| Literature DB >> 24708886 |
Caroline Jehu-Appiah1, Serufusa Sekidde, Martin Adjuik, James Akazili, Selassi D Almeida, Frank Nyonator, Rob Baltussen, Eyob Zere Asbu, Joses Muthuri Kirigia.
Abstract
BACKGROUND: In order to measure and analyse the technical efficiency of district hospitals in Ghana, the specific objectives of this study were to (a) estimate the relative technical and scale efficiency of government, mission, private and quasi-government district hospitals in Ghana in 2005; (b) estimate the magnitudes of output increases and/or input reductions that would have been required to make relatively inefficient hospitals more efficient; and (c) use Tobit regression analysis to estimate the impact of ownership on hospital efficiency.Entities:
Year: 2014 PMID: 24708886 PMCID: PMC4108084 DOI: 10.1186/1478-7547-12-9
Source DB: PubMed Journal: Cost Eff Resour Alloc ISSN: 1478-7547
Definition and measurement of variables
| | |
| Beds | Total number of beds |
| Clinical staff | Total number of doctors, nurses, pharmacists, medical assistants, physiotherapists etc. |
| Nonclinical staff | Total number of administrators, orderlies, accountants , nutrition officers etc. |
| Expenditure | Total recurrent expenditure inclusive of salaries of personnel, expenditure on drugs and expenditure on other goods and services. |
| | |
| Inpatient days | Total annual number of inpatient days |
| Outpatient visits | Annual total number of outpatient visits |
| Deliveries | Annual total number of deliveries |
| Laboratory Services | Annual total number of laboratory tests |
Summary of descriptive statistics
| Government | 73 | 85 (41.1) | 72 (55.4) | 47 (40.9) | 33,603 (30774.2) | 4,056 (2586.4) |
| Mission | 42 | 104 (48.8) | 73 (48.5) | 50 (31.4) | 31,710 (23459.5) | 4,417 (3018.2) |
| Private | 7 | 46 (8.6) | 39 (28.0) | 25 (18.3) | 18,733 (17522.8) | 2,057 (1884.4) |
| Quasi-Govt | 6 | 69 (23.4) | 86 (66.7) | 65 (39.5) | 78,096 (28034.3) | 3,054 (1807.6) |
Figure 1Distribution of scores using the VRS model.
VRS technical efficiency scores
| Government | 73 | 70.35 | 22.46 | 27.4 | 100 | 18 (25%) |
| Mission | 42 | 68.59 | 23.3 | 31.92 | 100 | 9 (21.42%) |
| Private | 7 | 55.83 | 22.72 | 32.69 | 100 | 1 (14%) |
| Quasi-Govt | 6 | 83 | 18.15 | 61.95 | 100 | 3 (50%) |
Estimation results for Tobit regression model
| Mission | -4.160374 | 5.227 | 0.35 | (-14.506 | 6.186) |
| Private | -23.782 | 10559 | 0.002 | (-44.681 | -2.882) |
| Quasi-Government | 22.514 | 12.185 | 0.06 | (-1.602 | 46.630) |
Mean efficiency score by region
| Ashanti | 34 | 61.99 | 25.6 | 31.84 | 100 |
| Brong-Ahafo | 13 | 62.04 | 17.8 | 28.3 | 90.54 |
| Central | 10 | 76.98 | 20.1 | 51.05 | 100 |
| Eastern | 14 | 54.61 | 20.7 | 30.56 | 100 |
| Greater Accra | 8 | 65.04 | 25.3 | 29.72 | 100 |
| Northern | 10 | 83.36 | 19.8 | 49.26 | 100 |
| Upper East | 5 | 72.23 | 15.7 | 56.65 | 92.06 |
| Upper West | 5 | 50.65 | 29.2 | 26.49 | 100 |
| Volta | 18 | 45.02 | 13.8 | 22.9 | 74.39 |
| Western | 13 | 70.01 | 23.7 | 30.26 | 100 |
Returns to scale (RTS) model
| Government | 17 (22.97%) | 17 (22.97%) | 39 (53.42%) | 73 (100%) |
| Mission | 6 (14.29%) | 10 (23.81%) | 26 (61.90%) | 42 (100%) |
| Private | 6 (85.71%) | 1 (14.29%) | 0 | 7 (100%) |
| Quasi-Government | 1 (16.67%) | 3 (50%) | 2 (33.33%) | 6 (100%) |
| Total | 30 (23.44%) | 31 (24.22%) | 67 (51.34%) | 128 (100%) |
Figure 2The effect of non-clinical staff on variable return to scale efficiency score blue line represents mean number of nonclinical staff; red line represents mean variable return to scale efficiency score.
Figure 3The effect of clinical staff on variable return to scale efficiency score blue line represents mean number of clinical staff; red line represents mean variable return to scale efficiency score.
Figure 4The effect of number of beds on variable return to scale efficiency score blue line represents mean number of bed; red line represents mean variable return to scale efficiency score.
Figure 5The effect of the area of functional units in hospitals on variable return to scale efficiency score Bandwidth = 0.8.
Potential output improvements per type of hospital
| Government hospital | |||
| OPD attendance | 2,501,596 | 4,488,118 | 79% |
| IPD | 304,284 | 495,785 | 63% |
| Deliveries | 79,139 | 130,891 | 65% |
| Laboratory services | 3,012,825 | 4,603,862 | 53% |
| Mission hospitals | |||
| OPD attendance | 1,283,284 | 2,632,868 | 105% |
| IPD | 177,408 | 316,966 | 79% |
| Deliveries | 34,886 | 68,789 | 97% |
| Laboratory services | 1,538,295 | 2,667,427 | 73% |
| Quasi-Government hospitals | |||
| OPD attendance | 468580 | 603,887 | 29% |
| IPD | 18,329 | 23,080 | 29% |
| Deliveries | 4,341 | 11,708 | 170% |
| Laboratory services | 249,776 | 349,084 | 40% |
| Private hospitals | |||
| OPD attendance | 131,134 | 298,114 | 127% |
| IPD | 1,199 | 21,399 | 133% |
| Deliveries | 1,075 | 5,224 | 386% |
| Laboratory services | 211,345 | 506,289 | 140% |