Preserving Privacy in Surgical Video Analysis Using Artificial Intelligence: A Deep Learning Classifier to Identify Out-of-Body Scenes in Endoscopic Videos
Jo\"el L. Lavanchy, Armine Vardazaryan, Pietro Mascagni, AI4SafeChole, Consortium, Didier Mutter, Nicolas Padoy

TL;DR
This paper presents a deep learning model that accurately detects out-of-body scenes in endoscopic videos, helping to protect patient and staff privacy during surgical video analysis.
Contribution
A novel deep learning classifier was developed and validated for identifying out-of-body images in endoscopic videos, demonstrating high accuracy across multiple datasets.
Findings
Model achieved 99.97% ROC AUC internally.
External validation showed ROC AUC above 99.7%.
Model is publicly available for privacy preservation.
Abstract
Objective: To develop and validate a deep learning model for the identification of out-of-body images in endoscopic videos. Background: Surgical video analysis facilitates education and research. However, video recordings of endoscopic surgeries can contain privacy-sensitive information, especially if out-of-body scenes are recorded. Therefore, identification of out-of-body scenes in endoscopic videos is of major importance to preserve the privacy of patients and operating room staff. Methods: A deep learning model was trained and evaluated on an internal dataset of 12 different types of laparoscopic and robotic surgeries. External validation was performed on two independent multicentric test datasets of laparoscopic gastric bypass and cholecystectomy surgeries. All images extracted from the video datasets were annotated as inside or out-of-body. Model performance was evaluated compared…
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Taxonomy
TopicsFemale Genital Mutilation/Cutting Issues · Colorectal Cancer Screening and Detection · Pelvic floor disorders treatments
MethodsTest
