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TREATMENT ADHERENCE AMONG CHILDREN AND ADOLESCENTS IN A CYSTIC FIBROSIS REFERENCE CENTER

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NIAID Data Ecosystem2026-04-25 收录
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https://figshare.com/articles/dataset/TREATMENT_ADHERENCE_AMONG_CHILDREN_AND_ADOLESCENTS_IN_A_CYSTIC_FIBROSIS_REFERENCE_CENTER/14282494
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ABSTRACT Objective: To evaluate the level of self-referenced treatment adherence (TA) and its association with clinical and sociodemographic variables in patients with cystic fibrosis assisted at a reference center, as well as compare the level of self-referenced TA with that presumed by the multidisciplinary team. Methods: This is a cross-sectional study that included children and adolescents aged between 0-20 years with cystic fibrosis. Adolescents older than 14 years or their guardians, when younger than 14 years old, were interviewed using a standardized questionnaire. Professionals from the multidisciplinary clinic filled out another form with their impressions of the patients’ TA. Clinical and laboratory data were obtained in the medical records. The TA was considered satisfactory if the total adherence index (TAI) was equal or higher than 80%. Results: 53 patients were included with a median age of 112 months. The mean TAI was 83.2%. The mean TAIs for dornase alfa, pancreatic enzymes, continued use of inhaled tobramycin, vitamins supplements, nutritional supplements and dietary orientation was respectively: 86.1; 96.6; 78.6; 88.1; 51.8 and 78%. Children younger than 14 years presented better TA (p=0.021). The correlation between the self-referenced TA and the one presumed by the multidisciplinary team ranged from 0,117 to 0.402, being higher for Psychology and Nutrition professionals. Conclusions: The TAI was high particularly among children younger than 14 years. There was a positive correlation between the self-referenced TA and the one presumed by the Psychology (p=0.032) and the nutrition (p=0.012) professionals.
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2020-03-01
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