BackgroundAntibiotics are the widely prescribed drugs for children and most likely to be
related with adverse reactions. Record on adverse reactions and allergies from
antibiotics considerably affect the prescription choices. We consider this a
biomedical decision-making problem and explore hidden knowledge in survey results
on data extracted from a big data pool of health records of children, from the
Health Center of Osijek, Eastern Croatia.ResultsWe applied and evaluated a k-means algorithm to the dataset to generate some
clusters which have similar features. Our results highlight that some type of
antibiotics form different clusters, which insight is most helpful for the
clinician to support better decision-making.ConclusionsMedical professionals can investigate the clusters which our study revealed, thus
gaining useful knowledge and insight into this data for their clinical
studies.
In this paper, we report on a study to discover hidden patterns in survey results on adverse reactions and allergy (ARA) on antibiotics for children. Antibiotics are the most commonly prescribed drugs in children and most likely to be associated with adverse reactions. Record on adverse reactions and allergy from antibiotics considerably affect the prescription choices. We consider this a biomedical decision problem and explore hidden knowledge in survey results on data extracted from the health records of children, from the Health Center of Osijek, Eastern Croatia. We apply the K-means algorithm to the data in order to generate clusters and evaluate the results. As a result, some antibiotics form their own clusters. Consequently, medical professionals can investigate these clusters, thus gaining useful knowledge and insight into this data for their clinical studies.
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