| Literature DB >> 16364186 |
Joses M Kirigia1, Anthony Seddoh, Doris Gatwiri, Lenity H K Muthuri, Janet Seddoh.
Abstract
BACKGROUND: The implementation of the 58th World Health Assembly resolution on e-health will pose a major challenge for the Member States of the World Health Organization (WHO) African Region due to lack of information and communications technology (ICT) and mass Internet connectivity, compounded by a paucity of ICT-related knowledge and skills. The key objectives of this article are to: (i) explore the key determinants of personal computers (PCs), telephone mainline and cellular and Internet penetration/connectivity in the African Region; and (ii) to propose actions needed to create an enabling environment for e-health services growth and utilization in the Region.Entities:
Mesh:
Year: 2005 PMID: 16364186 PMCID: PMC1327685 DOI: 10.1186/1471-2458-5-137
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Hypothesized relationships between the personal computer penetration and independent variables in equation 1
| Adult literacy (Education) | β1 | Positive | Valleta & MacDonald [16];Quibria et al [15];Chinn MD & Fairlie [17];Dewan et al [18] |
| Per capita income | β2 | Positive | Valleta & MacDonald [16];Quibria et al [15];Kiiski & Pahjola [19];Dewan et al [18] |
| Regulatory quality | β3 | Positive | Chinn MD & Fairlie [17] |
| Total number of internet users | β4 | Positive | Kiiski & Pahjola [19]; |
| Total population | β5 | Positive | Chinn MD & Fairlie [17] |
Hypothesized relationships between the number of telephone mainlines per 1000 people and independent variables in equation 2
| Combined school enrolment ratio | β1 | Positive | Quibria et al [15];Chinn MD & Fairlie [17] |
| Per capita income | β2 | Positive | Oyelaran-Oyeyinka & Lal [21]; |
| Regulatory quality | β3 | Indeterminate | |
| Rule of law | β4 | Positive | |
| Corruption control | β5 | Indeterminate |
Hypothesized relationships between the number of cellular phone subscribers per 1000 people and independent variables in equation 3
| Combined school enrolment ratio | β1 | Positive | Chinn & Fairlie [17]; |
| Per capita income | β2 | Positive | Chinn & Fairlie [17];Oyelaran-Oyeyinka & Lal [21];Quibria et al [15] |
| Regulatory quality | β3 | Positive | Chinn & Fairlie [17]; |
| Rule of law | β4 | Indeterminate | |
| Corruption control | β5 | Indeterminate |
Hypothesized relationships between the number of internet user per 1000 people and independent variables
| Combined school enrolment ratio | β1 | Positive | Chinn MD & Fairlie [17]; Muller [22]; Dewan et al [18]; Comin & Hobijn [20] |
| Per capita income | β2 | Positive | Kiiski & Pahjola [19]; Quibria et al [15]; Chinn & Fairlie [17]; Muller [22]; Dewan et al [18]; Comin & Hobijn [20] |
| Electricity consumption per person | β3 | Positive | Chinn MD & Fairlie [17] |
| Telephone mainlines per 1000 persons | β4 | Positive | Oyelaran-Oyeyinka & Lal [21]; Chinn & Fairlie [17]; Muller [22]; Dewan et al [18] |
| Corruption control/Regulatory quality | β5 | Positive | Chinn & Fairlie [17]; Muller [22] |
| Cellular phone users | β6 | Positive | Muller [22] |
Definition of variables and sources of data
| AL | Adult literacy rate (% ages 15 and above) | UNDP [12] |
| ER | Combined gross enrolment ratio for primary, secondary and tertiary schools (%) | UNDP [12] |
| Y | GDP per capita, expressed in international dollars (in $PPP) | UNDP [12] |
| EL | Electricity consumption per capita (kilowatt-hours) | UNDP [12] |
| PCs | Personal computers (PCs) per 100 people | ITU [14] |
| TPCs | Total number of PCs in a country | UNDP [12] |
| TML | Telephone mainlines per 1 000 people | ITU [14] |
| CS | Cellular subscribers per 1 000 people | ITU [14] |
| NET | Number of internet users per 1 000 people | ITU [14] |
| RQ | Regulatory quality: measured in units ranging from -2.5 to 2.5, with higher values corresponding to better governance outcomes | World Bank [13] |
| RL | Rule of law: measured in units ranging from -2.5 to 2.5, with higher values corresponding to better governance outcomes | World Bank [13] |
| CC | Corruption control: measured in units ranging from -2.5 to 2.5, with higher values corresponding to better governance outcomes | World Bank [13] |
| TPOP | Total human population in a country | UNDP [12] |
Descriptive statistics for dependent and independent variables
| Adult literacy rate | 45 | 60.95 | 20.79 | 12.8 | 91.9 |
| Combined primary, secondary and tertiary enrolment rate | 45 | 49.67 | 17.04 | 19 | 85 |
| Net primary enrolment ratio | 39 | 68.03 | 20.52 | 30 | 106 |
| Net secondary enrolment ratio | 29 | 28.69 | 21.93 | 5 | 98 |
| Percapita income ($PPP) | 44 | 3158.39 | 5276.94 | 520 | 30 13 |
| Electricity consumption per capita | 37 | 151.30 | 214.49 | 12 | 950 |
| Total number of PCs | 45 | 192102.6 | 537485.80 | 4000 | 3300000 |
| Telephone main lines per 1000 people | 45 | 31.58 | 60.42 | 0 | 270 |
| Cellular subscribers per 1000 people | 45 | 60.29 | 104.79 | 0 | 553 |
| Internet users per 1000 people | 45 | 16.87 | 28.83 | 0.7 | 145.2 |
| Regulatory quality | 46 | -0.62 | 0.64 | -2.15 | 0.96 |
| Rule of law | 46 | -0.72 | 0.61 | -1.76 | 0.84 |
| Corruption control | 46 | -0.62 | 0.52 | -1.65 | 0.86 |
| Population | 45 | 15100000 | 22300000 | 80000 | 123000000 |
Regression of logarithm of the number of personal computers (PCs)
| Logarithm of adult literacy | 0.435 | 2.24* | 0.032 | 0.039 to 0.831 |
| Logarithm of per capita income | 0.194 | 1.73 | 0.093 | -0.0338 to 0.421 |
| Regulatory quality | 0.142 | 1.13 | 0.269 | -0.115 to 0.399 |
| Logarithm of total number of Internet users | 0.804 | 9.56* | 0.000 | 0.633 to 0.975 |
| Logarithm of total population | 0.143 | 1.47 | 0.150 | -0.054 to 0.339 |
| Constant | -3.291 | -1.88 | 0.069 | -6.853 to 0.272 |
| Number of observations | 39 | |||
| F(5, 33) | 75.69 | |||
| Prob > F | 0.000 | |||
| Adjusted R-squared | 0.908 | |||
*Statistically significant at 95% level of confidence. This means that the computed t-value (tk) is greater than the critical t-value (tc) of 2.042 which was obtained from a table of critical values of the t-distribution.
Regression of logarithm of the number of telephone mainlines per 1 000 people
| Logarithm of combined enrolment ratio | 0.911 | 2.63* | 0.012 | 0.306 to 0.839 |
| Logarithm of per capita income | 0.573 | 4.36* | 0.000 | 0.306 to 0.839 |
| Regulatory quality | -0.791 | -2.71* | 0.010 | -1.384 to -0.199 |
| Rule of law | 0.777 | 1.67 | 0.102 | -0.163 to 1.717 |
| Corruption | 0.709 | 1.73 | 0.091 | -0.119 to 1.538 |
| Constant | -4.852 | -3.79 | 0.001 | -7.444 to -2.260 |
| Number of observations | 43 | |||
| F(5, 37) = | 23.20 | |||
| Prob > F | 0.000 | |||
| Adjusted R-squared | 0.726 | |||
*Statistically significant at 95% level of confidence.
Regression of logarithm of the number of cellular subscribers per 1 000 people
| Logarithm of combined enrolment ratio | 1.448 | 3.05* | 0.004 | 0.485 to 2.411 |
| Logarithm of per capita income | 0.601 | 3.33* | 0.002 | 0.234 to 0.969 |
| Regulatory quality | 0.144 | 0.35 | 0.732 | -0.705 to 0.993 |
| Rule of law | -0.616 | -0.92 | 0.363 | -1.972 to 0.740 |
| Corruption | 0.992 | 1.71 | 0.095 | -.183 to 2.167 |
| Constant | -6.656 | -3.74 | 0.001 | -10.271 to -3.041 |
| Number of observations | 41 | |||
| F(5, 35) = | 13.43 | |||
| Prob > F | 0.0000 | |||
| Adjusted R-squared | 0.6084 | |||
*Statistically significant at 95% level of confidence.
Regression of logarithm of the number of internet user per 1 000 people
| Logarithm of combined enrolment ratio | 0.906 | 2.13* | 0.042 | 0.036 to 1.771 |
| Logarithm of per capita income | 0.007 | 0.04 | 0.969 | -0.389 to 0.374 |
| Log of electricity consumption | 0.051 | 0.43 | 0.673 | -0.195 to 0.297 |
| Logarithm of telephone mainlines per 1000 persons | 0.622 | 3.60* | 0.001 | 0.268 to 0.976 |
| Corruption control | 0.297 | 0.89 | 0.381 | -0.386 to 0.981 |
| Constant | -3.130 | -1.84 | 0.077 | -6.619 to 0.359 |
| Number of observations | 34 | |||
| F(5, 35) = | 16.77 | |||
| Prob > F | 0.0000 | |||
| Adjusted R-squared | 0.705 | |||
*Statistically significant at 95% level of confidence.
Total number of internet hosts, internet users, PCs, cellular subscribers, telephone mainlines, telephone subscribers across various income groupings of countries in the African region
| Total internet hosts | 6452 | 1.47 | 294127 | 3.61 | 628470.6 | 1.06 |
| Total internet users | 256700 | 58.34 | 3712000 | 45.52 | 3739500 | 6.32 |
| Total personal computers | 293000 | 66.59 | 3821000 | 46.85 | 3378000 | 5.71 |
| Total cellular subscribers | 1198000 | 272.27 | 18666400 | 228.90 | 15255000 | 25.80 |
| Total telephone mainlines | 539600 | 122.64 | 7288900 | 89.38 | 4017300 | 6.79 |
| Total telephone subscribers | 1737700 | 394.93 | 22797300 | 279.55 | 17937400 | 30.33 |
| Population | 4400000 | 81550000 | 591340000 | |||
Notes: Low income – economies with gross national income (GNI) per capita of US$825 or less; Lower-middle income – economies with a GNI per capita of more than US$826 and less than US$3255; Upper-middle income – economies with a GNI per capita of more than US$3256 and less US$10065.
Figure 1Distribution of countries by ICT.
Figure 2e-health-related initiatives/projects by WHO.