Abstract

BackgroundPatients’ smoking status is routinely collected by General Practitioners (GP) in UK primary health care. There is an abundance of Read codes pertaining to smoking, including those relating to smoking cessation therapy, prescription, and administration codes, in addition to the more regularly employed smoking status codes. Large databases of primary care data are increasingly used for epidemiological analysis; smoking status is an important covariate in many such analyses. However, the variable definition is rarely documented in the literature.MethodsThe Secure Anonymised Information Linkage (SAIL) databank is a repository for a national collection of person-based anonymised health and socio-economic administrative data in Wales, UK. An exploration of GP smoking status data from the SAIL databank was carried out to explore the range of codes available and how they could be used in the identification of different categories of smokers, ex-smokers and never smokers. An algorithm was developed which addresses inconsistencies and changes in smoking status recording across the life course and compared with recorded smoking status as recorded in the Welsh Health Survey (WHS), 2013 and 2014 at individual level. However, the WHS could not be regarded as a “gold standard” for validation.ResultsThere were 6836 individuals in the linked dataset. Missing data were more common in GP records (6%) than in WHS (1.1%). Our algorithm assigns ex-smoker status to 34% of never-smokers, and detects 30% more smokers than are declared in the WHS data. When distinguishing between current smokers and non-smokers, the similarity between the WHS and GP data using the nearest date of comparison was κ = 0.78. When temporal conflicts had been accounted for, the similarity was κ = 0.64, showing the importance of addressing conflicts.ConclusionsWe present an algorithm for the identification of a patient’s smoking status using GP self-reported data. We have included sufficient details to allow others to replicate this work, thus increasing the standards of documentation within this research area and assessment of smoking status in routine data.

Highlights

  • Patients’ smoking status is routinely collected by General Practitioners (GP) in UK primary health care

  • We could directly compare, at patient level, smoking status derived from the GP data with that recorded in their response to the Welsh Health Survey (WHS) questionnaire

  • Prevalence of smoking status A comparison between WHS smoking prevalence of people aged 16 and over between 2007 and 2015 with prevalence calculated from our algorithm from the GP data (Fig. 3)

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Summary

Introduction

Patients’ smoking status is routinely collected by General Practitioners (GP) in UK primary health care. The recording of smoking status, which should take place during registration of all new patients is variable [9] and a systematic review of the scope and quality of primary care data indicated that diagnostic and lifestyle data are populated less than prescription data [10]. The implementation of the UK’s Quality Outcomes Framework (QOF) in 2004 offered financial incentives to GPs for improving the recording of specific outcomes, including smoking status [11,12,13] During this period, guidelines were implemented advising on how to record smoking status in relation to age, certain medical conditions, such as chronic obstructive pulmonary disease and asthma, and previous records [14], moving towards greater standardisation of records. In spite of these efforts, individual GPs and practice nurses, working within guidelines set at many levels (national, health board and practice) are recording smoking status at various encounters with patients

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