. Sala Uddin Pathan

A. Q. M. Sala Uddin Pathan

PhD Candidate
Postgraduate Research Student
Medicine & Health
School of Optometry and Vision Science

Biography

A. Q. M. Sala Uddin Pathan is a researcher and academic currently pursuing a PhD at the University of New South Wales (UNSW), focusing on ocular image analysis using machine learning. He also works as a casual academic at UNSW. Before relocating to Australia, Sala Uddin taught for five years in the Department of Computer Science and Telecommunication Engineering at Noakhali Science and Technology University in Bangladesh.

He is actively engaged in student affairs and serves as the General Secretary of the UNSW Postgraduate Council (PGC). Sala Uddin has a passion for cricket and regularly plays for the Kryptonites Sporting Club, where he holds a leadership role. Additionally, he has certifications in cardiopulmonary resuscitation (CPR) and mental health first aid, demonstrating his commitment to professional development and community service.

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Research title:ÌýMachine learning for ocular image analysis: automated segmentation and classification

Supervisor:ÌýA/Prof. Maitreyee Roy

Co-supervisors: Prof. Salil Kanhere & Prof. Matthew Simunovic

Research abstract:ÌýMachine learning (ML) has revolutionized ocular image analysis, offering automated solutions for disease diagnosis and segmentation. This study aims to develop an improved ML-based system for the precise and efficient diagnosis of ocular diseases using optical coherence tomography (OCT) and retinal fundus images. Traditional diagnostic methods are time-consuming, prone to errors, and dependent on expert interpretation. Automated segmentation and classification techniques can aid ophthalmologists in diagnosing conditions such as Epiretinal Membrane and Vitreomacular Adhesion with enhanced accuracy.

This research focuses on identifying optimal ML models for segmenting the retinal layers and correcting topology errors in segmented masks to enhance clinical decision-making. The methodology includes data preprocessing, boundary detection, and post-processing to ensure topologically accurate segmentation. By integrating deep learning techniques, this study aims to improve the robustness and reliability of automated ocular image analysis.

The expected outcome is an advanced ML-driven system that efficiently segments and classifies ocular images, assisting ophthalmologists in making precise clinical decisions. This work will contribute to reducing diagnostic time, improving disease detection, and addressing the increasing demand for automated ophthalmic analysis.

Email

a.pathan@unsw.edu.au

    1. Khan, R. K., Pathan, A. S. U., Lin, S. H., Kelleher, P., Maseedupally, V., Raman, R., & Roy, M. (2024). Automated anemia detection from retinal fundus images using artificial intelligence. Investigative Ophthalmology & Visual Science, 65(7), 2329-2329.
    2. Subramanian, B., Pathan, A. S. U., Roy, M., Ratra, D., Kanhere, S. S., Simunovic, M. P., & Raman, R. (2023). Protocol for Deep Learning-Based Classification of Vitreomacular Adhesion in Diabetic Macular Edema using SD-OCT.
    3. Hossain, M. S., Pathan, A. S. U., Islam, M. N., Tonmoy, M. I. Q., Rakib, M. I., Munim, M. A., ... & Rahaman, M. M. (2021). Genome-wide identification and prediction of SARS-CoV-2 mutations show an abundance of variants: Integrated study of bioinformatics and deep neural learning. Informatics in Medicine Unlocked, 27, 100798.
    4. Yeasmin, S., Kuri, R., Rana, A. M. H., Uddin, A., Pathan, A. S. U., & Riaz, H. (2021). Multi-category bangla news classification using machine learning classifiers and multi-layer dense neural network. International Journal of Advanced Computer Science and Applications, 12(5).
    5. Pathan, A. S. U., Thakur, K. K., Chakraborty, A., & Kabir, M. H. (2019). Fingerprint authentication security: An improved 2-step authentication method with flexibility. International Journal of Scientific & Engineering Research, 10(1).
    • Development & Research Training Grant, UNSW, Australia
    • University International Postgraduate Award (UIPA), UNSW, Australia
    • Prime Minister Gold Medal 2016, University Grants Commission (UGC), Bangladesh
    • Government Higher Secondary Certificate Merit Scholarship, Board of Intermediate and Secondary Education, Comilla, Bangladesh
    • Government Secondary School Certificate Merit Scholarship, Board of Intermediate and Secondary Education, Comilla, Bangladesh
    • 2025: ARVO Annual Meeting, Salt Lake City, Utah, USA
    • 2024: SIIM Conference on Machine Intelligence in Medical Imaging (CMIMI), Boston, MA, USA
    • 2024: Digital Health Festival 2024, Melbourne, Australia
    • 2022: International Conference on Machine Intelligence and Emerging Technologies (MIET), Noakhali, Bangladesh
    • General Secretary, Postgraduate Council (PGC), UNSW, Australia
    • Member, Association for the Advancement of Artificial Intelligence (AAAI)
    • Member, Association of Research in Vision and Ophthalmology (ARVO)
    • Vice President, CSTE Alumni Association