论文标题

使用机器学习和临床自然语言处理改善急诊科的敏锐分配

Improving Emergency Department ESI Acuity Assignment Using Machine Learning and Clinical Natural Language Processing

论文作者

Ivanov, Oleksandr, Wolf, Lisa, Brecher, Deena, Masek, Kevin, Lewis, Erica, Liu, Stephen, Dunne, Robert B, Klauer, Kevin, Montgomery, Kyla, Andrieiev, Yurii, McLaughlin, Moss, Reilly, Christian

论文摘要

有效分类对于通过准确确定患者敏锐度,资源需求并确立有效的基于敏锐的患者优先级来减轻体积增加至关重要。这项回顾性研究的目的是确定是否可以通过临床自然语言处理(C-NLP)和最新的ML算法(KATE)提取历史EHR数据,以产生高度准确的ESI预测模型。使用来自两家参与医院的166,175例患者遇到的分类过程的ML模型(KATE)。然后对模型进行测试,该模型是根据研究地点从随机的分类遇到样本中得出的黄金集,并使用紧急严重性指数(ESI)标准作为指导记录了正确的敏锐分配。在两个研究地点,凯特(Kate)与护士(59.8%)和平均个人研究临床医生(75.3%)相比,凯特(Kate)预测准确的ESI敏锐分配时间为75.9%。凯特的准确性比普通护士精度高26.9%(p值<0.0001)。与具有41.4%精度的分诊护士相比,凯特(Kate)在ESI 2和ESI 3敏锐度分配之间的边界上,凯特(Kate)高93.2%,精度为80%(p值<0.0001)。凯特(Kate)在研究样本中提供的分类敏锐度分配比分类护士要精确得多。凯特(Kate)独立于上下文因素运作,不受可能导致分类造成的外部压力影响,并可能减轻可能对分类分配准确性产生负面影响的种族和社会偏见。未来的研究应重点关注凯特(Kate)实时向分诊护士提供反馈的影响,凯特(Kates)对死亡率和发病率,ED吞吐量,资源优化和护理结果的影响。

Effective triage is critical to mitigating the effect of increased volume by accurately determining patient acuity, need for resources, and establishing effective acuity-based patient prioritization. The purpose of this retrospective study was to determine whether historical EHR data can be extracted and synthesized with clinical natural language processing (C-NLP) and the latest ML algorithms (KATE) to produce highly accurate ESI predictive models. An ML model (KATE) for the triage process was developed using 166,175 patient encounters from two participating hospitals. The model was then tested against a gold set that was derived from a random sample of triage encounters at the study sites and correct acuity assignments were recorded by study clinicians using the Emergency Severity Index (ESI) standard as a guide. At the two study sites, KATE predicted accurate ESI acuity assignments 75.9% of the time, compared to nurses (59.8%) and average individual study clinicians (75.3%). KATE accuracy was 26.9% higher than the average nurse accuracy (p-value < 0.0001). On the boundary between ESI 2 and ESI 3 acuity assignments, which relates to the risk of decompensation, KATE was 93.2% higher with 80% accuracy, compared to triage nurses with 41.4% accuracy (p-value < 0.0001). KATE provides a triage acuity assignment substantially more accurate than the triage nurses in this study sample. KATE operates independently of contextual factors, unaffected by the external pressures that can cause under triage and may mitigate the racial and social biases that can negatively affect the accuracy of triage assignment. Future research should focus on the impact of KATE providing feedback to triage nurses in real time, KATEs impact on mortality and morbidity, ED throughput, resource optimization, and nursing outcomes.

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