2020
DOI: 10.1186/s12875-020-01247-1
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Big data analysis techniques to address polypharmacy in patients – a scoping review

Abstract: Background: Polypharmacy is a key challenge in healthcare especially in older and multimorbid patients. The use of multiple medications increases the potential for drug interactions and for prescription of potentially inappropriate medications. eHealth solutions are increasingly recommended in healthcare, with big data analysis techniques as a major component. In the following we use the term analysis of big data as referring to the computational analysis of large data sets to find patterns, trends, and associ… Show more

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Cited by 32 publications
(19 citation statements)
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“…For example, a recent study has identified a core set of 12 indicators of clinical importance considered relevant to polypharmacy appropriateness which could be used to target and monitor future polypharmacy i n t e r v e n t i o n s [1 01 ]. I t ha s be en su gge ste d th at pharmacogenomics might help in individualised deprescribing in older adults [102], whilst machine learning and big data analysis techniques have been used to predict, identify, and manage polypharmacy [103,104]. It will be interesting to see how these areas may help to progress the field over the coming decades.…”
Section: Interventions To Support Medication Use In Older Adultsmentioning
confidence: 99%
“…For example, a recent study has identified a core set of 12 indicators of clinical importance considered relevant to polypharmacy appropriateness which could be used to target and monitor future polypharmacy i n t e r v e n t i o n s [1 01 ]. I t ha s be en su gge ste d th at pharmacogenomics might help in individualised deprescribing in older adults [102], whilst machine learning and big data analysis techniques have been used to predict, identify, and manage polypharmacy [103,104]. It will be interesting to see how these areas may help to progress the field over the coming decades.…”
Section: Interventions To Support Medication Use In Older Adultsmentioning
confidence: 99%
“…188 It is sometimes problematic to assess the correct selection of medicine, its' beneficial effect, and ADRs in the clinical need. 12,189 The treatment of patients with co-morbidities may result in problematic polypharmacy and an increased risk of DDIs. 67 The use of safe medication in older adults during the current COVID-19 pandemic is highly essential to submit your manuscript | www.dovepress.com…”
Section: Deprescribing As One Strategy To Reduce Inappropriate Polyphmentioning
confidence: 99%
“…188 It is sometimes problematic to assess the correct selection of medicine, its’ beneficial effect, and ADRs in the clinical need. 12 , 189 …”
Section: Strategies To Reduce and Prevent Polypharmacy In Older Patiementioning
confidence: 99%
“…The literature [10] believes that mentally healthy people often have 7 characteristics, which are generally reasonable, have a sense of self-growth, have the ability to love, have good intimacy, adapt to reality, work well, and have the ability to have a better life. Literature [11] puts forward 10 criteria for mental health: adequate self-safety, understand-ing of one's own abilities, goals are in line with reality, not divorced from society, healthy personality, able to learn from experience, good interpersonal relationships, control one's emotions, give full play to one's own personality, and meet personal needs. Literature [12] believes that a mentally healthy person, that is, a mature person, should possess 15 abilities and characteristics including self-sense, independence, dependence, adaptation, reality testing, the ability to love and be loved, and the ability to control emotions.…”
Section: Related Workmentioning
confidence: 99%