Effect of Individual Patient Characteristics and Treatment Choices on Reliever Medication Use in Moderate-Severe Asthma: A Poisson Analysis of Randomised Clinical Trials

被引:0
作者
Sven C. van Dijkman
Arzu Yorgancıoğlu
Ian Pavord
Guy Brusselle
Paulo M. Pitrez
Sean Oosterholt
Sourabh Fumali
Anurita Majumdar
Oscar Della Pasqua
机构
[1] GSK,Clinical Pharmacology Modelling and Simulation
[2] Celal Bayar University,Nuffield Department of Medicine
[3] University of Oxford,Clinical Pharmacology & Therapeutics Group
[4] Ghent University Hospital,undefined
[5] Hospital Santa Casa de Porto Alegre,undefined
[6] GSK,undefined
[7] Global Classic and Established Medicines,undefined
[8] GSK,undefined
[9] Global Classic and Established Medicines,undefined
[10] University College London,undefined
[11] GSK House,undefined
来源
Advances in Therapy | 2024年 / 41卷
关键词
Asthma symptom control; Reliever medication; Rescue medication; Short-acting beta agonists; SABA; Inhaled corticosteroids; Drug-disease modelling; Exacerbation; ICS/LABA combination therapy;
D O I
暂无
中图分类号
学科分类号
摘要
In this study, we tried to understand how patients with moderate to severe asthma use their quick-relief inhalers (like albuterol), how it relates to their symptoms and the risk of having asthma attacks. To evaluate whether differences in reliever inhaler use between patients are associated with factors like smoking or their asthma symptoms at the beginning of treatment, we gathered data from five clinical studies (n = 6212 patients). These data allowed us to create a model that predicts how often patients use their reliever inhalers (expressed as number of puffs in 24 h) during maintenance therapy with inhaled corticosteroids alone or in combination with long-acting beta agonists. The final model showed that reliever inhaler use is higher in patients who have been diagnosed with asthma for > 10 years, are smokers, have higher asthma symptom scores, and are obese or extremely obese. Patients who had asthma attacks also used their reliever inhalers more often. In addition, to understand how relief inhalers are used in real-life situations, we also created heatmaps that include a wide range of patient characteristics. By using individual patient data together with this model, we have learned that smoking, asthma control, BMI, long history of asthma and previous asthma attacks significantly influence reliever use. This information can help physicians and healthcare professionals understand know how well someone’s asthma is managed. A patient who uses their reliever inhaler often is likely not to have their asthma well controlled by their regular medications.
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页码:1201 / 1225
页数:24
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