| Literature DB >> 33793663 |
Jeffrey Clement1, Maura Jacobi2, Brad N Greenwood3.
Abstract
Patient access and adherence to chronic medications is critical. In this work, we evaluate whether disruptions related to Covid-19 have affected new and existing patients' access to pharmacological therapies without interruption. We do so by performing a retrospective analysis on a dataset of 9.4 billion US prescription drug claims from 252 million patients from May, 2019 through August, 2020 (about 93% of prescriptions dispensed within those months). Using fixed effect (conditional likelihood) linear models, we evaluate continuity of care, how many days of supply patients received, and the likelihood of discontinuing therapy for drugs from classes with significant population health impacts. Findings indicate that more prescriptions were filled in March 2020 than in any prior month, followed by a significant drop in monthly dispensing. Compared to the pre-Covid era, a patient's likelihood of discontinuing some medications increased after the spread of Covid: norgestrel-ethinyl estradiol (hormonal contraceptive) discontinuation increased 0.62% (95% CI: 0.59% to 0.65%, p<0.001); dexmethylphenidate HCL (ADHD stimulant treatment) discontinuation increased 2.84% (95% CI: 2.79% to 2.89%, p<0.001); escitalopram oxalate (SSRI antidepressant) discontinuation increased 0.57% (95% CI: 0.561% to 0.578%, p<0.001); and haloperidol (antipsychotic) discontinuation increased 1.49% (95% CI: 1.41% to 1.57%, p<0.001). In contrast, the likelihood of discontinuing tacrolimus (immunosuppressant) decreased 0.15% (95% CI: 0.12% to 0.19%, p<0.001). The likelihood of discontinuing buprenorphine/naloxone (opioid addiction therapy) decreased 0.59% (95% CI: 0.55% to 0.62% decrease, p<0.001). We also observe a notable decline in new patients accessing these latter two therapies. Most US patients were able to access chronic medications during the early months of Covid-19, but still were more likely to discontinue their therapies than in previous months. Further, fewer than normal new patients started taking medications that may be vital to their care. Providers would do well to inquire about adherence and provide prompt, nonjudgmental, re-initiation of medications. From a policy perspective, opioid management programs seem to demonstrate a robust ability to manage existing patients in spite of disruption.Entities:
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Year: 2021 PMID: 33793663 PMCID: PMC8016279 DOI: 10.1371/journal.pone.0249453
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1US prescription drug claims dispensed by month.
The figure shows the total number of approved pharmaceutical claims in the database; the red line indicates the ramp up of Covid-19 cases and response in the US. The trendline is based on data from May 2019 through February 2020 and represents a linear forecast for the period beyond February 2020. There were 12.05% fewer claims in August 2020 than in August 2019, likely due a combination of factors: stock up in March 2020, reduced demand (due to delayed elective procedures), and access challenges.
Fig 2Total days of supply (DOS) dispensed by month across key drugs.
Total days of supply (DOS) dispensed by month across key drugs. March 2020 represents the peak demand for many drugs, though there are exceptions such as dexmethylphenidate HCL; this stimulant used to treat ADHD essentially saw the early onset of the summer decline when Covid-19 began to impact the US. The red line indicates the ramp up of Covid-19 cases and response in the US.
Fig 3Proportion of total rejected for attempting to fill too early by month.
Proportion of claims rejected for attempting to refill too early. This is calculated by dividing the number of claims rejected with NCPDP Code 79 –Early Refill by the total number of claims for the drug. Pre-COVID means are calculated through February 2020. The red line indicates the ramp up of Covid-19 cases and response in the US.
Impact of Covid-19 on probability of discontinuing therapy: Conditional likelihood linear probability model analysis.
| Coeff B | Coeff B | Coeff B | |
| (95% CI) | (95% CI) | (95% CI) | |
| PostCOVID | -0.0059 | -0.0015 | 0.0062 |
| (-0.0062 to -0.0055) | (-0.0019 to -0.0012) | (0.0059 to 0.0065) | |
| p<0.001 | p<0.001 | p<0.001 | |
| N Patients | N = 828,913 | N = 280,444 | N = 370,492 |
| Coeff B | Coeff B | Coeff B | |
| (95% CI) | (95% CI) | (95% CI) | |
| PostCOVID | 0.0284 | 0.0057 | 0.0149 |
| (0.0279 to 0.0289) | (0.00561 to 0.00578) | (0.0141 to 0.0157) | |
| p<0.001 | p<0.001 | p<0.001 | |
| N Patients | N = 599,251 | N = 7,633,955 | N = 166,074 |
The PostCOVID coefficient estimates the average change in a patient’s probability of discontinuing the Post-Covid period compared to the Pre-Covid period. A positive coefficient for PostCOVID indicates that patients were more likely to discontinue the medication after Covid-19 while a negative term indicates patients are less likely to discontinue use. We include all generic and branded formulations in all strengths for the listed drugs. We include patients in the analysis only during the time that they demonstrate a pattern of active prescriptions, but results were consistent across a wide range of model specifications. For each case, we compute a linear probability model with fixed effects and clustered standard errors at the patient level; the fixed effects specification implies the constant term does not have an interpretation so it is not reported here for parsimony. The fixed effects help adjust for unobservables, but results were consistent when available controls for gender, ethnicity and household income were included instead. Results using a logistic regression model were qualitatively consistent for all drugs.
Patient pool and changes in discontinuation.
| Average Number of Active Patients | Extra Patients “Stocking Up” in March 2020 | Total | Estimated Discontinuations Resulting from Covid-19 | Avg Change in New Monthly Patients | |
|---|---|---|---|---|---|
| Drug | Discontinuations Post-Covid (March-Aug 2020) | ||||
| 520,407 | 27,145 | 179,835 | -20,531 | -7,933 | |
| 200,773 | 20,161 | 27,893 | -1,922 | -1,450 | |
| 240,740 | 6757 | 26,959 | 8,681 | -2,771 | |
| 358,472 | 7,980 | 148,426 | 54,777 | -15,335 | |
| 4,511,608 | 279,061 | 897,621 | 164,867 | -60,011 | |
| 82,658 | 5,734 | 30,440 | 8042 | 91 | |
This table represents the potential scope of the impact of Covid-19 on medication adherence. These numbers represent only patients on these six drugs; the impacts are obviously magnified across all drugs and therapies. As seen in this table and the other figures, the exact impact of Covid-19 on a particular patient is uncertain: some patients stocked up more than normal, while others were more likely to discontinue use. The effects are heterogeneous across therapies as well.
aThis is the number of patients demonstrating a pattern of actively filling prescriptions (beyond a single month or a trial of the drug). It is calculated by averaging the number of active patients from September 2019-February 2020 (pre-Covid months).
bThis is the number of extra patients who “stocked up” on their medication in March, 2020. It is calculated by comparing the number of patients who filled prescriptions for 60+ DOS in March, 2020 against the average number of patients filling prescriptions for 60+ DOS in September 2019-February 2020.
cThis represents the total number of patients discontinuing the medication from March 2020-August 2020. Some level of discontinuations is expected (e.g. changing to a different therapy).
dThis is calculated by multiplying the linear probability model coefficients presented in Table 1 by the total number of active patient-months post-COVID; conceptually, it is the sum of exposing the active patients to the “change in likelihood of discontinuing.” Even small increases in the likelihood of discontinuing (e.g. a fraction of a percentage point) implies that thousands of additional patients will discontinue use. Note that in each case, it is only a fraction of the total discontinuations that are potentially attributable to Covid; however, it is a sizeable fraction. This leads us to believe that our results are plausible; even if estimates are off by an order of magnitude or more, tens of millions of patients are impacted across all drug categories.
eThis is calculated by comparing the average number of new patients per month starting therapy in March 2020 –August 2020 against September 2019 –February 2020. Any patient with an approved claim is included in this analysis.
fThe total number of transplants performed will be the primary driver of this number; access to immunosuppression is normally not a primary consideration. There will be some assessment of a patient’s access/coverage at the time of listing for transplant, but other factors (especially finding a match) are more significant. Live donor transplants were essentially halted in March 2020.
gSee S3 Fig for additional discussion on seasonality.