Monitoring tool usage in surgery videos using boosted convolutional and recurrent neural networks
Hassan Al Hajj, Mathieu Lamard, Pierre-Henri Conze, B\'eatrice, Cochener, Gwenol\'e Quellec

TL;DR
This paper presents a novel boosting strategy for training convolutional and recurrent neural networks simultaneously to improve automatic tool usage monitoring in surgical videos, achieving high accuracy in real-time and offline modes.
Contribution
It introduces a new boosting approach that trains CNNs and RNNs together for better feature extraction in surgical tool analysis, addressing the limitations of separate training.
Findings
Achieved high classification accuracy with A_z > 0.99 in both datasets.
Demonstrated effectiveness in both offline and online modes.
Validated approach on cataract and cholecystectomy videos.
Abstract
This paper investigates the automatic monitoring of tool usage during a surgery, with potential applications in report generation, surgical training and real-time decision support. Two surgeries are considered: cataract surgery, the most common surgical procedure, and cholecystectomy, one of the most common digestive surgeries. Tool usage is monitored in videos recorded either through a microscope (cataract surgery) or an endoscope (cholecystectomy). Following state-of-the-art video analysis solutions, each frame of the video is analyzed by convolutional neural networks (CNNs) whose outputs are fed to recurrent neural networks (RNNs) in order to take temporal relationships between events into account. Novelty lies in the way those CNNs and RNNs are trained. Computational complexity prevents the end-to-end training of "CNN+RNN" systems. Therefore, CNNs are usually trained first,…
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Taxonomy
TopicsSurgical Simulation and Training
