| Literature DB >> 25167807 |
Joshua M Pevnick1, Ning Li, Steven M Asch, Cynthia A Jackevicius, Douglas S Bell.
Abstract
BACKGROUND: Medication non-adherence is prevalent. We assessed the effect of electronic prescribing (e-prescribing) with formulary decision support on preferred formulary tier usage, copayment, and concomitant adherence.Entities:
Mesh:
Year: 2014 PMID: 25167807 PMCID: PMC4236533 DOI: 10.1186/1472-6947-14-79
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Figure 1Pharmaceutical claim exclusion process.
Figure 2Passive formulary decision support indicates medication tier.
Characteristics of physicians, patients, and pharmaceutical claims included in the analysis
| | |||||
| N (%) | 1570 (86%) | 187 (10%) | 74 (4%) | | |
| Specialty | | ||||
| | Family practice | 490 (31%) | 67 (36%) | 28 (38%) | 0.03 |
| Internal medicine | 838 (54%) | 103 (55%) | 35 (47%) | ||
| Non-surgical | 2 (0.13%) | 1 (0.53%) | 1 (1.4%) | ||
| Pediatrics | 235 (15%) | 16 (8.6%) | 10 (14%) | ||
| Practice size | | ||||
| | 1 physician | 783 (50%) | 64 (34%) | 29 (39%) | <0.01 |
| 2–5 physicians | 612 (39%) | 90 (48%) | 39 (53%) | ||
| 6–10 physicians | 148 (10%) | 30 (16%) | 6 (8.1%) | ||
| 11–25 physicians | 20 (1.3%) | 3 (1.6%) | 0 (0%) | ||
| > 25 physicians | 2 (0.13%) | 0 (0%) | 0 (0%) | ||
| | |||||
| N (%) | 12327 (86%) | 1505 (10%) | 578 (4.0%) | | |
| Age, mean ± SD | 45.8 ± 19.5 | 49.2 ± 16.0 | 47.7 ± 18.3 | <0.0001 | |
| Female, N (%) | 6367 (52%) | 776 (52%) | 285 (49%) | 0.55 | |
| Neighborhood income | |||||
| | <45 k | 2132 (18%) | 261 (18%) | 92 (17%) | 0.13 |
| 45 k – 75 k | 6970 (58%) | 878 (60%) | 310 (56%) | ||
| > = 75 k | 2899 (24%) | 321 (22%) | 152 (27%) | ||
| | |||||
| N (%) | 12563 (86%) | 1533 (10%) | 586 (4.0%) | | |
| ARB claims, N (%) | 9094 (72%) | 1238 (81%) | 448 (77%) | | |
| Frequency > once daily, N (%) | 1563 (12%) | 125 (8.2%) | 65 (11%) | | |
| (Synthetic) | | ||||
| Median | | August 4, 2005 | July 27, 2005 | August 19, 2005 | 0.60 |
| 1st quartile | | June 2, 2005 | June 2, 2005 | June 8, 2005 | |
| 3rd quartile | September 29, 2005 | September 27, 2005 | October 12, 2005 | ||
*Fisher’s exact test was used for categorical comparisons because of low or zero counts in some cells. ANOVA was used for continuous variables.
**Patients having an index ARB or IS claim.
Unadjusted percent preferred medication tier in each of three user groups in each of three time periods
| | Percent Preferred Tier | ||||
| Non user PCPs | 63% | 69% | 70% | <0.0001 | |
| Low user PCPs (<30%) | 59% | 60% | 61% | 0.87 | |
| High user PCPs (>30%) | 57% | 61% | 78% | <0.001 | |
| All PCPs | 62% | 67% | 69% | <0.001 | |
| p-value | <0.01 | 0.19 | <0.001 | ||
*p-values are for comparisons within user groups across time and within each time period across user groups.
Figure 3Unadjusted percent preferred medication tier in each of three user groups over time*.
Logistic regression evaluating the relationship between formulary decision support and preferred medication tier (n = 14660)
| Medication class – inhaled steroid | 4.1 | 3.4-5.0 | <0.0001 |
| E-prescribing with formulary decision support (FDS) usage | | ||
| Low users (<30% of time) | 0.9 | 0.8-1.1 | 0.35 |
| High users (>30% of time) | 0.8 | 0.6-1.1 | 0.16 |
| Time periods | | ||
| Non-interruptive FDS time period | 1.1 | 0.9-1.3 | 0.42 |
| Interruptive and Non-interruptive FDS time period | 1.0 | 0.9-1.1 | 0.59 |
| Interactions | | ||
| Low users during time period with Non-interruptive FDS only | 0.9 | 0.6-1.5 | 0.74 |
| Low users during time period with Interruptive and Non-interruptive FDS | 0.8 | 0.6-1.1 | 0.13 |
| High users during time period with Non-interruptive FDS only | 0.9 | 0.4-2.3 | 0.83 |
| High users during time period with Interruptive and Non-interruptive FDS‡ | 1.9 | 1.0-3.4 | 0.04 |
Variables without association, and therefore not used as predictors in this model, are: date dispensed, PCP prescribing volume with this insurer, patients’ average pharmaceutical claims per month, and patient race and income (as estimated from zip code data).
†The referent categories were as follows: angiotensin receptor blocker medication class, non-users, and claims from the time period prior to e-prescribing activation.
‡As noted in the text, this odds ratio remained in the range of 1.6-2.0 in five other models where we: (1) excluded pediatricians completely, (2) controlled for physician specialty, (3) controlled for practice size, (4) restricted to ARB only, and (5) restricted to IS only.
Linear mixed effects regression model evaluating the relationship between monthly copayment and medication adherence (n = 12389
| -8% | <0.0001 | |
| Medication class – inhaled steroid | -49% | <0.0001 |
| Zip code-based estimates of patients’ annual income‡ | | |
| $45 k – $75 k | 6% | <0.0001 |
| > $75 k | 8% | <0.0001 |
| Medication dosing frequency greater than once daily | -4% | <0.0001 |
*Variables without association, and therefore not used as predictors in this model, are: patient age, gender, history of depression (as evidenced by prior use of antidepressants), and patient race (as estimated from zip code data).
†The referent categories were as follows: angiotensin receptor blocker medication class, annual income < $45 k annually, and medication dosing less than or equal to once daily.
‡Estimated based on zip code data. 336 claims were excluded from this analysis due to missing zip code data.