论文标题
基于RL的门诊宫腔镜检查训练:可行性研究
RL-Based Guidance in Outpatient Hysteroscopy Training: A Feasibility Study
论文作者
论文摘要
这项工作为门诊宫腔镜检查训练提供了基于RL的代理。宫腔镜检查是检查子宫腔的妇科程序。最近的进步使在没有麻醉的门诊设置中执行这种类型的干预措施。尽管对患者有益,但这种方法给临床医生带来了新的挑战,他们应该采取其他措施维持患者舒适度并防止组织损害。我们先前的工作提出了一个用于宫腔镜训练的平台,重点是宫颈管的通道。通过这项工作,我们旨在通过设计一个自主执行宫颈管道任务的子系统来扩展平台的功能。以后可以将此功能用作虚拟讲师,以为受训者提供教育提示并评估其表现。开发的算法基于软演员评论家的方法,以平滑代理的学习曲线并确保对工作空间的统一探索。该算法对五位临床医生的性能进行了测试。总体而言,该算法表现出很高的效率和可靠性,在98%的试验中取得了成功,并且在四分之三的测量指标中表现出色。
This work presents an RL-based agent for outpatient hysteroscopy training. Hysteroscopy is a gynecological procedure for examination of the uterine cavity. Recent advancements enabled performing this type of intervention in the outpatient setup without anaesthesia. While being beneficial to the patient, this approach introduces new challenges for clinicians, who should take additional measures to maintain the level of patient comfort and prevent tissue damage. Our prior work has presented a platform for hysteroscopic training with the focus on the passage of the cervical canal. With this work, we aim to extend the functionality of the platform by designing a subsystem that autonomously performs the task of the passage of the cervical canal. This feature can later be used as a virtual instructor to provide educational cues for trainees and assess their performance. The developed algorithm is based on the soft actor critic approach to smooth the learning curve of the agent and ensure uniform exploration of the workspace. The designed algorithm was tested against the performance of five clinicians. Overall, the algorithm demonstrated high efficiency and reliability, succeeding in 98% of trials and outperforming the expert group in three out of four measured metrics.