Holm Benedikt, Jouan Gabriel, Hardarson Emil, Sigurðardottir Sigríður, Hoelke Kenan, Murphy Conor, Arnardóttir Erna Sif, Óskarsdóttir María, Islind Anna Sigríður
Department of Computer Science, Reykjavik University, Reykjavik, Iceland.
School of Technology, Reykjavik University Sleep Institute, Reykjavik, Iceland.
Front Neuroinform. 2024 May 13;18:1379932. doi: 10.3389/fninf.2024.1379932. eCollection 2024.
Polysomnographic recordings are essential for diagnosing many sleep disorders, yet their detailed analysis presents considerable challenges. With the rise of machine learning methodologies, researchers have created various algorithms to automatically score and extract clinically relevant features from polysomnography, but less research has been devoted to how exactly the algorithms should be incorporated into the workflow of sleep technologists. This paper presents a sophisticated data collection platform developed under the Sleep Revolution project, to harness polysomnographic data from multiple European centers.
A tripartite platform is presented: a user-friendly web platform for uploading three-night polysomnographic recordings, a dedicated splitter that segments these into individual one-night recordings, and an advanced processor that enhances the one-night polysomnography with contemporary automatic scoring algorithms. The platform is evaluated using real-life data and human scorers, whereby scoring time, accuracy, and trust are quantified. Additionally, the scorers were interviewed about their trust in the platform, along with the impact of its integration into their workflow.
We found that incorporating AI into the workflow of sleep technologists both decreased the time to score by up to 65 min and increased the agreement between technologists by as much as 0.17 .
We conclude that while the inclusion of AI into the workflow of sleep technologists can have a positive impact in terms of speed and agreement, there is a need for trust in the algorithms.
多导睡眠图记录对于诊断多种睡眠障碍至关重要,但其详细分析面临诸多挑战。随着机器学习方法的兴起,研究人员创建了各种算法来自动对多导睡眠图进行评分并提取临床相关特征,但对于如何将这些算法确切地纳入睡眠技术人员的工作流程,相关研究较少。本文介绍了在“睡眠革命”项目下开发的一个复杂的数据收集平台,用于收集来自多个欧洲中心的多导睡眠图数据。
展示了一个三方平台:一个用于上传三晚多导睡眠图记录的用户友好型网络平台、一个将这些记录分割为单独一晚记录的专用分割器,以及一个使用当代自动评分算法增强一晚多导睡眠图的高级处理器。该平台使用实际数据和人工评分员进行评估,对评分时间、准确性和可信度进行量化。此外,还就评分员对该平台的信任以及其集成到工作流程中的影响对他们进行了访谈。
我们发现,将人工智能纳入睡眠技术人员的工作流程,既可以将评分时间减少多达65分钟,又可以使技术人员之间的一致性提高多达0.17。
我们得出结论,虽然将人工智能纳入睡眠技术人员的工作流程在速度和一致性方面可以产生积极影响,但需要对算法有信任。