Cargando…

Unraveling COVID-19: a large-scale characterization of 4.5 million COVID-19 cases using CHARYBDIS

BACKGROUND: Routinely collected real world data (RWD) have great utility in aiding the novel coronavirus disease (COVID-19) pandemic response [1,2]. Here we present the international Observational Health Data Sciences and Informatics (OHDSI) [3] Characterizing Health Associated Risks, and Your Basel...

Descripción completa

Detalles Bibliográficos
Autores principales: Prieto-Alhambra, Daniel, Kostka, Kristin, Duarte-Salles, Talita, Prats-Uribe, Albert, Sena, Anthony, Pistillo, Andrea, Khalid, Sara, Lai, Lana, Golozar, Asieh, Alshammari, Thamir M, Dawoud, Dalia, Nyberg, Fredrik, Wilcox, Adam, Andryc, Alan, Williams, Andrew, Ostropolets, Anna, Areia, Carlos, Jung, Chi Young, Harle, Christopher, Reich, Christian, Blacketer, Clair, Morales, Daniel, Dorr, David A., Burn, Edward, Roel, Elena, Tan, Eng Hooi, Minty, Evan, DeFalco, Frank, de Maeztu, Gabriel, Lipori, Gigi, Alghoul, Heba, Zhu, Hong, Thomas, Jason, Bian, Jiang, Park, Jimyung, Roldán, Jordi Martínez, Posada, Jose, Banda, Juan M, Horcajada, Juan P, Kohler, Julianna, Shah, Karishma, Natarajan, Karthik, Lynch, Kristine, Liu, Li, Schilling, Lisa, Recalde, Martina, Spotnitz, Matthew, Gong, Mengchun, Matheny, Michael, Valveny, Neus, Weiskopf, Nicole, Shah, Nigam, Alser, Osaid, Casajust, Paula, Park, Rae Woong, Schuff, Robert, Seager, Sarah, DuVall, Scott, You, Seng Chan, Song, Seokyoung, Fernández-Bertolín, Sergio, Fortin, Stephen, Magoc, Tanja, Falconer, Thomas, Subbian, Vignesh, Huser, Vojtech, Ahmed, Waheed-Ul-Rahman, Carter, William, Guan, Yin, Galvan, Yankuic, He, Xing, Rijnbeek, Peter, Hripcsak, George, Ryan, Patrick, Suchard, Marc
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Journal Experts 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7941629/
https://www.ncbi.nlm.nih.gov/pubmed/33688639
http://dx.doi.org/10.21203/rs.3.rs-279400/v1
Descripción
Sumario:BACKGROUND: Routinely collected real world data (RWD) have great utility in aiding the novel coronavirus disease (COVID-19) pandemic response [1,2]. Here we present the international Observational Health Data Sciences and Informatics (OHDSI) [3] Characterizing Health Associated Risks, and Your Baseline Disease In SARS-COV-2 (CHARYBDIS) framework for standardisation and analysis of COVID-19 RWD. METHODS: We conducted a descriptive cohort study using a federated network of data partners in the United States, Europe (the Netherlands, Spain, the UK, Germany, France and Italy) and Asia (South Korea and China). The study protocol and analytical package were released on 11(th) June 2020 and are iteratively updated via GitHub [4]. FINDINGS: We identified three non-mutually exclusive cohorts of 4,537,153 individuals with a clinical COVID-19 diagnosis or positive test, 886,193 hospitalized with COVID-19, and 113,627 hospitalized with COVID-19 requiring intensive services. All comorbidities, symptoms, medications, and outcomes are described by cohort in aggregate counts, and are available in an interactive website: https:/data.ohdsi.org/Covid19CharacterizationCharybdis/. INTERPRETATION: CHARYBDIS findings provide benchmarks that contribute to our understanding of COVID-19 progression, management and evolution over time. This can enable timely assessment of real-world outcomes of preventative and therapeutic options as they are introduced in clinical practice.