机器学习模型从急诊科病例中揭示入住急性精神疾病病房的决定因素。

Oliver Higgins, Stephan K Chalup, Rhonda L Wilson
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引用次数: 0

摘要

这项研究旨在解决一个关键问题,即找出导致急诊科(ED)收治以精神疾病(尤其是自杀)为主要问题的患者的因素。本研究旨在利用机器学习(ML)模型来评估这一弱势群体入住急性精神疾病病房的可能性。本研究的数据收集使用了 2016 年 1 月 1 日至 2021 年 12 月 31 日的现有 ED 数据。数据选择基于与出现的问题相关的特定标准。分析使用 Python 和可解释机器学习(InterpretML)机器学习库进行。InterpretML 根据平均绝对分数计算总体重要性,用来衡量每个特征对入院的影响。一个人的 "年龄 "和 "分诊类别 "明显高于 "设施标识符"、"出现的问题 "和 "活跃客户"。其他表现特征对入院的影响微乎其微。将模型与服务提供紧密结合起来将有助于服务机构了解其服务对象,并深入了解财务和临床差异。自杀意念与入院呈负相关,但在入院患者中数量最多。护士在分诊时的角色是评估患者需求的关键因素。在这种情况下出现的差距是巨大的;MH 分诊需要对 MH 有复杂的了解,这对急诊室来说是一个巨大的挑战。需要进一步开展研究,探索 ML 在协助临床医生进行评估方面所能发挥的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Model Reveals Determinators for Admission to Acute Mental Health Wards From Emergency Department Presentations.

This research addresses the critical issue of identifying factors contributing to admissions to acute mental health (MH) wards for individuals presenting to the emergency department (ED) with MH concerns as their primary issue, notably suicidality. This study aims to leverage machine learning (ML) models to assess the likelihood of admission to acute MH wards for this vulnerable population. Data collection for this study used existing ED data from 1 January 2016 to 31 December 2021. Data selection was based on specific criteria related to the presenting problem. Analysis was conducted using Python and the Interpretable Machine Learning (InterpretML) machine learning library. InterpretML calculates overall importance based on the mean absolute score, which was used to measure the impact of each feature on admission. A person's 'Age' and 'Triage category' are ranked significantly higher than 'Facility identifier', 'Presenting problem' and 'Active Client'. The contribution of other presentation features on admission shows a minimal effect. Aligning the models closely with service delivery will help services understand their service users and provide insight into financial and clinical variations. Suicidal ideation negatively correlates to admission yet represents the largest number of presentations. The nurse's role at triage is a critical factor in assessing the needs of the presenting individual. The gap that emerges in this context is significant; MH triage requires a complex understanding of MH and presents a significant challenge in the ED. Further research is required to explore the role that ML can provide in assisting clinicians in assessment.

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