EHR-based Case Identification of Pediatric Long COVID: A Report from the RECOVER EHR Cohort

dc.contributor.authorBotdorf, Morgan
dc.contributor.authorDickinson, Kimberley
dc.contributor.authorLorman, Vitaly
dc.contributor.authorRazzaghi, Hanieh
dc.contributor.authorMarchesani, Nicole
dc.contributor.authorRao, Suchitra
dc.contributor.authorRogerson, Colin
dc.contributor.authorHigginbotham, Miranda
dc.contributor.authorMejias, Asuncion
dc.contributor.authorSalyakina, Daria
dc.contributor.authorThacker, Deepika
dc.contributor.authorDandachi, Dima
dc.contributor.authorChristakis, Dimitri A.
dc.contributor.authorTaylor, Emily
dc.contributor.authorSchwenk, Hayden
dc.contributor.authorMorizono, Hiroki
dc.contributor.authorCogen, Jonathan
dc.contributor.authorPajor, Nate M.
dc.contributor.authorJhaveri, Ravi
dc.contributor.authorForrest, Christopher B.
dc.contributor.authorBailey, L. Charles
dc.contributor.authorRECOVER Consortium
dc.contributor.departmentPediatrics, School of Medicine
dc.date.accessioned2024-09-09T10:48:04Z
dc.date.available2024-09-09T10:48:04Z
dc.date.issued2024-05-23
dc.description.abstractObjective: Long COVID, marked by persistent, recurring, or new symptoms post-COVID-19 infection, impacts children's well-being yet lacks a unified clinical definition. This study evaluates the performance of an empirically derived Long COVID case identification algorithm, or computable phenotype, with manual chart review in a pediatric sample. This approach aims to facilitate large-scale research efforts to understand this condition better. Methods: The algorithm, composed of diagnostic codes empirically associated with Long COVID, was applied to a cohort of pediatric patients with SARS-CoV-2 infection in the RECOVER PCORnet EHR database. The algorithm classified 31,781 patients with conclusive, probable, or possible Long COVID and 307,686 patients without evidence of Long COVID. A chart review was performed on a subset of patients (n=651) to determine the overlap between the two methods. Instances of discordance were reviewed to understand the reasons for differences. Results: The sample comprised 651 pediatric patients (339 females, M age = 10.10 years) across 16 hospital systems. Results showed moderate overlap between phenotype and chart review Long COVID identification (accuracy = 0.62, PPV = 0.49, NPV = 0.75); however, there were also numerous cases of disagreement. No notable differences were found when the analyses were stratified by age at infection or era of infection. Further examination of the discordant cases revealed that the most common cause of disagreement was the clinician reviewers' tendency to attribute Long COVID-like symptoms to prior medical conditions. The performance of the phenotype improved when prior medical conditions were considered (accuracy = 0.71, PPV = 0.65, NPV = 0.74). Conclusions: Although there was moderate overlap between the two methods, the discrepancies between the two sources are likely attributed to the lack of consensus on a Long COVID clinical definition. It is essential to consider the strengths and limitations of each method when developing Long COVID classification algorithms.
dc.eprint.versionPreprint
dc.identifier.citationBotdorf M, Dickinson K, Lorman V, et al. EHR-based Case Identification of Pediatric Long COVID: A Report from the RECOVER EHR Cohort. Preprint. medRxiv. 2024;2024.05.23.24307492. Published 2024 May 23. doi:10.1101/2024.05.23.24307492
dc.identifier.urihttps://hdl.handle.net/1805/43196
dc.language.isoen_US
dc.publishermedRxiv
dc.relation.isversionof10.1101/2024.05.23.24307492
dc.rightsAttribution-NonCommercial-NoDerivatives 4.0 International
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/
dc.sourcePMC
dc.subjectChart review
dc.subjectChronic COVID-19 syndrome
dc.subjectElectronic health records
dc.subjectElectronic phenotyping
dc.subjectLate sequelae of COVID-19
dc.subjectLong COVID
dc.subjectLong haul COVID
dc.subjectLong-term COVID-19
dc.subjectPEDSnet
dc.subjectPost COVID syndrome
dc.subjectPost-acute COVID-19
dc.subjectPost-acute sequelae SARS-CoV-2 infection
dc.subjectRule-based phenotyping
dc.titleEHR-based Case Identification of Pediatric Long COVID: A Report from the RECOVER EHR Cohort
dc.typeArticle
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