Identifying the Severity of Heart Valve Stenosis and Regurgitation Among a Diverse Population Within an Integrated Health Care System: Natural Language Processing Approach.

Q2 Medicine JMIR Cardio Pub Date : 2024-09-30 DOI:10.2196/60503
Fagen Xie, Ming-Sum Lee, Salam Allahwerdy, Darios Getahun, Benjamin Wessler, Wansu Chen
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Abstract

Background: Valvular heart disease (VHD) is a leading cause of cardiovascular morbidity and mortality that poses a substantial health care and economic burden on health care systems. Administrative diagnostic codes for ascertaining VHD diagnosis are incomplete.

Objective: This study aimed to develop a natural language processing (NLP) algorithm to identify patients with aortic, mitral, tricuspid, and pulmonic valve stenosis and regurgitation from transthoracic echocardiography (TTE) reports within a large integrated health care system.

Methods: We used reports from echocardiograms performed in the Kaiser Permanente Southern California (KPSC) health care system between January 1, 2011, and December 31, 2022. Related terms/phrases of aortic, mitral, tricuspid, and pulmonic stenosis and regurgitation and their severities were compiled from the literature and enriched with input from clinicians. An NLP algorithm was iteratively developed and fine-trained via multiple rounds of chart review, followed by adjudication. The developed algorithm was applied to 200 annotated echocardiography reports to assess its performance and then the study echocardiography reports.

Results: A total of 1,225,270 TTE reports were extracted from KPSC electronic health records during the study period. In these reports, valve lesions identified included 111,300 (9.08%) aortic stenosis, 20,246 (1.65%) mitral stenosis, 397 (0.03%) tricuspid stenosis, 2585 (0.21%) pulmonic stenosis, 345,115 (28.17%) aortic regurgitation, 802,103 (65.46%) mitral regurgitation, 903,965 (73.78%) tricuspid regurgitation, and 286,903 (23.42%) pulmonic regurgitation. Among the valves, 50,507 (4.12%), 22,656 (1.85%), 1685 (0.14%), and 1767 (0.14%) were identified as prosthetic aortic valves, mitral valves, tricuspid valves, and pulmonic valves, respectively. Mild and moderate were the most common severity levels of heart valve stenosis, while trace and mild were the most common severity levels of regurgitation. Males had a higher frequency of aortic stenosis and all 4 valvular regurgitations, while females had more mitral, tricuspid, and pulmonic stenosis. Non-Hispanic Whites had the highest frequency of all 4 valvular stenosis and regurgitations. The distribution of valvular stenosis and regurgitation severity was similar across race/ethnicity groups. Frequencies of aortic stenosis, mitral stenosis, and regurgitation of all 4 heart valves increased with age. In TTE reports with stenosis detected, younger patients were more likely to have mild aortic stenosis, while older patients were more likely to have severe aortic stenosis. However, mitral stenosis was opposite (milder in older patients and more severe in younger patients). In TTE reports with regurgitation detected, younger patients had a higher frequency of severe/very severe aortic regurgitation. In comparison, older patients had higher frequencies of mild aortic regurgitation and severe mitral/tricuspid regurgitation. Validation of the NLP algorithm against the 200 annotated TTE reports showed excellent precision, recall, and F1-scores.

Conclusions: The proposed computerized algorithm could effectively identify heart valve stenosis and regurgitation, as well as the severity of valvular involvement, with significant implications for pharmacoepidemiological studies and outcomes research.

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在综合医疗系统中识别不同人群心脏瓣膜狭窄和反流的严重程度:自然语言处理方法。
背景:瓣膜性心脏病(VHD)是心血管疾病发病率和死亡率的主要原因,给医疗保健系统带来了巨大的医疗保健和经济负担。用于确定瓣膜性心脏病诊断的行政诊断代码并不完整:本研究旨在开发一种自然语言处理(NLP)算法,从大型综合医疗系统的经胸超声心动图(TTE)报告中识别主动脉瓣、二尖瓣、三尖瓣和肺动脉瓣狭窄和反流患者:我们使用了 2011 年 1 月 1 日至 2022 年 12 月 31 日期间在南加州凯撒医疗保健系统(KPSC)进行的超声心动图检查报告。主动脉瓣、二尖瓣、三尖瓣和瓣膜狭窄与反流的相关术语/短语及其严重程度均来自文献,并根据临床医生的意见进行了充实。通过多轮病历审查和裁决,反复开发和精细训练了一种 NLP 算法。开发的算法应用于 200 份带注释的超声心动图报告,以评估其性能,然后再应用于研究超声心动图报告:在研究期间,从 KPSC 电子病历中共提取了 1,225,270 份 TTE 报告。在这些报告中,发现的瓣膜病变包括 111,300 例(9.08%)主动脉瓣狭窄、20,246 例(1.65%)二尖瓣狭窄、397 例(0.03%)三尖瓣狭窄、2585 例(0.主动脉瓣反流 345115 例(28.17%),二尖瓣反流 802103 例(65.46%),三尖瓣反流 903965 例(73.78%),瓣膜反流 286903 例(23.42%)。在这些瓣膜中,人工主动脉瓣、二尖瓣、三尖瓣和瓣膜分别为 50507 个(4.12%)、22656 个(1.85%)、1685 个(0.14%)和 1767 个(0.14%)。轻度和中度是最常见的心脏瓣膜狭窄严重程度,而微量和轻度是最常见的心脏瓣膜反流严重程度。男性主动脉瓣狭窄和所有 4 种瓣膜反流的发生率较高,而女性二尖瓣、三尖瓣和肺动脉瓣狭窄的发生率较高。非西班牙裔白人出现所有 4 种瓣膜狭窄和反流的频率最高。不同种族/族裔群体的瓣膜狭窄和反流严重程度分布相似。主动脉瓣狭窄、二尖瓣狭窄和所有 4 个心脏瓣膜反流的发生率随着年龄的增长而增加。在检测到主动脉瓣狭窄的 TTE 报告中,年轻患者更有可能患有轻度主动脉瓣狭窄,而年长患者则更有可能患有重度主动脉瓣狭窄。然而,二尖瓣狭窄的情况正好相反(老年患者较轻,而年轻患者较重)。在检测到反流的 TTE 报告中,年轻患者出现严重/非常严重主动脉瓣反流的频率较高。相比之下,老年患者出现轻度主动脉瓣反流和严重二尖瓣/三尖瓣反流的频率较高。根据 200 份有注释的 TTE 报告对 NLP 算法进行了验证,结果显示该算法具有极佳的精确度、召回率和 F1 分数:结论:所提出的计算机化算法能有效识别心脏瓣膜狭窄和反流以及瓣膜受累的严重程度,对药物流行病学研究和结果研究具有重要意义。
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来源期刊
JMIR Cardio
JMIR Cardio Computer Science-Computer Science Applications
CiteScore
3.50
自引率
0.00%
发文量
25
审稿时长
12 weeks
期刊最新文献
Comparison of Auscultation Quality Using Contemporary Digital Stethoscopes. The Development of Heart Failure Electronic-Message Driven Tips to Support Self-Management: Co-Design Case Study. Identifying the Severity of Heart Valve Stenosis and Regurgitation Among a Diverse Population Within an Integrated Health Care System: Natural Language Processing Approach. Smart Device Ownership and Use of Social Media, Wearable Trackers, and Health Apps Among Black Women With Hypertension in the United States: National Survey Study. A co-design case study of the development of heart failure e-TIPS to support self-management.
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