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采用基于机器学习算法的新型生物标志物检测参数,用于医院实践中脓毒症的早期检测。

Adoption of novel biomarker test parameters with machine learning-based algorithms for the early detection of sepsis in hospital practice.

机构信息

Management and Health Laboratory, Institute of Management, EMbeDS Department, Scuola Superiore Sant'Anna, Pisa, Italy.

Department of Healthcare Professions, Campus Bio-Medico of Rome University Hospital, Rome, Italy.

出版信息

J Nurs Manag. 2022 Nov;30(8):3754-3764. doi: 10.1111/jonm.13807. Epub 2022 Oct 3.

Abstract

AIMS

We aim (i) to redesign sepsis's clinical pathway and fit the organizational requirements of a novel machine-learning algorithm incorporating a novel biomarker test and (ii) to assess adoption drivers of the new combined technology.

BACKGROUND

There is an urgent need to achieve sepsis' early detection and diagnostic excellence.

METHODS

A qualitative study based on semi-structured interviews conducted at the target site and across other Italian hospitals. A content analysis was undertaken, emergent themes were selected and categorized, and interviews were conducted until saturation was reached.

RESULTS

Sixteen nurses (10 at the target site and six across other hospitals) and nine non-nursing professionals (seven at the target site and two across other hospitals) were interviewed. An organizational redesign was identified as the primary adoption driver. Even though nurses perceived workload increase related to the machine-learning component, technology acceptability was relatively high, as the standardization of tasks was perceived as crucial to improving professional satisfaction.

CONCLUSIONS

A novel business-oriented solution based on machine learning requires interprofessional integration, new professional roles, infrastructure improvement, and data integration to be effectively implemented.

IMPLICATIONS FOR NURSING MANAGEMENT

Lessons learned from this study suggest the need to involve nurses in the early stages of the design of new machine-learning technologies and the importance of training nurses on sepsis management through the support of disruptive technological innovation.

摘要

目的

我们旨在(i)重新设计脓毒症的临床路径,并适应纳入新型生物标志物检测的新型机器学习算法的组织要求,以及(ii)评估新联合技术的采用驱动因素。

背景

迫切需要实现脓毒症的早期检测和卓越诊断。

方法

这是一项基于半结构化访谈的定性研究,在目标地点和意大利其他医院进行。进行了内容分析,选择并分类了出现的主题,并进行了访谈,直到达到饱和。

结果

共访谈了 16 名护士(10 名在目标地点,6 名在其他医院)和 9 名非护理专业人员(7 名在目标地点,2 名在其他医院)。组织重新设计被确定为主要的采用驱动因素。尽管护士认为与机器学习部分相关的工作量增加了,但对技术的接受程度相对较高,因为他们认为任务的标准化对于提高职业满意度至关重要。

结论

基于机器学习的新型面向业务的解决方案需要跨专业整合、新的专业角色、基础设施改进和数据集成,才能有效地实施。

对护理管理的意义

从这项研究中吸取的经验教训表明,有必要让护士参与新型机器学习技术的早期设计,并通过支持颠覆性技术创新,重视对护士进行脓毒症管理的培训。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1d5/10092467/2b85f842509b/JONM-30-3754-g001.jpg

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