Improving predictive asthma algorithms with modelled environment data for Scotland : an observational cohort study protocol
Soyiri, Ireneous N and Sheikh, Aziz and Reis, Stefan and Kavanagh, Kimberly and Vieno, Massimo and Clemens, Tom and Carnell, Edward J and Pan, Jiafeng and King, Abby and Beck, Rachel C and Ward, Hester J T and Dibben, Chris and Robertson, Chris and Simpson, Colin R (2018) Improving predictive asthma algorithms with modelled environment data for Scotland : an observational cohort study protocol. BMJ Open, 8 (5). e023289. ISSN 2044-6055 (https://doi.org/10.1136/bmjopen-2018-023289)
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Abstract
Introduction Asthma has a considerable, but potentially, avoidable burden on many populations globally. Scotland has some of the poorest health outcomes from asthma. Although ambient pollution, weather changes and sociodemographic factors have been associated with asthma attacks, it remains unclear whether modelled environment data and geospatial information can improve population-based asthma predictive algorithms. We aim to create the afferent loop of a national learning health system for asthma in Scotland. We will investigate the associations between ambient pollution, meteorological, geospatial and sociodemographic factors and asthma attacks.Methods and Analysis We will develop and implement a secured data governance and linkage framework to incorporate primary care health data, modelled environment data, geospatial population and sociodemographic data. Data from 75 recruited primary care practices (n=500 000 patients) in Scotland will be used. Modelled environment data on key air pollutants at a horizontal resolution of 5 km×5 km at hourly time steps will be generated using the EMEP4UK atmospheric chemistry transport modelling system for the datazones of the primary care practices’ populations. Scottish population census and education databases will be incorporated into the linkage framework for analysis. We will then undertake a longitudinal retrospective observational analysis. Asthma outcomes include asthma hospitalisations and oral steroid prescriptions. Using a nested case–control study design, associations between all covariates will be measured using conditional logistic regression to account for the matched design and to identify suitable predictors and potential candidate algorithms for an asthma learning health system in Scotland.Findings from this study will contribute to the development of predictive algorithms for asthma outcomes and be used to form the basis for our learning health system prototype.Ethics and dissemination The study received National Health Service Research Ethics Committee approval (16/SS/0130) and also obtained permissions via the Public Benefit and Privacy Panel for Health and Social Care in Scotland to access, collate and use the following data sets: population and housing census for Scotland; Scottish education data via the Scottish Exchange of Data and primary care data from general practice Data Custodians. Analytic code will be made available in the open source GitHub website. The results of this study will be published in international peer reviewed journals.
ORCID iDs
Soyiri, Ireneous N, Sheikh, Aziz, Reis, Stefan, Kavanagh, Kimberly ORCID: https://orcid.org/0000-0002-2679-5409, Vieno, Massimo, Clemens, Tom, Carnell, Edward J, Pan, Jiafeng ORCID: https://orcid.org/0000-0001-5993-3209, King, Abby, Beck, Rachel C, Ward, Hester J T, Dibben, Chris, Robertson, Chris and Simpson, Colin R;-
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Item type: Article ID code: 65032 Dates: DateEvent1 May 2018Published20 April 2018AcceptedSubjects: Medicine > Internal medicine
Science > Mathematics > Probabilities. Mathematical statisticsDepartment: Strategic Research Themes > Health and Wellbeing
Faculty of Science > Mathematics and StatisticsDepositing user: Pure Administrator Date deposited: 06 Aug 2018 10:53 Last modified: 11 Nov 2024 12:04 URI: https://strathprints.strath.ac.uk/id/eprint/65032