Flexible endoscopes for colonoscopy present several limitations due to their inherent complexity, resulting in patient discomfort and lack of intuitiveness for clinicians. Robotic devices together with autonomous control represent a viable solution to reduce the workload of endoscopists and the training time while improving the overall procedure outcome. Prior works on autonomous endoscope control use heuristic policies that limit their generalisation to the unstructured and highly deformable colon environment and require frequent human intervention. This work proposes an image-based control of the endoscope using Deep Reinforcement Learning, called Deep Visuomotor Control (DVC), to exhibit adaptive behaviour in convoluted sections of the colon tract. DVC learns a mapping between the endoscopic images and the control signal of the endoscope. A first user study of 20 expert gastrointestinal endoscopists was carried out to compare their navigation performance with DVC policies using a realistic virtual simulator. The results indicate that DVC shows equivalent performance on several assessment parameters, being more safer. Moreover, a second user study with 20 novice participants was performed to demonstrate easier human supervision compared to a state-of-the-art heuristic control policy. Seamless supervision of colonoscopy procedures would enable interventionists to focus on the medical decision rather than on the control problem of the endoscope.
翻译:结肠镜检查的灵活内窥镜具有内在复杂性,造成临床医生的病人不适和缺乏直觉性。机器人装置加上自主控制,是减少内镜医生工作量和培训时间的可行解决办法,同时改进总体程序结果。自主内镜控制的前工作使用超光层政策,将政策的范围限制在不结构的高度不整化的结肠环境中,需要经常的人类干预。这项工作提议利用深强化学习,即深活摩托控制(DVC),对内镜进行基于图像的控制,以显示在结肠管的混合部分的适应行为。DVC学习了内镜图像与内镜控制信号之间的映射。对20名专家胃肠内镜内镜检查师进行了首次用户研究,以便利用现实的虚拟模拟模拟器将导航工作与DVC政策进行比较。结果显示,DVC在几个评估参数上的表现相当,称为深维摩控制(DVC),更安全。此外,DVC在20名用户对内镜监督程序进行了较容易的系统监督,比20名用户对无底底底控制程序进行较容易的监控。此外,对20名用户进行了一项较容易的监控。