Feasibility of automated surveillance of implantable devices in orthopaedics via clinical data warehouse: the Studio study.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Marie Ansoborlo, Christine Salpétrier, Louis-Romé Le Nail, Julien Herbet, Marc Cuggia, Philippe Rosset, Leslie Grammatico-Guillon
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Abstract

Background: Total hip, knee and shoulder arthroplasties (THKSA) are increasing due to expanding demands in ageing population. Material surveillance is important to prevent severe complications involving implantable medical devices (IMD) by taking appropriate preventive measures. Automating the analysis of patient and IMD features could benefit physicians and public health policies, allowing early issue detection and decision support. The study aimed to demonstrate the feasibility of automated cohorting of patients with a first arthroplasty in two hospital data warehouses (HDW) in France.

Methods: The study included adult patients with an arthroplasty between 2010 and 2019 identified by 2 data sources: hospital discharge and pharmacy. Selection was based on the health insurance thesaurus of IMDs in the pharmacy database: 1,523 distinct IMD references for primary THSKA. In the hospital discharge database, 22 distinct procedures for native joint replacement allowing a matching between IMD and surgical procedure of each patient selected. A program to automate information extraction was implemented in the 1st hospital data warehouse using natural language processing (NLP) on pharmacy labels, then it was then applied to the 2nd hospital.

Results: The e-cohort was built with a first arthroplasty for THKSA performed in 7,587 patients with a mean age of 67.4 years, and a sex ratio of 0.75. The cohort involved 4,113 hip, 2,630 knee and 844 shoulder surgical patients. Obesity, cardio-vascular diseases and hypertension were the most frequent medical conditions.

Discussion: The implementation of an e-cohort for material surveillance will be easily workable over HDWs France wild. Using NLP as no international IMD mapping exists to study IMD, our approach aims to close the gap between conventional epidemiological cohorting tools and bigdata approach.

Conclusion: This pilot study demonstrated the feasibility of an e-cohort of orthopaedic devices using clinical data warehouses. The IMD and patient features could be studied with intra-hospital follow-up and will help analysing the infectious and unsealing complications.

通过临床数据仓库自动监控骨科植入设备的可行性:Studio 研究。
背景:由于老龄化人口的需求不断增加,全髋、膝、肩关节置换术(THKSA)也在不断增加。通过采取适当的预防措施来防止涉及植入式医疗设备(IMD)的严重并发症,材料监控非常重要。对患者和植入式医疗器械特征进行自动化分析可使医生和公共卫生政策受益,从而实现早期问题检测和决策支持。该研究旨在证明在法国的两个医院数据仓库(HDW)中对首次接受关节置换术的患者进行自动分组的可行性:研究对象包括2010年至2019年期间接受过关节置换术的成年患者,他们的身份由两个数据源确定:医院出院记录和药房记录。选择依据是药房数据库中的医疗保险IMD词库:1,523个不同的IMD引用用于原发性THSKA。在医院出院数据库中,有 22 种不同的原发性关节置换术,因此可以对每位患者的 IMD 和手术过程进行匹配。在第一家医院的数据仓库中,使用自然语言处理(NLP)对药房标签进行了自动信息提取,然后将其应用于第二家医院:建立的电子队列中有 7587 名首次接受 THKSA 关节置换术的患者,平均年龄为 67.4 岁,性别比为 0.75。队列中有 4113 名髋关节、2630 名膝关节和 844 名肩关节手术患者。肥胖、心血管疾病和高血压是最常见的病症:在法国野外高密度住宅区实施电子队列进行材料监测将很容易实现。我们的方法旨在缩小传统流行病学队列工具与大数据方法之间的差距:这项试点研究证明了利用临床数据仓库建立骨科设备电子队列的可行性。IMD和患者特征可通过院内随访进行研究,并有助于分析感染性和非密封性并发症。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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