Exploring Suitability of Low-Severity Rating Hospital Incident Reports for Machine Learning.

IF 1.3 4区 医学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Rebecca Miriam Jedwab, Leonard Hoon, Caroline Luu, Bernice Redley
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引用次数: 0

Abstract

Electronic incident reporting is a key quality and a safety process for healthcare organizations that assists in evaluating performance and informing quality improvement initiatives. Although it is mandatory for high-severity incident reports to be investigated, the majority, classified as low severity, are seldom examined due to the large volume of reports, constraints of human cognitive capacity to process such large amounts of data, and the limited resources available in healthcare organizations. The purpose of this study was to investigate low-severity incident reports for suitability of future machine learning to identify actionable interventions for harm prevention. This qualitative descriptive study used a yearlong dataset of low incident severity rating reports to model the incident reporting documentation workflow and explored findings with five nursing and healthcare quality and safety experts. Incident severity reports were reported to have multiple conflicting issues including information duplication, subjective data, too many selection options, and absence of contextual information resulting in a lack of usefulness of information for machine learning. Next steps include analysis of a dataset for machine learning suitability. Recommendations include end-user involvement in system redesign to ensure hospital incident reports are comprised of meaningful data.

探索低严重等级医院事故报告在机器学习中的适用性。
电子事件报告是医疗保健组织的一个关键质量和安全流程,有助于评估绩效并通知质量改进计划。尽管对高严重性事件报告进行调查是强制性的,但由于报告数量庞大,人类处理如此大量数据的认知能力受到限制,以及医疗保健组织中可用资源有限,因此很少对大多数被归类为低严重性的事件进行检查。本研究的目的是调查低严重性事件报告,以确定未来机器学习的适用性,以确定预防伤害的可操作干预措施。本定性描述性研究使用为期一年的低事件严重等级报告数据集,对事件报告文档工作流程进行建模,并与五位护理和医疗保健质量和安全专家探讨了研究结果。据报道,事件严重性报告存在多个相互冲突的问题,包括信息重复、主观数据、太多选择选项以及缺乏上下文信息,导致机器学习信息缺乏有用性。接下来的步骤包括对机器学习适用性的数据集进行分析。建议包括终端用户参与系统重新设计,以确保医院事件报告包含有意义的数据。
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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来源期刊
Cin-Computers Informatics Nursing
Cin-Computers Informatics Nursing 工程技术-护理
CiteScore
2.00
自引率
15.40%
发文量
248
审稿时长
6-12 weeks
期刊介绍: For over 30 years, CIN: Computers, Informatics, Nursing has been at the interface of the science of information and the art of nursing, publishing articles on the latest developments in nursing informatics, research, education and administrative of health information technology. CIN connects you with colleagues as they share knowledge on implementation of electronic health records systems, design decision-support systems, incorporate evidence-based healthcare in practice, explore point-of-care computing in practice and education, and conceptually integrate nursing languages and standard data sets. Continuing education contact hours are available in every issue.
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