The Need to Develop Standard Measures of Patient Adherence for Big Data: Viewpoint

Author:

Kardas PrzemyslawORCID,Aguilar-Palacio IsabelORCID,Almada MartaORCID,Cahir CaitrionaORCID,Costa ElisioORCID,Giardini AnnaORCID,Malo SaraORCID,Massot Mesquida MireiaORCID,Menditto EnricaORCID,Midão LuísORCID,Parra-Calderón Carlos LuisORCID,Pepiol Salom EnriqueORCID,Vrijens BernardORCID

Abstract

Despite half a century of dedicated studies, medication adherence remains far from perfect, with many patients not taking their medications as prescribed. The magnitude of this problem is rising, jeopardizing the effectiveness of evidence-based therapies. An important reason for this is the unprecedented demographic change at the beginning of the 21st century. Aging leads to multimorbidity and complex therapeutic regimens that create a fertile ground for nonadherence. As this scenario is a global problem, it needs a worldwide answer. Could this answer be provided, given the new opportunities created by the digitization of health care? Daily, health-related information is being collected in electronic health records, pharmacy dispensing databases, health insurance systems, and national health system records. These big data repositories offer a unique chance to study adherence both retrospectively and prospectively at the population level, as well as its related factors. In order to make full use of this opportunity, there is a need to develop standardized measures of adherence, which can be applied globally to big data and will inform scientific research, clinical practice, and public health. These standardized measures may also enable a better understanding of the relationship between adherence and clinical outcomes, and allow for fair benchmarking of the effectiveness and cost-effectiveness of adherence-targeting interventions. Unfortunately, despite this obvious need, such standards are still lacking. Therefore, the aim of this paper is to call for a consensus on global standards for measuring adherence with big data. More specifically, sound standards of formatting and analyzing big data are needed in order to assess, uniformly present, and compare patterns of medication adherence across studies. Wide use of these standards may improve adherence and make health care systems more effective and sustainable.

Publisher

JMIR Publications Inc.

Subject

Health Informatics

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