通过处理非结构化的患者护理叙述,急诊医疗服务数据中纳洛酮的识别大大改善。

IF 2.1 3区 医学 Q2 EMERGENCY MEDICINE
Daniel R Harris, Peter Rock, Nicholas Anthony, Dana Quesinberry, Chris Delcher
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引用次数: 0

摘要

目的:结构化数据字段,包括涉及纳洛酮的药物字段,通常用于识别紧急医疗服务(EMS)数据中的阿片类药物过量;在2021年1月至2024年3月期间,大约有120万例纳洛酮用药。在美国。为了提高纳洛酮报告的准确性,我们开发了识别纳洛酮给药的方法,使用结构化字段和非结构化的EMS记录事件的患者护理叙述。方法:我们在2019年从肯塔基州全州EMS数据库中随机抽取3万条记录。我们应用正则表达式(RegEx)能够识别纳洛酮相关的文本模式在每个EMS患者的病例叙述。此外,我们应用自然语言处理(NLP)技术从这些叙述中提取重要的上下文因素,如路线和剂量。我们手动审查了结构化数据和非结构化数据不一致的病例,并为每个患者病例使用结构化或非结构化数据开发了纳洛酮给药的综合指标。结果:纳洛酮结构化记录437例(1.45%)。我们的RegEx方法鉴定了547种纳洛酮药物;经过人工审查,我们确定RegEx产生可接受的假阳性(N = 31, 5.6%),假阴性(N = 23, 4.2%)和性能(精度= 0.94,召回率= 0.93)。在结合结构化领域的指标和非结构化叙述的验证结果后,总共有552名患者服用了纳洛酮。NLP方法还确定了246条(47.4%)记录规定了给药途径,358条(69.0%)记录规定了给药剂量。结论:与结构化数据相比,使用非结构化病例叙述确定了额外115例(26.3%)接受纳洛酮治疗的患者。迫切需要纳入非结构化EMS叙述的新监测方法,以避免严重低估纳洛酮的使用和阿片类药物过量的列举。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Naloxone in Emergency Medical Services Data Substantially Improves by Processing Unstructured Patient Care Narratives.

Objectives: Structured data fields, including medication fields involving naloxone, are routinely used to identify opioid overdoses in emergency medical services (EMS) data; between January 2021 and March 2024, there were approximately 1.2 million instances of naloxone administration in the United States. To improve the accuracy of naloxone reporting, we developed methodology for identifying naloxone administration using both structured fields and unstructured patient care narratives for events documented by EMS.

Methods: We randomly sampled 30,000 records from Kentucky's state-wide EMS database during 2019. We applied regular expressions (RegEx) capable of recognizing naloxone-related text patterns in each EMS patient's case narrative. Additionally, we applied natural language processing (NLP) techniques to extract important contextual factors such as route and dosage from these narratives. We manually reviewed cases where the structured data and unstructured data disagreed and developed an aggregate indicator for naloxone administration using either structured or unstructured data for each patient case.

Results: There were 437 (1.45%) records with structured documentation of naloxone. Our RegEx method identified 547 naloxone administrations in the narratives; after manual review, we determined RegEx yielded acceptable false positives (N = 31, 5.6%), false negatives (N = 23, 4.2%) and performance (precision = 0.94, recall = 0.93). In total, 552 patients had naloxone administered after combining indicators from both structured fields and verified results from unstructured narratives. The NLP approach also identified 246 (47.4%) records that specified route of administration and 358 (69.0%) records with dosage delivered.

Conclusions: An additional 115 (26.3%) patients receiving naloxone were identified by using unstructured case narratives compared to structured data. New surveillance methods that incorporate unstructured EMS narratives are critically needed to avoid substantial underestimation of naloxone utilization and enumeration of opioid overdoses.

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来源期刊
Prehospital Emergency Care
Prehospital Emergency Care 医学-公共卫生、环境卫生与职业卫生
CiteScore
4.30
自引率
12.50%
发文量
137
审稿时长
1 months
期刊介绍: Prehospital Emergency Care publishes peer-reviewed information relevant to the practice, educational advancement, and investigation of prehospital emergency care, including the following types of articles: Special Contributions - Original Articles - Education and Practice - Preliminary Reports - Case Conferences - Position Papers - Collective Reviews - Editorials - Letters to the Editor - Media Reviews.
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