OSS: Open Suturing Skills Vision-Based Assessment Challenge 2024-2025
Hanna Hoffmann, Setareh Bady, Claas de Boer, Max Kirchner, Jan Egger, Rainer R\"ohrig, Frank H\"olzle, Lennart Johannes Gruber, Kunpeng Xie, Marlon Neuhaus, Victor Alves, Guilherme Barbosa, Leonardo Barroso, Jo\~ao Carvalho, Hao Chen, Gabriella d'Albenzio, Andr\'e Ferreira

TL;DR
This paper presents a benchmark challenge for vision-based assessment of open surgical skills, comparing diverse machine learning solutions on videos of suturing tasks to improve automated evaluation methods.
Contribution
It introduces a comprehensive dataset and challenge for open surgery skill assessment, evaluating various deep learning and tracking approaches to advance the field.
Findings
Spatiotemporal video models perform best among solutions.
Predicting detailed OSATS scores needs more training data.
Hand and tool tracking is limited by occlusions and out-of-frame issues.
Abstract
Achieving high levels of surgical skill through effective training is essential for optimal patient outcomes. Automated, data-driven skill assessment holds significant potential to improve surgical training. While machine learning-based methods are increasingly popular for assessing skills in minimally invasive surgery, their application to open surgery remains limited. We present the results of a dedicated MICCAI challenge designed to benchmark and advance vision-based skill assessment in open surgery. The challenge dataset comprises videos of an open suturing training task recorded with a static GoPro camera in a dry-lab setting, with instrument trajectories available in addition to the primary video modality. The OSS Challenge was hosted over two consecutive years, comprising two and three independent tasks, respectively: (1) classifying skill level into four classes, (2)…
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