Learning from Single Timestamps: Complexity Estimation in Laparoscopic Cholecystectomy
Dimitrios Anastasiou, Santiago Barbarisi, Lucy Culshaw, Jayna Patel, Evangelos B. Mazomenos, Imanol Luengo, Danail Stoyanov

TL;DR
This paper introduces STC-Net, a new weakly supervised framework that estimates surgical complexity in full laparoscopic cholecystectomy videos using only single timestamps, outperforming previous static image methods.
Contribution
STC-Net is the first method to jointly localize and grade inflammation severity in full videos with weak supervision, eliminating the need for manual video curation.
Findings
Achieves 62.11% accuracy and 61.42% F1-score on private dataset
Outperforms non-localized baselines by over 10% in both metrics
Demonstrates effectiveness of weak supervision for surgical complexity assessment
Abstract
Purpose: Accurate assessment of surgical complexity is essential in Laparoscopic Cholecystectomy (LC), where severe inflammation is associated with longer operative times and increased risk of postoperative complications. The Parkland Grading Scale (PGS) provides a clinically validated framework for stratifying inflammation severity; however, its automation in surgical videos remains largely unexplored, particularly in realistic scenarios where complete videos must be analyzed without prior manual curation. Methods: In this work, we introduce STC-Net, a novel framework for SingleTimestamp-based Complexity estimation in LC via the PGS, designed to operate under weak temporal supervision. Unlike prior methods limited to static images or manually trimmed clips, STC-Net operates directly on full videos. It jointly performs temporal localization and grading through a localization, window…
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Taxonomy
TopicsSurgical Simulation and Training · AI in cancer detection · Advanced Image and Video Retrieval Techniques
