| Literature DB >> 25236345 |
Piyameth Dilokthornsakul, Nathorn Chaiyakunapruk1, Piyarat Nimpitakpong, Napawan Jeanpeerapong, Katechan Jampachaisri, Todd A Lee.
Abstract
BACKGROUND: Medication oversupply is an important problem in the healthcare systems. It causes unnecessary avoidable healthcare costs. Although some studies have determined the magnitude and financial loss due to medication oversupply in western countries, they may not be applicable to Asia-pacific countries. This study aims to determine the prevalence, financial loss, and patterns of medication oversupply and the factors associated with such oversupply in Thailand.Entities:
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Year: 2014 PMID: 25236345 PMCID: PMC4177054 DOI: 10.1186/1472-6963-14-408
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Figure 1Index date, patient tracing, and study period. Legend: This figure illustrates how the patients in this study were followed up. For example, patient A received in total 3 medications (Med-1, Med-2, and Med-3). We followed patient A from Jan 2010 to Jun 2011 but we tracked data for medication 1 of patient A until the last dispensation date. We also tracked the data for each medication that patient A received. We calculated the modified medication possession ratio (MPRm) for each medication that patient A received based on the first and last date of dispensation. Thus, patient A had 3 MPRms. We classified patient A as oversupplied if any MPRm of patient A >1.20.
Figure 2The flow of patient selection.
Baseline characteristics
| Patient characteristics | Number of patients (%) |
|---|---|
| (N = 99,743) | |
|
| |
| Regional hospital | 91,614 (91.9) |
| District hospital | 8,129 (8.2) |
|
| 49.7 ± 21.2 |
| Children/adolescent (<18 years old) | 10,799 (10.8) |
| Adult (18–59 years old) | 53,564 (53.7) |
| Elderly (≥60 years old) | 35,380 (35.5) |
|
| |
| Male | 42,651 (42.8) |
| Female | 56,860 (57.0) |
| Missing data | 232 (0.2) |
|
| 60,026 (60.2) |
| Universal health coverage schemes | 7,760 (7.8) |
| Social security schemes | 29,203 (29.3) |
| Civil servant medical benefit schemes | 2,522 (2.5) |
| Others | 232 (0.2) |
| Missing data | |
|
| 1.1 ± 1.7 |
| Mean | 51,073 (51.2) |
| 0 | 36,107 (36.2) |
| 1-2 | 12,312 (12.3) |
| >3 | 251 (0.3) |
| Missing data |
Abbreviations: SD standard deviation.
The patterns of medication supply
| Variables | Undersupply | Appropriate | Oversupply |
|---|---|---|---|
| (<0.8) | supply (0.8-1.2) | (>1.2) | |
| Number of patients (%) | 38,881 (39.0) | 47,527 (47.7) | 13,324 (13.4) |
| Average day supply (days) | 260.7 ± 185.1 | 371.1 ± 185.1 | 354.7 ± 247.3 |
| Average follow-up time (days) | 334.4 ± 169.3 | 365.9 ± 180.1 | 331.0 ± 18.6 |
| Average MPRm | 0.6 ± 0.3 | 1.0 ± 0.7 | 1.2 ± 0.6 |
| Average number of medication receipts | 5.2 ± 3.4 | 3.9 ± 2.7 | 6.2 ± 4.4 |
| Average oversupplied items per patient | N/A | N/A | 0.3 ± 0.5 |
Abbreviations: MPRm modified medication possession ratio, N/A not applicable.
Magnitudes and financial loss due to medication oversupply
| Variables | Prevalence of | Total oversupplied | Average oversupplied | Total financial loss | Average financial loss |
|---|---|---|---|---|---|
| oversupplied | pills or units | pills or units/patients | per year (US$) | (US$/patient/year) | |
| patients (%) | |||||
| MPRm >1.20 | 13.4 | 785,223 | 7.9 ± 68.6 | 189,024 | 1.89 ± 19.04 |
| MPRm >1.10 | 22.7 | 1,584,955 | 15.9 ± 91.8 | 307,552 | 5.24 ± 31.61 |
|
| |||||
| Regional hospital | 13.8 | 771,727 | 8.4 ± 71.1 | 93,030* | 2.03 ± 19.82 |
| District hospital | 8.2 | 13,496 | 1.7 ± 28.4 | 2,963 | 0.36 ± 4.14 |
|
| |||||
| UCS | 13.4 | 470,620 | 7.8 ± 66.7 | 101,280 | 1.7 ± 18.1 |
| SSS | 11.6 | 34,976 | 4.5 ± 37.7 | 8,669 | 1.1 ± 9.0 |
| CSMBS | 13.6 | 249,456 | 8.5 ± 60.5 | 76,030 | 2.6 ± 23.2 |
| Others | 13.3 | 28,719 | 11.4 ± 181.6 | 2,810 | 1.1 ± 8.1 |
| Missing | 23.7 | 1,452 | 6.7 ± 23.1 | 234 | 1.0 ± 5.5 |
Abbreviations: CSMBS civil servant medical benefit schemes, MPRm modified medication possession ratio, SSS social security schemes, UCS universal coverage schemes.
*Financial loss per hospital.
Factors associated with medication oversupply (MPR >1.20)
| Factors | Adjusted odds ratio |
|---|---|
| (95% CI) | |
|
| |
| Adult (18–59 years old) |
|
| Children/Adolescent (<18 years old) | 3.303 (3.095 - 3.525) |
| Elderly (≥60 years old) | 1.039 (0.992 – 1.088) |
|
| |
| Male |
|
| Female | 1.177 (1.131 – 1.226) |
|
| |
| UCS |
|
| SSS | 1.200 (1.106 – 1.302) |
| CSMBS | 1.030 (0.982 – 1.079) |
| Others | 1.075 (0.946 – 1.221) |
|
| 1.067 (1.055 – 1.079) |
|
| |
| <5 medications |
|
| ≥5 medications | 2.625 (2.507 – 2.748) |
|
| |
| District hospital |
|
| Regional hospital | 1.235 (0.056 – 27.027) |
Abbreviations: CSMBS civil servant medical benefit schemes, SSS social security schemes, UCS universal coverage schemes.