以自然语言处理为特征的针对性干预的全民医疗系统中主动脉瓣狭窄的种族和民族差异。

IF 3.9 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
European heart journal. Digital health Pub Date : 2025-03-18 eCollection Date: 2025-05-01 DOI:10.1093/ehjdh/ztaf018
Dhruva Biswas, Jack Wu, Sam Brown, Apurva Bharucha, Natalie Fairhurst, George Kaye, Kate Jones, Freya Parker Copeland, Bethan O'Donnell, Daniel Kyle, Tom Searle, Nilesh Pareek, Rafal Dworakowski, Alexandros Papachristidis, Narbeh Melikian, Olaf Wendler, Ranjit Deshpande, Max Baghai, James Galloway, James T Teo, Richard Dobson, Jonathan Byrne, Philip MacCarthy, Ajay M Shah, Mehdi Eskandari, Kevin O'Gallagher
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引用次数: 0

摘要

目的:主动脉瓣狭窄(Aortic stenosis, AS)是一种发病率和死亡率高的疾病,在没有经导管主动脉瓣植入术(TAVI)或手术主动脉瓣置换术(SAVR)的情况下,有严重症状。在获得这些治疗方面的种族和族裔差异已有记录,特别是在北美,医疗保险等社会经济因素使分析混淆。本研究使用人工智能(AI)框架评估了不同种族和民族的AS管理差异,考虑了社会经济剥夺。方法和结果:我们进行了一项回顾性队列研究,使用自然语言处理管道来分析来自伦敦一家医院的bb10100万患者的结构化和非结构化数据。关键变量包括年龄、性别、自我报告的种族和民族、AS严重程度和社会经济地位。主要结局是瓣膜干预率和全因死亡率。在6967例AS患者中,黑人患者比白人患者更年轻、症状更明显、合并症更多。在超声心动图上有AS客观证据的黑人患者比白人患者接受临床诊断的可能性更小。在严重AS中,黑人患者比白人患者进行TAVI和SAVR手术的比例更低,SAVR的时间更长。在多变量分析中,在控制社会经济地位的情况下,黑人患者的死亡率更高(风险比= 1.42,95%可信区间= 1.05-1.92,P = 0.02)。结论:人工智能框架表征了AS管理中的种族和民族差异,这种差异持续存在于全民医疗保健系统中,突出了未来医疗保健干预的目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Racial and ethnic disparities in aortic stenosis within a universal healthcare system characterized by natural language processing for targeted intervention.

Aims: Aortic stenosis (AS) is a condition marked by high morbidity and mortality in severe, symptomatic cases without intervention via transcatheter aortic valve implantation (TAVI) or surgical aortic valve replacement (SAVR). Racial and ethnic disparities in access to these treatments have been documented, particularly in North America, where socioeconomic factors such as health insurance confound analyses. This study evaluates disparities in AS management across racial and ethnic groups, accounting for socioeconomic deprivation, using an artificial intelligence (AI) framework.

Methods and results: We conducted a retrospective cohort study using a natural language processing pipeline to analyse both structured and unstructured data from > 1 million patients at a London hospital. Key variables included age, sex, self-reported race and ethnicity, AS severity, and socioeconomic status. The primary outcomes were rates of valvular intervention and all-cause mortality. Among 6967 patients with AS, Black patients were younger, more symptomatic, and more comorbid than White patients. Black patients with objective evidence of AS on echocardiography were less likely to receive a clinical diagnosis than White patients. In severe AS, TAVI and SAVR procedures were performed at lower rates among Black patients than among White patients, with a longer time to SAVR. In multivariate analysis of severe AS, controlling for socioeconomic status, Black patients experienced higher mortality (hazard ratio = 1.42, 95% confidence interval = 1.05-1.92, P = 0.02).

Conclusion: An AI framework characterizes racial and ethnic disparities in AS management, which persist in a universal healthcare system, highlighting targets for future healthcare interventions.

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