| Literature DB >> 26219841 |
Qiang Yao1, Chaojie Liu2, J Adamm Ferrier3, Zhiyong Liu4, Ju Sun5.
Abstract
OBJECTIVE: To assess the impact of the National Essential Medicines Scheme (NEMS) with respect to urban-rural inequalities regarding drug prescriptions in primary care facilities.Entities:
Mesh:
Year: 2015 PMID: 26219841 PMCID: PMC4518678 DOI: 10.1186/s12939-015-0186-7
Source DB: PubMed Journal: Int J Equity Health ISSN: 1475-9276
Characteristics of participating primary care facilities in urban and rural areas
| Indicator | Urban (95 % CI) | Rural (95 % CI) |
| ||||
|---|---|---|---|---|---|---|---|
| Client population (thousand) | 46.97 | (42.66, | 51.29) | 43.49 | (39.00, | 47.99) |
|
| Serving radius (km) | 10.88 | (9.27, | 12.50) | 13.91 | (12.23, | 15.58) |
|
| Population density (people/km2) | 1036.15 | (474.33, | 1597.97) | 248.01 | (203.08, | 292.94) |
|
| Number of medical staff | 43.38 | (38.53, | 48.24) | 41.30 | (36.46, | 46.15) |
|
| Number of doctor | 17.69 | (15.18, | 20.20) | 13.83 | (12.32, | 15.34) |
|
| Monthly income of medical staff (yuan) | 2161.68 | (2041.10, | 2282.26) | 1812.13 | (1737.93, | 1886.33) |
|
| Annual income of facility (thousand yuan) | 3729.41 | (3235.44, | 4223.38) | 3185.05 | (2864.58, | 3505.52) |
|
| Drug income of facility (thousand yuan) | 1122.60 | (896.87, | 1348.34) | 1149.62 | (1009.00, | 1290.24) | 0.256 |
| Variety of drugs in stock | 324.13 | (292.18, | 356.08) | 294.30 | (276.33, | 312.26) | 0.753 |
| Variety of drugs from national EMLs | 183.98 | (166.22, | 201.74) | 175.98 | (166.00, | 185.96) | 0.366 |
Bold indicates statistical significance (p < 0.05)
Prescribing indicators in primary care facilities in A province of China - pre and post NEMS
| Indicator | Urban (95 % CI) | Rural (95 % CI) | Urban-rural difference | NEMS effect | ||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Pre | Post | Pre | Post | Adjusted beta | (95 % CI) |
| Pre | Post | ||
| Average number of drugs per prescription | 3.61 | 3.45 | 4.33 | 4.15 | -0.079 | (-0.230, | 0.073) | 0.311 |
|
|
| Percentage of prescriptions with antibiotics prescribed (%) | 61.63 | 62.51 | 67.26 | 66.05 | -0.154 | (-0.286, | -0.021) |
|
| 0.152 |
| Percentage of prescriptions with glucocorticoids prescribed (%) | 19.97 | 19.37 | 23.99 | 22.1 | -0.135 | (-0.296, | 0.026) | 0.101 | 0.081 | 0.428 |
| Percentage of prescriptions with injections prescribed (%) | 44.95 | 44.04 | 51.07 | 52.35 | 0.006 | (-0.127, | 0.139) | 0.329 | 0.237 |
|
| Percentage of drugs prescribed from the essential drug list (%) | 66.71 | 88.28 | 75.4 | 92.3 | -0.298 | (-0.572, | -0.025) |
|
| 0.412 |
| Average expenditure per prescription (yuan) | 42.12 | 28.2 | 42.74 | 32.73 | 2.869 | (0.450, | 5.289) |
| 0.856 |
|
Bold indicates statistical significance (p < 0.05)
Area-based Between-Group Variance (BGV) for drug prescription indicators - pre and post NEMS
| Indicator | Pre (95 % CI) | Post (95 % CI) |
| ||||
|---|---|---|---|---|---|---|---|
| Average number of drugs per prescription | 0.113 | (0.083, | 0.143) | 0.106 | (0.079, | 0.133) | 0.746 |
| Percentage of prescriptions requiring antibiotics (%) | 6.979 | (2.300, | 11.658) | 2.764 | (-0.212, | 5.739) |
|
| Percentage of prescriptions requiring glucocorticoids (%) | 3.558 | (0.709, | 6.408) | 1.638 | (-0.283, | 3.559) | 0.206 |
| Percentage of prescriptions requiring injections (%) | 8.236 | (2.972, | 13.500) | 15.163 | (8.053, | 22.273) | 0.668 |
| Percentage of drugs prescribed from the essential drug list (%) | 16.656 | (10.502, | 22.811) | 3.551 | (1.083, | 6.018) |
|
| Average expenditure per prescription | 0.085 | (-0.651, | 0.821) | 4.52 | (2.182, | 6.859) |
|
Bold indicates statistical significance (p < 0.05)
Area-based Theil Index (×10000) for drug prescription indicators - pre and post NEMS
| Indicator | Pre (95 % CI) | Post (95 % CI) |
| ||||
|---|---|---|---|---|---|---|---|
| Average number of drugs per prescription | 34.517 | (25.355, | 43.678) | 35.208 | (26.052, | 44.365) | 0.171 |
| Percentage of prescriptions requiring antibiotics | 8.239 | (2.714, | 13.765) | 3.303 | (-0.204, | 6.810) |
|
| Percentage of prescriptions requiring glucocorticoids | 35.392 | (7.047, | 63.736) | 18.499 | (-2.897, | 39.894) |
|
| Percentage of prescriptions requiring injections | 17.367 | (6.236, | 28.499) | 31.421 | (16.536, | 46.306) | 0.246 |
| Percentage of drugs prescribed from the essential drug list | 16.052 | (10.148, | 21.957) | 2.156 | (0.675, | 3.636) |
|
| Average expenditure per prescription | 0.235 | (-1.160, | 1.631) | 23.564 | (11.289, | 35.840) |
|
Bold indicates statistical significance (p < 0.05)
Fig. 1Area-based inequality trends. Changes of area-based inequality regarding drug prescription indicators, 2009-2010
Fig. 2Four-quadrant view: improving of indicators vs urban-rural inequality. Four-quadrant view of drug prescription indicators: improving of indicators versus urban-rural inequality, 2009-2010. Group (a): I5 - Percentage of drugs prescribed from the essential drug list, shows improvement in both average level and equality; Group (b): I2 - Percentage of prescriptions requiring antibiotics, I3 - Percentage of prescriptions requiring glucocorticoids: these -indicators show improved urbanrural equality but with limited changes in average levels Group (c): I6 - Average expenditure per prescription, shows improvement in average level but with enlarged inequality; Group (d): I4 - Percentage of prescriptions requiring injections, shows poor performance in both average level and equality; Group (e): I1 - Average number of drugs per prescription, shows little changes in both average level and equality
Prescribing indicators in comparison with other countries and WHO/INRUD standard
| Region | Average number of drugs per prescription | Percentage of prescriptions requiring antibiotics (%) | Percentage of prescriptions requiring injections (%) |
|---|---|---|---|
| Western Pacific | 2.8 | 50.80 | 27.10 |
| South East Asia | 2.4 | 47.90 | 9.70 |
| Lower-middle income countries | 2.8 | 50.00 | 21.70 |
| A province China (urban) | 3.5 | 62.51 | 44.04 |
| A province China (rural) | 4.1 | 66.05 | 52.35 |
| WHO/INRUD recommendation | 1.6 – 1.8 | <30 | <10 |
Source of data: Holloway K, Ivanovska V, Wagner A, Vialle‐Valentin C, Ross‐Degnan D. Have we improved use of medicines in developing and transitional countries and do we know how to? Two decades of evidence. Tropical Medicine & International Health. 2013;18(6):656-64