Literature DB >> 30362915

Using Previous Medication Adherence to Predict Future Adherence.

Hiraku Kumamaru1, Moa P Lee2, Niteesh K Choudhry2, Yaa-Hui Dong3, Alexis A Krumme2, Nazleen Khan2, Gregory Brill2, Shun Kohsaka4, Hiroaki Miyata4, Sebastian Schneeweiss2, Joshua J Gagne2.   

Abstract

BACKGROUND: Medication nonadherence is a major public health problem. Identification of patients who are likely to be and not be adherent can guide targeted interventions and improve the design of comparative-effectiveness studies.
OBJECTIVE: To evaluate multiple measures of patient previous medication adherence in light of predicting future statin adherence in a large U.S. administrative claims database.
METHODS: We identified a cohort of patients newly initiating statins and measured their previous adherence to other chronic preventive medications during a 365-day baseline period, using metrics such as proportion of days covered (PDC), lack of second fills, and number of dispensations. We measured adherence to statins during the year after initiation, defining high adherence as PDC ≥ 80%. We built logistic regression models from different combinations of baseline variables and previous adherence measures to predict high adherence in a random 50% sample and tested their discrimination using concordance statistics (c-statistics) in the other 50%. We also assessed the association between previous adherence and subsequent statin high adherence by fitting a modified Poisson model from all relevant covariates plus previous mean PDC categorized as < 25%, 25%-79%, and ≥ 80%.
RESULTS: Among 89,490 statin initiators identified, a prediction model including only demographic variables had a c-statistic of 0.578 (95% CI = 0.573-0.584). A model combining information on patient comorbidities, health care services utilization, and medication use resulted in a c-statistic of 0.665 (95% CI = 0.659-0.670). Models with each of the previous medication adherence measures as the only explanatory variable yielded c-statistics ranging between 0.533 (95% CI = 0.529-0.537) for lack of second fill and 0.666 (95% CI = 0.661-0.671) for maximum PDC. Adding mean PDC to the combined model yielded a c-statistic of 0.695 (95% CI = 0.690-0.700). Given a sensitivity of 75%, the predictor improved the specificity from 47.7% to 53.6%. Patients with previous mean PDC < 25% were half as likely to show high adherence to statins compared with those with previous mean PDC ≥ 80% (risk ratio = 0.49, 95% CI = 0.46-0.50).
CONCLUSIONS: Including measures of previous medication adherence yields better prediction of future statin adherence than usual baseline clinical measures that are typically used in claims-based studies. DISCLOSURES: This study was funded by the Patient-Centered Outcomes Research Institute (ME-1309-06274). Kumamaru, Kohsaka, and Miyata are affiliated with the Department of Healthcare Quality Assessment at the University of Tokyo, which is a social collaboration department supported by National Clinical Database. The department was formerly supported by endowments from Johnson & Johnson K.K., Nipro, Teijin Pharma, Kaketsuken K.K., St. Jude Medical Japan, Novartis Pharma K.K., Taiho Pharmaceutical, W. L. Gore & Associates, Olympus Corporation, and Chugai Pharmaceutical. Gagne has received grants from Novartis Pharmaceuticals and Eli Lilly and Company to the Brigham and Women's Hospital for unrelated work. He is a consultant to Aetion, a software company, and to Optum. Choudhry has received grants from the National Heart, Lung, and Blood Institute, PhRMA Foundation, Merck, Sanofi, AstraZeneca, CVS, and MediSafe. Schneeweiss is consultant to WHISCON and Aetion, a software manufacturer of which he also owns equity. He is principal investigator of investigator-initiated grants to the Brigham and Women's Hospital from Bayer, Genentech, and Boehringer Ingelheim unrelated to the topic of this study. He does not receive personal fees from biopharmaceutical companies. No potential conflict of interest was reported by the other authors.

Entities:  

Mesh:

Substances:

Year:  2018        PMID: 30362915     DOI: 10.18553/jmcp.2018.24.11.1146

Source DB:  PubMed          Journal:  J Manag Care Spec Pharm


  10 in total

1.  Adherence to antihypertensive medication and its predictors among non-elderly adults in Japan.

Authors:  Shiori Nishimura; Hiraku Kumamaru; Satoshi Shoji; Mitsuaki Sawano; Shun Kohsaka; Hiroaki Miyata
Journal:  Hypertens Res       Date:  2020-04-20       Impact factor: 3.872

2.  Validation of EHR medication fill data obtained through electronic linkage with pharmacies.

Authors:  Saul Blecker; Samrachana Adhikari; Hanchao Zhang; John A Dodson; Sunita M Desai; Lisa Anzisi; Lily Pazand; Antoinette M Schoenthaler; Devin M Mann
Journal:  J Manag Care Spec Pharm       Date:  2021-10

3.  Accurate Medication Adherence Measurement Using Administrative Data for Frequently Hospitalized Patients.

Authors:  Rafia S Rasu; Suzanne L Hunt; Junqiang Dai; Huizhong Cui; Milind A Phadnis; Nishank Jain
Journal:  Hosp Pharm       Date:  2020-06-02

4.  Three Sides to the Story: Adherence Trajectories During the First Year of SGLT2 Inhibitor Therapy Among Medicare Beneficiaries.

Authors:  Chelsea E Hawley; Julie C Lauffenburger; Julie M Paik; Deborah J Wexler; Seoyoung C Kim; Elisabetta Patorno
Journal:  Diabetes Care       Date:  2022-03-01       Impact factor: 19.112

5.  Identifying routine clinical predictors of non-adherence to second-line therapies in type 2 diabetes: A retrospective cohort analysis in a large primary care database.

Authors:  Beverley M Shields; Andrew T Hattersley; Andrew J Farmer
Journal:  Diabetes Obes Metab       Date:  2019-10-07       Impact factor: 6.577

6.  Association of Antidepressant Prescription Filling With Treatment Indication and Prior Prescription Filling Behaviors and Medication Experiences.

Authors:  Jenna Wong; Siyana Kurteva; Aude Motulsky; Robyn Tamblyn
Journal:  Med Care       Date:  2022-01-01       Impact factor: 2.983

7.  A Roadmap for Boosting Model Generalizability for Predicting Hospital Encounters for Asthma.

Authors:  Gang Luo
Journal:  JMIR Med Inform       Date:  2022-03-01

Review 8.  Towards better reporting of the proportion of days covered method in cardiovascular medication adherence: A scoping review and new tool TEN-SPIDERS.

Authors:  Lachlan L Dalli; Monique F Kilkenny; Isabelle Arnet; Frank M Sanfilippo; Doyle M Cummings; Moira K Kapral; Joosup Kim; Jan Cameron; Kevin Y Yap; Melanie Greenland; Dominique A Cadilhac
Journal:  Br J Clin Pharmacol       Date:  2022-05-22       Impact factor: 3.716

Review 9.  Medication Non-Adherence in Rheumatology, Oncology and Cardiology: A Review of the Literature of Risk Factors and Potential Interventions.

Authors:  Vicente F Gil-Guillen; Alejandro Balsa; Beatriz Bernárdez; Carmen Valdés Y Llorca; Emilio Márquez-Contreras; Juan de la Haba-Rodríguez; Jose M Castellano; Jesús Gómez-Martínez
Journal:  Int J Environ Res Public Health       Date:  2022-09-23       Impact factor: 4.614

10.  Predictive models of medication non-adherence risks of patients with T2D based on multiple machine learning algorithms.

Authors:  Xing-Wei Wu; Heng-Bo Yang; Rong Yuan; En-Wu Long; Rong-Sheng Tong
Journal:  BMJ Open Diabetes Res Care       Date:  2020-03
  10 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.