WetCat: Enabling Automated Skill Assessment in Wet-Lab Cataract Surgery Videos
Negin Ghamsarian, Raphael Sznitman, Klaus Schoeffmann, Jens Kowal

TL;DR
WetCat introduces a comprehensive dataset of wet-lab cataract surgery videos with detailed annotations, enabling automated, objective skill assessment to improve ophthalmic surgical training.
Contribution
This work provides the first curated dataset specifically designed for automated skill evaluation in wet-lab cataract surgeries, including detailed phase and anatomical annotations.
Findings
Dataset supports development of AI-based skill assessment tools.
Annotations facilitate analysis of critical surgical phases.
Enables standardized, scalable surgical training evaluation.
Abstract
To meet the growing demand for systematic surgical training, wet-lab environments have become indispensable platforms for hands-on practice in ophthalmology. Yet, traditional wet-lab training depends heavily on manual performance evaluations, which are labor-intensive, time-consuming, and often subject to variability. Recent advances in computer vision offer promising avenues for automated skill assessment, enhancing both the efficiency and objectivity of surgical education. Despite notable progress in ophthalmic surgical datasets, existing resources predominantly focus on real surgeries or isolated tasks, falling short of supporting comprehensive skill evaluation in controlled wet-lab settings. To address these limitations, we introduce WetCat, the first dataset of wet-lab cataract surgery videos specifically curated for automated skill assessment. WetCat comprises high-resolution…
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