深度学习如何影响虚拟手术计划中的工作流程和角色

Beat Hofer, Markus Kittler, Kris Laukens
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摘要

深度学习(DL)有可能改变外科实践,改变工作流程和从业人员的角色。然而,研究表明,引入这种变化需要用户接受。在开发和展示了规划面部手术干预的视觉原型之后,该项目旨在了解深度学习的实用性、它所隐含的工作流程和角色变化,以及在实践中采用它的潜在障碍。方法:本文介绍了一个多年的案例研究,提供了从开发和引入视觉原型的见解。原型是由面部外科医生、深度学习专家和业务流程工程师共同开发的。该研究使用了项目数据,包括半结构化访谈、工作组结果,以及外部从业者受众对原型的反馈,这些反馈涉及他们对在实践中采用深度学习工具的看法。结果外科医生证实该应用具有很高的实用性。然而,数据也强调了保持控制,能够在短时间间隔内干预和覆盖手术工作流程的感知需求。没有机会干预的较长时间间隔被认为是怀疑的,这表明从业者接受深度学习需要一个精心设计的工作流程,在这个工作流程中,人类仍然可以控制事件。结论深度学习可以改善和加快面部手术干预计划。商业和管理文献中的模型部分解释了对新技术的接受。感知到的易用性似乎不如感知到的新技术的有用性更重要。将算法纳入临床决策将改变工作流程和职业身份。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How deep learning influences workflows and roles in virtual surgical planning
Abstract Background Deep learning (DL) has the potential to transform surgical practice, altering workflows and changing the roles of practitioners involved. However, studies have shown that introducing such change requires user acceptance. Following the development and presentation of a visual prototype for planning facial surgery interventions, the project aimed to understand the utility of DL, the implied workflow and role changes it would entail, and the potential barriers to its adoption in practice. Method This paper presents a multi-year case study providing insights from developing and introducing a visual prototype. The prototype was co-developed by facial surgeons, DL experts, and business process engineers. The study uses project data involving semi-structured interviews, workgroup results, and feedback from an external practitioner audience exposed to the prototype regarding their views on adopting DL tools in practice. Findings The surgeons attested a high utility to the application. However, the data also highlights a perceived need to remain in control, be able to intervene, and override surgical workflows in short intervals. Longer intervals without opportunities to intervene were seen with skepticism, suggesting that the practitioners’ acceptance of DL requires a carefully designed workflow in which humans can still take control of events. Conclusion Deep learning can improve and accelerate facial surgery intervention planning. Models from the business and management literature partially explain the acceptance of new technologies. Perceived ease of use seems less relevant than the perceived usefulness of new technology. Involving algorithms in clinical decision-making will change workflows and professional identities.
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