Predicting asthma exacerbations employing remotely monitored adherence.

This Letter investigated the efficacy of a decision-support system, designed for respiratory medicine, at predicting asthma exacerbations in a multi-site longitudinal randomised control trial. Adherence to inhaler medication was acquired over 3 months from patients with asthma employing a dose counter and a remote monitoring adherence device which recorded participant's inhaler use: n = 184 (23,656 audio files), 61% women, age (mean ± sd) 49.3 ± 16.4. Data on occurrence of exacerbations was collected at three clinical visits, 1 month apart. The relative risk of an asthma exacerbation for those with good and poor adherence was examined employing a univariate and multivariate modified Poisson regression approach; adjusting for age, gender and body mass index. For all months dose counter adherence was significantly (p < 0.01) higher than remote monitoring adherence. Overall, those with poor adherence had a 1.38 ± 0.34 and 1.42 ± 0.39 (remotely monitored) and 1.25 ± 0.32 and 1.18 ± 0.31 (dose counter) higher relative risk of an exacerbation in model 1 and model 2, respectively. However, this was not found to be statistically significantly different. Remotely monitored adherence holds important clinical information and future research should focus on refining adherence and exacerbation measures. Decision-support systems based on remote monitoring may enhance patient-physician communication, possibly reducing preventable adverse events.

[1]  R. Reilly,et al.  Acoustic Analysis of Inhaler Sounds From Community-Dwelling Asthmatic Patients for Automatic Assessment of Adherence , 2014, IEEE Journal of Translational Engineering in Health and Medicine.

[2]  R. Royall Model robust confidence intervals using maximum likelihood estimators , 1986 .

[3]  K. Harmancı,et al.  Potential predictors of relapse after treatment of asthma exacerbations in children. , 2014, Annals of allergy, asthma & immunology : official publication of the American College of Allergy, Asthma, & Immunology.

[4]  Richard B. Reilly,et al.  An Acoustic-Based Method to Detect and Quantify the Effect of Exhalation into a Dry Powder Inhaler. , 2015, Journal of aerosol medicine and pulmonary drug delivery.

[5]  G. Murata,et al.  A multivariate model for predicting respiratory status in patients with chronic obstructive pulmonary disease , 1998, Journal of General Internal Medicine.

[6]  Xiaonan Xue,et al.  Estimating the relative risk in cohort studies and clinical trials of common outcomes. , 2003, American journal of epidemiology.

[7]  Scott T Weiss,et al.  Predictors of symptoms are different from predictors of severe exacerbations from asthma in children. , 2011, Chest.

[8]  D. Fabian,et al.  The global burden of asthma: executive summary of the GINA Dissemination Committee Report , 2004, Allergy.

[9]  E. Burchard,et al.  Quantifying the proportion of severe asthma exacerbations attributable to inhaled corticosteroid nonadherence. , 2011, The Journal of allergy and clinical immunology.

[10]  Richard B. Reilly,et al.  A Method to Assess Adherence in Inhaler Use through Analysis of Acoustic Recordings of Inhaler Events , 2014, PloS one.

[11]  R. Reilly,et al.  A protocol for a randomised clinical trial of the effect of providing feedback on inhaler technique and adherence from an electronic device in patients with poorly controlled severe asthma , 2016, BMJ Open.

[12]  Sander Greenland,et al.  Model-based estimation of relative risks and other epidemiologic measures in studies of common outcomes and in case-control studies. , 2004, American journal of epidemiology.

[13]  A Tattersfield,et al.  Low dose inhaled budesonide and formoterol in mild persistent asthma: the OPTIMA randomized trial. , 2001, American journal of respiratory and critical care medicine.

[14]  J. Fahy,et al.  Acute exacerbations of asthma: epidemiology, biology and the exacerbation‐prone phenotype , 2009, Clinical and experimental allergy : journal of the British Society for Allergy and Clinical Immunology.

[15]  S. Gözüm,et al.  The effect of patient education and home monitoring on medication compliance, hypertension management, healthy lifestyle behaviours and BMI in a primary health care setting. , 2011, Journal of clinical nursing.

[16]  Richard B. Reilly,et al.  The Acoustic Features of Inhalation can be Used to Quantify Aerosol Delivery from a Diskus™ Dry Powder Inhaler , 2014, Pharmaceutical Research.

[17]  D. Harm,et al.  Improving the ability of peak expiratory flow rates to predict asthma. , 1985, The Journal of allergy and clinical immunology.

[18]  G. Zou,et al.  A modified poisson regression approach to prospective studies with binary data. , 2004, American journal of epidemiology.

[19]  M. Spigt,et al.  Predictors of exacerbations of asthma and COPD during one year in primary care , 2013, Family practice.

[20]  Miriam C J M Sturkenboom,et al.  Medication adherence and the risk of severe asthma exacerbations: a systematic review , 2014, European Respiratory Journal.

[21]  Medication Adherence in Successful Kidney Transplant Recipients , 2009 .