Hameed M Saif, Laplante Simon, Masino Caterina, Khalid Muhammad Uzair, Zhang Haochi, Protserov Sergey, Hunter Jaryd, Mashouri Pouria, Fecso Andras B, Brudno Michael, Madani Amin
Surgical Artificial Intelligence Research Academy, University Health Network, 81 Baldwin Street, Toronto, ON, M5T 1L5, Canada.
Department of Surgery, University of Toronto, Toronto, ON, Canada.
Surg Endosc. 2023 Dec;37(12):9453-9460. doi: 10.1007/s00464-023-10377-3. Epub 2023 Sep 11.
Surgical complications often occur due to lapses in judgment and decision-making. Advances in artificial intelligence (AI) have made it possible to train algorithms that identify anatomy and interpret the surgical field. These algorithms can potentially be used for intraoperative decision-support and postoperative video analysis and feedback. Despite the very early success of proof-of-concept algorithms, it remains unknown whether this innovation meets the needs of end-users or how best to deploy it. This study explores users' opinion on the value, usability and design for adapting AI in operating rooms.
A device-agnostic web-accessible software was developed to provide AI inference either (1) intraoperatively on a live video stream (synchronous mode), or (2) on an uploaded video or image file (asynchronous mode) postoperatively for feedback. A validated AI model (GoNoGoNet), which identifies safe and dangerous zones of dissection during laparoscopic cholecystectomy, was used as the use case. Surgeons and trainees performing laparoscopic cholecystectomy interacted with the AI platform and completed a 5-point Likert scale survey to evaluate the educational value, usability and design of the platform.
Twenty participants (11 surgeons and 9 trainees) evaluated the platform intraoperatively (n = 10) and postoperatively (n = 11). The majority agreed or strongly agreed that AI is an effective adjunct to surgical training (81%; neutral = 10%), effective for providing real-time feedback (70%; neutral = 20%), postoperative feedback (73%; neutral = 27%), and capable of improving surgeon confidence (67%; neutral = 29%). Only 40% (neutral = 50%) and 57% (neutral = 43%) believe that the tool is effective in improving intraoperative decisions and performance, or beneficial for patient care, respectively. Overall, 38% (neutral = 43%) reported they would use this platform consistently if available. The majority agreed or strongly agreed that the platform was easy to use (81%; neutral = 14%) and has acceptable resolution (62%; neutral = 24%), while 30% (neutral = 20%) reported that it disrupted the OR workflow, and 20% (neutral = 0%) reported significant time lag. All respondents reported that such a system should be available "on-demand" to turn on/off at their discretion.
Most found AI to be a useful tool for providing support and feedback to surgeons, despite several implementation obstacles. The study findings will inform the future design and usability of this technology in order to optimize its clinical impact and adoption by end-users.
手术并发症的发生往往是由于判断和决策失误。人工智能(AI)的进步使得训练能够识别解剖结构并解读手术视野的算法成为可能。这些算法有可能用于术中决策支持以及术后视频分析和反馈。尽管概念验证算法取得了初步成功,但这项创新是否满足终端用户的需求以及如何最佳部署它仍不明确。本研究探讨了用户对于在手术室中应用人工智能的价值、可用性和设计的看法。
开发了一种与设备无关的可通过网络访问的软件,以提供人工智能推理,要么(1)在术中对实时视频流进行(同步模式),要么(2)在术后对上传的视频或图像文件进行(异步模式)以提供反馈。使用一个经过验证的人工智能模型(GoNoGoNet)作为用例,该模型可识别腹腔镜胆囊切除术中安全和危险的解剖区域。进行腹腔镜胆囊切除术的外科医生和实习生与人工智能平台进行交互,并完成一份5级李克特量表调查,以评估该平台的教育价值、可用性和设计。
20名参与者(11名外科医生和9名实习生)在术中(n = 10)和术后(n = 11)对该平台进行了评估。大多数人同意或强烈同意人工智能是手术训练的有效辅助手段(81%;中立 = 10%),对提供实时反馈有效(70%;中立 = 20%),对术后反馈有效(73%;中立 = 27%),并且能够提高外科医生的信心(67%;中立 = 29%)。分别只有40%(中立 = 50%)和57%(中立 = 43%)的人认为该工具能有效改善术中决策和表现,或对患者护理有益。总体而言,38%(中立 = 43%)的人表示如果有该平台,他们会持续使用。大多数人同意或强烈同意该平台易于使用(81%;中立 = 14%)且具有可接受的分辨率(62%;中立 = 24%),而30%(中立 = 20%)的人表示它扰乱了手术室工作流程,20%(中立 = 0%)的人表示存在明显的时间延迟。所有受访者都表示这样的系统应该“按需”提供,以便他们自行决定开启或关闭。
尽管存在一些实施障碍,但大多数人发现人工智能是为外科医生提供支持和反馈的有用工具。研究结果将为该技术未来的设计和可用性提供参考,以优化其临床影响并促进终端用户的采用。