Dies ist eine Übersichtsseite mit Metadaten zu dieser wissenschaftlichen Arbeit. Der vollständige Artikel ist beim Verlag verfügbar.
Hypergraph-Transformer (HGT) for Interaction Event Prediction in Laparoscopic and Robotic Surgery
2
Zitationen
6
Autoren
2025
Jahr
Abstract
Understanding and anticipating events and actions is critical for intraoperative assistance and decision-making during minimally invasive surgery. We propose a predictive neural network that is capable of understanding and predicting critical interaction aspects of surgical workflow based on endoscopic, intracorporeal video data, while flexibly leveraging surgical knowledge graphs. The approach incorporates a hypergraph-transformer (HGT) structure that encodes expert knowledge into the network design and predicts the hidden embedding of the graph. We verify our approach on established surgical datasets and applications, including the prediction of action-triplets, and the achievement of the Critical View of Safety (CVS), which is a critical safety measure. Moreover, we address specific, safety-related forecasts of surgical processes, such as predicting the clipping of the cystic duct or artery without prior achievement of the CVS. Our results demonstrate improvement in prediction of interactive event when incorporating with our approach compared to unstructured alternatives.
Ähnliche Arbeiten
The SCARE 2020 Guideline: Updating Consensus Surgical CAse REport (SCARE) Guidelines
2020 · 5.572 Zit.
Virtual Reality Training Improves Operating Room Performance
2002 · 2.784 Zit.
An estimation of the global volume of surgery: a modelling strategy based on available data
2008 · 2.504 Zit.
Objective structured assessment of technical skill (OSATS) for surgical residents
1997 · 2.257 Zit.
Does Simulation-Based Medical Education With Deliberate Practice Yield Better Results Than Traditional Clinical Education? A Meta-Analytic Comparative Review of the Evidence
2011 · 1.704 Zit.