Bar Omri, Neimark Daniel, Zohar Maya, Hager Gregory D, Girshick Ross, Fried Gerald M, Wolf Tamir, Asselmann Dotan
theator Inc., San Mateo, CA, USA.
Department of Computer Science, Johns Hopkins University, Baltimore, USA.
Sci Rep. 2020 Dec 17;10(1):22208. doi: 10.1038/s41598-020-79173-6.
AI is becoming ubiquitous, revolutionizing many aspects of our lives. In surgery, it is still a promise. AI has the potential to improve surgeon performance and impact patient care, from post-operative debrief to real-time decision support. But, how much data is needed by an AI-based system to learn surgical context with high fidelity? To answer this question, we leveraged a large-scale, diverse, cholecystectomy video dataset. We assessed surgical workflow recognition and report a deep learning system, that not only detects surgical phases, but does so with high accuracy and is able to generalize to new settings and unseen medical centers. Our findings provide a solid foundation for translating AI applications from research to practice, ushering in a new era of surgical intelligence.
人工智能正变得无处不在,给我们生活的诸多方面带来变革。在外科手术领域,它仍只是一种愿景。人工智能有潜力提升外科医生的表现并影响患者护理,从术后总结到实时决策支持。但是,基于人工智能的系统需要多少数据才能高保真地学习手术情境呢?为了回答这个问题,我们利用了一个大规模、多样化的胆囊切除术视频数据集。我们评估了手术工作流程识别情况,并报告了一个深度学习系统,该系统不仅能检测手术阶段,而且准确率很高,还能够推广到新环境和未知的医疗中心。我们的研究结果为将人工智能应用从研究转化为实践奠定了坚实基础,开启了外科智能的新时代。