Wagner Lars, Jourdan Sara, Mayer Leon, Müller Carolin, Bernhard Lukas, Kolb Sven, Harb Farid, Jell Alissa, Berlet Maximilian, Feussner Hubertus, Buxmann Peter, Knoll Alois, Wilhelm Dirk
Technical University of Munich, TUM School of Medicine and Health, Klinikum rechts der Isar, Research Group MITI, Munich, Germany.
Technical University of Darmstadt, Software & Digital Business Group, Darmstadt, Germany.
Commun Med (Lond). 2024 Aug 2;4(1):156. doi: 10.1038/s43856-024-00581-0.
Machine learning and robotics technologies are increasingly being used in the healthcare domain to improve the quality and efficiency of surgeries and to address challenges such as staff shortages. Robotic scrub nurses in particular offer great potential to address staff shortages by assuming nursing tasks such as the handover of surgical instruments.
We introduce a robotic scrub nurse system designed to enhance the quality of surgeries and efficiency of surgical workflows by predicting and delivering the required surgical instruments based on real-time laparoscopic video analysis. We propose a three-stage deep learning architecture consisting of a single frame-, temporal multi frame-, and informed model to anticipate surgical instruments. The anticipation model was trained on a total of 62 laparoscopic cholecystectomies.
Here, we show that our prediction system can accurately anticipate 71.54% of the surgical instruments required during laparoscopic cholecystectomies in advance, facilitating a smoother surgical workflow and reducing the need for verbal communication. As the instruments in the left working trocar are changed less frequently and according to a standardized procedure, the prediction system works particularly well for this trocar.
The robotic scrub nurse thus acts as a mind reader and helps to mitigate staff shortages by taking over a great share of the workload during surgeries while additionally enabling an enhanced process standardization.
机器学习和机器人技术在医疗领域的应用日益广泛,旨在提高手术质量和效率,并应对诸如人员短缺等挑战。特别是机器人洗手护士通过承担诸如手术器械交接等护理任务,在解决人员短缺方面具有巨大潜力。
我们介绍一种机器人洗手护士系统,该系统旨在通过基于实时腹腔镜视频分析预测并提供所需手术器械,提高手术质量和手术工作流程的效率。我们提出一种由单帧模型、时间多帧模型和知情模型组成的三阶段深度学习架构,以预测手术器械。该预测模型在总共62例腹腔镜胆囊切除术上进行了训练。
在此,我们表明我们的预测系统能够提前准确预测腹腔镜胆囊切除术中71.54%所需的手术器械,促进手术工作流程更顺畅,并减少口头交流的需求。由于左工作套管中的器械更换频率较低且按照标准化程序进行,该预测系统在这个套管上的效果特别好。
因此,机器人洗手护士就像一个读心者,通过在手术期间承担大部分工作量来帮助缓解人员短缺,同时还能提高流程标准化程度。