Medical Informatics Group (MIG), University Hospital Frankfurt, Frankfurt, Germany.
Institute for Medical Informatics and Biometry, Carl Gustav Carus Faculty of Medicine, Technical University of Dresden, Dresden, Germany.
BMC Med Inform Decis Mak. 2021 Feb 18;21(1):65. doi: 10.1186/s12911-021-01435-8.
Rare Diseases (RDs) are difficult to diagnose. Clinical Decision Support Systems (CDSS) could support the diagnosis for RDs. The Medical Informatics in Research and Medicine (MIRACUM) consortium developed a CDSS for RDs based on distributed clinical data from eight German university hospitals. To support the diagnosis for difficult patient cases, the CDSS uses data from the different hospitals to perform a patient similarity analysis to obtain an indication of a diagnosis. To optimize our CDSS, we conducted a qualitative study to investigate usability and functionality of our designed CDSS.
We performed a Thinking Aloud Test (TA-Test) with RDs experts working in Rare Diseases Centers (RDCs) at MIRACUM locations which are specialized in diagnosis and treatment of RDs. An instruction sheet with tasks was prepared that the participants should perform with the CDSS during the study. The TA-Test was recorded on audio and video, whereas the resulting transcripts were analysed with a qualitative content analysis, as a ruled-guided fixed procedure to analyse text-based data. Furthermore, a questionnaire was handed out at the end of the study including the System Usability Scale (SUS).
A total of eight experts from eight MIRACUM locations with an established RDC were included in the study. Results indicate that more detailed information about patients, such as descriptive attributes or findings, can help the system perform better. The system was rated positively in terms of functionality, such as functions that enable the user to obtain an overview of similar patients or medical history of a patient. However, there is a lack of transparency in the results of the CDSS patient similarity analysis. The study participants often stated that the system should present the user with an overview of exact symptoms, diagnosis, and other characteristics that define two patients as similar. In the usability section, the CDSS received a score of 73.21 points, which is ranked as good usability.
This qualitative study investigated the usability and functionality of a CDSS of RDs. Despite positive feedback about functionality of system, the CDSS still requires some revisions and improvement in transparency of the patient similarity analysis.
罕见病的诊断具有一定难度。临床决策支持系统(CDSS)可以为罕见病的诊断提供支持。医学信息学在研究和医学(MIRACUM)联盟基于来自八所德国大学附属医院的分布式临床数据,开发了一种用于罕见病的 CDSS。为了支持疑难病例的诊断,CDSS 使用来自不同医院的数据来进行患者相似性分析,以获得诊断提示。为了优化我们的 CDSS,我们进行了一项定性研究,以调查我们设计的 CDSS 的可用性和功能。
我们在 MIRACUM 地点的罕见病中心(RDC)工作的罕见病专家中进行了一次出声思维测试(TA-测试),这些专家专门从事罕见病的诊断和治疗。准备了一份带有任务的说明手册,参与者应在研究过程中使用 CDSS 完成这些任务。TA-测试以音频和视频的形式记录,而生成的抄本则使用定性内容分析进行分析,这是一种用于分析基于文本的数据的有规则的固定程序。此外,在研究结束时还分发了一份包括系统可用性量表(SUS)在内的问卷。
共有来自八个 MIRACUM 地点的八个具有 RDC 的专家参与了这项研究。结果表明,有关患者的更详细信息,例如描述性属性或发现,可以帮助系统更好地运行。该系统在功能方面得到了积极评价,例如使用户能够获得相似患者或患者病史概述的功能。但是,CDSS 患者相似性分析的结果缺乏透明度。研究参与者经常表示,系统应该向用户展示两个患者相似的确切症状、诊断和其他特征的概述。在可用性部分,CDSS 的得分为 73.21 分,被评为具有良好的可用性。
这项定性研究调查了罕见病 CDSS 的可用性和功能。尽管对系统功能的反馈是积极的,但 CDSS 仍需要在患者相似性分析的透明度方面进行一些修订和改进。