Understanding pediatric long COVID using a tree-based scan statistic approach: an EHR-based cohort study from the RECOVER Program

Author:

Lorman Vitaly1ORCID,Rao Suchitra2,Jhaveri Ravi3ORCID,Case Abigail4,Mejias Asuncion5ORCID,Pajor Nathan M6,Patel Payal7,Thacker Deepika8,Bose-Brill Seuli9,Block Jason10,Hanley Patrick C11,Prahalad Priya12ORCID,Chen Yong13,Forrest Christopher B1,Bailey L Charles1,Lee Grace M14,Razzaghi Hanieh1

Affiliation:

1. Applied Clinical Research Center, Children’s Hospital of Philadelphia , Philadelphia, Pennsylvania, USA

2. Department of Pediatrics, University of Colorado School of Medicine and Children’s Hospital of Colorado , Aurora, Colorado, USA

3. Division of Infectious Diseases, Ann & Robert H. Lurie Children’s Hospital of Chicago , Chicago, Illinois, USA

4. Division of Physical Medicine & Rehabilitation, Children’s Hospital of Philadelphia , Philadelphia, Pennsylvania, USA

5. Division of Infectious Diseases, Department of Pediatrics, Nationwide Children’s Hospital and The Ohio State University , Columbus, Ohio, USA

6. Division of Pulmonary Medicine, Cincinnati Children’s Hospital Medical Center, University of Cincinnati College of Medicine , Cincinnati, Ohio, USA

7. Department of Neurology, University of Washington , Seattle, Washington, USA

8. Nemours Cardiac Center, Nemours Children’s Health , Wilmington, Delaware, USA

9. Internal Medicine and Pediatrics Section, Division of General Internal Medicine, Department of Internal Medicine, Ohio State University College of Medicine and Ohio State University Wexner Medical Center , Columbus, Ohio, USA

10. Division of Chronic Disease Research Across the Lifecourse, Department of Population Medicine, Harvard Pilgrim Health Care Institute, Harvard Medical School , Boston, Massachusetts, USA

11. Division of Endocrinology, Nemours Children’s Hospital , Wilmington, Delaware, USA

12. Division of Endocrinology, Department of Pediatrics, Stanford University , Stanford, California, USA

13. Department of Biostatistics, Epidemiology and Informatics, University of Pennsylvania , Philadelphia, Pennsylvania, USA

14. Division of Infectious Diseases, Department of Pediatrics, Stanford University School of Medicine , Stanford, California, USA

Abstract

AbstractObjectivesPost-acute sequalae of SARS-CoV-2 infection (PASC) is not well defined in pediatrics given its heterogeneity of presentation and severity in this population. The aim of this study is to use novel methods that rely on data mining approaches rather than clinical experience to detect conditions and symptoms associated with pediatric PASC.Materials and MethodsWe used a propensity-matched cohort design comparing children identified using the new PASC ICD10CM diagnosis code (U09.9) (N = 1309) to children with (N = 6545) and without (N = 6545) SARS-CoV-2 infection. We used a tree-based scan statistic to identify potential condition clusters co-occurring more frequently in cases than controls.ResultsWe found significant enrichment among children with PASC in cardiac, respiratory, neurologic, psychological, endocrine, gastrointestinal, and musculoskeletal systems, the most significant related to circulatory and respiratory such as dyspnea, difficulty breathing, and fatigue and malaise.DiscussionOur study addresses methodological limitations of prior studies that rely on prespecified clusters of potential PASC-associated diagnoses driven by clinician experience. Future studies are needed to identify patterns of diagnoses and their associations to derive clinical phenotypes.ConclusionWe identified multiple conditions and body systems associated with pediatric PASC. Because we rely on a data-driven approach, several new or under-reported conditions and symptoms were detected that warrant further investigation.

Funder

National Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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