通过对电子健康记录应用自然语言处理,区分心脏导管消融能量模式。

IF 1.9 4区 医学 Q3 HEALTH CARE SCIENCES & SERVICES Journal of comparative effectiveness research Pub Date : 2024-03-01 Epub Date: 2024-01-23 DOI:10.57264/cer-2023-0053
Jamie Margetta, Alicia Sale
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引用次数: 0

摘要

目的:导管消融术用于治疗症状性心房颤动(房颤),采用冷冻球囊(CB)或射频(RF)消融术。在美国,CB 和 RF 的实际数据非常有限,因为医疗保健代码与能量模式无关。另一种方法是使用 Optum 的 EHR 数据库分析患者的电子健康记录 (EHR)。目标:确定使用患者的电子病历和自然语言处理 (NLP) 来区分 CB 和 RF 消融手术的可行性。数据来源:Optum® 去标识化 EHR 数据集、Optum® 心脏消融 NLP 表。方法:这是对现有去标识化 EHR 数据的回顾性分析。医疗代码用于创建消融验证表。频率分析用于评估消融手术及其相关的注释术语。创建了两个队列(1)索引程序,(2)多重程序。可能的注释术语组合包括 (1) 低温消融 (2) 射频 (3) 消融或 (4) 两者。结果:在 40,810 例有效的心脏消融术中,3777 例(9%)索引消融术有可用且匹配的 NLP 注释术语。其中,22%(n = 844)被归类为消融术,27%(n = 1016)被归类为冷冻消融术,49%(n = 1855)被归类为射频消融术,1.6%(n = 62)被归类为两者。在多重手术分析中,5691 例(14%)手术有匹配的注释术语。24%(n = 1362)被归类为消融术,27%被归类为冷冻消融术,47%被归类为射频消融术,2%被归类为两者。结论NLP 具有按类型评估心脏消融频率的潜力,但是,要使其成为可靠的真实世界数据源,必须强制医疗服务提供者输入数据,并进行标准化的电子健康报告。
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Distinguishing cardiac catheter ablation energy modalities by applying natural language processing to electronic health records.

Aim: Catheter ablation is used to treat symptomatic atrial fibrillation (AF) and is performed using either cryoballoon (CB) or radiofrequency (RF) ablation. There is limited real world data of CB and RF in the US as healthcare codes are agnostic of energy modality. An alternative method is to analyze patients' electronic health records (EHRs) using Optum's EHR database. Objective: To determine the feasibility of using patients' EHRs with natural language processing (NLP) to distinguish CB versus RF ablation procedures. Data Source: Optum® de-identified EHR dataset, Optum® Cardiac Ablation NLP Table. Methods: This was a retrospective analysis of existing de-identified EHR data. Medical codes were used to create an ablation validation table. Frequency analysis was used to assess ablation procedures and their associated note terms. Two cohorts were created (1) index procedures, (2) multiple procedures. Possible note term combinations included (1) cryoablation (2) radiofrequency (3) ablation, or (4) both. Results: Of the 40,810 validated cardiac ablations, 3777 (9%) index ablation procedures had available and matching NLP note terms. Of these, 22% (n = 844) were classified as ablation, 27% (n = 1016) as cryoablation, 49% (n = 1855) as radiofrequency ablation, and 1.6% (n = 62) as both. In the multiple procedures analysis, 5691 (14%) procedures had matching note terms. 24% (n = 1362) were classified as ablation, 27% as cryoablation, 47% as radiofrequency ablation, and 2% as both. Conclusion: NLP has potential to evaluate the frequency of cardiac ablation by type, however, for this to be a reliable real-world data source, mandatory data entry by providers and standardized electronic health reporting must occur.

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来源期刊
Journal of comparative effectiveness research
Journal of comparative effectiveness research HEALTH CARE SCIENCES & SERVICES-
CiteScore
3.50
自引率
9.50%
发文量
121
期刊介绍: Journal of Comparative Effectiveness Research provides a rapid-publication platform for debate, and for the presentation of new findings and research methodologies. Through rigorous evaluation and comprehensive coverage, the Journal of Comparative Effectiveness Research provides stakeholders (including patients, clinicians, healthcare purchasers, and health policy makers) with the key data and opinions to make informed and specific decisions on clinical practice.
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