Cautiously optimistic: paediatric critical care nurses' perspectives on data-driven algorithms in low-resource settings-a human-centred design study in Malawi.

Margot Rakers, Daniel Mwale, Lieke de Mare, Lezzie Chirambo, Bart Bierling, Alice Likumbo, Josephine Langton, Niels Chavannes, Hendrikus van Os, Job Calis, Kiran Dellimore, María Villalobos-Quesada
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Abstract

Background: Paediatric critical care nurses face challenges in promptly detecting patient deterioration and delivering high-quality care, especially in low-resource settings (LRS). Patient monitors equipped with data-driven algorithms that monitor and integrate clinical data can optimise scarce resources (e.g. trained staff) offering solutions to these challenges. Poor algorithm output design and workflow integration, however, are important factors hindering successful implementation. This study aims to explore nurses' perspectives to inform the development of a data-driven algorithm and user-friendly interface for future integration into a continuous vital signs monitoring system for critical care in LRS.

Methods: Human-centred design methods, including contextual inquiry, semi-structured interviews, prototyping and co-design sessions, were carried out at the high-dependency units of Queen Elizabeth Central Hospital and Zomba Central Hospital in Malawi between March and July 2023. Triangulating these methods, we identified what algorithm could assist nurses and used co-creation methods to design a user interface prototype. Data were analysed using qualitative content analysis.

Results: Workflow observations demonstrated the effects of personnel shortages and limited monitor equipment for vital signs monitoring. Interviews identified four themes: workload and workflow, patient prioritisation, interaction with guardians, and perspectives on data-driven algorithms. The interviews emphasised the advantages of predictive algorithms in anticipating patient deterioration, underlining the need to integrate the algorithm's output, the (constant) monitoring data, and the patient's present clinical condition. Nurses preferred a scoring system represented with familiar scales and colour codes. During co-design sessions, trust, usability and context specificity were emphasised as requirements for these algorithms. Four prototype components were examined, with nurses favouring scores represented by colour codes and visual representations of score changes.

Conclusions: Nurses in the LRS studied, perceived that data-driven algorithms, especially for predicting patient deterioration, could improve the provision of critical care. This can be achieved by translating nurses' perspectives into design strategies, as has been carried out in this study. The lessons learned were summarised as actionable pre-implementation recommendations for the development and implementation of data-driven algorithms in LRS.

谨慎乐观:儿科重症监护护士对低资源环境下数据驱动算法的看法--马拉维以人为本的设计研究。
背景:儿科重症护理护士在及时发现患者病情恶化和提供高质量护理方面面临挑战,特别是在资源匮乏的环境(LRS)。配备数据驱动算法的患者监护仪可以监测和整合临床数据,从而优化稀缺资源(例如训练有素的工作人员),为这些挑战提供解决方案。然而,糟糕的算法输出设计和工作流集成是阻碍成功实现的重要因素。本研究旨在探讨护士的观点,为数据驱动算法和用户友好界面的发展提供信息,以便未来整合到LRS重症监护的连续生命体征监测系统中。方法:在2023年3月至7月期间,在马拉维伊丽莎白女王中心医院和Zomba中心医院的高依赖性病房开展了以人为本的设计方法,包括情境调查、半结构化访谈、原型设计和共同设计会议。通过对这些方法进行三角测量,我们确定了哪些算法可以帮助护士,并使用共同创造方法来设计用户界面原型。采用定性内容分析法对资料进行分析。结果:工作流程观察显示了人员短缺和有限的监测设备对生命体征监测的影响。访谈确定了四个主题:工作量和工作流程、患者优先级、与监护人的互动以及对数据驱动算法的看法。访谈强调了预测算法在预测患者病情恶化方面的优势,强调了整合算法输出、(持续)监测数据和患者当前临床状况的必要性。护士更喜欢用熟悉的尺度和颜色代码表示的评分系统。在共同设计会议期间,信任、可用性和上下文特异性被强调为这些算法的要求。研究人员检查了四个原型组件,护士喜欢用颜色代码表示的分数和分数变化的视觉表示。结论:LRS研究的护士认为,数据驱动的算法,特别是预测患者病情恶化的算法,可以改善重症监护的提供。这可以通过将护士的观点转化为设计策略来实现,正如本研究所进行的那样。总结了所吸取的经验教训,作为在LRS中开发和实施数据驱动算法的可操作的执行前建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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