| Literature DB >> 23056380 |
Lauren A V Orenstein1, Evan W Orenstein, Ibrahima Teguete, Mamoudou Kodio, Milagritos Tapia, Samba O Sow, Myron M Levine.
Abstract
BACKGROUND: Maternal immunization has gained traction as a strategy to diminish maternal and young infant mortality attributable to infectious diseases. Background rates of adverse pregnancy outcomes are crucial to interpret results of clinical trials in Sub-Saharan Africa.Entities:
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Year: 2012 PMID: 23056380 PMCID: PMC3464282 DOI: 10.1371/journal.pone.0046638
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Observation-time model vs. Live births model to calculate expected background maternal and neonatal deaths over the course of a clinical trial in 1000 pregnant women in Mali.
Assuming a maternal mortality ratio of 418.8 (327.5–519.8) per 100,000 live births, stillbirth rate of 23 (18–42) per 1,000 total births, early neonatal mortality rate of 33.5 (28.1–39.0) per 1,000 live births, and late neonatal mortality rate of 12.4 (9.9–15.5) per 1,000 live births estimated for Mali by recently published systematic analyses [3], [44], [45]. We assume women are recruited at 28 weeks gestation and deliver exactly 12 weeks later. † 50 pregnant women recruited each week over 20 weeks. ‡500 pregnant women recruited each week over 2 weeks.
Figure 2Summary of literature search and study selection.
A. Severe Acute Maternal Morbidity. B. Low Birth Weight, Prematurity, and Small for Gestational Age. C. Congenital Malformations.
The incidence of severe acute maternal morbidity in 16 studies in Sub-Saharan Africa published between 1995 and 2012.
| Study Author | Country | Years | SAMM Definition | MI (%) | Site of case detection | Denominator | Size | #SAMM per 1000 Births | SAMM by Cause (%) | |||||
| Hem | Dyst | HTN | Anem | Infect | Other | |||||||||
| Okong | Uganda | 1999–2000 | Organ failure/management | 54 | Urban and rural hospitals | Hospital births | 55803 LB |
| 42 | 21 | 7.9 | 0 | 18 | 11 |
| Gandhi | South Africa | — | Organ failure/management | — | Rural hospitals | Hospital and ancillary clinic births | 5728 TB |
| 19 | 6.5 | 52 | 0 | 9.7 | 13 |
| Cochet | South Africa | 2000–2001 | Organ failure/management | 14 | Urban hospitals | Hospital births | 29832 TB |
| 40 | 0 | 15 | 0 | 12 | 34 |
| Van den Akker | Malawi | 2007–2009 | Disease-Specific | 12 | Rural hospital | All facility deliveries in district | 33254 D |
| 32 | 11 | 20 | 0 | 32 | 5.1 |
| Mantel | South Africa | 1996–1997 | Organ failure/management | 17 | Urban hospitals | All deliveries in region | 13429 D |
| 26 | 0 | 26 | 0 | 20 | 29 |
| Vandecruys | South Africa | 1997–1999 | Organ failure/management | 16 | Urban hospitals | Hospital births | 26152 TB |
| 18 | 0 | 40 | 0 | 13 | 28 |
| Ali | Sudan | 2008–2010 | Disease-Specific | 16 | Urban hospital | Hospital births | 9578 TB |
| 41 | 8 | 18 | 12 | 22 | 0 |
| Mayi-Tsonga | Gabon | 2006 | Disease-Specific | — | Urban hospital | Hospital births | 4350 TB |
| 82 | 0 | 14 | 0 | 4.4 | 0 |
| Nyamtema | Tanzania | 2008–2010 | Disease-Specific | 9.9 | Rural hospital | Hospital births | 6572 TB |
| 30 | 22 | 28 | 8.0 | 4.0 | 8.6 |
| Prual | 6 countries (West Africa) | 1994–1996 | Disease-Specific | 3.7 | Predominantly urban communities | Pregnant women followed prospectively | 20326 D |
| 50 | 34 | 10 | 0 | 1.0 | 4.0 |
| Prual | Niger | — | Disease-Specific | 8.3 | Urban hospitals | Hospital and ancillary clinic births | 4081 TB |
| 13 | 56 | 18 | 0 | 3.4 | 8.6 |
| Gessessew | Ethiopia | 1993–2003 | Disease-Specific | 6.9 | Urban hospital | Hospital births | 7150 D |
| 21 | 70 | 9.3 | 0 | 0 | 0 |
| Lori | Liberia | 2008 | Disease-Specific | 19 | Rural hospital | Hospital births | 1386 TB |
| 42 | 5 | 11 | 21 | 14 | 4.0 |
| Filippi | Benin, Côte d'Ivoire | 1999–2001 | Disease-Specific | 6.5 | Predominantly urban hospitals | Hospital births | 27620 TB |
| 34 | 15 | 26 | 19 | 5.4 | 0 |
| Oladapo | Nigeria | 1999–2004 | Disease-Specific | 16 | Urban hospital | Hospital deliveries | 2577 D |
| 31 | 20 | 30 | 9.0 | 11 | 0 |
| Cham | Gambia | 2006 | Disease-Specific | 3.6 | Urban and rural hospitals | Hospital births | 3280 TB |
| 20 | 26 | 26 | 17 | 1.4 | 10 |
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| 34 | 22 | 22 | 10.5 | 7.0 | 5.0 | |||||||
SAMM: Severe Acute Maternal Morbidity; MI: Mortality Index (# of maternal deaths divided by the sum of near-miss cases and maternal deaths) TB: Total births; D: Deliveries; Hem: Hemorrhage; Dyst: Dystocia (includes uterine rupture); HTN: Hypertensive diseases of pregnancy (severe pre-eclampsia and eclampsia); Anem: Anemia; Infect: Infection;
Data from the year 2000 published by Vandecruys et al [50] were also published in Cochet et al [48]. In this table, those data were removed from Vandecruys et al [50] to avoid duplication.
In Prual et al [54], 109 Cesarean sections performed for scarred uterus, fetal distress, and premature rupture of membranes that did not meet criteria for severe dystocia were subtracted from the total number of severe maternal morbidities as these ostensibly did not directly threaten the life of the mother.
Figure 3Publications by country on low birth weight, prematurity, and small for gestational age in sub-Saharan Africa.
The incidence of congenital malformations among liveborn infants in 11 studies in Sub-Saharan Africa published between 1966 and 2009.
| Author | Country | Years | Study Design | Method of CM Detection | # LB | # Expected MCM per 1000 LB |
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| MSK | CNS | GI | GU | Chrom | CV | HEENT | Resp | Multip | Other | |||||||
| Ahuka | Dem Rep Congo | 1993–2001 | Retrospective cohort, hospital based | Midwife exam at birth | 8824 |
| 31 | 47 | 17 | 2.8 | 0 | 0 | 0 | 0 | 0 | 2.8 |
| Sukhani | Zambia | 1976 | Prospective cohort, hospital based | Physical exam at birth, imaging as indicated | 17030 |
| 13 | 19 | 16 | 9.7 | 13 | 9.7 | 0 | 4.3 | 8.6 | 6.5 |
| Embree | Kenya | — | Prospective cohort, hospital based | Standardized exam at birth and 6 month intervals | 183 |
| — | — | — | — | — | — | — | — | — | — |
| Shija | Zimbabwe | 1984 | Prospective cohort, hospital based | Physical exam at birth or pediatric surgery clinic | 18033 |
| 21 | 4.5 | 29 | 12 | 0 | 0 | 0 | 0 | 15 | 20 |
| Delport | South Africa | 1986–1989 | Prospective cohort, hospital based | Physician exam at birth | 17351 |
| 18 | 19 | 9.2 | 7.8 | 14 | 15 | 1.0 | 0.5 | 3.9 | 11 |
| Abudu | Nigeria | 1982–1983 | Prospective cohort, hospital based | Physician exam at birth, autopsy | 2912 |
| — | — | — | — | — | — | — | — | — | — |
| Venter | South Africa | 1989–1992 | Prospective cohort, hospital based | Standardized exam by geneticist at birth, lab tests and imaging as indicated | 7617 |
| 23 | 28 | 5.2 | 8.6 | 18 | 0 | 0.9 | 0 | 7.8 | 7.8 |
| Stevenson | South Africa | 1961–1964 | Prospective cohort, hospital based | Standardized exam at birth | 23675 |
| — | — | — | — | — | — | — | — | — | — |
| Khan | Zambia | 1974–1975 | Prospective cohort, hospital based | Physical exam at birth | 8508 |
| 63 | 4.0 | 6.0 | 5.3 | 2.7 | 4.7 | 1.3 | 0 | 6.0 | 6.7 |
| Gupta | Nigeria | 1964 | Prospective cohort, hospital based | Standardized exam at birth | 4054 |
| 39 | 14 | 19 | 5.5 | 0 | 10 | 7.3 | 0 | 0 | 5.5 |
| Bakare | Nigeria | 2003–2004 | Prospective cohort, outpatient delivery wards | Physical exam at birth | 624 |
| 43 | 13 | 0 | 39 | 0 | 0 | 0 | 0 | 0 | 4.3 |
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CNS = Central Nervous System (ICD-10: Q00–Q07); Resp = Respiratory (ICD-10: Q30–Q34); CV = Cardiovascular (ICD-10: Q20–Q28); MSK = Musculoskeletal system (ICD-10: Q65–79); GI = Digestive system (ICD-10: Q35–Q45); GU = genital organs and urinary system (ICD-10: Q50–Q56, Q60–Q64); HEENT = Eye, ear, face, and neck (ICD-10: Q10–Q18); Chrom = Chromosomal abnormalities (ICD-10: Q90–Q99); Multip = Major congenital malformations in multiple systems.
Denominator given in total births.
Background rates of pregnancy outcomes by region of Sub-Saharan Africa.
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| Central | 4.5 (3.7–5.3) | 31.5 (—) | 24.6 (12.3–52.4) | 25.4 (22.6–28.3) | 8.8 (3.1–5.0) | 12.4 (10.3–34.2) | 17.9 (2.3–21.3) | 0.41 (—) |
| East | 4.0 (3.7–4.4) | 21.4 (10.2–59.4) | 24.8 (16.3–43.9) | 20.3 (19.1–21.5) | 6.9 (6.3–7.6) | 12.4 (6.3–37.1) | 11.6 (3.4–20.3) | 0.55 (0.53–1.76) |
| Southern | 1.7 (1.4–2.0) | 6.8 (5.2–11.0) | 20.1 (13.4–32.7) | 13.1 (12.2–14.3) | 4.2 (3.7–4.9) | 14.1 (6.0–20.3) | 18.7 (17.3–20.1) | 1.36 (0.70–1.56) |
| West | 4.6 (4.2–5.1) | 92.6 (56.8–242.7) | 33.3 (20.3–58.8) | 26.2 (24.1–28.4) | 9.7 (8.7–10.7) | 13.3 (5.5–29.0) | 13.4 (5.3–30.5) | 2.69 (1.44–3.69) |
SAMM = Severe Acute Maternal Morbidity; NND = Neonatal Deaths; LBW = Low Birth Weight; MCM = Major Congenital Malformations.
For Severe Maternal Morbidity, Low Birth Weight, Prematurity, and Major Congenital Malformations, the median and range of a systematic review is presented for the entire region. In Central Africa, only 1 data point was available for Severe Maternal Morbidity [52] and for Major Congenital Malformations [60], so no range was presented.
Maternal and neonatal deaths were expressed as a fraction of total births by multiplying the maternal mortality ratio (maternal deaths/live births) and the early and late neonatal mortality ratios (neonatal deaths/live births) by 1 minus the stillbirth rate [44].
Expected number of maternal and neonatal deaths and stillbirths for a hypothetical cohort of pregnant women corresponding to 1,000 births in Sub-Saharan Africa and the proportion of live-born infants expected to be low birth weight or premature.
| Maternal deaths per 1000 Total Births | Stillbirths per 1000 Total Births | Early neonatal deaths per 1000 Total Births | Late neonatal deaths per 1000 Total Births | % LBW | % <37 wks | |
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| Angola | 3.3(2.1–4.5) | 25.1(12–54) | 28.0(24–33) | 10.2(8.0–13) |
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| Central African Republic | 6.7(5.0–8.6) | 24.2(12–49) | 31.5(27–37) | 12.9(11–16) |
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| Congo (Brazzaville) | 12.4 (—) | 16.7 (—) | ||||
| Congo (Dem Republic) | 4.7(3.6–5.9) | 25.6(14–55) | 24.4(21–28) | 8.2(6.7–9.7) | 20.0 (10.5–34.2) | 2.3 ( |
| Equatorial Guinea | 2.1(1.3–3.2) | 16.9 (8–36) | 35.1(29–42) | 15.1(12–19) |
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| Gabon | 4.2 (3.1–5.4) | 17.3 (9–38) | 22.4 (19–26) | 3.9 (3.1–5) | 10.5 (10.3–10.7) | 20.2 (19.1–21.3) |
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| Burundi | 8.7(6.1–11) | 27.7(15–61) | 19.1(16–22) | 9.3(7.6–11) |
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| Comoros | 2.6(1.9–3.7) | 27.0(14–59) | 21.3(19–24) | 8.4(7.1–9.7) |
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| Djibouti | 3.5(2.5–4.8) | 33.9(15–55) | 17.4(15–20) | 5.4(4.4–6.7) |
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| Eritrea | 10.6(8.1–13) | 21.2(11–49) | 17.0(15–20) | 4.6(3.6–5.9) |
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| Ethiopia | 5.2(3.8–6.6) | 25.6(15–52) | 24.3(21–28) | 8.5(6.9–10) | 9.7 (6.3–20.3) | 13.5 (11.6–15.3) |
| Kenya | 2.9(2.2–3.6) | 21.8(14–38) | 18.6(17–21) | 4.9(4.3–5.5) | 9.7 (7.9–18.0) | 11.3 (3.4–19.1) |
| Madagascar | 4.2(3.3–5.2) | 20.6(15–36) | 14.0(13–16) | 4.8(4.3–5.4) |
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| Malawi | 4.1(3.1–5.3) | 23.7(17–35) | 20.1(17–23) | 6.4(5.5–7.7) | 15.1 (13.3–18.3) | 17.5 (17.3–17.6) |
| Mozambique | 5.0(3.7–6.5) | 28.4(17–51) | 27.1(24–31) | 10.5(9.0–12) | 16.2 ( | 15.4 ( |
| Rwanda | 3.3(2.2–4.8) | 22.8(16–36) | 19.3(17–22) | 5.8(4.9–6.7) |
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| Somalia | 4.6(3.2–6.3) | 30.1(15–64) | 16.5(14–19) | 9.5(7.8–12) |
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| Sudan | 2.7(2.0–3.5) | 23.9(17–40) | 20.1(17–23) | 7.2(6.0–8.8) | 14.9 (8.3–18.0) | 5.7 ( |
| Tanzania | 4.1(3.3–5.0) | 25.6(19–40) | 18.0(16–20) | 5.7(5.1–6.4) | 14.2 (8.6–22.4) | 8.3 (7.9–10.0) |
| Uganda | 2.7(2.0–3.4) | 24.8(19–36) | 20.6(18–23) | 5.9(5.1–6.8) | 9.6 (6.4–37.1) | 20.3 ( |
| Zambia | 2.9(2.2–3.8) | 25.5(18–40) | 17.2(15–19) | 8.5(7.4–9.6) |
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| Botswana | 5.1(3.6–6.8) | 16.2 (9–37) | 14.8(12–18) | 3.4(2.4–4.6) | 13.0 ( | 20.1 ( |
| Lesotho | 2.3(1.7–3.2) | 25.2(14–54) | 20.4(27–34) | 8.1(6.7–9.7) |
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| Namibia | 1.3(1.0–1.8) | 15.0(11–35) | 18.5(16–21) | 4.1(3.2–5.3) |
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| South Africa | 0.9(0.7–1.2) | 20.4(14–31) | 10.6(10–12) | 3.4(3.1–3.8) | 14.7 (13.8–16.3) |
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| Swaziland | 2.8(2.0–3.7) | 18.2(11–36) | 18.1(15–21) | 5.0(3.8–6.6) |
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| Zimbabwe | 3.2(2.3–4.6) | 20.0(13–35) | 16.2(14–19) | 5.9(4.5–7.6) | 14.1 (6.0–20.3) | 17.3 ( |
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| Benin | 3.2(2.5–4.1) | 24.3(17–41) | 22.8(20–26) | 5.8(4.8–6.9) | 15.7 (10.0–17.8) |
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| Burkina Faso | 3.4(2.8–4.1) | 26.2(19–40) | 24.8(21–30) | 13.1(10–16.5) | 12.2 (—) |
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| Cameroon | 5.2(4.0–6.7) | 25.6(13–54) | 25.2(22–29) | 7.8(5.9–9.6) | 16.4 (9.6–20.3) | 20.3 (—) |
| Cape Verde | 1.3(0.9–1.7) | 15.6 (8–34) | 10.8(9.0–13) | 3.0(2.4–3.8) | 8.2 (—) | 13.4 (—) |
| Chad | 5.9(4.8–7.1) | 29.2(14–64) | 30.8(27–36) | 13.7(11–16) |
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| Côte d'Ivoire | 4.4(3.3–5.8) | 27.4(14–45) | 26.2(22–30) | 10.3(7.9–13) | 10.6 (—) |
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| The Gambia | 2.7(1.9–3.5) | 26.0(14–53) | 22.4(19–26) | 7.3(5.6–9.4) | 18.6 (13.3–23.9) | 21.4 (12.3–30.5) |
| Ghana | 3.2(2.4–4.0) | 22.0(14–37) | 19.8(17–22) | 4.7(4.0–5.6) | 16.4 (13.3–20.3) | 14.1 (—) |
| Guinea | 6.5(5.1–7.9) | 23.8(16–48) | 28.5(25–33) | 10.3(8.4–13) |
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| Guinea-Bissau | 8.2(6.3–10) | 29.6(16–62) | 30.9(26–36) | 13.8(11–17) | 13.3 (11.8–14.7) |
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| Liberia | 8.8(7.1–10) | 26.9(14–56) | 23.5(21–26) | 7.6(6.5–9.0) |
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| Mali | 4.1(3.2–5.1) | 23.2(18–42) | 32.7(27–38) | 12.1(9.7–15) | 18.6 (—) | 5.3 (—) |
| Mauritania | 5.4(4–7.0) | 27.4(17–51) | 24.7(21–29) | 6.3(4.8–8) |
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| Niger | 5.1(4.1–6.2) | 22.9(17–41) | 20.0(17–24) | 11.6(9.6–14) |
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| Nigeria | 4.7(3.8–5.6) | 41.7(25–72) | 27.5(24–32) | 9.9(8.3–11) | 12.2 (5.5–29) | 13.5 (10.6–19.4) |
| Sao Tome and Principe | 2.6(3.3–3.3) | 21.0(11–48) | 16.7(15–19) | 4.1(3.5–4.7) |
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| Senegal | 3.6(2.7–4.5) | 33.8(27–50) | 18.8(16–22) | 6.6(5.3–7.9) | 10.3 (9.5–18.8) |
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| Sierra Leone | 6.0(4.7–7.4) | 30.0(16–66) | 26.3(23–30) | 9.0(7.5–11) |
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| Togo | 3.9(2.6–5.5) | 25.0(13–54) | 26.7(23–31) | 6.9(5.6–8.7) |
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Maternal and neonatal deaths were expressed as a fraction of total births by multiplying the maternal mortality ratio (maternal deaths/live births) and the neonatal mortality ratio (neonatal deaths/live birth) by 1 minus the stillbirth rate [44].
For % LBW and % <37 wks, the median and range for all studies performed in the specified country are presented.
Note –UN Data classifies Cameroon and Chad as falling within the Middle Africa sub-region rather than the West Africa sub-region. However, in this table these countries are kept within the West Africa sub-region to maintain congruity with global burden of disease publications.