Background: An evaluation study was carried out to determine the feasibility of integrating the Adolescent Diabetes Needs Assessment Tool (ADNAT) App into UK paediatric diabetes care, to ascertain best practice standards and to determine methodological recommendations for a future cohort study.
Methods: A non-randomised, cohort, mixed methods study design was used to ensure equality of access to ADNAT for all participants at three sites in the North West of England. Following UK Medical Research Council guidance, the RE-AIM (reach, effectiveness (potential and perceived), adoption, implementation, maintenance) framework was used to guide study objectives and feasibility outcomes. Patients who completed ADNAT (completers) were compared with those who failed to complete (non-completers). Patients' glycaemic control (HbA) was accessed from their clinical data at baseline and at 6 months, alongside their ADNAT scores which were correlated with changes in HbA1c levels. The diabetes teams (respondents) completed a web-based survey and attended focus group interviews.
Results: Eighty-nine patients were recruited. Withdrawal rates were low at 4.5% ( = 4). Forty-four patients (49.4%) completed ADNAT, leaving 45 (50.6%) non-completers. There were large baseline differences in HbA1c and variable rates of change at 6 months. After adjusting for baseline HbA and site in an analysis of covariance, completers had a lower post-ADNAT mean HbA level than non-completers at 6 months (-5.42 mmol/mol, 95% CI -11.48, 0.64). Patients' glycaemic control (HbA) at 6 months correlated reasonably well with their ADNAT scores (Spearman's rho = 0.46). Survey and focus group data showed that ADNAT was judged to be an effective clinical tool by the diabetes teams. Value to patients was perceived by the teams to be linked to parental support, age and previous diabetes education. The combined data triangulated. It served to capture different dimensions which were used to define changes to achieve practice standards and methodological recommendations.
Conclusions: The combined data showed that ADNAT has the potential to be a clinically viable tool. It has demonstrated the need for a randomised design that is tailored for a 'hard to reach' adolescent population. A cluster randomised controlled trial that involves sequential but random rollout of ADNAT over multiple time periods may be the most appropriate and is currently being considered for the larger study.
Trial Registration: NIHR Children's Clinical Research Network, UKCRN ID 6633.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5501574 | PMC |
http://dx.doi.org/10.1186/s40814-017-0164-5 | DOI Listing |
Pilot Feasibility Stud
July 2017
NIHR Alder Hey Clinical Research Facility, Alder Hey Children's NHS Foundation Trust, Eaton Road, West Derby, Liverpool, L12 2AP UK.
Background: An evaluation study was carried out to determine the feasibility of integrating the Adolescent Diabetes Needs Assessment Tool (ADNAT) App into UK paediatric diabetes care, to ascertain best practice standards and to determine methodological recommendations for a future cohort study.
Methods: A non-randomised, cohort, mixed methods study design was used to ensure equality of access to ADNAT for all participants at three sites in the North West of England. Following UK Medical Research Council guidance, the RE-AIM (reach, effectiveness (potential and perceived), adoption, implementation, maintenance) framework was used to guide study objectives and feasibility outcomes.
J Adv Nurs
February 2014
Department of Community Health and Well-being, University of Chester, UK; Research and Development Department, Alder Hey Children's NHS Foundation Trust, Liverpool, UK.
Aim: To report on the development and psychometric testing of the Adolescent Diabetes Needs Assessment Tool.
Background: The UK has the fifth largest paediatric diabetes population in the world, but one of the poorest levels of diabetes control, highlighting the need for intervention development.
Design: Mixed methods following recommendations for questionnaire design and validation.
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