Meta-SurDiff: Classification Diffusion Model Optimized by Meta Learning is Reliable for Online Surgical Phase Recognition
Yufei Li, Jirui Wu, Long Tian, Liming Wang, Xiaonan Liu, Zijun Liu, Xiyang Liu

TL;DR
Meta-SurDiff is a novel meta-learning-optimized diffusion model that improves online surgical phase recognition by effectively modeling uncertainty and handling class imbalance in surgical videos.
Contribution
The paper introduces Meta-SurDiff, a classification diffusion model combined with meta-learning to enhance the reliability of surgical phase recognition under uncertainty.
Findings
Outperforms existing methods on five datasets
Effectively models uncertainty in ambiguous frames
Improves robustness against phase distribution imbalance
Abstract
Online surgical phase recognition has drawn great attention most recently due to its potential downstream applications closely related to human life and health. Despite deep models have made significant advances in capturing the discriminative long-term dependency of surgical videos to achieve improved recognition, they rarely account for exploring and modeling the uncertainty in surgical videos, which should be crucial for reliable online surgical phase recognition. We categorize the sources of uncertainty into two types, frame ambiguity in videos and unbalanced distribution among surgical phases, which are inevitable in surgical videos. To address this pivot issue, we introduce a meta-learning-optimized classification diffusion model (Meta-SurDiff), to take full advantage of the deep generative model and meta-learning in achieving precise frame-level distribution estimation for…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Advanced X-ray Imaging Techniques · Nuclear Physics and Applications
MethodsDiffusion
