| Literature DB >> 35365718 |
Andre M N Renzaho1, Sheikh Mohammed Shariful Islam2, Md Akhtarul Islam3, Nusrat Jahan Sathi4, Md Tanvir Hossain5, Abdul Jabbar6.
Abstract
Caesarean delivery (C-section) has been increasing worldwide; however, many women from developing countries in Sub-Saharan Africa are deprived of these lifesaving services. This study aimed to explore the impact of certain socioeconomic factors, including respondent's education, husband's education, place of residence, and wealth index, on C-section delivery for women in Sub-Saharan Africa. We used pooled data from 36 demographic and health surveys (DHS) in Sub-Saharan Africa. Married women aged 15-49 years who have at least one child in the last five years were considered in this survey. After inclusion and excluding criteria, 234,660 participants were eligible for final analysis. Binary logistic regression was executed to determine the effects of selected socioeconomic factors. The countries were assembled into four sub-regions (Southern Africa, West Africa, East Africa, and Central Africa), and a meta-analysis was conducted. We performed random-effects model estimation for meta-analysis to assess the overall effects and consistency between covariates and utilization of C-section delivery as substantial heterogeneity was identified (I2 > 50%). Furthermore, the meta-regression was carried out to explain the additional amount of heterogeneity by country levels. We performed a sensitivity analysis to examine the effects of outliers in this study. Findings suggest that less than 15% of women in many Sub-Saharan African countries had C-section delivery. Maternal education (OR 4.12; CI 3.75, 4.51), wealth index (OR 2.05; CI 1.94, 2.17), paternal education (OR 1.71; CI 1.57, 1.86), and place of residence (OR 1.51; CI 1.44, 1.58) were significantly associated with the utilization of C-section delivery. These results were also consistent in sub-regional meta-analyses. The meta-regression suggests that the total percentage of births attended by skilled health staff (TPBASHS) has a significant inverse association with C-section utilization regarding educational attainment (respondent & husband), place of residence, and wealth index. The data structure was restricted to define the distinction between elective and emergency c-sections. It is essential to provide an appropriate lifesaving mechanism, such as C-section delivery opportunities, through proper facilities for rural, uneducated, impoverished Sub-Saharan African women to minimize both maternal and infant mortality.Entities:
Mesh:
Year: 2022 PMID: 35365718 PMCID: PMC8975863 DOI: 10.1038/s41598-022-09567-1
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1PRISMA (preferred reporting items for systematic reviews and meta-analysis) flow diagram illustrating the process of identifying and including DHS datasets for the random effect meta-analysis.
Baseline characteristics table for selected variables for different countries.
| Country name | Respondent’s education n (%) | Wealth Index n (%) | Husband’s Education n (%) | Place of Residence n (%) | Delivery by caesarean (%) | |||||
|---|---|---|---|---|---|---|---|---|---|---|
| Not educated | Educated | Up to middle | Rich | Not educated | Educated | Urban | Rural | No | Yes | |
| Angola 2015–16 | 1491 (26.3) | 4169 (73.7) | 3508 (62.0) | 2152 (38.0) | 1115 (19.7) | 4545 (80.3) | 3550(62.7) | 2110(37.3) | 5411 (95.6) | 249 (4.4) |
| Benin 2017–18 | 5262 (66.3) | 2676 (33.7) | 4937 (62.2) | 3000 (37.8) | 4358 (54.9) | 3580 (45.1) | 2989 (37.7) | 4948 (62.3) | 7478 (94.2) | 460 (5.8) |
| Burkina Faso 2010 | 8558 (83.3) | 1717 (16.7) | 6409 (62.4) | 3866 (37.6) | 8325 (81.0) | 1950 (19.0) | 1881 (18.3) | 8394 (81.7) | 10,043 (97.7) | 233 (2.3) |
| Burundi 2016–17 | 3676 (47.2) | 4119 (52.8) | 4960 (63.6) | 2835 (36.4) | 3012 (38.6) | 4783 (61.4) | 713 (9.1) | 7083 (90.9) | 7341 (94.2) | 455 (5.8) |
| Cameroon, 2018 | 1544 (30.1) | 3593 (69.9) | 3368 (65.6) | 1769 (34.4) | 1251 (24.4) | 3886 (75.6) | 2238 (43.6) | 2899 (56.4) | 4950 (96.3) | 188 (3.7) |
| Chad 2014–15 | 6820 (66.8) | 3391 (8.8) | 6362 (62.3) | 3849 (37.7) | 5986 (58.6) | 4224 (41.4) | 2005 (19.6) | 8206 (80.4) | 10,260 (98.7) | 137 (1.3) |
| Comoros, 2012 | 848 (43.6) | 1098 (56.4) | 1248 (64.1) | 698 (35.9) | 725 (37.3) | 1221 (62.7) | 568 (29.2) | 1378 (70.8) | 1732 (89.0) | 214 (11.0) |
| Congo Democratic Republic, 2013–14 | 1894 (18.7) | 8245 (81.3) | 6577 (64.9) | 3562 (35.1) | 786 (7.8) | 9353 (92.2) | 3121 (30.8) | 7018 (69.2) | 9561 (94.3) | 578 (5.7) |
| Congo, 2011–12 | 317 (6.3) | 4741 (93.7) | 3148 (62.2) | 1910 (37.8) | 171 (3.4) | 4887 (96.6) | 3265 (64.5) | 1794 (35.5) | 4741 (93.7) | 318 (6.3) |
| Cote d'Ivoire, 2011–12 | 2892 (65.9) | 1497 (34.1) | 2876 (65.5) | 1513 (34.5) | 2352 (53.6) | 2037 (46.4) | 1663 (37.9) | 2726 (62.1) | 4264 (97.1) | 125 (2.9) |
| Eswatini, 2006–07 | 132 (10.3) | 1146 (89.7) | 773 (60.5) | 505 (39.5) | 176 (13.8) | 1102 (86.2) | 293 (22.9) | 985 (77.1) | 1167 (91.3) | 111 (8.7) |
| Ethiopia-2016 | 4474 (63.3) | 2592 (36.7) | 4559 (64.5) | 2507 (35.5) | 3346 (47.4) | 3720 (52.6) | 872 (12.3) | 6194 (87.7) | 6903 (97.7) | 163 (2.3) |
| Gabon, 2012 | 194 (7.5) | 2389 (92.5) | 1562 (60.5) | 1021 (39.5) | 204 (7.9) | 2379 (92.1) | 2212 (85.6) | 371 (14.4) | 2274 (88.0) | 309 (12.0) |
| Gambia 2013 | 2947 (59.8) | 1979 (40.2) | 2999 (60.9) | 1927 (39.1) | 3042 (61.7) | 1884 (38.3) | 2411 (48.9) | 2515 (51.1) | 4808 (97.6) | 118 (2.4) |
| Ghana, 2014 | 1035 (28.1) | 2645 (71.9) | 2220 (60.3) | 1460 (39.7) | 807 (21.9) | 2873 (78.1) | 1687 (45.8) | 1993 (54.2) | 3169 (86.1) | 511 (13.9) |
| Guinea, 2018 | 3902 (77.9) | 1105 (22.1) | 3312 (66.2) | 1694 (33.8) | 3653 (73.0) | 1353 (27.0) | 1407 (28.1) | 3600 (71.9) | 4854 (97.0) | 152 (3.0) |
| Kenya, 2014 | 654 (10.6) | 5541 (89.4) | 3592 (58.0) | 2604 (42.0) | 502 (8.1) | 5693 (91.9) | 2400 (38.7) | 3796 (61.3) | 5640 (91.0) | 556 (9.0) |
| Lesotho, 2014 | 19 (0.8) | 2231 (99.2) | 1345 (59.8) | 905 (40.2) | 297 (13.2) | 1953 (86.8) | 648 (28.8) | 1602 (71.2) | 2017 (89.6) | 233 (10.4) |
| Liberia, 2013 | 1710 (44.6) | 2124 (55.4) | 2534 (66.1) | 1300 (33.9) | 918 (23.9) | 2916 (76.1) | 1961 (51.1) | 1873 (48.9) | 3675 (95.9) | 159 (4.1) |
| Madagascar, 2008–09 | 1845 (23.2) | 6096 (76.8) | 5155 (64.9) | 2786 (35.1) | 1733 (21.8) | 6208 (78.2) | 960 (12.1) | 6981 (87.9) | 7808 (98.3) | 134 (1.7) |
| Malawi, 2015–16 | 1367 (12.4) | 9643 (87.6) | 6987 (63.5) | 4023 (36.5) | 1089 (9.9) | 9921 (90.1) | 1590 (14.4) | 9420 (85.6) | 10,316 (93.7) | 693 (6.3) |
| Mali, 2018 | 4466 (73.0) | 1650 (27.0) | 3855 (63.0) | 2261 (37.0) | 4511 (73.7) | 1606 (26.3) | 1222 (20.0) | 4895 (80.0) | 5929 (96.9) | 188 (3.1) |
| Mozambique, 2011 | 2545 (36.4) | 4439 (63.6) | 4521 (64.7) | 2463 (35.3) | 1801 (25.8) | 5183 (74.2) | 1897 (27.2) | 5087 (72.8) | 6694 (95.9) | 290 (4.1) |
| Namibia, 2013 | 138 (7.5) | 1708 (92.5) | 1121 (60.8) | 724 (39.2) | 224 (12.1) | 1622 (87.9) | 994 (53.9) | 851 (46.1) | 1552 (84.1) | 294 (15.9) |
| Niger, 2012 | 6636 (85.1) | 1165 (14.9) | 4721 (60.5) | 3080 (39.5) | 6387 (81.9) | 1414 (18.1) | 1062 (13.6) | 6739 (86.4) | 7674 (98.4) | 127 (1.6) |
| Nigeria, 2018 | 9263 (45.8) | 10,970 (54.2) | 12,975 (64.1) | 7258 (35.9) | 7335 (36.2) | 12,899 (63.8) | 7922 (39.2) | 12,311 (60.8) | 19,590 (96.8) | 643 (3.2) |
| Rwanda 2014–15 | 822 (15.2) | 4588 (84.8) | 3521 (65.1) | 1889 (34.9) | 919 (17.0) | 4491 (83.0) | 897 (16.6) | 4514 (83.4) | 4709 (87.0) | 701 (13.0) |
| Sao Tome and Principe, 2008–09 | 9263 (45.8) | 10,970 (54.2) | 12,975 (64.1) | 7258 (35.9) | 7335 (36.2) | 12,899 (63.8) | 7922 (39.2) | 12,311 (60.8) | 19,590 (96.8) | 643 (3.2) |
| Senegal, 2010–11 | 4804 (71.6) | 1910 (28.4) | 4277 (63.7) | 2436 (36.3) | 5033 (75.0) | 1681 (25.0) | 2586 (38.5) | 4128 (61.5) | 6258 (93.2) | 456 (6.8) |
| Sierra Leone, 2019 | 3404 (58.7) | 2399 (41.3) | 3899 (67.2) | 1904 (32.8) | 3232 (55.7) | 2571 (44.3) | 1960 (33.8) | 3843 (66.2) | 5565 (95.9) | 237 (4.1) |
| South Africa, 2016 | 28 (2.2) | 1280 (97.8) | 826 (63.1) | 482 (36.9) | 47 (3.6) | 1262 (96.4) | 962 (73.5) | 347 (26.5) | 988 (75.5) | 321 (24.5) |
| Tanzania, 2015–16 | 1166 (20.5) | 4516 (79.5) | 3560 (62.7) | 2122 (37.3) | 752 (13.2) | 4930 (86.8) | 1569 (27.6) | 4112 (72.4) | 5284 (93.0) | 398 (7.0) |
| Togo, 2013–14 | 1832 (40.4) | 2708 (59.6) | 2755 (60.7) | 1785 (39.3) | 1196 (26.3) | 3344 (73.7) | 1653 (36.4) | 2886 (63.6) | 4223 (93.0) | 317 (7.0) |
| Uganda, 2016 | 860 (10.7) | 7152 (89.3) | 4956 (61.9) | 3056 (38.1) | 517 (6.5) | 7495 (93.5) | 1749 (21.8) | 6263 (78.2) | 7438 (92.8) | 574 (7.2) |
| Zambia, 2018 | 512 (9.6) | 4795 (90.4) | 3352 (63.2) | 1954 (36.8) | 322 (6.1) | 4985 (93.9) | 1965 (37.0) | 3342 (63.0) | 5012 (94.5) | 294 (5.5) |
| Zimbabwe, 2015 | 50 (1.2) | 4113 (98.8) | 2444 (58.7) | 1718 (41.3) | 54 (1.3) | 4109 (98.7) | 1345 (32.3) | 2818 (67.7) | 3899 (93.7) | 264 (6.3) |
Results of the BLR model using pooled data of 36 Sub-Saharan African countries.
| Variables | AOR | 95% CI for AOR | OR | 95% CI for OR | ||||
|---|---|---|---|---|---|---|---|---|
| Lower | Upper | Lower | Upper | |||||
| Rural (ref) | ||||||||
| Urban | 1.51 | < 0.000 | 1.44 | 1.58 | 2.99 | < 0.000 | 2.88 | 3.11 |
| No Education (ref) | ||||||||
| Primary | 1.65 | < 0.000 | 1.55 | 1.76 | 2.23 | < 0.000 | 2.11 | 2.36 |
| Secondary | 2.02 | < 0.000 | 1.89 | 2.16 | 3.82 | < 0.000 | 3.62 | 4.04 |
| Higher | 4.12 | < 0.000 | 3.75 | 4.51 | 11.07 | < 0.000 | 10.32 | 11.87 |
| No Education (ref) | ||||||||
| Primary | 1.49 | < 0.000 | 1.39 | 1.596 | 2.19 | < 0.000 | 2.06 | 2.33 |
| Secondary | 1.42 | < 0.000 | 1.33 | 1.528 | 3.16 | < 0.000 | 2.98 | 3.34 |
| Higher | 1.71 | < 0.000 | 1.57 | 1.862 | 6.88 | < 0.000 | 6.44 | 7.35 |
| Poor (ref) | ||||||||
| Middle | 1.32 | < 0.000 | 1.24 | 1.41 | 1.66 | < 0.000 | 1.56 | 1.77 |
| Rich | 2.05 | < 0.000 | 1.94 | 2.17 | 4.04 | < 0.000 | 3.85 | 4.23 |
AOR adjusted odds ratio, CI confidence interval, OR odds ratio; ref reference category.
Random-effects model estimation of odds ratio for different variables on 36 selected Sub- Saharan African countries.
| Country(s) | Wealth index OR [95% CI] | Respondent’s education OR [95% CI] | Husband’s education OR [95% CI] | Place of residence OR [95% CI] |
|---|---|---|---|---|
| Angola 2015–2016 | 4.13 [3.13; 5.45] | 3.86 [2.48; 6.01] | 0.98 [0.71; 1.34] | 4.74 [3.21; 7.01] |
| Benin 2017–2018 | 3.72 [3.04; 4.54] | 2.71 [2.24; 3.28] | 3.06 [2.49; 3.75] | 2.49 [2.05; 3.01] |
| Burkina Faso 2010 | 4.43 [3.32; 5.92] | 3.53 [2.70; 4.62] | 3.21 [2.46; 4.18] | 6.31 [4.84; 8.22] |
| Burundi 2016–2017 | 2.94 [2.42; 3.57] | 1.72 [1.41; 2.10] | 1.90 [1.53; 2.36] | 5.02 [4.04; 6.25] |
| Cameroon 2018 | 5.31 [3.84; 7.35] | 10.13 [4.98; 20.62] | 3.84 [2.26; 6.53] | 3.96 [2.84; 5.53] |
| Chad 2014–2015 | 2.27 [1.64; 3.13] | 2.46 [1.78; 3.39] | 3.15 [2.24; 4.45] | 5.44 [3.94; 7.52] |
| Comoros 2012 | 2.14[1.59; 2.87] | 2.61 [1.85; 3.69] | 2.82 [1.93; 4.12] | 1.58 [1.17; 2.12] |
| Congo Democratic Republic 2013–2014 | 2.21 [1.87; 2.62] | 1.05 [0.84; 1.31] | 0.63 [0.48; 0.83] | 1.87 [1.58; 2.22] |
| Congo 2011–2012 | 2.50 [1.98; 3.15] | 2.13 [1.12; 4.05] | 3.86 [1.22; 12.15] | 2.90 [2.15; 3.92] |
| Cote d'Ivoire 2011–2012 | 6.08 [4.03; 9.17] | 2.90 [2.02; 4.16] | 2.37 [1.63; 3.44] | 4.99 [3.32; 7.49] |
| Eswatini 2006–2007 | 1.30 [0.89; 1.90] | 2.83 [1.13; 7.06] | 1.79 [0.92; 3.49] | 1.27 [0.84; 1.92] |
| Ethiopia-2016 | 5.83 [4.07; 8.36] | 6.59 [4.52; 9.61] | 4.66 [3.08; 7.07] | 14.48 [10.42; 20.13] |
| Gabon 2012 | 2.86 [2.24; 3.66] | 0.91 [0.59; 1.41] | 2.28 [1.26; 4.14] | 1.78 [1.19; 2.67] |
| Gambia 2013 | 2.35 [1.62; 3.41] | 1.48 [1.03; 2.13] | 1.61 [1.12; 2.31] | 2.33 [1.57; 3.45] |
| Ghana 2014 | 3.79 [3.11; 4.62] | 3.09 [2.35; 4.05] | 3.71 [2.67; 5.16] | 2.69 [2.21; 3.28] |
| Guinea 2018 | 4.59 [3.24; 6.51] | 2.98 [2.15; 4.13] | 2.19 [1.58; 3.03] | 4.77 [3.41; 6.68] |
| Kenya 2014 | 3.37 [2.79; 4.06] | 4.61 [2.74; 7.75] | 4.72 [2.58; 8.64] | 2.53 [2.12; 3.02] |
| Lesotho 2014 | 2.14 [1.63; 2.82] | 2.09 [0.28; 15.72] | 3.03 [1.67; 5.49] | 1.60 [1.21; 2.12] |
| Liberia 2013 | 2.63 [1.86; 3.71] | 1.84 [1.30; 2.59] | 1.54 [1.01; 2.34] | 2.40 [1.73; 3.34] |
| Madagascar 2008–09 | 8.71 [5.58; 13.58] | 6.57 [2.89; 14.93] | 7.27 [2.97; 17.80] | 6.83 [4.83; 9.65] |
| Malawi 2015–16 | 2.64 [2.26; 3.08] | 2.22 [1.62; 3.04] | 1.71 [1.24; 2.34] | 2.49 [2.09; 2.96] |
| Mali 2018 | 2.48 [1.84; 3.33] | 1.75 [1.30; 2.36] | 2.56 [1.91; 3.43] | 2.77 [2.05; 3.73] |
| Mozambique 2011 | 4.48 [3.47; 5.78] | 3.23 [2.34; 4.46] | 1.99 [1.44; 2.75] | 4.07 [3.21; 5.18] |
| Namibia 2013 | 5.04 [3.83; 6.64] | 2.55 [1.32; 4.92] | 2.35 [1.43; 3.86] | 3.68 [2.74; 4.94] |
| Niger 2012 | 1.81 [0.81; 4.04] | 3.38 [1.88; 6.05] | 0.56 [0.13; 2.32] | 6.78 [3.60; 12.78] |
| Nigeria 2018 | 7.31 [6.03; 8.87] | 8.17 [6.29; 10.61] | 9.74 [6.98; 13.59] | 4.36 [3.66; 5.20] |
| Rwanda 2014–15 | 2.26 [1.93; 2.66] | 1.78 [1.37; 2.31] | 1.46 [1.15; 1.84] | 2.31 [1.93; 2.78] |
| Sao Tome and Principe 2008–09 | 1.24 [0.72; 2.13] | 1.26 [0.49; 3.22] | 3.91 [1.45; 10.56] | 2.01 [1.24; 3.25] |
| Senegal 2010–11 | 4.52 [3.68; 5.55] | 2.97 [2.45; 3.59] | 3.32 [2.74; 4.03] | 4.24 [3.44; 5.22] |
| Sierra Leone 2019 | 2.53 [1.95; 3.28] | 1.38 [1.06; 1.79] | 1.37 [1.06; 1.78] | 2.57 [1.98; 3.34] |
| South Africa 2016 | 3.11 [2.40; 4.03] | 2.75 [0.83; 9.18] | 2.21 [0.93; 5.26] | 1.49 [1.10; 2.02] |
| Tanzania 2015–2016 | 3.81 [3.07; 4.74] | 2.92 [2.04; 4.17] | 2.88 [1.84; 4.50] | 3.34 [2.71; 4.10] |
| Togo 2013–2014 | 4.31 [3.35; 5.55] | 2.53 [1.92; 3.32] | 3.79 [2.57; 5.59] | 3.54 [2.79; 4.50] |
| Uganda 2016 | 3.32 [2.78; 3.96] | 1.98 [1.39; 2.83] | 1.88 [1.21; 2.94] | 2.73 [2.29; 3.26] |
| Zambia 2018 | 3.64 [2.84; 4.67] | 1.34 [0.86; 2.08] | 1.21 [0.71; 2.07] | 3.23 [2.53; 4.13] |
| Zimbabwe 2015 | 3.48 [2.66; 4.55] | 1.63 [0.39; 6.76] | 3.62 [0.50; 26.31] | 3.59 [2.78; 4.64] |
| 87.8% [84.1; 90.6] | 88.5% [85.1; 91.1] | 89.3% [86.2; 91.7] | 90.8% [88.3; 92.8] | |
| 0.1140 | 0.2268 | 0.2780 | 0.1644 | |
| 95% PI | [1.52; 7.20] | [0.94; 6.95] | [0.84; 6.92] | [1.22; 8.46] |
OR odds ratio, CI confidence interval, PI prediction interval.
Random-effects model estimation (summary effect) for different variables on 36 selected Sub- Saharan African countries.
| Variables | Random effects model | |||
|---|---|---|---|---|
| OR | 95% CI | |||
| Lower bound | Upper bound | |||
| Respondent’s education | 2.55 | 0.0001 | 2.14 | 3.05 |
| Husband’s education | 2.41 | 0.0001 | 2.00 | 2.90 |
| Place of residence | 3.21 | 0.0001 | 2.73 | 3.77 |
| Wealth index | 3.31 | 0.0001 | 2.89 | 3.77 |
OR odds ratio, CI confidence interval.
Sub-group analysis for different factors.
| Variables | Central Africa | West Africa | East Africa | Southern Africa | ||||
|---|---|---|---|---|---|---|---|---|
| OR (95%CI) | OR (95%CI) | OR (95%CI | OR (95%CI | |||||
| Place of residence | 3.14 [2.24; 4.43] | < 0.01 89% | 3.45 [2.85; 4.18] | < 0.01 84% | 3.56 [2.76; 4.60] | < 0.01 94% | 1.84 [1.15; 2.97] | < 0.01 89% |
| Wealth index | 2.92 [2.25; 3.79] | < 0.01 86% | 3.66 [2.95; 4.55] | < 0.01 87% | 3.46 [2.93; 4.09] | < 0.01 85% | 2.60 [1.55; 4.35] | < 0.01 92% |
| Respondent’s education | 2.26 [1.37; 3.72] | < 0.01 82% | 2.64 [2.01; 3.47] | < 0.01 91% | 2.65 [2.03; 3.47] | < 0.01 84% | 2.63 [1.64; 4.22] | < 0.01 0.00% |
| Husband’s education | 2.08 [1.20; 3.62] | < 0.01 92% | 2.70 [2.01; 3.63] | < 0.01 91% | 2.37 [1.85; 3.04] | < 0.01 78% | 2.35 [1.73; 3.21] | < 0.01 0.00% |
Q heterogenic statistic, I Between study variation, OR odds ratio, CI confidence interval.
Figure 2Forest plot for the place of residence.
Figure 3Forest plot for wealth index.
Figure 4Forest plot for respondent’s education.
Figure 5Forest plot for husband’s education.
Output of test of moderator for different variables on 36 selected Sub- Saharan African countries.
| Variables | Respondent education | Husband education | Place of residence | Wealth index |
|---|---|---|---|---|
| Moderator | TPBASHS | TPBASHS | TPBASHS | TPBASHS |
| Estimate | 18.55 | 4.70 | 37.09 | 14.55 |
| < 0.0001 | 0.0302 | < 0.0001 | 0.0001 |
TPBASHS total percentage of births attended by skilled health staff.
Figure 6Meta-regressions of C-section delivery and socio-economic factors, (a) respondent education: TPBASHS (b) husband education: TPBASHS (c) place of residence: TPBASHS (d) wealth index: TPBASHS.