Literature DB >> 29178885

Severe maternal outcomes and quality of care at district hospitals in Rwanda- a multicentre prospective case-control study.

Felix Sayinzoga1, Leon Bijlmakers2, Koos van der Velden3, Jeroen van Dillen4.   

Abstract

BACKGROUND: Despite a significant decrease in maternal mortality in the last decade, Rwanda needs further progress in order to achieve Sustainable Development Goals (SDG)3 which addresses among others maternal mortality. Analysis of severe maternal outcomes (SMO) was performed to identify their characteristics, causes and contributory factors, using standard indicators for quality of care.
METHODS: A prospective case-control study was conducted for which data were collected between November 2015 and April 2016 in four rural district hospitals. The occurrence of SMO with near miss incidence ratios was established, followed by an analysis of the characteristics, clinical outcomes, causes and contributory factors.
RESULTS: The SMO incidence ratio was 38.4 per 1000 live births (95% CI 33.4-43.4) and the maternal near-miss incidence ratio was 36 per 1000 live births (95% CI 31.1-40.9). The leading causes of SMO were postpartum haemorrhage (23.4%), uterine rupture (22.9%), abortion related complications (16.8%), malaria (13.6%) and hypertensive disorders (8.9%). The case fatality rate was high for women with hypertensive disorders (10.5%; CI 3.3-24.3) and severe postpartum haemorrhage (8%; CI 0.5-15.5). Stillbirth (OR = 181.7; CI 43.5-757.9) and length of stay at the hospital (OR = 7.9; CI 4.5-13.8) were strongly associated with severe outcomes.
CONCLUSIONS: Despite the use of life saving interventions, SMO are frequent. Mortality index was found to be low at the level of district hospitals. SMO were associated with long stay at the hospital and stillbirth. There is a need for improvement of quality of care, referral practices and certain types of infrastructure, especially blood banks, which would ensure truly comprehensive emergency obstetric care and reduce the occurrence of SMO.

Entities:  

Keywords:  Maternal near miss; Obstetrics; Quality of care; Severe maternal outcome

Mesh:

Year:  2017        PMID: 29178885      PMCID: PMC5702108          DOI: 10.1186/s12884-017-1581-4

Source DB:  PubMed          Journal:  BMC Pregnancy Childbirth        ISSN: 1471-2393            Impact factor:   3.007


Background

Globally, the Maternal Mortality Ratio (MMR) has fallen by nearly 44% over the past 25 years, to an estimated 216 maternal deaths per 100,000 live births in 2015. Despite this global decline, the magnitude of the reduction differed substantially between regions, with low and middle-income countries accounting for approximately 99% of global maternal deaths and sub-Saharan Africa alone accounting for roughly 66% [1]. Rwanda is one of only four countries that have achieved the Millennium Development Goals 4 and 5 (MDGs 4 and 5) [2]. According to the Rwanda Demographic Health Survey (RDHS) 2014–2015, the MMR decreased from 1071 in 2000 to 210 in 2015, while the percentage of institutional deliveries increased from 27% to 91% over the same period [3, 4]. However, a fast increase of deliveries in health facilities may compromise the quality of care that mothers receive, especially in primary care facilities [5]. The Sustainable Development Goals (SDGs) now call for an acceleration of progress in order to achieve a global MMR of 70 maternal deaths per 100,000 live births or less by 2030 [1]. Rwanda has demonstrated a strong political will to improve maternal and newborn health. One of the measures taken to achieve this was the introduction in 2009 of maternal death audits (MDA) on a routine basis nationwide [6]. However, since maternal mortality reveals only the tip of the iceberg, several countries have initiated maternal near-miss audits [7]. Rwanda might be able to further improve its performance by reviewing the circumstances that led to maternal near miss events where the women survived. By evaluating such cases much can be learnt about the processes in place and systemic deficiencies that cause failure to deal with maternal morbidities. For this purpose WHO recommends the near-miss approach for maternal health [8]. Few studies have been done on maternal near-miss in Rwanda. They were conducted in tertiary hospitals situated in Kigali [9-11], or in provincial referral hospitals that are better equipped than district hospitals in terms of infrastructure (e.g. intensive care units, ICU) and human resources [12]. District hospitals in Rwanda normally handle only cases that are referred by health centres, because of high-risk pregnancy or the occurrence of complications. Approximately 80% of all deliveries occur at the level of health centres [13]. Due to this risk selection system, near-miss data from tertiary or provincial hospitals do not reflect common practice at lower level health facilities. In addition, most studies on maternal near-miss are descriptive, based on case series. We conducted a multicentre, case-control study of severe maternal outcome (SMO) and women without SMO at district hospital level. Apart from the health outcomes, we also assessed process indicators, using standard indicators for quality of care.

Methods

Study design

This was a prospective case-control study, for which data were collected between November 2015 and April 2016 in four rural district hospitals. The four districts were purposively selected based on their performance on a selected set of key maternal and child health indicators from the national Health Management Information System (HMIS) in 2013: two of them were good performers (Bugesera and Rwamagana districts) and two performed poorly (Nyagatare and Gicumbi) regarding maternal health. The four district hospitals serve a total population of more than 1.5 million people (approximately 10% of the country’s total population) and in total they have 76 rural health centers in their catchment areas.

Definition

A woman with a severe maternal outcome (SMO) could be either a maternal near-miss case or a woman who actually died [8]. Maternal near-miss (MNM) is defined as ‘a woman who nearly died, but survived a complication that occurred during pregnancy, childbirth or within 42 days of termination of pregnancy.’ [7].

Sampling

All cases fulfilling the criteria of severe maternal outcome during the study period were included in the study. The WHO criteria adapted in the Haydom study (listed in the Additional file 1: Table S1) in Tanzania were applied [14, 15]. Cases were identified by health providers who were on duty at the time of admission or who noticed a deterioration in the woman’s condition during her stay at the hospital. Controls were selected from in-patient women who had given birth or were admitted for pregnancy complications and who did not have a severe maternal outcome within 48 h of the occurrence of the case. At least one of the following characteristics similar to the case was used to select the control: age, parity, gestational age and mode of delivery. The number of near-miss cases required was estimated using the sampsi_mcc function in Stata for sample size calculation [16]. The parameters for the calculation were: power of 80% at 5% statistical significance level and odds ratio of 2. The minimum sample size required was 120 near-miss cases and two controls per case, giving a total of 240 controls.

Data collection

Relevant data for cases and controls were extracted from patient medical files (personal characteristics, clinical information) and entered into a template developed from the WHO near-miss approach for maternal health guide [7]. Missing information, if any, was obtained mostly from the health centre that had referred the case; especially information about the patient’s arrival time at the clinic, at what time the ambulance was called and when it actually arrived, and the medical status of the mother and the fetus/infant prior to referral. Additionally, data were collected on maternal and neonatal outcomes and on particular interventions that had been undertaken to prevent and/or manage complications (for example use of oxytocin for the prevention and treatment of postpartum haemorrhage among cases and controls who gave birth at hospital; use of magnesium sulfate for treatment of eclampsia; use of antibiotics for prophylaxis and treatment of sepsis). The inclusion criteria were displayed in the maternity departments of the four hospitals as a reminder to health staff who were required to identify cases and controls. Data collection forms were made available at the place where patient registers were kept, in order to facilitate completion by health staff who had identified patients with SMO. The head of the maternity served as the focal point for the study and was trained along with several other staff from each hospital. He/she was also responsible for collecting any missing information from the health centre that had referred the patient. Every 4 weeks, the principal investigator (FS) visited the hospitals for verification of the completed forms with the maternity team: this involved checks on the correct application of inclusion/exclusion criteria and checks for completeness and consistency of data. The forms were reviewed case by case with the respective hospital teams.

Data analysis

Data were entered into an Excel template and then reviewed for inconsistencies. Statistical analysis was performed using SPSS Statistics, version 23 (SPSS Inc. Chicago, Illinois). Univariate analysis was carried out to characterize the SMO cases and controls in terms of demographic and clinical variables and the underlying causes. Statistical differences between SMO cases and controls were compared using chi-square test. Outcome indicators were calculated as proposed by WHO [8], using the total number of live births during the study period and the total number of maternal near-miss and maternal death in the same period. All descriptive data, including the identified underlying causes, are reported both as absolute numbers (n) and frequencies (%). As for process indicators, the principal researcher in collaboration with the local maternity team identified the target population for each of the specific interventions of interest, on the basis of which the proportion of the target population that actually received the recommended intervention was calculated. High proportions of women receiving appropriate interventions indicate better quality of care. Crude (cOR) and adjusted (aOR) odds ratios (including 95% confidence intervals) were calculated for predictive factors using logistic regression. Only factors that were statistically significant in univariate analysis were considered for logistic regression. Associated factors were also examined for statistical significance, using chi-square tests and bivariate logistic regression. The dependent variable was severe maternal outcome and the independent factors were the status of the infant at birth and the duration of admission.

Results

Characteristics of women with SMO and controls

During the 5 months data collection period, 5577 live births were recorded in the four district hospitals. Out of these, 214 cases of severe maternal outcomes were identified, of which 201 maternal near-miss cases and 13 maternal deaths. A total of 428 controls were selected and included in the study. In total the study population comprised 642 women. The comparison of SMO cases and controls shows statistically significant differences in age, marital status and profession (Table 1). Seven-and-a-half percent of the cases were younger than 20 years (3.5% among controls) and 28.4% older than 35 years (12.6% among controls). Unmarried and unemployed women are seen more among the cases than in the control group (15.0% versus 5.6%, and 4.2% versus 0.2%, respectively). The two groups differ significantly with respect to some clinical characteristics of pregnancy, such as parity, gravidity, number of antenatal consultation (ANC) and gestational age. The proportion of SMO was high among women who did not attend any ANC (27.4%), and in women with gestational age less than 36 weeks (21.7% for <24 weeks and 18.5% for 24–36 weeks). The proportion of stillbirths among the cases was very high (46.1% versus 0.5% in the control group). Similarly, cases were admitted for a longer period (70% for 4 days or more) than controls (31.7%; figures not shown in the table). There were no statistically significant differences between the two groups regarding educational level, medical insurance status, previous abortion, previous caesarean section and mode of delivery.
Table 1

Socio-demographic and clinical characteristics of the SMO cases and controls

Cases (%)Controls (%)TotalChi-square P-value
Age
  < 2016 (7.5)15 (3.5)31 (4.8)22.020.000
 20–35145 (67.8)359 (83.9)504 (78.5)
  > 3553 (28.4)54 (12.6)107 (16.7)
Marital statusa (N = 630)
 Married182 (85.0)402 (94.4)584 (91.3)15.490.000
 Unmarried32 (15.0)24 (5.6)56 (8.8)
Professiona (N = 641)
 Farmer200 (93.5)423 (99.1)623 (97.2)17.920.000
 Other profession5 (2.3)3 (0.7)8 (1.2)
 Unemployed9 (4.2)1 (0.2)10 (1.6)
Education levela (N = 637)
 Never been to school15 (7.1)21 (4.9)36 (5.7)7.360.25
 Primary education174 (82.5)327 (76.8)501 (78.6)
 Secondary and higher22 (10.4)78 (18.3)100 (15.7)
Medical Insurance
 No13 (6.1)38 (8.9)51(7.9)1.530.216
 Yes201 (93.9)390 (91.1)591 (92.1)
Clinical characteristics
 Parity
  060 (28.0)179 (41.8)239 (37.2)15.180.002
  141 (19.2)78 (18.2)119 (18.5)
  2 to 484 (39.3)140 (32.7)224 (34.9)
   ≥ 529 (13.6)31 (7.2)60 (9.3)
 Gravidity
  165 (30.4)181 (42.3)246 (38.3)13.250.001
  2 to 4105 (49.1)197 (46.0)302 (47.0)
   ≥ 544 (20.6)50 (11.7)94 (14.6)
 Previous C/S
  No152 (71.0)325 (75.9)477 (74.3)1.800.18
  Yes62 (29.0)103 (24.1)165 (25.7)
 Previous abortion
  No204 (95.3)401 (93.7)605 (94.2)0.700.402
  Yes10 (4.7)27 (6.3)37 (5.8)
 ANCa (N = 626)
  055 (27.4)44 (10.4)99 (15.8)31.910.000
  127 (13.4)50 (11.8)77 (12.3)
  2 to 395 (47.3)263 (61.9)358 (57.2)
   ≥ 424 (11.9)68 (16)92 (14.7)
 Gestational agea (N = 594)
   < 24 weeks40 (21.7)1 (0.2)41 (6.9)179.670.000
  24–36 weeks34 (18.5)1 (0.2)35 (5.9)
   ≥ 37 weeks110 (59.8)408 (99.5)518 (87.2)
Outcomes
 Baby’s condition at birtha (N = 568)
  Alive (501)76 (53.9)425 (99.5)501 (88.2)212.130.000
  Still birth (67)65 (46.1)2 (0.5)67 (11.8)
 Mode of deliverya (N = 532)
  Vaginal delivery (n = 274)44 (45.8)230 (53.9)274 (52.4)2.030.155
  Caesarean section (n = 249)52 (54.2)197 (46.1)249 (47.6)
 Length of hospital staya (N = 641)
  0 to 1 day17 (8)140 (32.7)157 (24.5)104.970.000
  2 to 3 days47 (22.1)152 (35.5)199 (31.0)
  4 to 7 days126 (59.2)132 (30.8)258 (40.2)
  More than 7 days23 (10.8)4 (0.9)27 (4.2)

Missing information for some cases

Socio-demographic and clinical characteristics of the SMO cases and controls Missing information for some cases

Outcome indicators

The severe maternal outcome incidence ratio was 38.4 per 1000 live births (95% CI 33.4–43.4) and the maternal near-miss incidence ratio was 36.0 per 1000 live births (95% CI 31.1–40.9) (Table 2). For every maternal death there were 15.5 near-miss cases. The hospital-based MMR was 233 per 100,000 live births (95% CI 110–360), with a mortality index (MI) of 6.1% (95% CI 2.9–9.3).
Table 2

Maternal outcome indicators in four district hospitals in Rwanda

Live birthsa 5577
Severe maternal outcome indicators
 Women with maternal near-miss (MNM)b 201
 Maternal death (MD)c 13
 Women with severe maternal outcomes (SMO)d 214
Overall near-miss indicators
 Severe maternal outcome ratio (SMOR) per 1000 live birthse 38.4 (33.4–43.4)
 Maternal near-miss incidence ratio per 1000 live birthsf 36.0 (31.1–40.9)
 Maternal near-miss mortality ratiog 15.5
 Maternal mortality ratio per 100,000 live birthsh 233 (110–360)
 Mortality index (%)i 6.1 (2.9–9.3)
Hospital access indicators
 Women with SMO at arrival or within 12 h of hospital arrivalk 188
 Proportion of SMO at arrival or within 12 h of hospital arrival (%)l 87.9 (83.5–92.3)
 Women with SMO at arrival or within 12 h of hospital arrival and referred from HCm 177
 Proportion of SMO at arrival or within 12 h of hospital arrival referred from HC (%)n 94.1 (90.7–97.5)
 SMO at arrival or within 12 h of hospital arrival who diedo 9
 SMO at arrival or within 12 h of hospital arrival mortality index (%)p 4.8 (1.7–7.9)
Intra hospital care indicators
 Women who developed SMO more than 12 h after hospital arrival (intra hospital SMO)q 26
 Intra hospital SMO rate (per 1000 live births)r 4.7 (2.9–6.5)
 Women with SMO developed after 12 h of hospital arrival who dieds 4
 Intra hospital mortality index (%)t 15.4 (1.5–29.3)

aLive birth (LB): the complete expulsion or extraction from its mother of a product of conception, irrespective of the duration of the pregnancy, which, after such separation, breathes or shows any other evidence of life. Each product of such a birth is considered live born

bNumber of women with maternal near-miss

cNumber of maternal death

dWomen with severe maternal outcome (SMO) the sum of maternal near-miss and maternal deaths. d = (b + c)

eSevere maternal outcome ratio (SMOR): the number of women with life threatening conditions per 1000 live births. e = (d/a)*1000LB

fMNM incidence ratio: the number of maternal near-miss cases per 1000 live births. [MNM IR = MNM/LB]. f = (b/a)*1000LB

gMaternal near-miss mortality ratio: the proportion between maternal near-miss cases and maternal deaths. g = (b/c)

hMaternal mortality ratio per 100,000 live births

iCase fatality rate: the number of maternal deaths divided by the number of women with SMO, expressed as a percentage. i = (c/d)*100

kNumber of women with SMO at arrival or within 12 h of hospital arrival

lProportion SMO at arrival or within 12 h among all SMO: the number of SMO who are ill on arrival or within 12 h divided by the total number of SMO. l = (k/d)*100

mNumber of women with SMO at arrival or within 12 h of hospital arrival and referred from HC

nProportion of SMO at arrival or within 12 h coming from other health facilities: the number of SMO who are ill on arrival or within 12 h and coming from a health center divided by the total number of SMO at arrival or within 12 h. n = (m/k)*100

oNumber of SMO at arrival or within 12 h of hospital arrival who died

pSMO at arrival or within 12 h mortality index: the maternal deaths within 12 h after arrival divided by the number of women with SMO who were ill on arrival or within 12 h, expressed as percentage. p = (o/k)*100

qNumber of Women who developed SMO more than 12 h after hospital arrival (intra hospital SMO)

r Intra hospital SMO rate (per 1000 live births): the number of women with SMO who developed these life-threatening conditions after 12 h in the hospital per 1000 live births. r = (q/a)*1000LB

sNumber of women who developed SMO more than 12 h after hospital arrival

tIntra hospital mortality index: the number of maternal deaths who were not ill on arrival or within 12 h, divided by the number of women with SMO who were not ill on arrival or within 12 h, expressed as a percentage. t = (s/q)*100

Maternal outcome indicators in four district hospitals in Rwanda aLive birth (LB): the complete expulsion or extraction from its mother of a product of conception, irrespective of the duration of the pregnancy, which, after such separation, breathes or shows any other evidence of life. Each product of such a birth is considered live born bNumber of women with maternal near-miss cNumber of maternal death dWomen with severe maternal outcome (SMO) the sum of maternal near-miss and maternal deaths. d = (b + c) eSevere maternal outcome ratio (SMOR): the number of women with life threatening conditions per 1000 live births. e = (d/a)*1000LB fMNM incidence ratio: the number of maternal near-miss cases per 1000 live births. [MNM IR = MNM/LB]. f = (b/a)*1000LB gMaternal near-miss mortality ratio: the proportion between maternal near-miss cases and maternal deaths. g = (b/c) hMaternal mortality ratio per 100,000 live births iCase fatality rate: the number of maternal deaths divided by the number of women with SMO, expressed as a percentage. i = (c/d)*100 kNumber of women with SMO at arrival or within 12 h of hospital arrival lProportion SMO at arrival or within 12 h among all SMO: the number of SMO who are ill on arrival or within 12 h divided by the total number of SMO. l = (k/d)*100 mNumber of women with SMO at arrival or within 12 h of hospital arrival and referred from HC nProportion of SMO at arrival or within 12 h coming from other health facilities: the number of SMO who are ill on arrival or within 12 h and coming from a health center divided by the total number of SMO at arrival or within 12 h. n = (m/k)*100 oNumber of SMO at arrival or within 12 h of hospital arrival who died pSMO at arrival or within 12 h mortality index: the maternal deaths within 12 h after arrival divided by the number of women with SMO who were ill on arrival or within 12 h, expressed as percentage. p = (o/k)*100 qNumber of Women who developed SMO more than 12 h after hospital arrival (intra hospital SMO) r Intra hospital SMO rate (per 1000 live births): the number of women with SMO who developed these life-threatening conditions after 12 h in the hospital per 1000 live births. r = (q/a)*1000LB sNumber of women who developed SMO more than 12 h after hospital arrival tIntra hospital mortality index: the number of maternal deaths who were not ill on arrival or within 12 h, divided by the number of women with SMO who were not ill on arrival or within 12 h, expressed as a percentage. t = (s/q)*100 Of the 214 SMO cases (near-miss and maternal deaths combined), 188 (87.9%; CI 83.5–92.3) presented the life-threatening condition on arrival or within the first 12 h of hospital admission; 94.1% (CI 90.7–97.5) of these cases were referred from health centers. Death within 12 h occurred in 9 women (4.8%; 95% CI 1.7–7.9;) of 188 women who were ill on arrival or within 12 h. Twenty-six women developed life-threatening conditions in the hospital after 12 h of admission and four of them (15.4%; 95% CI 1.5–29.3) died. Almost all patients (97.8%) were referred from a health center: only 2.2% of women came straight to the district hospital.

Predictive and associated factors

In multivariate logistic regression analysis (Table 3), only marital status (unmarried; aOR = 3.53; CI 1.43–8.71) and gestational age (<24 weeks: aOR = 190.15; CI 22.62–1598.87; and 24–36 weeks: aOR = 167.48; CI 21.94–1278.32) remained as predictive factors for SMO. Stillbirth (OR = 181.74; CI 43.47–757.99) and length of stay at the hospital (OR = 7.86; CI 4.49–13.76) were strongly associated with severe outcomes.
Table 3

Multivariate analysis of the predictive factors for SMO

crude OR (95%CI)adjusted OR (95%CI)
Age (N = 642)
  < 20 2.45 (1.18–5.1) 1.20 (0.37–3.86)
 20–3511
  > 35 1.47 (0.99–2.15) 1.63 (0.99–2.68)
Marital status (N = 640)
 Married11
 Unmarried 2.95 (1.69–5.14) 3.53 (1.43–8.71)
Profession (N = 641)
 Farmer11
 Other profession 3.52 (0.83–14.89) 4.33 (0.69–27.37)
 Unimployed 19.04 (2.39–151.28) 0.68 (0.01–47.62)
ANC (N = 626)
 0 3.54 (1.92–6.53) 0.51 (0.21–1.21)
 1 1.53 (0.79–2.96) 0.48 (0.19–1.13)
 2 to 3 1.02 (0.61–1.72) 0.68 (0.39–1.20)
  ≥ 411
Gestational age (N = 594)
  < 24 weeks 148.36 (20.17–1091.30) 190.15 (22.62–1598.87)
 24–36 weeks 126.11 (17.07–931.54) 167.48 (21.94–1278.32)
  ≥ 37 weeks11

cOR and aOR in bold are statistically significant

Multivariate analysis of the predictive factors for SMO cOR and aOR in bold are statistically significant

Underlying causes for SMO and associated case fatality rates

The leading direct causes of several maternal outcomes, as shown in Table 4, are postpartum haemorrhage (accounting for 23.4% of all underlying causes), followed by uterine rupture (22.9%), abortion related complications (16.8%), and hypertensive disorders (8.9%). Malaria (laboratory confirmed) was the leading cause for indirect obstetric causes, accounting for 13.6% of all underlying causes. The CFR was high for women with hypertensive disorders (10.5%; CI 3.3–24.3), followed by severe postpartum haemorrhage (8.0%; CI 0.5–15.5) and malaria (6.9%; CI 2.3–16.1). During the study period, only one hospital (Rwamagana) had its own blood bank. Among the 49 cases with uterine rupture, 32 (65.3%) had a previous caesarean section and for 6 cases (12.2%) hysterectomy was performed.
Table 4

Underlying causes of severe maternal outcomes (near-miss and maternal deaths) and their associated CFR

Direct causesMNM (n = 201)MD (n = 13)TotalCFR
 Severe postpartum haemorrhage46 (22.9%)4 (30.8%)50 (23.4%)8.0% (0.5–15.5)
 Ruptured uterus46 (22.9%)3 (23.1%)49 (22.9%)6.1% (0.6–12.8)
 Severe complications of abortion35 (17.4%)1 (7.7%)36 (16.8%)2.9% (2.6–8.4)
 Hypertensive disorders17 (8.5%)2 (15.4%)19 (8.9%)10.5% (3.3–24.3)
 Puerperal sepsis15 (7.5%)015 (7%)0
 Abnormal/ectopic pregnancy3 (1.5%)03 (1.4%)0
 Severe intrapartum haemorrhage1 (0.5%)1 (7.7%)2 (0.9%)50%
 Antepartum haemorrhage1 (0.5%)01 (0.5%)0
Indirect causes
 Malaria (laboratory confirmed)27 (13.4%)2 (15.4%)29 (13.6%)6.9% (2.3–16.1)
 Unknown causes of anaemia requiring blood transfusion10 (5.0%)010 (4.7)0
Underlying causes of severe maternal outcomes (near-miss and maternal deaths) and their associated CFR Previous caesarean sections and anaemia were the two predominant contributory factors, accounting for 26.9% and 26.6%, respectively. In 42.1% of SMO cases any contributory factor was identified (not shown in the table). Health providers used oxytocin as part of active management of third stage of labor in 94.9% of SMO cases and controls combined (Table 5). Among those who were diagnosed with severe PPH (58 cases and controls), about two-thirds (65.5%) received oxytocin only, while among the other third, three women received ergometrine and/or misoprostol in addition to oxytocin; in seven cases removal of retained placenta was performed in combination with oxytocin; six cases underwent hysterectomy (10.3%).
Table 5

Adherence to clinical standards for management of obstetric complications

Use of uterotonics for Prevention of postpartum haemorrhage
 Target population women giving birth at DHN1 = 511a
 Oxytocin485 (94.9%)
 Misoprostol7 (1.4%)
 All uterotonics492 (96.3%)
Treatment of PPH
 Target population women severe PPHN2 = 58
 Oxytocin38 (65.5%)
 Oxytocin/Removal of retained placenta7 (12.1%)
 Oxytocin/Misoprostol3 (5.2%)
 Misoprostol1 (1.7%)
 Hysterectomy6 (10.3%)
Use of anticonvulsants
 Target population women with severe (pre-) eclampsiaN3 = 19
 Magnesium sulfate18 (94.7%)
 Diazepam1 (5.3%)
Prevention of caesarean section /laparotomy related infection
 Target population undergoing Caesarean section/laparotomyN4 = 300b
 Prophylactic antibiotics456 (98.6%)
Treatment of sepsis
 Target population women with sepsisN5 = 15
 Parenteral therapeutic antibiotics15 (100%)

a511 cases among SMO and controls gave birth at district hospital

b249 cases of caesarean sections (Table 1) plus 51 cases of laparotomy

Adherence to clinical standards for management of obstetric complications a511 cases among SMO and controls gave birth at district hospital b249 cases of caesarean sections (Table 1) plus 51 cases of laparotomy All severe (pre-) eclampsia cases received an anticonvulsant at the hospital, mostly magnesium sulphate (94.7%). Antibiotics were used for all women with an infection (15 cases) and almost all women who underwent a caesarean section or laparotomy received prophylactic antibiotics (98.6%). In total, 171 (80%) women of all SMO cases required blood transfusion; laparotomy was performed in 51 cases (23.8%).

Discussion

This is the first prospective multicentre case control study combining maternal death and maternal near-miss in Rwandan district hospitals, where geographic access to emergency obstetric care is more of an issue than in Kigali capital city [9, 10]. Based on an analysis of SMO that occurred in four district hospitals, this study assessed the quality of care provided, using the WHO criteria adapted to the local context [14, 15]. The hospital based maternal mortality ratio was 233 (CI 110–360) per 100,000 live births. SMO. and near-miss case ratios were relatively high at 38.4 (CI 33.4–43.4) and 36.0 (CI 31.1–40.9) per 1000 live births, respectively. Our study found a low mortality index (6.10) and a high maternal near-miss mortality ratio (15.5). Oxytocin was used for PPH prevention at 96.5% of all evaluated cases; magnesium sulphate as anticonvulsants in case of severe pre-eclampsia or eclampsia at 94.7%; and almost in all cases antibiotics were used in prophylaxis of sepsis in the event of a caesarean section or laparotomy, and in treatment of puerperal sepsis. Severe postpartum haemorrhage (23.4%), uterine rupture (22.9%), severe complications of abortion (16.8%), malaria (13.6%) and hypertensive disorders (8.9%) were the predominant causes of SMO. Case fatality for hypertensive disorders (eclampsia/pre eclampsia) was high in our settings at 10.5%. Being unmarried and developing a complication while gestational age was less than 36 weeks were identified as predictors for developing SMO and cases were associated with long stay at the hospital and stillbirth. We found a hospital based maternal mortality ratio which corresponds with the 2015 DHS findings [4] and estimates in a recent UN report [1] which were 210 and 290 per 100,000 live births respectively. However, severe maternal outcome and near-miss case ratios were much higher than those found in a hospital-based study conducted in one of the tertiary hospitals in Kigali and in Musanze district hospital, which reported, SMO ratios of 11.0 and 24.8, and MNM ratios of 8 and 21.5 per 1000 live births, respectively [9, 12]. The near miss prevalence of our present study falls within the range of findings reported in the two systematic reviews of near-miss studies, one for Sub-Saharan Africa and the other for Africa as a whole, which found prevalence rates ranging from 1.1% to 10.1% and from 0.05 to 15.0%, respectively [17, 18]. Both ratios were high, though, compared to the WHO multi-country survey on maternal and newborn health, which found SMO and MNM ratios of 6.2 and 8.6 per 1000 live births respectively for high MMR countries, and 13.1 and 15.9 per 1000 live births for very high MMR countries, with overall rates of 8.3 and 9.9 per 1000 live births, respectively [19].The high ratios in our study may be explained by the fact that almost all women who deliver at district hospitals in Rwanda are referred, either because of high-risk pregnancy or complications that have occurred. However, they indicate a third phase delay [20]: either in making a diagnosis or deciding to refer the patient; or delays in the referral process at health centre level. Also, the threshold of blood transfusion (≥1 unit) used in our study, as per Haydom criteria, is much lower compared to the WHO criteria for near-miss (≥5 units), which may further explain the high ratios [15]. The combination of a low mortality index found in our study compared to other studies [17, 19] and high maternal near-miss mortality ratios compared to other settings [9, 12, 21–26], could be attributed, at least in part, by the frequent use of lifesaving interventions observed in our study. A high coverage of those interventions alone does not avoid the occurrence of SMO as shown in our study. Different studies have highlighted that high coverage of essential interventions is not sufficient to reduce maternal morbidity and mortality; they suggest that universal coverage of life-saving interventions needs to be matched with comprehensive emergency care and overall improvements in the quality of maternal health care [19, 27, 28]. Case fatality for hypertensive disorders in pregnancy and/or labour was also high in other studies, illustrating that better treatment of hypertension and starting induction of labour as soon as possible is needed to improve health outcomes [15, 21, 24, 29]. Except for marital status, other studies also identified age, educational level, parity, booking for ANC and gestational age as predictive factors for SMO [11, 22, 30, 31]; and stillbirth, long duration of admission, caesarean section, assisted vaginal delivery, birth asphyxia and low birth weight as associated factors [17, 32, 33]. While we used the four predictive characteristics identified in other studies as criteria for matching, we were unable to apply them simultaneously [11, 22, 30, 31]. This was due to the time limitation for the selection of the controls (maximum 48 h). Therefore, we selected controls that were similar to the cases for at least one of the four matching criteria; this is a limitation of the study. Although we did analyse the coverage of life saving interventions, we were not able to assess whether the interventions were implemented appropriately. Also, we used only SMO cases to determine the relatively CFRs, instead of all cases with particular obstetrical complications and this could explain the high rate found in our study as not all cases fitted the SMO criteria.

Conclusions

Severe maternal outcomes are frequent. The high ratios of SMO and coverage of life saving interventions call for improvements in the quality of case management and follow up of pregnant women in order to reduce maternal morbidity and mortality. PPH, eclampsia and ruptured uterus are conditions that need particular attention as these are major causes of SMO and their case fatality rates are high. Unmarried women and women with gestational age below 36 weeks are more likely to develop an SMO and this is associated with a longer stay at the hospital and with stillbirth. Surveillance of near miss events would be a useful addition to maternal death audits. Ideally, the two instruments should be integrated into routine monitoring and surveillance, not necessarily with the intention to examine all near-miss events, but focused on maternal conditions that are known to have the highest CFR, especially PPH, eclampsia and ruptured uterus. Increasing the coverage of life-saving interventions – such as using oxytocin in the management of third stage of labour, which is currently a policy in many countries and which is also recommended by WHO – is appropriate but insufficient. There is a need for improvement of quality of care at the level of district hospitals, through improved referral practices and certain types of infrastructure such as blood banks; this would go a long way in providing true comprehensive emergency obstetric care. Health centres will continue to refer women with obstetric complications to district hospitals, and although certain delays are unavoidable they should be minimised as much as possible. There is much to be gained from routine confidential enquiry into obstetric cases, including near-miss events, so as to learn from the way they are managed at the various levels of the referral chain.
  28 in total

1.  Maternal near miss--towards a standard tool for monitoring quality of maternal health care.

Authors:  Lale Say; João Paulo Souza; Robert C Pattinson
Journal:  Best Pract Res Clin Obstet Gynaecol       Date:  2009-03-19       Impact factor: 5.237

Review 2.  Countdown to 2015: a decade of tracking progress for maternal, newborn, and child survival.

Authors:  Cesar G Victora; Jennifer Harris Requejo; Aluisio J D Barros; Peter Berman; Zulfiqar Bhutta; Ties Boerma; Mickey Chopra; Andres de Francisco; Bernadette Daelmans; Elizabeth Hazel; Joy Lawn; Blerta Maliqi; Holly Newby; Jennifer Bryce
Journal:  Lancet       Date:  2015-10-22       Impact factor: 202.731

3.  Characteristics and outcomes of patients with eclampsia and severe pre-eclampsia in a rural hospital in Western Tanzania: a retrospective medical record study.

Authors:  Rob Mooij; Joseph Lugumila; Masumbuko Y Mwashambwa; Ipyana H Mwampagatwa; Jeroen van Dillen; Jelle Stekelenburg
Journal:  BMC Pregnancy Childbirth       Date:  2015-09-08       Impact factor: 3.007

4.  Maternal near miss and mortality in a rural referral hospital in northern Tanzania: a cross-sectional study.

Authors:  Ellen J T Nelissen; Estomih Mduma; Hege L Ersdal; Bjørg Evjen-Olsen; Jos J M van Roosmalen; Jelle Stekelenburg
Journal:  BMC Pregnancy Childbirth       Date:  2013-07-04       Impact factor: 3.007

5.  Maternal near miss and mortality due to postpartum infection: a cross-sectional analysis from Rwanda.

Authors:  Denis Rwabizi; Stephen Rulisa; Aidan Findlater; Maria Small
Journal:  BMC Pregnancy Childbirth       Date:  2016-07-20       Impact factor: 3.007

6.  When getting there is not enough: a nationwide cross-sectional study of 998 maternal deaths and 1451 near-misses in public tertiary hospitals in a low-income country.

Authors:  O T Oladapo; O O Adetoro; B A Ekele; C Chama; S J Etuk; A P Aboyeji; H E Onah; A M Abasiattai; A N Adamu; O Adegbola; A S Adeniran; C O Aimakhu; O Akinsanya; L D Aliyu; A B Ande; A Ashimi; M Bwala; A Fabamwo; A D Geidam; J I Ikechebelu; J O Imaralu; O Kuti; D Nwachukwu; L Omo-Aghoja; K Tunau; J Tukur; Ouj Umeora; A C Umezulike; O A Dada; Ӧ Tunçalp; J P Vogel; A M Gülmezoglu
Journal:  BJOG       Date:  2015-05-14       Impact factor: 6.531

7.  Maternal Near Miss and quality of care in a rural Rwandan hospital.

Authors:  Richard Kalisa; Stephen Rulisa; Thomas van den Akker; Jos van Roosmalen
Journal:  BMC Pregnancy Childbirth       Date:  2016-10-21       Impact factor: 3.007

8.  Incidence and determinants of severe maternal morbidity: a transversal study in a referral hospital in Teresina, Piaui, Brazil.

Authors:  Alberto Pereira Madeiro; Andréa Cronemberger Rufino; Érica Zânia Gonçalves Lacerda; Laís Gonçalves Brasil
Journal:  BMC Pregnancy Childbirth       Date:  2015-09-07       Impact factor: 3.007

9.  Incidence and correlates of maternal near miss in southeast iran.

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Authors:  Annettee Nakimuli; Sarah Nakubulwa; Othman Kakaire; Michael O Osinde; Scovia N Mbalinda; Rose C Nabirye; Nelson Kakande; Dan K Kaye
Journal:  BMC Pregnancy Childbirth       Date:  2016-01-28       Impact factor: 3.007

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Review 1.  A global view of severe maternal morbidity: moving beyond maternal mortality.

Authors:  Stacie E Geller; Abigail R Koch; Caitlin E Garland; E Jane MacDonald; Francesca Storey; Beverley Lawton
Journal:  Reprod Health       Date:  2018-06-22       Impact factor: 3.223

2.  Effect of the competency-based Helping Mothers Survive Bleeding after Birth (HMS BAB) training on maternal morbidity: a cluster-randomised trial in 20 districts in Tanzania.

Authors:  Fadhlun Alwy Al-Beity; Andrea Pembe; Atsumi Hirose; Jessica Morris; Sebalda Leshabari; Gaetano Marrone; Claudia Hanson
Journal:  BMJ Glob Health       Date:  2019-03-07

3.  Incidence and Predictors of Maternal and Perinatal Mortality among Women with Severe Maternal Outcomes: A Tanzanian Facility-Based Survey for Improving Maternal and Newborn Care.

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Journal:  Obstet Gynecol Int       Date:  2020-04-10

4.  Severe maternal morbidity and its associated factors: A cross-sectional study in Morang district, Nepal.

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Journal:  PLoS One       Date:  2021-12-31       Impact factor: 3.240

5.  Causes of maternal mortality in Sub-Saharan Africa: A systematic review of studies published from 2015 to 2020.

Authors:  Reuben Musarandega; Michael Nyakura; Rhoderick Machekano; Robert Pattinson; Stephen Peter Munjanja
Journal:  J Glob Health       Date:  2021-10-09       Impact factor: 4.413

6.  Severe Maternal Outcomes and Quality of Maternal Health Care in South Ethiopia.

Authors:  Tesfalidet Beyene; Catherine Chojenta; Roger Smith; Deborah Loxton
Journal:  Int J Womens Health       Date:  2022-02-03

7.  Global and regional estimates of maternal near miss: a systematic review, meta-analysis and experiences with application.

Authors:  Tabassum Firoz; Carla Lionela Trigo Romero; Clarus Leung; João Paulo Souza; Özge Tunçalp
Journal:  BMJ Glob Health       Date:  2022-04

8.  Human Development Index of the maternal country of origin and its relationship with maternal near miss: A systematic review of the literature.

Authors:  Santiago García-Tizón Larroca; Francisco Amor Valera; Esther Ayuso Herrera; Ignacio Cueto Hernandez; Yolanda Cuñarro Lopez; Juan De Leon-Luis
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9.  Understanding variation in health service coverage and maternal health outcomes among districts in Rwanda - A qualitative study of local health workers' perceptions.

Authors:  Felix Sayinzoga; Moses Tetui; Koos van der Velden; Jeroen van Dillen; Leon Bijlmakers
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10.  The effect of a decision-support mHealth application on maternal and neonatal outcomes in two district hospitals in Rwanda: pre - post intervention study.

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Journal:  BMC Pregnancy Childbirth       Date:  2022-01-20       Impact factor: 3.007

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