Bern University of Applied Sciences, Biel/Bienne, Switzerland.
Department of Radiation Oncology, Bern University Hospital, Bern, Switzerland.
Stud Health Technol Inform. 2023 May 2;301:60-66. doi: 10.3233/SHTI230012.
Radiologists rarely interact with the patients whose radiological images they are reviewing due to time and resource constraints. However, relevant information about the patient's medical history could improve reporting performance and quality. In this work, our objective was to collect requirements for a digital medical interview assistant (DMIA) that collects the medical history from patients by means of a conversational agent and structures as well as provides the collected data to radiologists. Requirements were gathered based on a narrative literature review, a patient questionnaire and input from a radiologist. Based on these results, a system architecture for the DMIA was developed. 37 functional and 17 non-functional requirements were identified. The resulting architecture comprises five components, namely Chatbot, Natural language processing (NLP), Administration, Content Definition and Workflow Engine. To be able to quickly adapt the chatbot content according to the information needs of a specific radiological examination, there is a need for developing a sustainable process for the content generation that considers standardized data modelling as well as rewording of clinical language into consumer health vocabulary understandable to a diverse patient user group.
放射科医生由于时间和资源的限制,很少与他们正在检查的患者进行互动。然而,与患者病史相关的信息可以提高报告的性能和质量。在这项工作中,我们的目标是收集数字医疗访谈助手(DMIA)的需求,该助手通过对话代理收集患者的病史,并对其进行整理,然后将收集到的数据提供给放射科医生。需求是基于叙述性文献回顾、患者问卷调查和放射科医生的意见收集的。基于这些结果,开发了 DMIA 的系统架构。确定了 37 项功能需求和 17 项非功能需求。最终的架构包括五个组件,即聊天机器人、自然语言处理(NLP)、管理、内容定义和工作流引擎。为了能够根据特定放射检查的信息需求快速调整聊天机器人的内容,需要开发一种可持续的内容生成过程,该过程考虑了标准化的数据建模以及将临床语言重新措辞为多样化的患者用户群体能够理解的消费者健康词汇。