Publication

Clinician-Assisted Exploratory Data Analysis Framework for Early Diagnosis of Keratoconus

Muhsin, Zahra J.
Ghafir, Ibrahim
Al Bdour, M.
AlRyalat, S.
AlShawabkeh, M.
Publication Date
2025-05-20
End of Embargo
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Rights
© 2025 IEEE. Reproduced in accordance with the publisher's self-archiving policy.
Peer-Reviewed
Yes
Open Access status
embargoedAccess
Accepted for publication
Institution
Department
Awarded
Embargo end date
2025-05-20
Additional title
Abstract
Advances in corneal imaging have generated vast datasets, making it challenging to extract clinically relevant insights. Machine Learning (ML) provides ophthalmologists with essential tools for keratoconus (KC) detection and clinical decision-making. However, effective Exploratory Data Analysis (EDA) remains crucial for identifying trends, forming hypotheses, and selecting key parameters to build robust ML models. This paper presents a comprehensive EDA framework that fosters collaboration between AI specialists and clinicians to enable early KC detection. Using statistical and visual techniques alongside expert input, a clinical dataset with 79 features from 2,491 cases is pre-processed, analyzed, and effectively prepared for ML modelling. The analysis identified a key subset of features–just 6.3% of the original dataset–which was used to develop and evaluate the classification performance of several ML models. Among them, the Random Forest model achieved 99.6% accuracy, surpassing previous studies and demonstrating the effectiveness of the proposed EDA framework.
Version
Accepted manuscript
Citation
Muhsin ZJ, Qahwaji R, Ghafir I, et al (2025) Clinician-Assisted Exploratory Data Analysis Framework for Early Diagnosis of Keratoconus 2025. IEEE 22nd International Multi-Conference on Systems, Signals & Devices (SSD), Monastir, Tunisia, 2025, pp. 215-220.
Link to publisher’s version
Link to published version
Type
Conference paper
Qualification name
Notes
The full text will be available at the end of the publisher's embargo: 20th May 2025