학술논문

Systematic review of atopic dermatitis disease definition in studies using routinely collected health data
Document Type
article
Source
British Journal of Dermatology. 178(6)
Subject
Biomedical and Clinical Sciences
Clinical Sciences
Clinical Research
Brain Disorders
Good Health and Well Being
Adult
Algorithms
Child
Clinical Coding
Data Collection
Dermatitis
Atopic
Electronic Health Records
Female
Humans
Male
Prevalence
Terminology as Topic
Oncology and Carcinogenesis
Dermatology & Venereal Diseases
Clinical sciences
Language
Abstract
BackgroundRoutinely collected electronic health data obtained for administrative and clinical purposes are increasingly used to study atopic dermatitis (AD). Methods for identifying AD patients in routinely collected electronic health data differ, and it is unknown how this might affect study results.ObjectivesTo evaluate how patients with AD have been identified in studies using routinely collected electronic health data, to determine whether these methods were validated and to estimate how the method for identifying patients with AD affected variability in prevalence estimates.MethodsWe systematically searched PubMed, Embase and Web of Science for studies using routinely collected electronic health data that reported on AD as a primary outcome. Studies of localized AD and other types of dermatitis were excluded. The protocol for this review was registered in PROSPERO (CRD42016037968).ResultsIn total, 59 studies met eligibility criteria. Medical diagnosis codes for inclusion and exclusion, number of occasions of a code, type of provider associated with a code and prescription data were used to identify patients with AD. Only two studies described validation of their methods and no study reported on disease severity. Prevalence estimates ranged from 0·18% to 38·33% (median 4·91%) and up to threefold variation in prevalence was introduced by differences in the method for identifying patients with AD.ConclusionsThis systematic review highlights the need for clear reporting of methods for identifying patients with AD in routinely collected electronic health data to allow for meaningful interpretation and comparison of results.