A population data-driven approach to identifying ‘Long COVID’ cases in support of diagnosis and treatment.

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES
J. Enns, A. Katz, M. Yogendran, Marcelo L. Urquia, S. Muthukumarana, Surani Matharaarachchi, A. Singer, Nathan C. Nickel, L. Star, Teresa Cavett, Y. Keynan, L. Lix, D. Sanchez-Ramirez
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引用次数: 0

Abstract

ObjectivePost-acute COVID-19 (or ‘long COVID’) manifests as a wide range of long-lasting symptoms affecting multiple organ systems. We are developing criteria for identifying long COVID cases using administrative, clinical, survey and other data from Manitoba, Canada, with the ultimate goal of examining long COVID prevalence, risk factors, prognosis and recovery. ApproachGiven the lack of an accepted clinical definition and resulting lack of diagnostic codes, we are adopting several different creative and complementary strategies to identify long COVID cases. We are examining administrative and clinical data sources (laboratory data, physician claims, drug prescriptions, and electronic medical records) for information on positive COVID tests, common symptoms and complaints, and treatment provided. To identify people with long COVID who may not have sought healthcare, we are collecting survey data from a convenience community sample (members of a medical health fitness facility) and mining data on long COVID symptoms from Twitter. ResultsThe combination of approaches we have adopted and the expanding scientific literature on long COVID are contributing to a more comprehensive understanding of the impacts of long COVID in Manitoba. Through preliminary work on the laboratory data (positive COVID tests March 2020-June 2021), we have developed and characterized a COVID-positive cohort (n=47,515). Work is now underway to develop an algorithm for long COVID using symptoms from free text in electronic medical records, ICD-9 codes, and changes in health-seeking behaviour (compared to the pre-positive COVID test period and a matched sample). This population data-driven approach will then allow us to examine how multiple underlying health conditions, COVID illness severity, COVID vaccination status, and various socio-demographic factors are related to risk of long COVID. ConclusionThis research is generating actionable information by identifying risk factors to support clinical diagnosis of long COVID, making it easier for clinicians to recognize this new illness and develop plans to manage it, and will inform healthcare system planning by quantifying the burden of long COVID at the population level.
一种人群数据驱动的方法,用于识别“长期新冠肺炎”病例,以支持诊断和治疗。
急性后COVID-19(或“长期COVID”)表现为影响多器官系统的广泛持久症状。我们正在利用加拿大马尼托巴省的行政、临床、调查和其他数据制定识别长期COVID病例的标准,最终目标是检查长期COVID的患病率、风险因素、预后和恢复情况。由于缺乏公认的临床定义,因此缺乏诊断代码,我们正在采取几种不同的创造性和互补策略来识别长期COVID病例。我们正在审查行政和临床数据源(实验室数据、医生索赔、药物处方和电子病历),以获取有关COVID阳性检测、常见症状和投诉以及所提供治疗的信息。为了识别可能没有寻求医疗保健的长COVID患者,我们正在从便利社区样本(医疗健康健身设施的成员)收集调查数据,并从Twitter上挖掘长COVID症状的数据。我们采取的方法和不断扩大的关于长冠状病毒的科学文献相结合,有助于更全面地了解长冠状病毒在马尼托巴省的影响。通过对实验室数据的初步研究(2020年3月至2021年6月的COVID阳性检测),我们建立了一个COVID阳性队列(n=47,515)并确定了其特征。目前正在开展工作,利用电子病历中的免费文本、ICD-9代码和求医行为的变化(与COVID阳性前检测期和匹配样本相比)开发一种长COVID算法。这种人口数据驱动的方法将使我们能够研究多种潜在健康状况、COVID疾病严重程度、COVID疫苗接种状况和各种社会人口因素与长期COVID风险的关系。结论本研究通过识别风险因素生成可操作的信息,以支持长冠肺炎的临床诊断,使临床医生更容易识别这种新疾病并制定管理计划,并通过量化人口水平的长冠肺炎负担为医疗保健系统规划提供信息。
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
2.50
自引率
0.00%
发文量
386
审稿时长
20 weeks
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