COVID-19 real world data infrastructure: A big data resource for study of the impact of COVID-19 in patient populations with immunocompromising conditions

James M Crawford, Lynne Penberthy, Ligia A Pinto, Keri N Althoff, Magdalene M Assimon, Oren Cohen, Laura Gillim, Tracy L Hammonds, Shilpa Kapur, Harvey W Kaufman, David Kwasny, Jean W Liew, William A Meyer, Shannon L Reynolds, Cheryl B Schleicher, Suki Subbiah, Catherine Theruviparampil, Zachary S Wallace, Jeremy L Warner, Nicole Yoon, Yonah C Ziemba
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Abstract

Background: We created a United States-based real-world data resource to better understand the continued impact of the COVID-19 pandemic on immunocompromised patients, who are typically under-represented in prospective studies and clinical trials. Methods: The COVID-19 Real World Data infrastructure (CRWDi) was created by linking and harmonizing deidentified HealthVerity medical and pharmacy claims data from December 1, 2018 to December 31, 2023, with SARS-CoV-2 virologic and serologic laboratory data from major commercial laboratories and Northwell Health; COVID-19 vaccination data; and for patients with cancer, 2010 to 2021 National Cancer Institute Surveillance, Epidemiology, and End Results registry data. Results: The CRWDi dataset contains data on 5.2 million people. Four populations were included in the dataset: (1) patients with cancer (n=1,294,022); (2) patients with rheumatic conditions receiving pharmacotherapy (n=1,636,940); (3) non-cancer solid organ (n=249,797) and hematopoietic stem cell (n=30,172) transplant recipients; and (4) people from the general population including adults (>18 years of age; n=1,790,162) and pediatric patients (<18 years of age; n=198,907). Conclusions: We have created a complex real-world data system to address unanswered questions that have arisen during the COVID-19 pandemic. Further, by making the data broadly and freely available to academic researchers from the United States, the CRWDi real-world data system represents an important complement to existing consortia studies and clinical trials that have emerged during the healthcare crisis, and is readily reproducible for future purposing.
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COVID-19 真实世界数据基础设施:用于研究 COVID-19 对免疫力低下患者群体影响的大数据资源
背景:我们创建了一个基于美国的真实世界数据资源,以更好地了解 COVID-19 大流行对免疫功能低下患者的持续影响,这些患者在前瞻性研究和临床试验中通常代表性不足。方法:COVID-19真实世界数据基础设施(CRWDi)是通过将2018年12月1日至2023年12月31日的HealthVerity医疗和药房索赔数据与来自主要商业实验室和Northwell Health的SARS-CoV-2病毒学和血清学实验室数据、COVID-19疫苗接种数据以及2010年至2021年美国国家癌症研究所监测、流行病学和最终结果登记数据进行连接和统一而创建的。结果:CRWDi 数据集包含 520 万人的数据。数据集中包括四个人群:(1)癌症患者(n=1,294,022);(2)接受药物治疗的风湿病患者(n=1,636,940);(3)非癌症实体器官(n=249,797)和造血干细胞(n=30,172)移植受者;以及(4)普通人群,包括成人(>18 岁;n=1,790,162)和儿童患者(<18 岁;n=198,907)。结论:我们创建了一个复杂的真实世界数据系统,以解决 COVID-19 大流行期间出现的未决问题。此外,通过向美国的学术研究人员广泛免费提供数据,CRWDi 真实世界数据系统是对医疗保健危机期间出现的现有联盟研究和临床试验的重要补充,并可随时为未来的目的进行复制。
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