Literature DB >> 18690366

Predictive value of ICD-9-CM codes used in vaccine safety research.

J P Mullooly1, J G Donahue, F DeStefano, J Baggs, E Eriksen.   

Abstract

OBJECTIVES: To assess how well selected ICD-9-CM diagnosis codes predict adverse events; to model bias and power loss when vaccine safety analyses rely on unverified codes.
METHODS: We extracted chart verification data for ICD-9-CM diagnosis codes from six Vaccine Safety Datalink (VSD) publications and modeled biases and power losses using positive predictive value (PPV) estimates and ranges of code sensitivity.
RESULTS: Positive predictive values were high for type 1 diabetes (80%) in children, relative to WHO criteria, and intussusception (81%) in young children, relative to a standard published case definition. PPVs were moderate (65%) for inpatient and emergency department childhood seizures and low (21%) for outpatient childhood seizures, both relative to physician investigator judgment. Codes for incident central nervous system demyelinating disease in adults had high PPV for inpatient codes (80%) and low PPV for outpatient codes (42%) relative to physicians' diagnoses. Modeled biases were modest, but large increases in frequencies of adverse events are required to achieve adequate power if unverified ICD-9-CM codes are used, especially when vaccine associations are weak.
CONCLUSIONS: ICD-9-CM codes for type 1 diabetes in children, intussusception in young children, childhood seizures in inpatient and emergency care settings, and inpatient demyelinating disease in adults were sufficiently predictive for vaccine safety analyses to rely on unverified diagnosis codes. Adverse event misclassification should be accounted for in statistical power calculations.

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Year:  2008        PMID: 18690366

Source DB:  PubMed          Journal:  Methods Inf Med        ISSN: 0026-1270            Impact factor:   2.176


  14 in total

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2.  The safety of live attenuated influenza vaccine in children and adolescents 2 through 17 years of age: A Vaccine Safety Datalink study.

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Journal:  Pharmacoepidemiol Drug Saf       Date:  2017-11-17       Impact factor: 2.890

3.  The use of natural language processing to identify Tdap-related local reactions at five health care systems in the Vaccine Safety Datalink.

Authors:  Chengyi Zheng; Wei Yu; Fagen Xie; Wansu Chen; Cheryl Mercado; Lina S Sy; Lei Qian; Sungching Glenn; Gina Lee; Hung Fu Tseng; Jonathan Duffy; Lisa A Jackson; Matthew F Daley; Brad Crane; Huong Q McLean; Steven J Jacobsen
Journal:  Int J Med Inform       Date:  2019-04-13       Impact factor: 4.046

4.  Near Real-Time Surveillance to Assess the Safety of the 9-Valent Human Papillomavirus Vaccine.

Authors:  James G Donahue; Burney A Kieke; Edwin M Lewis; Eric S Weintraub; Kayla E Hanson; David L McClure; Elizabeth R Vickers; Julianne Gee; Matthew F Daley; Frank DeStefano; Rulin C Hechter; Lisa A Jackson; Nicola P Klein; Allison L Naleway; Jennifer C Nelson; Edward A Belongia
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5.  A pragmatic framework for single-site and multisite data quality assessment in electronic health record-based clinical research.

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7.  Ontology-based Vaccine and Drug Adverse Event Representation and Theory-guided Systematic Causal Network Analysis toward Integrative Pharmacovigilance Research.

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8.  Analyzing self-controlled case series data when case confirmation rates are estimated from an internal validation sample.

Authors:  Stanley Xu; Christina L Clarke; Sophia R Newcomer; Matthew F Daley; Jason M Glanz
Journal:  Biom J       Date:  2018-05-16       Impact factor: 2.207

9.  Identification of population at risk for future Clostridium difficile infection following hospital discharge to be targeted for vaccine trials.

Authors:  James Baggs; Kimberly Yousey-Hindes; Elizabeth Dodds Ashley; James Meek; Ghinwa Dumyati; Jessica Cohen; Matthew E Wise; L Clifford McDonald; Fernanda C Lessa
Journal:  Vaccine       Date:  2015-10-09       Impact factor: 3.641

10.  Hospital discharge data for Guillain-Barré syndrome and influenza A (H1N1) vaccine adverse events.

Authors:  Timothy F Jones; Marcy McMillian; Effie Boothe; Samir Hanna; L Amanda Ingram
Journal:  Emerg Infect Dis       Date:  2010-09       Impact factor: 6.883

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