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评估使用非结构化电子健康记录数据来识别枪支暴力暴露情况。

Assessing the use of unstructured electronic health record data to identify exposure to firearm violence.

作者信息

Cook Nicole, Biel Frances M, Cartwright Natalie, Hoopes Megan, Al Bataineh Ali, Rivera Pedro

机构信息

OCHIN Inc, Portland, OR 97228-5426, United States.

Department of Mathematics, Norwich University, Northfield, VT 05663, United States.

出版信息

JAMIA Open. 2024 Nov 4;7(4):ooae120. doi: 10.1093/jamiaopen/ooae120. eCollection 2024 Dec.

Abstract

OBJECTIVES

Research on firearm violence is largely limited to people who experienced acute bodily trauma and death which is readily gathered from Inpatient and Emergency Department settings and mortality data. Exposures to firearm violence, such as witnessing firearm violence or losing a loved one to firearm violence, are not routinely collected in health care. As a result, the true public health burden of firearm violence is underestimated. Clinical notes from electronic health records (EHRs) are a promising source of data that may expand our understanding of the impact of firearm violence on health. Pilot work was conducted on a sample of clinical notes to assess how firearm terms present in unstructured clinical notes as part of a larger initiative to develop a natural language processing (NLP) model to identify firearm exposure and injury in ambulatory care data.

MATERIALS AND METHODS

We used EHR data from 2012 to 2022 from a large multistate network of primary care and behavioral health clinics. A text string search of broad, gun-only, and shooting terms was applied to 9,598 patients with either/both an ICD-10 or an OCHIN-developed structured data field indicating exposure to firearm violence. A sample of clinical notes from 90 patients was reviewed to ascertain the meaning of terms.

RESULTS

Among the 90 clinical patient notes, 13 (14%) notes reflect documentation of exposure to firearm violence or injury from firearms. Results from this study identified refinements that should be considered for NLP text classification.

CONCLUSION

Unstructured clinical notes from primary and behavioral health clinics have potential to expand understanding of firearm violence.

摘要

目的

枪支暴力研究主要局限于那些经历了急性身体创伤和死亡的人群,这些信息可轻易从住院部和急诊科环境以及死亡率数据中获取。诸如目睹枪支暴力或因枪支暴力失去亲人等枪支暴力暴露情况,在医疗保健中并未常规收集。因此,枪支暴力对公共卫生造成的真正负担被低估了。电子健康记录(EHR)中的临床记录是一个很有前景的数据来源,可能会拓展我们对枪支暴力对健康影响的理解。我们对一部分临床记录样本开展了试点工作,以评估非结构化临床记录中出现的枪支相关术语,这是开发自然语言处理(NLP)模型以识别门诊护理数据中枪支暴露和伤害的更大计划的一部分。

材料与方法

我们使用了来自一个大型多州初级保健和行为健康诊所网络2012年至2022年的电子健康记录数据。对9598名患有国际疾病分类第十版(ICD - 10)或奥钦(OCHIN)开发的结构化数据字段表明暴露于枪支暴力的患者,应用了对宽泛、仅与枪支相关以及射击相关术语的文本字符串搜索。对90名患者的临床记录样本进行了审查,以确定术语的含义。

结果

在90份临床患者记录中,13份(14%)记录反映了枪支暴力暴露或枪支伤害的记录。本研究结果确定了自然语言处理文本分类应考虑的改进之处。

结论

初级保健和行为健康诊所的非结构化临床记录有潜力拓展对枪支暴力的理解。

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