Public Health Expenditure and Sustainable Health Outcomes in 45 Sub-Saharan African Countries: Does Government Effectiveness Matter?
Abstract
:1. Introduction
2. Literature Review
2.1. Review of the Related Literature
2.2. Empirical Review
3. Materials and Methods
4. Results
4.1. Health Expenditure versus Infant, Maternal and Adult Mortality, and Life Expectancy
4.2. Health Outcome versus Government Effectiveness
4.3. Long-Run Dynamics of Health Expenditure, Health Outcome and Government Effectiveness
5. Conclusions
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Countries/Models | Coefficients Estimates | Diagnostic Tests | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
THEGDP | HEPC | GEFF | ||||||||
ANGOLA: | ||||||||||
Model 1 | −3.55 (2.96) ** | −0.34 (30.92) ** | −34.71 (6.19) ** | −0.12 (22.12) ** | 69.88 | 1.88 | 0.84 | 1.59 (0.35) | Stable | 0.99 |
Model 2 | −52.62 (4.18) * | −52.23 (8.31) | −90.75 (2.64) | −0.02 (17.04) ** | 29.05 | 25.09 | 3.02 | 0.65 (0.75) | Stable | 0.99 |
Model 3 | 3.26 (3.45) ** | 2.04 (3.50) ** | 0.06 (0.05) | −0.01 (6.55) ** | 8.71 | 1.10 | 1.66 | 0.28 (0.94) | Stable | 0.99 |
BENIN: | ||||||||||
Model 1 | 10.45 (2.25) * | −49.95 (32.81) ** | −0.30 (0.02) | −0.72 (13.93) ** | 21.56 | 3.89 | 0.17 | 1.84 | Stable | 0.98 |
Model 2 | 109.01 (3.46) ** | −72.11 (14.21) ** | −25.23 (1.01) | 0.08 (6.60) ** | 5.44 | 5.45 | 0.55 | 3.32 (0.18) | Stable | 0.98 |
Model 3 | −9.86 (7.18) ** | 6.39 (33.71) ** | −1.76 (2.11) | 0.13 (2.9) | 107.55 | 2.47 | 8.73 | 2.17 (0.29) | Stable | 1.00 |
BOTSWANA | ||||||||||
Model 1 | −0.20 (0.58) | −0.43 (3.13) ** | 0.37 (2.18) ** | −0.18 (6.63) ** | 8.23 | 2.19 | 1.34 | 1.34 | Stable | 0.95 |
Model 2 | 0.39 (2.29) ** | −0.76 (9.92) ** | −0.38 (1.56) | −0.26 (6.35) ** | 7.05 | 4.81 | 0.78 | 0.18 | Stable | 0.95 |
Model 3 | 0.02 (1.05) | 0.18 (19.41) ** | 0.08 (2.39) ** | −0.13 (32.31) ** | 189.78 | 1.01 | 1.63 | 1.18 | Not Stable | 0.99 |
BURKINA FASO | ||||||||||
Model 1 | 0.23 (7.76) ** | −0.32 (19.71) ** | 0.68 (4.93) ** | 0.30 (9.21) ** | 16.31 | 0.79 | 2.37 | 0.78 | Stable | 0.87 |
Model 2 | −0.15 (0.47) | −0.97 (17.41) ** | 1.67 (3.58) ** | −0.07 (37.03) ** | 249.26 | 2.16 | 6.83 | 1.24 | Stable | 0.99 |
Model 3 | −0.21 (7.70) ** | 0.21 (17.02) ** | 0.06 (1.50) | 0.19 (11.24) ** | 23.71 | 2.59 | 90.76 | 1.18 | Stable | 0.93 |
BURUNDI | ||||||||||
Model 1 | −0.13 (1.74) | −0.09 (1.84) * | −0.11 (1.74) | −0.10 (10.36) ** | 20.65 | 4.06 | 0.56 | 1.46 | Stable | 0.88 |
Model 2 | −0.98 (3.21) ** | 0.50 (1.42) | 0.63 (1.42) | −0.07 (5.79) ** | 6.10 | 2.23 | 151.10 | 2.87 | Stable | 0.82 |
Model 3 | −0.09 (1.18) | 0.19 (2.12) * | −0.05 (0.50) | −0.07 (9.36) ** | 15.33 | 0.35 | 2.91 | 0.50 | Stable | 0.86 |
CAMEROUN | ||||||||||
Model 1 | 0.86 (12.12) ** | −0.02 (4.96) ** | −1.45 (3.67) ** | −0.03 (29.82) ** | 123.14 | 0.16 | 0.77 | 0.17 | Stable | 0.91 |
Model 2 | 0.06 (0.01) ** | −0.01 (6.25) ** | 0.06 (5.00) | −0.22 (15.96) ** | 36.38 | 1.98 | 1.09 | 0.83 | Stable | 0.94 |
Model 3 | −0.06 (4.97) ** | 0.01 (3.75) ** | −0.04 (1.21) | −0.11 (22.72) | 68.85 | 0.99 | 0.32 | 0.78 | Stable | 0.97 |
CABO VERDE | ||||||||||
Model 1 | −14.94 (2.69) ** | −9.25 (1.64) | −0.23 (20.96) ** | 55.92 | 0.88 | 0.51 | Stable | 0.96 | ||
Model 2 | 7.97 (0.64) | 0.28 (3.44) ** | 12.33 (2.37) ** | 0.01 (31.82) ** | 194.77 | 0.34 | 0.10 | 1.87 | Stable | 0.91 |
Model 3 | −0.12 (4.60) ** | −0.28 (36.16) ** | −0.18 (8.50) ** | 0.56 (31.83) ** | 101.32 | 1.32 | 1.49 | 1.04 | Stable | 0.98 |
CENTRAL AFRICAN REPUBLIC | ||||||||||
Model 1 | 0.86 (12.12) ** | −0.02 (4.96) ** | −1.45 (3.67) ** | −0.03 (29.82) ** | 123.14 | 0.16 | 0.77 | 0.17 | Stable | 0.91 |
Model 2 | 0.06 (0.01) ** | −0.01 (6.25) ** | 0.06 (5.00) | −0.22 (15.96) ** | 36.38 | 1.98 | 1.09 | 0.83 | Stable | 0.94 |
Model 3 | −0.06 (4.97) ** | 0.01 (3.75) ** | −0.04 ( (1.21) | −0.11 (22.72) | 68.85 | 0.99 | 0.32 | 0.78 | Stable | 0.97 |
CHAD | ||||||||||
Model 1 | −4.18 (1.27) | 4.34 (2.50) * | −1.01 (0.80) | 0.002 (17.83) ** | 62.45 | 0.65 | 1.59 | 3.92 | Stable | 0.67 |
Model 2 | −1.22 (1.70) | 1.79 (5.23) ** | −1.45 (1.70) ** | 0.01 (37.81) ** | 280.81 | 0.78 | 2.98 | 0.30 | Stable | 0.95 |
Model 3 | −2.33 (3.56) ** | 2.29 (7.16) ** | −1.22 (4.69) ** | −0.002 (42.36) ** | 352.44 | 0.06 | 0.02 | 0.97 | Stable | 0.94 |
COMOROS | ||||||||||
Model 1 | −4.18 (1.27) | 4.34 (2.50) * | −1.01 (0.80) | 0.002 (17.83) ** | 62.45 | 0.65 | 1.59 | 3.92 | Stable | 0.67 |
Model 2 | −1.22 (1.70) | 1.79 (5.23) ** | −1.45 (1.70) ** | 0.01 (37.81) ** | 280.81 | 0.78 | 2.98 | 0.30 | Stable | 0.95 |
Model 3 | −2.33 (3.56) ** | 2.29 (7.16) ** | −1.22 (4.69) ** | −0.002 (42.36) ** | 352.44 | 0.06 | 0.02 | 0.97 | Stable | 0.94 |
CONGO | ||||||||||
Model 1 | 93.81 (2.37) ** | −112.82 (7.11) ** | 27.00 (0.31) | −0.27 (5.88) ** | 6.66 | 0.04 | 0.23 | 0.85 | Stable | 0.73 |
Model 2 | 51.48 (3.92) ** | −53.26 (11.48) ** | −9.00 (0.30) | −0.35 (6.49) ** | 7.65 | 0.38 | 0.20 | 0.75 | Stable | 0.84 |
Model 3 | −10.15 (2.47) ** | 10.29 (5.41) ** | 0.97 (0.15) | −0.18 (8.86) ** | 14.28 | 0.15 | 0.24 | 0.54 | Stable | 0.90 |
COTE D’IVORIE | ||||||||||
Model 1 | 18.99 (5.91) ** | −1.67 (16.45) ** | 24.95 (4.51) ** | −0.62 (29.50) ** | 108.76 | 2.48 | 1.52 | 25.20 | Stable | 1.00 |
Model 2 | 13.66 (2.11) ** | −10.86 (2.70) ** | 0.29 (0.24) | −0.25 (9.02) ** | 16.73 | 4.22 | 0.25 | 2.03 | Stable | 0.94 |
Model 3 | −2.24 (7.93) ** | 0.13 (45.73) ** | −1.43 (3.47) ** | −0.11 (73.12) ** | 668.26 | 27.00 | 7.10 | 5.29 | Stable | 1.00 |
EQUITORIAL GUINEA | ||||||||||
Model 1 | −1.87 (2.54) ** | 0.58 (2.38) ** | 0.84 (0.56) | −0.01 (6.00) ** | 7.82 | 1.97 | 1.43 | 1.31 | STABLE | 0.57 |
Model 2 | 210.6 (16.55) ** | −5.00 (0.85) ** | −15.34 (13.45) ** | −0.13 (3.73) ** | 11.29 | 0.69 | 0.54 | 0.92 | STABLE | 0.99 |
Model 3 | 0.02 (0.37) | −0.21 (2.08) | −0.05 (1.62) | −0.05 (2.33) ** | 11.29 | 2.59 | 24.92 | 0.92 | STABLE | 0.08 |
ERITREA | ||||||||||
Model 1 | 440.86 (2.38) ** | −40.86 (6.06) ** | 110.83 (2.20) ** | −0.57 (14.79) ** | 51.89 | 2.69 | 1.14 | 1.05 | STABLE | 0.94 |
Model 2 | −924.2.84) ** | −433.98 (4.54) ** | −1215.03 (4.11) ** | −0.92 (7.73) ** | 14.18 | 0.93 | 0.001 | 0.36 | STABLE | 0.50 |
Model 3 | −11.53 (5.71) ** | 4.63 (2.47) ** | 1.98 (0.51) | −0.86 (12.61) ** | 35.67 | 0.31 | 75.43 | 1.51 | STABLE | 0.97 |
ETHIOPIA | ||||||||||
Model 1 | 43.73 (5.56) ** | −4.93 (7.61) ** | −63.92 (4.82) ** | −0.77 (16.71) ** | 51.47 | 0.76 | 1.41 | 0.83 | STABLE | 0.99 |
Model 2 | 25.71 (5.70) ** | −2.21 (6.43) ** | −44.13 (5.09) ** | −0.46 (11.76) ** | 25.37 | 1.72 | 1.58 | 1.34 | STABLE | 0.99 |
Model 3 | −3.72 (6.88) ** | 0.37 (7.28) ** | 4.72 (4.97) ** | −0.87 (21.19) ** | 82.77 | 1.11 | 1.33 | 0.66 | STABLE | 0.99 |
GABON | ||||||||||
Model 1 | 22.31 (3.88) ** | 0.03 (2.12) ** | 35.14 (4.84) ** | −0.15 (4.03) | 2.95 | 0.75 | 1.32 | 0.76 | STABLE | 0.93 |
Model 2 | 15.35 (5.79) ** | 0.01 (2.10) ** | 17.17 (5.60) ** | −0.39 (4.27) ** | 3.31 | 0.54 | 1.19 | 1.64 | STABLE | 0.97 |
Model 3 | 2.94 (3.95) ** | 0.00 (0.40) | 47.06 (15.52) ** | −0.25 (4.97) ** | 5.78 | 0.20 | 1.67 | 1.12 | - | - |
GAMBIA | ||||||||||
Model 1 | −3.74 (3.15) ** | −0.58 (12.80) ** | 12.53 (1.89) * | −0.83 (40.12) ** | 586.75 | 0.65 | 141.15 | 2.30 | STABLE | 0.98 |
Model 2 | −38.60 (11.59) ** | 0.18 (5.96) ** | 62.56 (4.86) ** | −0.49 (4.31) ** | 4.35 | 1.11 | 9.41 | 1.47 | STABLE | 0.91 |
Model 3 | 0.12 (1.67) | 0.05 (12.89) ** | −0.78 (1.35) | −0.94 (44.53) ** | 574.46 | 1.27 | 2.72 | STABLE | 0.98 | |
GHANA | ||||||||||
Model 1 | 7.38 (2.89) ** | −1.39 (2.89) ** | −5.73 (5.24) ** | −0.90 (4.05) ** | 3.38 | 0.13 | 6.56 | 0.97 | STABLE | 0.80 |
Model 2 | 3.36 (9.32) ** | −0.07 (0.49) | −2.36 (1.88) * | −0.68 (4.23) ** | 4.20 | 0.52 | 0.24 | 1.44 | STABLE | 0.57 |
Model 3 | 3.35 (2.27) ** | −0.09 (0.14) | −4.17 (2.53) ** | 0.66 (4.62) | 15.19 | 0.32 | 1.65 | 0.99 | STABLE | 0.74 |
GUINEA | ||||||||||
Model 1 | −0.09 (2.31) ** | −0.05 (2.03) ** | 0.12 (5.04) ** | −0.01 (2.13) ** | 1.07 | 2.92 | 13.36 | 2.17 | STABLE | 0.79 |
Model 2 | −1.58 (5.14) ** | 0.74 (3.75) ** | 0.60 (3.92) ** | −0.85 (11.54) ** | 24.77 | 0.49 | 0.04 | 5.87 | STABLE | 0.85 |
Model 3 | 0.27 (5.23) ** | −0.09 (2.51) ** | −0.11 (5.40) ** | −0.86 (14.12) ** | 37.12 | 2.03 | 2.89 | 2.53 | STABLE | 0.93 |
GUINEA BISSAU | ||||||||||
Model 1 | 0.09 (3.42) ** | −0.04 (6.35) ** | 0.01 (0.72) | −0.79 (4.92)) ** | 21.74 | 0.92 | 0.00 | 1.24 | STABLE | 0.90 |
Model 2 | −0.03 (0.16) | −0.47 (13.64) ** | 0.03 (0.59) | −0.92 (29.22) ** | 248.14 | 2.01 | 1.34 | 3.14 | STABLE | 0.95 |
Model 3 | −0.33 (0.43) | 1.28 (2.96) ** | −0.30 (1.07) | −0.04 (10.74) ** | 27.25 | 3.78 | 9.74 | 0.28 | STABLE | 0.80 |
KENYA | ||||||||||
Model 1 | 0.20 (2.78) ** | −0.36 (24.08) ** | 0.05 (1.23) | −0.97 (64.52) ** | 769.73 | 0.14 | 3.89 | 1.39 | STABLE | 0.99 |
Model 2 | −21.31 (5.82) ** | 3.32 (5.53) ** | 19.49 (5.09) ** | −0.81 (6.63) ** | 7.82 | 0.72 | 0.94 | 0.79 | STABLE | 0.75 |
Model 3 | −0.13 (5.43) ** | 0.15 (28.47) ** | 0.03 (2.31) ** | −0.92 (8.17) ** | 21.95 | 1.20 | 0.00 | 2.06 | STABLE | 0.99 |
LESOTHO | ||||||||||
Model 1 | −3.57 (5.05) ** | 2.63 (5.21) ** | 4.94 (5.38) ** | −0.77 (3.24) ** | 7.08 | 3.24 | 8.24 | 1.01 | STABLE | 0.91 |
Model 2 | −0.48 (5.56) ** | −0.01 (0.33) | −0.24 (2.55) ** | −0.93 (11.56) ** | 43.74 | 0.31 | 10.11 | 2.48 | STABLE | 0.92 |
Model 3 | 2.31 (4.94) ** | −1.64 (4.91) ** | −3.05 (5.05) ** | −0.80 (3.11) ** | 6.19 | 3.82 | 15.92 | 0.88 | STABLE | 0.98 |
LIBERIA | ||||||||||
Model 1 | −0.04 (3.43) ** | −0.01 (6.93) ** | 0.19 (1.97) ** | −0.98 (20.01) ** | 73.39 | 1.88 | 18.74 | 3.51 | STABLE | 0.96 |
Model 2 | 0.44 (7.53) ** | −0.61 (8.89) ** | −0.49 (7.53) ** | −0.98 (15.08) ** | 53.37 | 0.30 | 142.69 | 1.79 | STABLE | 0.99 |
Model 3 | 0.47 (6.33) ** | 0.16 (25.83) ** | 2.14 (3.43) ** | −0.84 (6.99) ** | 8.94 | 2.02 | 4.21 | 1.15 | STABLE | 1.00 |
MAURITANIA | ||||||||||
Model 1 | −0.55 (0.51) | 1.26 (4.40) ** | 1.27 (5.71) ** | −0.66 (6.04) ** | 8.46 | 0.93 | 0.04 | 0.34 | STABLE | 0.66 |
Model 2 | −0.41 (2.32) | −0.25 (3.73) ** | −0.18 (3.91) ** | −0.87 (11.43) ** | 24.31 | 1.04 | 75.50 | 4.92 | STABLE | 0.94 |
Model 3 | −0.04 (2.33) * | 0.05 (7.88) ** | 0.01 (3.46) ** | −0.90 (18.00) ** | 60.31 | 0.31 | 0.35 | 1.22 | STABLE | 0.97 |
MADAGASCAR | ||||||||||
Model 1 | 0.12 (1.75) | −0.17 (6.79) ** | 0.12 (4.37) ** | 0.89 (20.25) ** | 76.24 | 0.08 | 11.26 | 10.20 | STABLE | 0.90 |
Model 2 | 0.99 (2.06) ** | −0.75 (9.22) ** | 0.84 (2.98) * | −0.97 (19.98) ** | 74.22 | 0.36 | 0.93 | 10.08 | STABLE | 0.89 |
Model 3 | 1.55 (7.00) ** | 0.50 (3.94) ** | −0.55 (2.54) * | −0.24 (4.65) ** | 4.88 | 0.22 | 5.40 | 2.27 | STABLE | 0.94 |
MALAWI | ||||||||||
Model 1 | 0.05 (1.43) | −0.14 (5.26) ** | −0.85 (2.94) * | −0.18 (21.05) ** | 55.37 | 7.69 | 0.18 | 0.58 | STABLE | 0.99 |
Model 2 | −1.44 (1.73) | 0.97 (2.41) * | −1.40 (5.77) ** | −0.32 (8.59) ** | 621.18 | 0.16 | 7.73 | 0.93 | STABLE | 0.91 |
Model 3 | −0.14 (4.98) ** | 0.14 (8.34) ** | 0.02 (0.76) | −0.32 (25.26) ** | 81.24 | 1.79 | 37.21 | 0.39 | STABLE | 0.95 |
MALI | ||||||||||
Model 1 | 0.06 (3.91) ** | −0.01 (24.56) ** | −0.10 (5.67) ** | −0.82 (42.35) ** | 514.61 | 0.32 | 1.50 | 2.24 | STABLE | 0.98 |
Model 2 | 0.18 (6.73) ** | −0.02 (43.56) ** | −0.21 (3.45) ** | −0.29 (2.45) ** | 22.34 | 0.33 | 1.03 | 0.62 | STABLE | 0.99 |
Model 3 | −0.03 (6.46) ** | 0.01 (33.18) ** | 0.09 (4.68) ** | −0.91 (76.22) ** | 1321.58 | 0.18 | 0.05 | 1.16 | STABLE | 1.00 |
MAURITIUS | ||||||||||
Model 1 | −0.02 (2.62) ** | −0.00 (4.46) ** | −0.12 (3.93) ** | −0.78 (10.74) ** | 49.03 | 1.58 | 38.53 | 11.32 | STABLE | 0.97 |
Model 2 | −0.47 (1.25) | 1.11 (3.34) ** | −2.00 (2.37) ** | −0.14 (2.48) ** | 1.45 | 2.08 | 5.90 | 2.83 | STABLE | 0.88 |
Model 3 | −0.00 (0.22) | 6.45 (5.15) ** | 0.02 (3.07) ** | −0.69 (22.59) ** | 237.89 | 0.46 | 1.09 | 15.01 | STABLE | 0.96 |
MOZAMBIQUE | ||||||||||
Model 1 | 0.01 (2.83) ** | −0.13 (10.45) ** | −0.26 (7.17) ** | −0.20 (2.74) ** | 35.46 | 0.32 | 19.74 | 3.05 | STABLE | 0.76 |
Model 2 | 0.27 (3.73) ** | −0.61 (24.87) ** | 0.30 (3.73) ** | −0.31 (2.38) ** | 19.10 | 0.88 | 0.85 | 0.95 | STABLE | 0.98 |
Model 3 | −0.04 (2.35) ** | 0.10 (21.61) ** | −0.05 (4.86) ** | −0.35 (2.80) ** | 21.03 | 0.41 | 0.10 | 0.86 | STABLE | 0.97 |
NAMIBIA | ||||||||||
Model 1 | −0.18 (1.01) | −0.23 (6.12) ** | 0.33 (2.40) ** | −0.19 (7.06) ** | 16.09 | 0.52 | 0.77 | 1.45 | STABLE | 0.98 |
Model 2 | 0.19 (0.59) | −0.36 (3.85) ** | −0.85 (2.96) ** | −0.59 (2.76) ** | 5.47 | 0.21 | 6.66 | 0.86 | STABLE | 0.99 |
Model 3 | 0.16 (2.10) ** | 0.09 (3.26) ** | 0.15 (3.26) ** | −0.85 (10.95) ** | 22.32 | 0.41 | 0.27 | 3.33 | STABLE | 0.97 |
NIGER | ||||||||||
Model 1 | 0.36 (12.04) ** | −0.14 (8.05) ** | 0.00 (0.06) | −0.56 (20.66) ** | 370.54 | 0.33 | 98.09 | 1.84 | STABLE | 0.96 |
Model 2 | 0.15 (10.31) ** | −0.04 (12.16) ** | −0.41 (4.98) ** | −0.40 (8.51) ** | 103.59 | 0.13 | 4.62 | 3.25 | STABLE | 0.98 |
Model 3 | −0.04 (10.39) ** | 0.01 (9.87) ** | 0.13 (5.77) ** | −0.44 (21.94) ** | 501.03 | 0.43 | 18.16 | 6.37 | STABLE | 0.98 |
NIGERIA | ||||||||||
Model 1 | −0.00 (0.38) | −0.06 (8.73) ** | 0.11 (2.99) ** | −0.71 (5.48) ** | 13.42 | 0.02 | 12.84 | 0.31 | STABLE | 0.95 |
Model 2 | −0.35 (2.10) ** | −0.27 (6.63) ** | 0.49 (2.41) ** | −0.38 (2.83) ** | 11.72 | 0.57 | 12.91 | 3.01 | STABLE | 0.92 |
Model 3 | 0.01 (1.37) | 0.08 (8.01) ** | 0.09 (1.37) | 0.76 (5.74) ** | 13.96 | 0.13 | 6.44 | 2.26 | STABLE | 0.94 |
RWANDA | ||||||||||
Model 1 | −0.26 (4.51) ** | −0.25 (8.48) ** | −0.04 (3.77) ** | −0.93 (6.70) ** | 8.19 | 0.04 | 41.07 | 1.85 | STABLE | 0.99 |
Model 2 | −0.53 (2.66) ** | −0.66 (4.13) ** | −0.56 (3.88) ** | −0.77 (11.09) ** | 22.50 | 0.38 | 7.54 | 1.05 | STABLE | 0.99 |
Model 3 | 0.29 (3.93) ** | 0.12 (2.10) ** | 0.12 (4.53) ** | −0.99 (6.82) ** | 8.18 | 1.14 | 16.46 | 1.10 | STABLE | 0.99 |
SAOTOME | ||||||||||
Model 1 | 0.01 (5.03) ** | −0.09 (8.51) ** | 0.16 (3.52) ** | −0.93 (27.62) ** | 140.87 | 0.26 | 3.28 | 2.48 | STABLE | 0.97 |
Model 2 | −0.04 (4.02) ** | −0.45 (7.90) ** | −0.39 (2.93) ** | −0.92 (26.01) ** | 124.92 | 0.03 | 7.81 | 4.13 | STABLE | 0.96 |
Model 3 | −0.00 (5.27) ** | 0.04 (8.40) ** | −0.24 (8.66) ** | −0.92 (27.26) ** | 137.19 | 0.12 | 7.15 | 3.28 | STABLE | 0.97 |
SENEGAL | ||||||||||
Model 1 | 0.35 (6.43) ** | −0.17 (6.55) ** | 0.09 (3.03) ** | −0.93 (26.89) ** | 133.74 | 0.07 | 10.69 | 1.22 | STABLE | 0.97 |
Model 2 | 1.19 (4.84) ** | −0.84 (6.31) ** | 0.45 (3.03) ** | −0.93 (25.78) ** | 122.88 | 0.37 | 4.60 | 0.92 | STABLE | 0.96 |
Model 3 | −0.18 (5.02) ** | 0.12 (88.58) ** | −0.06 (3.06) ** | −0.93 (25.29) ** | 121.12 | 0.34 | 6.67 | 0.90 | STABLE | 0.96 |
SEYCHELLES | ||||||||||
Model 1 | 0.12 (5.87) ** | −0.09 (5.30) ** | −0.06 (3.58) ** | −0.78 (10.34) ** | 44.96 | 0.14 | 0.61 | 4.95 | STABLE | 0.87 |
Model 2 | 0.20 (4.85) ** | −0.00 (6.86) ** | −0.53 (6.95) ** | −0.97 (24.03) ** | 106.57 | 0.35 | 14.33 | 0.62 | STABLE | 0.93 |
Model 3 | −0.94 (7.68) ** | 0.00 (3.69) ** | −0.62 (0.88) ** | −0.99 (15.87) ** | 46.77 | 1.68 | 0.34 | 2.90 | STABLE | 0.85 |
SIERRA LEONE | ||||||||||
Model 1 | 0.24 (3.48) ** | −0.00 (7.72) ** | −0.25 (5.09) ** | −0.81 (18.72) ** | 122.31 | 0.02 | 212.38 | 1.82 | STABLE | 0.95 |
Model 2 | 0.30 (2.88) ** | −0.01 (11.13) ** | −0.20 (2.91) ** | −0.74 (22.60) ** | 200.42 | 0.38 | 40.04 | 2.37 | STABLE | 0.97 |
Model 3 | 0.19 (2.84) ** | −0.00 (9.53) ** | 0.28 (4.63) ** | −0.87 (20.10) ** | 103.56 | 0.75 | 156.92 | 2.61 | STABLE | 0.95 |
SOUTH AFRICA | ||||||||||
Model 1 | −1.28 (5.29) ** | −0.16 (3.31) ** | −0.42 (3.86) ** | −0.78 (9.76) ** | 17.62 | 0.74 | 80.25 | 1.47 | STABLE | 0.89 |
Model 2 | −2.07 (12.10) ** | −0.31 (7.39) ** | 0.18 (2.35) ** | −0.82 (27.78) ** | 223.09 | 1. 15 | 11.52 | 1.61 | STABLE | 0.95 |
Model 3 | 1.29 (5.40) ** | 0.16 (2.25) ** | 0.55 (3.08) ** | −0.23 (5.87) ** | 8.14 | 1.36 | 7.14 | 1.09 | STABLE | 0.87 |
SOUTH SUDAN | ||||||||||
Model 1 | 260.67 (4.64) ** | −12.71 (2.34) ** | - | −0.16 (8.28) ** | 22.10 | 1.16 | 331.07 | 2.49 | STABLE | 0.54 |
Model 2 | 3.16 (6.32) ** | −0.33 (11.17) ** | 34.51 (8.32) ** | −1.14 (36.14) ** | 242.62 | 1.09 | 2.06 | 3.20 | STABLE | 0.98 |
Model 3 | −282.82 (1.70) * | 59.03 (1.73) * | - | −0.004 (6.38) ** | 12.96 | 193.37 | 5.76 | 2.26 | STABLE | 0.39 |
SUDAN | ||||||||||
Model 1 | −0.03 (3.15) ** | −0.05 (8.37) ** | 0.24 (12.03) ** | −0.94 (30.60) ** | 221.71 | 0.06 | 28.99 | 0.81 | STABLE | 0.99 |
Model 2 | 0.04 (2.47) ** | −0.14 (13.65) ** | 0.42 (10.25) ** | −0.96 (23.44) ** | 102.35 | 0.60 | 4.76 | 1.40 | STABLE | 0.99 |
Model 3 | −0.003 (0.82) | 0.03 (12.55) ** | −0.10 (10.05) ** | −0.96 (22.03) ** | 90.37 | 0.66 | 7.19 | 1.54 | STABLE | 0.99 |
TANZANIA | ||||||||||
Model 1 | 0.03 (2.80) ** | −0.02 (13.22) ** | −0.27 (3.24) ** | −1.19 (11.02) ** | 22.51 | 0.28 | 130.96 | 2.23 | STABLE | 0.97 |
Model 2 | 0.05 (2.59) ** | −0.03 (14.99) ** | −0.67 (4.25) ** | −1.12 (12.23) ** | 27.84 | 0.97 | 160.83 | 1.73 | STABLE | 0.97 |
Model 3 | −0.01 (2.22) ** | 0.01 (13.67) ** | 0.18 (3.92) ** | −1.12 (11.76) ** | 25.74 | 0.64 | 137.55 | 2.26 | STABLE | 0.96 |
TOGO | ||||||||||
Model 1 | 1.26 (3.31) ** | 0.60 (4.73) ** | −1.60 (4.55) ** | −0.57 (4.87) ** | 5.50 | 1.88 | 23.52 | 1.01 | STABLE | 0.49 |
Model 2 | 0.88 (2.15) * | 0.56 (3.75) ** | −1.48 (2.85) ** | −0.61 (7.29) ** | 12.52 | 0.64 | 2.04 | 0.96 | STABLE | 0.52 |
Model 3 | −0.07 (0.68) | −0.05 (2.02) * | −0.02 (0.68) | −0.96 (8.20) | 12.55 | 0. 59 | 1.14 | 1.85 | STABLE | 0.53 |
UGANDA | ||||||||||
Model 1 | −0.47 (2.53) * | 0.08 (1.36) | 0.82 (3.07) * | −1.33 (5.33) ** | 5.11 | 0.34 | 2.90 | 1.54 | STABLE | 0.87 |
Model 2 | −8.10 (3.15) ** | 21.67 (2.02) ** | 148.98 (3.95) ** | −1.89 (6.98) ** | 8.74 | 0.89 | 3.89 | 1.92 | STABLE | 0.86 |
Model 3 | −0.07 (1.11) | −0.002 (2.12) * | −0.02 (0.68) | −0.96 (8.26) ** | 12.73 | 0.66 | 0.74 | 1.75 | STABLE | 0.54 |
ZAMBIA | ||||||||||
Model 1 | 0.05 (16.47) ** | −0.28 (10.90) ** | −0.15 (3.37) ** | −1.35 (9.71) ** | 16.82 | 1.66 | 1.01 | 11.76 | STABLE | 0.99 |
Model 2 | 0.05 (12.10) ** | −0.55 (16.59) ** | −0.21 (2.70) ** | −1.14 (22.46) ** | 91.90 | 0.10 | 0.17 | 0.88 | STABLE | 0.99 |
Model 3 | −0.03 (15.59) ** | 0.18 (17.23) ** | 0.11 (4.69) ** | −1.08 (30.14) ** | 165.94 | 0.83 | 1.15 | 0.91 | STABLE | 0.99 |
ZIMBABWE | ||||||||||
Model 1 | 0.03 (0.29) | −0.33 (8.39) ** | 0.03 (0.44) | −1.13 (14.45) ** | 38.96 | 0.16 | 99.35 | 3.25 | STABLE | 0.78 |
Model 2 | 0.02 (0.45) | −0.21 (8.42) ** | 0.02 (0.45) ** | 1.14 (14.50) ** | 39.20 | 0.23 | 145.22 | 3.08 | STABLE | 0.78 |
Model 3 | −0.01 (0.16) | 0.19 (7.56) ** | −0.02 (0.47) | −1.13 (13.19) ** | 32.44 | 0.20 | 83.54 | 4.73 | - | 0.75 |
Authors | Objectves | Estimation Technique | Findings | |
---|---|---|---|---|
1 | Micah et al. (2019) | To explain the growth in government health spending and examine its determinants and explain the variation in government health spending | Panel regression model | the growth rate in government health spending in Sub-Saharan Africa has been positive overall |
2 | Novignon and Lawanson (2017) | To understand the relationship between child health outcomes and health spending while investigating the lagged effect | Fixed and Random effect models | health expenditure is crucial for the improvement of child health, it is equally important for this expenditure to be sustainable as it also has delayed effects |
3 | Odhiambo et al. (2015) | Test for convergence in health expenditure in SSA after the Abuja Declaration | GMM-IV method | show evidence of absolute and conditional convergence of health expenditure in SSA |
4. | Obafemi et al. (2013) | Studies the long-run relationship between health care expenditure and GDP for 32 SSA | panel unit roots and cointegration techniques | Existence of a long-run relationship between income and GDP |
5 | Novignon et al. (2012), | To determine the effect of public and private health expenditure on health status | Fixed and Random effect panel regression | Health expenditure significantly influenced health status |
6 | Mallaye and Yogo (2012). | Examines the effect of health aid on health outcomes | The results reveal that health aid improves health outcomes in Sub-Saharan African countries | |
7 | Filmer and Pritchett (1999) | Examine the impact of both public spending on health and non-health factors in determining child (under 5) and infant mortality | The impact of public spending on health is quite small, with a coefficient typically both numerically small and statistically insignificant at a conventional level | |
8. | Rana et al. (2018) | The relationship between health expenditure and health outcomesand how it varies across countries at different income levels | panel Autoregressive Distributed Lag, Dumitrescu-Hurlin and Toda-Yamamoto approach to Granger causality | The results show that the health expenditure and health outcome link is stronger for low-income compared to high-income countries. Moreover, rising health expenditure can reduce child mortality but has an insignificant relationship with maternal mortality at all income levels |
9 | Kim and Wang (2019) | Measure the degree of direct or indirect impact of quality and quantity of government on public health | Causal and regression analysis | Results show that both the quality and quantity of government had a significant effect on public health |
10 | Nakamura et al. (2016) | Relationship between public expenditure on health and mortality | BGG and MSS | The impact of health expenditure turn out rather mixed, though overall the magnitudes of the impacts, whether statistically significant or not, are much smaller than expectations |
1 | A criticism of this approach is that it assumes that the experiences of a single country (for example, its economic development trajectory) over time should reflect those of a group of countries at different stages of development at a given moment. The time path of one country may not match that of a group due to the wide range of social, economic, and political factors between countries. |
2 | Government effectiveness is World Development Indicator. A country’s score gives the country’s score on the aggregate indicator, in units of a standard normal distribution, i.e., ranging from approximately −2.5 to 2.5. It measures perceptions of the quality of public services and civil service as well as the degree of its independence from political pressures. It also shows the quality of policy formulation and implementation, and government’s commitment to such policies. |
3 | It is efficient in the face of small samples, tolerates different lag lenghts for the independent and dependent variables, and can model I(0) and I(1) variables together (Arize et al. 2018). It is unaffected by multicollinearity since logarithmic first-differencing is usually applied to time series data (Berndt 1991; Kalu et al. 2020). |
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S/No | Variable Name /Description | Notation | Source of Data | Role |
---|---|---|---|---|
1 | Infant Mortality The infant mortality rate is the number of infants dying before reaching one year of age, per 1000 live births in a given year. | INFMORT | United Nations Population Division. World Population Prospects: 2022 Revision referred from World Development Indicator | Dependent Variable |
2 | Maternal and Adult Mortality The maternal and adult mortality rate is the probability of dying between the ages of 15 and 60—that is, the probability of a 15-year-old dying before reaching age 60, if subject to age-specific mortality rates of the specified year between those ages. | MAdMR | United Nations Population Division. World Population Prospects: 2022 Revision referred from World Development Indicator | Dependent Variable |
3 | Life Expectancy (Total) Life expectancy at birth indicates the number of years a newborn infant would live if prevailing patterns of mortality at the time of its birth were to stay the same throughout its life. | LEXPTO | United Nations Population Division. World Population Prospects: 2022 Revision referred from World Development Indicator | Dependent Variable |
4 | Total Health Expenditure to Gross Domestic Product Level of current health expenditure expressed as a percentage of GDP. Estimates of current health expenditures include health care goods and services consumed during each year. This indicator does not include capital health expenditures such as buildings, machinery, IT and stocks of vaccines for emergency or outbreaks. | THEGDP | World Health Organization Global Health Expenditure database retrieved through World Development Indicator (WDI) | Independent Variable |
5 | Health Expenditure Per Capital Current expenditures on health per capita in current US dollars. Estimates of current health expenditures include health care goods and services consumed during each year. | HEPC | World Health Organization Global Health Expenditure database retrieved through World Development Indicator (WDI) | Independent Variable |
6 | Government Effectiveness Government effectiveness captures perceptions of the quality of public services, the quality of the civil service and the degree of its independence from political pressures, the quality of policy formulation and implementation, and the credibility of the government’s commitment to such policies. Estimate gives the country’s score on the aggregate indicator, in units of a standard normal distribution, i.e., ranging from approximately −2.5 to 2.5. | GEFF | Detailed documentation of the World Governance Indicator, retrieved through World Development Indicator (WDI) | Independent Variable |
State | Decision | Conclusions |
---|---|---|
FPSS > I(1) | HO is rejected | Cointegration |
FPSS < I(0) and I(1) | HO cannot be rejected | No cointegration |
FPSS within I(1) and I(0) | Inconclusive | Inconclusive |
Variable Name | Mean | Median | Std. Dev. | Skewness | Kurtosis | Jarque–Bera | RSD |
---|---|---|---|---|---|---|---|
GEFF | −0.39 | 0.00 | 0.60 | −0.91 | 3.13 | 331.78 | −1.53 |
HEPC | 38.18 | 0.00 | 99.69 | 4.17 | 22.39 | 44,539.16 | 2.61 |
INFMORT | 79.56 | 74.40 | 40.86 | 0.23 | 2.69 | 30.18 | 0.51 |
LEXPTO | 52.56 | 53.28 | 11.32 | −2.11 | 11.59 | 9160.64 | 0.22 |
MATMORT | 210.38 | 0.00 | 347.87 | 1.81 | 6.46 | 2511.29 | 1.65 |
THEGDP | 2.03 | 0.00 | 2.96 | 1.36 | 4.56 | 984.41 | 1.46 |
Correlation | ||||||
---|---|---|---|---|---|---|
t-Statistic | ||||||
Probability | GEFF | HEPC | INFMORT | LEXPTO | MATMORT | THEGDP |
GEFF | 1.000000 | |||||
----- | ||||||
----- | ||||||
HEPC | 0.080953 | 1.000000 | ||||
3.977252 | ----- | |||||
0.0001 | ----- | |||||
INFMORT | 0.113309 | −0.343612 | 1.000000 | |||
5.584645 | −17.91745 | ----- | ||||
0.0000 | 0.0000 | ----- | ||||
LEXPTO | 0.001489 | 0.300848 | −0.291878 | 1.000000 | ||
0.072897 | 15.44800 | −14.94383 | ----- | |||
0.9419 | 0.0000 | 0.0000 | ----- | |||
MATMORT | −0.553341 | 0.082174 | −0.092303 | 0.099220 | 1.000000 | |
−32.53089 | 4.037655 | −4.539381 | 4.882843 | ----- | ||
0.0000 | 0.0001 | 0.0000 | 0.0000 | ----- | ||
THEGDP | −0.364185 | 0.498798 | −0.338484 | 0.300746 | 0.604553 | 1.000000 |
−19.14893 | 28.18199 | −17.61513 | 15.44223 | 37.16527 | ----- | |
0.0000 | 0.0000 | 0.0000 | 0.0000 | 0.0000 | ----- |
HEPC | THEGDP vs. MRAD | GEFF vs. MRAD | HEPC vs. INFMORT | THEGDP vs. INFMORT | GEFF vs. INFMORT | HEPC vs. LEXP | THEGDP vs. LEXP | GEFF vs. LEXP | |
---|---|---|---|---|---|---|---|---|---|
Number of Countries * | 39 | 40 | 34 | 42 | 36 | 34 | 43 | 35 | 28 |
% of Compliance with a prori expectation | 87 | 89 | 76 | 93 | 80 | 76 | 96 | 78 | 62 |
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Arize, A.; Kalu, E.U.; Lubiani, G.; Udemezue, N.N. Public Health Expenditure and Sustainable Health Outcomes in 45 Sub-Saharan African Countries: Does Government Effectiveness Matter? Economies 2024, 12, 129. https://doi.org/10.3390/economies12060129
Arize A, Kalu EU, Lubiani G, Udemezue NN. Public Health Expenditure and Sustainable Health Outcomes in 45 Sub-Saharan African Countries: Does Government Effectiveness Matter? Economies. 2024; 12(6):129. https://doi.org/10.3390/economies12060129
Chicago/Turabian StyleArize, Augustine, Ebere Ume Kalu, Greg Lubiani, and Ndubuisi N. Udemezue. 2024. "Public Health Expenditure and Sustainable Health Outcomes in 45 Sub-Saharan African Countries: Does Government Effectiveness Matter?" Economies 12, no. 6: 129. https://doi.org/10.3390/economies12060129
APA StyleArize, A., Kalu, E. U., Lubiani, G., & Udemezue, N. N. (2024). Public Health Expenditure and Sustainable Health Outcomes in 45 Sub-Saharan African Countries: Does Government Effectiveness Matter? Economies, 12(6), 129. https://doi.org/10.3390/economies12060129