Automated multimodel segmentation and tracking for AR-guided open liver surgery using scene-aware self-prompting.

IF 2.3 3区 医学 Q3 ENGINEERING, BIOMEDICAL
Serouj Khajarian, Michael Schwimmbeck, Konstantin Holzapfel, Johannes Schmidt, Christopher Auer, Stefanie Remmele, Oliver Amft
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引用次数: 0

Abstract

Purpose: We introduce a multimodel, real-time semantic segmentation and tracking approach for Augmented Reality (AR)-guided open liver surgery. Our approach leverages foundation models and scene-aware re-prompting strategies to balance segmentation accuracy and inference time as required for real-time AR-assisted surgery applications.

Methods: Our approach integrates a domain-specific RGBD model (ESANet), a foundation model for semantic segmentation (SAM), and a semi-supervised video object segmentation model (DeAOT). Models were combined in an auto-promptable pipeline with a scene-aware re-prompting algorithm that adapts to surgical scene changes. We evaluated our approach on intraoperative RGBD videos from 10 open liver surgeries using a head-mounted AR device. Segmentation accuracy (IoU), temporal resolution (FPS), and the impact of re-prompting strategies were analyzed. Comparisons to individual models were performed.

Results: Our multimodel approach achieved a median IoU of 71% at 13.2 FPS without re-prompting. Performance of our multimodel approach surpasses that of individual models, yielding better segmentation accuracy than ESANet and better temporal resolution compared to SAM. Our scene-aware re-prompting method reaches the DeAOT performance, with an IoU of 74.7% at 11.5 FPS, even when the DeAOT model uses an ideal reference frame.

Conclusion: Our scene-aware re-prompting strategy provides a trade-off between segmentation accuracy and temporal resolution, thus addressing the requirements of real-time AR-guided open liver surgery. The integration of complementary models resulted in robust and accurate segmentation in a complex, real-world surgical settings.

基于场景感知自我提示的ar引导下肝脏开放性手术的自动多模型分割和跟踪。
目的:介绍一种多模型、实时语义分割和跟踪方法,用于增强现实(AR)引导下的开放肝脏手术。我们的方法利用基础模型和场景感知重新提示策略来平衡实时ar辅助手术应用所需的分割精度和推理时间。方法:我们的方法集成了特定领域的RGBD模型(ESANet)、语义分割基础模型(SAM)和半监督视频对象分割模型(DeAOT)。模型结合在一个自动提示的管道中,该管道具有适应手术场景变化的场景感知重新提示算法。我们使用头戴式AR设备对10例开放肝脏手术的术中RGBD视频进行了评估。分析了分割精度(IoU)、时间分辨率(FPS)和重复提示策略的影响。与单个模型进行比较。结果:我们的多模型方法在13.2 FPS下实现了71%的中位IoU,没有再次提示。我们的多模型方法的性能优于单个模型,产生比ESANet更好的分割精度和比SAM更好的时间分辨率。我们的场景感知重新提示方法达到了deot的性能,在11.5 FPS下IoU为74.7%,即使在deot模型使用理想参考框架时也是如此。结论:我们的场景感知重新提示策略在分割精度和时间分辨率之间进行了权衡,从而满足了实时ar引导下开放肝手术的要求。在复杂的现实世界的手术环境中,互补模型的整合导致了稳健和准确的分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Computer Assisted Radiology and Surgery
International Journal of Computer Assisted Radiology and Surgery ENGINEERING, BIOMEDICAL-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
5.90
自引率
6.70%
发文量
243
审稿时长
6-12 weeks
期刊介绍: The International Journal for Computer Assisted Radiology and Surgery (IJCARS) is a peer-reviewed journal that provides a platform for closing the gap between medical and technical disciplines, and encourages interdisciplinary research and development activities in an international environment.
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