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📄 Abstract
Abstract: To meet the growing demand for systematic surgical training, wetlab
environments have become indispensable platforms for hands-on practice in
ophthalmology. Yet, traditional wetlab 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 wetlab settings. To address these limitations, we introduce WetCat,
the first dataset of wetlab cataract surgery videos specifically curated for
automated skill assessment. WetCat comprises high-resolution recordings of
surgeries performed by trainees on artificial eyes, featuring comprehensive
phase annotations and semantic segmentations of key anatomical structures.
These annotations are meticulously designed to facilitate skill assessment
during the critical capsulorhexis and phacoemulsification phases, adhering to
standardized surgical skill assessment frameworks. By focusing on these
essential phases, WetCat enables the development of interpretable, AI-driven
evaluation tools aligned with established clinical metrics. This dataset lays a
strong foundation for advancing objective, scalable surgical education and sets
a new benchmark for automated workflow analysis and skill assessment in
ophthalmology training. The dataset and annotations are publicly available in
Synapse https://www.synapse.org/Synapse:syn66401174/files.