| Literature DB >> 35627939 |
Courage Mlambo1, Kin Sibanda2, Bhekabantu Ntshangase1, Bongekile Mvuyana1.
Abstract
Attainment of sexual and reproductive health is regarded as a human rights matter. Notwithstanding this, maternal mortality continues to be a major public health concern in low-income countries, especially those in sub-Saharan Africa. Maternal mortality remains high in Africa, yet there are information communication technologies (ICTs) (such as the internet, mobile communication, social media, and community radios) that have the potential to make a difference. Making effective use of all of these ICTs can considerably decrease preventable maternal deaths. ICTs, particularly mobile devices, offer a platform for access to health information and services that can bring change in areas where health infrastructure and resources are often limited. However, for Southern Africa, maternal mortality remains high despite the presence of ICT tools that have transformative potential to improve maternal health. In light of this, this study sought to examine the impact of ICT on maternal health. The study was quantitative in nature, and it used panel data that covered the period from 2000-2018. The Mean Group and Pooled Mean Group cointegration techniques and a generalised method of moments panel technique were used for estimation purposes. Results showed that ICT has a negative effect on maternal health. This shows that ICT tools contribute positively to maternal health. The study gave a number of recommendations. The mobile gender gap should be closed (digital inclusion), mobile network connectivity boosted, and digital platforms must be created in order to enhance the transformative potential of ICT in improving health outcomes.Entities:
Keywords: ICT; development; eHealth; maternal health; maternal mortality; women’s health
Year: 2022 PMID: 35627939 PMCID: PMC9141576 DOI: 10.3390/healthcare10050802
Source DB: PubMed Journal: Healthcare (Basel) ISSN: 2227-9032
Compendium of eHealth projects in selected developing countries.
| eHealth | Description | ICT Application | Country |
|---|---|---|---|
|
| Pregnancies are registered, births are recorded, deaths are recorded, and the cause of death is recorded via a text message system. | Civil Registration and Vital Statistics | Ghana |
|
| Pregnancy registration and monitoring, as well as neonatal and post-partum care, have all benefited from the usage of mobile phone and database technology. | Data collection | Bangladesh |
|
| Community health workers (CHWs) utilize cell phones to give real-time data about community health indicators. | Health Information System | India |
|
| Health information system to improve maternal and child care at the health centre level | Health | Rwanda |
|
| Mobile phones are used to identify high-risk pregnancy warning signs and symptoms to assist primary health care providers in providing monitoring and follow-up for high-risk pregnancy cases and to enable prompt obstetric and newborn care treatments. | Patient monitoring Point-of-care support and decision support system | Mexico |
|
| Mobile-phone-based system monitoring information on mother and child health. | Patient monitoring | Mali |
|
| Small battery-operated printers are used to receive and print early baby diagnosis test results in order to improve early infant diagnostic services by speeding up the delivery of results and determining treatment eligibility. | Diagnosis | Cameroon |
|
| Mobile technology solutions to enhance maternity and child care by increasing low-income pregnant women’s access to health services | SMS-based health | Peru |
Source: International Telecommunication Union (2012) [42].
Summary of Variable Description.
| Variable 1 | Description and Unit of Measurement | Source |
|---|---|---|
| MM | Maternal mortality ratio is the number of women who die from pregnancy-related causes while pregnant or within 42 days of pregnancy termination per 100,000 live births | World Bank |
| HIV | Prevalence of HIV, female is the percentage of females who are infected with HIV. | World Bank |
| ICT | Mobile cellular telephone subscriptions are subscriptions to a public mobile telephone service that provides access to the PSTN using cellular technology. | World Bank |
| FR | Fertility Rate. Total fertility rate represents the number of children that would be born to a woman if she were to live to the end of her childbearing years. | World Bank |
| GDP | Gross domestic product (GDP), total (2017 PPP $ billions). | World Bank |
| LE | Life Expectancy. 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. | World Bank |
1 Fertility rate (FR), Economic Growth (GDP), Human Immune Virus (HIV), Information communication Technology (ICT), Life Expectancy (LE) and Maternal Mortality (MM).
Descriptive statistics.
| FR 1 | GDP | HIV | ICT | LE | MM | |
|---|---|---|---|---|---|---|
|
| 4.3807 | 3.3078 | 7.1477 | 45.1157 | 58.2737 | 418.6071 |
|
| 4.4130 | 9.9309 | 6.4500 | 33.3719 | 58.0365 | 433.0001 |
|
| 6.7510 | 4.1456 | 24.2000 | 163.8752 | 77.8900 | 854 |
|
| 1.3600 | 3.5032 | 0.1792 | 0.2486 | 44.5950 | 53 |
|
| 1.3964 | 7.3792 | 6.5320 | 42.5186 | 7.9601 | 196.4620 |
|
| −0.1775 | 3.5314 | 0.7440 | 0.9835 | 0.4392 | −0.0756 |
|
| 2.0825 | 15.0644 | 2.6297 | 3.1195 | 2.8888 | 2.1356 |
|
| 10.8875 | 28.6624 | 26.4573 | 43.6965 | 8.8196 | 8.6620 |
|
| 0.0043 | 0.00000 | 0.00000 | 0.00000 | 0.01215 | 0.0131 |
|
| 1182.7912 | 8.9136 | 1929.90 | 12,181.26 | 15,733.90 | 113,024.0 |
|
| 524.578 | 1.4691 | 11,477.71 | 486,308.4 | 17,045.09 | 10,382,674 |
|
| 270 | 270 | 270 | 270 | 270 | 270 |
1 Fertility rate (FR), Economic Growth (GDP), Human Immune Virus (HIV), Information communication Technology (ICT), Life Expectancy (LE) and Maternal Mortality (MM).
Unit root tests.
| Variable 1 | Levin, Lin & Chu | Lm, Pesaran and Shin W-Stat | ||
|---|---|---|---|---|
| Stat. | Prob | Stat | Prob | |
| MM | −0.4234 | 0.3112 | −0.3384 | 0.3675 |
| 1st diff | −4.9406 | 0.0011 | −5.6043 | 0.0000 |
| LE | −0.6051 | 0.5257 | 0.14047 | 0.5559 |
| 1st diff | −3.6663 | 0.0001 | −4.5141 | 0.0120 |
| ICT | −3.8939 | 0.0000 | −4.2341 | 0.0000 |
| HIV | −0.7355 | 0.2310 | −3.5033 | 0.0212 |
| 1st diff | −2.0847 | 0.0185 | - | - |
| GDP | −0.5892 | 0.8501 | 1.2605 | 0.8963 |
| 1st diff | −3.6408 | 0.0162 | −4.1661 | 0.0000 |
| FR | −1.9429 | 0.0260 | −2.3435 | 0.0096 |
1 Fertility rate (FR), economic growth (GDP), human immunodeficiency virus (HIV), information communication technology (ICT), life expectancy (LE) and maternal mortality (MM).
Pedroni cointegration test.
| Cointergration Test | Intercept |
|---|---|
|
|
|
| Panel v-statistic | 0.0009 |
| Panel rho-statistic | 0.0000 |
| Panel PP-statistic | 0.1083 |
| Panel ADF-statistic | 0.0210 |
| Group Panel rho-statistic | 0.0166 |
| Group PP-statistic | 0.5429 |
| Group ADF-statistic | 0.0120 |
MG and PMG results.
| Variable | MG | PMG |
|---|---|---|
| Long-run coefficients | ||
| ICT 1 | −0.0750 ** | −0.0950 ** |
| FR | 0.2163 ** | 0.3564 *** |
| GDP | −0.4793 | −0.6936 |
| LE | −0.3287 *** | −0.3727 *** |
| HIV | 0.4092 ** | 0.5430 *** |
| Short-run coefficients | ||
| ICT | −0.1451 * | −0.0342 ** |
| FR | 0.1054 | 0.2542 |
| GDP | 0.0389 | −0.0342 *** |
| LE | −0.0195 * | −0.0005 ** |
| HIV | 0.1286 ** | 0.1734 ** |
| ECT 2 | −0.4326 ** | −0.3219 ** |
Note: *** 1% level, ** 5% level, and * 10% level. 1 Fertility rate (FR), economic growth (GDP), human immunodeficiency virus (HIV), information communication technology (ICT), life lxpectancy (LE) and maternal mortality (MM). 2 Error correction term.
Regression results. Dependent variable: MM.
| Variable | FE | RE | GMM (1) | GMM (2) |
|---|---|---|---|---|
|
| 0.1333 * | 0.0949 * | ||
|
| 0.3245 | −0.0146 | −0.0765 *** | −0.0541 *** |
|
| 0.0013 | 0.2447 ** | 0.4765 *** | 0.4133 *** |
|
| −0.1367 ** | −0.2447 ** | 0.0003 | 0.0020 |
|
| −0.1522 *** | −0.1663 *** | −0.8057 | −0.3773 |
|
| 0.0635 ** | 0.1129 | 0.3668 *** | |
|
| 0.4765 *** | |||
|
| 270 | 270 | 270 | 270 |
1 Fertility rate (FR), economic growth (GDP), human immunodeficiency virus (HIV), information communication technology (ICT), life expectancy (LE) and maternal mortality (MM). 2 HIV prevalence rate—this is the percentage of people (both men and women) living with HIV. This was added in the second model (Model 2) for robustness purposes. *** 1% level, ** 5% level, and * 10% level.