Gestational diabetes mellitus per different diagnostic criteria, risk factors, obstetric outcomes and postpartum glycemia: A prospective study in Ghana

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Study Justification:
– The study aims to address the increasing global prevalence of gestational diabetes mellitus (GDM) and the need for a tailored health system approach for prevention, detection, and management.
– The study provides insights into the prevalence of GDM using different diagnostic criteria and thresholds, as well as the associated risk factors, obstetric outcomes, and postpartum glycemia.
– By understanding these factors, policymakers and healthcare providers can develop targeted interventions and strategies to improve maternal and neonatal health outcomes.
Study Highlights:
– The study included 446 singleton pregnant women without pre-existing diabetes who underwent GDM tests using fasting plasma glucose (FPG) and oral glucose tolerance test (OGTT).
– GDM prevalence ranged from 8.3% to 23.8% based on FPG cut-offs and from 4.4% to 14.3% based on 2-h OGTT cut-offs.
– Risk factors for GDM included overweight, previous miscarriage, and high caloric intake.
– Perineal tear and birth asphyxia were associated with GDM as perinatal outcomes.
– At 12 weeks postpartum, 15% of women had impaired fasting glucose and 5% had diabetes.
– The study highlights the importance of addressing modifiable risk factors and integrating glycemic monitoring in postpartum and well-child reviews.
Recommendations for Lay Readers and Policy Makers:
– Focus on prevention: Emphasize the importance of maintaining a healthy weight, promoting a balanced diet, and encouraging regular physical activity to reduce the risk of GDM.
– Improve screening and diagnostic practices: Consider using a universal testing approach for GDM detection, including regular urine glucose checks and timely OGTTs based on recommended thresholds.
– Enhance management strategies: Ensure that diet and exercise therapy is the first-line management strategy for GDM, with insulin administration reserved for cases of unsatisfactory glycemic control.
– Strengthen healthcare delivery: Improve access to antenatal care, skilled delivery, and postpartum care to ensure comprehensive and continuous support for pregnant women with GDM.
– Promote collaboration: Engage various stakeholders, including healthcare providers, policymakers, and community health workers, to work together in implementing and monitoring GDM prevention and management strategies.
Key Role Players:
– Healthcare providers: Obstetricians, gynecologists, midwives, and nurses involved in antenatal care, delivery, and postpartum care.
– Policy makers: Government health departments, regulatory bodies, and policymakers responsible for developing and implementing guidelines and policies related to maternal and child health.
– Community health workers: Individuals involved in community-based health promotion, education, and support for pregnant women.
– Researchers: Experts in the field of gestational diabetes and maternal health who can provide evidence-based recommendations and guidance.
Cost Items for Planning Recommendations:
– Training and capacity building: Budget for training healthcare providers on GDM prevention, detection, and management strategies.
– Equipment and supplies: Allocate funds for glucose testing equipment, laboratory supplies, and other necessary medical equipment.
– Health system strengthening: Invest in improving healthcare infrastructure, including antenatal care clinics, delivery facilities, and postpartum care services.
– Health education and awareness campaigns: Allocate resources for developing and implementing health education programs targeting pregnant women and the general population to raise awareness about GDM and its prevention.
– Monitoring and evaluation: Set aside funds for monitoring and evaluating the implementation and impact of GDM prevention and management strategies.
Please note that the cost items provided are general suggestions and may vary depending on the specific context and resources available.

The strength of evidence for this abstract is 7 out of 10.
The evidence in the abstract is based on a prospective cohort study design, which is generally considered to be a strong study design. The study included a relatively large sample size of 446 singleton pregnant women without pre-existing diabetes. The study assessed the prevalence of gestational diabetes mellitus (GDM) using multiple diagnostic criteria and evaluated risk factors, obstetric outcomes, and postpartum glycemia. The study reported odds ratios and relative risks to assess associations between variables. However, the abstract does not provide information on the representativeness of the study population or the generalizability of the findings. Additionally, the abstract does not mention any statistical tests used to determine the significance of the associations reported. To improve the evidence, future studies could consider including a more diverse and representative sample, provide more details on statistical analyses, and discuss the generalizability of the findings.

The surge in gestational diabetes mellitus (GDM) globally requires a health system tailored approach towards prevention, detection and management. We estimated the prevalence of GDM using diverse recommended tests and diagnostic thresholds, and also assessed the risk factors and obstetric outcomes, including postpartum glycemia. Using a prospective cohort design, 446 singleton pregnant women without pre-existing diabetes did GDM tests in five hospitals in Ghana from 20–34 weeks using fasting plasma glucose (FPG), one-hour and 2-h oral glucose tolerance test (OGTT). Birth outcomes of 403 were assessed. GDM was diagnosed using six international diagnostic criteria. At 12 weeks postpartum, impaired fasting glucose (6.1–6.9 mmol/L) and diabetes (FPG ≥7.0 mmol/L) were measured for 100 women. Per FPG and 2-h OGTT cut-offs, GDM prevalence ranged between 8.3–23.8% and 4.4–14.3%, respectively. Risk factors included overweight (OR = 2.13, 95% CI: 1.13–4.03), previous miscarriage (OR = 4.01, 95% CI: 1.09–14.76) and high caloric intake (OR = 2.91, 95% CI: 1.05–8.07). Perineal tear (RR = 2.91, 95% CI: 1.08–5.57) and birth asphyxia (RR = 3.24, 95% CI: 1.01–10.45) were the associated perinatal outcomes. At 12 weeks postpartum, 15% had impaired fasting glucose, and 5% had diabetes. Tackling modifiable risk factors is crucial for prevention. Glycemic monitoring needs to be integral in postpartum and well-child reviews.

This observational study was conducted as a prospective longitudinal study and reported in line with the STROBE (strengthening the reporting of observational studies in epidemiology) statement for cohort studies. In Ghana, universal testing of all pregnant women using the ‘one-step’ screening approach is the current guideline for GDM detection [22]. The blue shaded area in Figure 2 illustrates the recommended screening and testing modalities. Essentially, at every ANC visit, urine glucose of all pregnant women is checked. If the urine glucose is 1+/2+ on two occasions or 3+/4+ on any single visit, 2-h OGTT is performed. Between 24–32 gestational weeks, all pregnant women should perform both fasting blood glucose and 2-h OGTT. When the fasting blood glucose is 6.1–7.0 mmol/L or the 2-h OGTT >8.5 mmol/L, GDM is diagnosed. Diet and exercise therapy, which is the first-line management strategy, is initiated, but where glycemic control is unsatisfactory, insulin is administered. Recommended standard of care for GDM detection in Ghana vis-à-vis the actual clinical practice. Note: Author designed. ANC, antenatal care clinic; 2-h OGTT, two-hour oral glucose tolerance test; GDM, gestational diabetes mellitus; CHPS, Community Health-Based Planning Services. Although the use of oral anti-diabetic medications is contraindicated during pregnancy in Ghana [22], some clinicians administer metformin as a monotherapy or in combination with insulin based on evidence that metformin significantly lowers post-prandial blood glucose than insulin [23]. However, the guideline is silent on the exact glycemic values at which administration of hypoglycemic agent is utterly necessary in situations where diet therapy does not lead to satisfactory glycemic control. Regarding actual clinical implementation, there exist discrepancies at the various levels of healthcare. The screening and management practice in primary, secondary, and tertiary levels of care is shown in the orange shaded area in Figure 2. Despite the national target of 85% pregnant women receiving at least four ANC visits, in 2016, only 72% achieved this target in the study region. ANC booking in the first trimester and skilled delivery were approximately 45% [24]. The study sites have been described elsewhere [25]. Participants were recruited in the first trimester of pregnancy and the cohort followed-up until 12 weeks postpartum. In line with ANC delivery in Ghana, participants were proportionately allocated to one clinic, three municipal hospitals and one teaching hospital representing primary, secondary and tertiary levels of care respectively, which serve rural and urban communities in the Volta Region, Ghana. The sample size of 416 was determined using GDM prevalence of 9.3% [21], a population of 516,461 women in their reproductive age in the region, a 95% confidence level corresponding to 1.96 Z-score, a 5% error margin and a design effect of 3.2 accounting for variability in the different levels of ANC [25]. Based on 43.7% access to a skilled attendant at birth in Ghana [24], the sample size was increased to 800 to account for any attrition. Singleton pregnant women without pre-existing diabetes who registered for ANC in the first trimester of pregnancy were eligible. At ANC booking, random blood glucose and glycated hemoglobin (HbA1c) were checked. Participants whose random blood glucose values (≥11.1 mmol/L) and HbA1c (≥6.5%, 7.8 mmol/L) were suggestive of pre-existing diabetes were excluded (n = 10). Women who did not intend to deliver in any of the study facilities were also excluded. All women (n = 3093) who registered for ANC in the first trimester in the five study facilities from June 2016 to April 2017 constituted the sampling frame. Eligible participants were consecutively selected until the required sample size was obtained. Overall, 807 participants were booked for GDM testing, of which 490 reported but about 5% (n = 44) arrived in a non-fasting state and were thus excluded. Reasons for dropout from the study are shown in Figure 3. Overall, 446 performed the diagnostic tests, 403 were traced at delivery and 100 were followed-up at 12 weeks postpartum. Number of participants followed-up at each stage of the study. Note: n, number of participants; GDM, gestational diabetes mellitus; CS, cesarean section; LGA, large-for-gestational-age. At the first ANC booking, which was typically before the 16th week of gestation, we conducted one-on-one interviews to obtain data on socio-demographic variables. We measured body weight, height and mid-upper arm circumference (MUAC) following standard procedures and derived the body mass index (BMI) from the anthropometric indices. We extracted information from the maternal health record booklet on participants’ obstetric (gravida, parity, previous macrosomic births, cesarean section [CS], miscarriages, perinatal and neonatal deaths) and medical histories (first-degree relations with diabetes and/or hypertension). We assessed habitual dietary patterns using a food frequency questionnaire (FFQ). The FFQ had a frequency of consumption categories ranging from daily, weekly, fortnightly, monthly, rarely to never. Designed a priori based on frequently consumed foods in Ghana, the FFQ provided qualitative data on food intake, including snacks and beverages. To minimize recall biases, we checked the plausibility of the reported dietary intakes by collecting a non-quantitative 24-h recall data. Daily consumption of any carbohydrate-dense foods that contributed over 70% of the glycemic index (GI) value was assigned a score of one. Based on the cumulative scores, daily intake of five or more foods that contributed over 70% GI value was rated as high caloric intake; daily intake of three to four high GI value foods was considered to be moderate caloric intake, and daily consumption of two or less high GI value foods was considered to be low caloric intake. During the monthly ANC visits, we took blood pressure, gestational weight gain and urine glucose/protein measurements. MUAC was measured once in each trimester and the cut-off determined using the population median value. Per recommendations from the Institute of Medicine on ideal pregnancy weight gain, a woman was considered to be at high risk for GDM if her body weight for gestational age was above the threshold for her BMI group. The BMI groups and the corresponding pregnancy weight gain categories are underweight (90th percentile per the InterGrowth study standards accounting for gestational age at birth and sex of the newborn; and (3) Ponderal Index (PI) calculated as the birth weight (g)/length (cm3) × 100. PI was classified as small-for-gestational-age (<2.0), marginal (2.0–2.5), normal (2.5–3.0.) and large-for-gestational-age (≥3.0). Survival of the newborn was assessed using four indicators: (1) Apgar score at one and five minutes; (2) resuscitation, (3) admission to neonatal intensive care unit (NICU) and (4) perinatal death. Secondary outcomes were gestational age at birth and random glucose of the newborn determined from the capillary blood collected at the heel between one to two hours after birth. At 12 weeks postpartum, we measured FPG of the GDM cases to diagnose impaired fasting glucose (6.1–6.9 mmol/L), and diabetes (FPG ≥7.0 mmol/L) using the International Federation of Gynecology and Obstetrics’ diagnostic criteria for non-pregnant women [8,29]. Descriptive analysis was conducted using unpaired t-test and Chi-square test. Differences between the GDM present or absent groups was tested using a dichotomous outcome tabulated in a two-by-two table with the dichotomous input variables. Inferential analysis was conducted using unconditional logistic regression to generate crude estimates of association. Variables that had theoretical evidence of association with GDM or recorded p < 0.10 in the crude estimates were included in the adjusted model. To control for confounding variables, multivariate binary logistic regression was modeled and the adjusted odds ratios (aOR) obtained through the Cochran -Mantel-Haenszel statistic. We conducted a simple linear regression to estimate the coefficient of a unit rise in blood glucose on individual pregnancy outcomes assessed. A correlation matrix was computed to identify collinearity and possible confounders, in addition to interaction terms considered in the final model selection. Adjusting for confounding variables in a multivariate analysis, binary logistic regression model was run to estimate the relative risk for an adverse obstetric outcome. Missing values were deleted pairwise. As multiple birth outcomes were tested simultaneously, the effect of multiple comparisons was adjusted for using the Bonferroni correction. A corrected p < 0.05 (two-sided) and confidence intervals (CI) excluding one were considered to be associated with the outcome measures. Analysis was done in Stata software (version 14.2). The Ghana Health Service Ethics Review Committee (GHS-ERC-GM 04/02/16) and the Institutional Review Board of Heidelberg University Medical Faculty (S-042/2016) approved the study. We obtained written informed consent from all study participants, including participants below 18 years who were ethically regarded as emancipated adults.

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Based on the provided description, here are some potential innovations that could improve access to maternal health:

1. Mobile Health (mHealth) Solutions: Develop mobile applications or text messaging services to provide pregnant women with information about gestational diabetes, including risk factors, prevention strategies, and management techniques. These tools can also be used to send reminders for prenatal appointments and GDM testing.

2. Telemedicine: Implement telemedicine services to enable remote consultations between pregnant women and healthcare providers. This can help overcome geographical barriers and improve access to specialized care for women in rural areas.

3. Community Health Workers: Train and deploy community health workers to provide education and support to pregnant women regarding GDM. These workers can conduct home visits, organize group sessions, and assist with monitoring blood glucose levels.

4. Task Shifting: Expand the role of midwives and nurses to include GDM screening and management. This can help alleviate the burden on doctors and increase access to care in resource-limited settings.

5. Integrated Care: Establish multidisciplinary teams that include obstetricians, endocrinologists, dietitians, and mental health professionals to provide comprehensive care for women with GDM. This approach ensures that all aspects of maternal health are addressed in a coordinated manner.

6. Health Education Campaigns: Launch public awareness campaigns to educate women and their families about the importance of early detection and management of GDM. These campaigns can be conducted through various channels, such as radio, television, social media, and community events.

7. Quality Improvement Initiatives: Implement quality improvement initiatives in healthcare facilities to ensure standardized and evidence-based care for women with GDM. This can include regular training and monitoring of healthcare providers, as well as the establishment of clinical guidelines and protocols.

8. Financial Support: Explore options for providing financial support or insurance coverage for GDM testing and management. This can help reduce the financial barriers that may prevent some women from accessing necessary care.

9. Collaboration and Partnerships: Foster collaboration between government agencies, healthcare providers, non-profit organizations, and community stakeholders to develop and implement innovative solutions for improving access to maternal health, specifically for GDM.

10. Research and Data Collection: Conduct further research to better understand the prevalence, risk factors, and outcomes of GDM in different populations. This can help inform the development of targeted interventions and policies to improve access to care.
AI Innovations Description
Based on the information provided, the following recommendation can be developed into an innovation to improve access to maternal health:

1. Implement a standardized screening and testing protocol: Develop and implement a standardized screening and testing protocol for gestational diabetes mellitus (GDM) in maternal health clinics. This protocol should include regular urine glucose checks, fasting plasma glucose (FPG) tests, and oral glucose tolerance tests (OGTT) at specific gestational weeks.

2. Improve healthcare provider training: Provide comprehensive training to healthcare providers on the detection, diagnosis, and management of GDM. This training should focus on the use of recommended diagnostic criteria and thresholds, as well as the identification of risk factors and appropriate interventions.

3. Increase awareness and education: Conduct awareness campaigns and educational programs to increase awareness among pregnant women about the importance of GDM screening and management. This can include providing information on risk factors, signs and symptoms, and the potential consequences of untreated GDM.

4. Strengthen referral systems: Establish effective referral systems between primary, secondary, and tertiary levels of care to ensure seamless continuity of care for pregnant women with GDM. This can include clear guidelines on when to refer patients for specialized care and coordination between healthcare facilities.

5. Enhance postpartum follow-up: Implement postpartum glycemic monitoring as an integral part of postpartum and well-child reviews. This can help identify women with impaired fasting glucose or diabetes and provide appropriate interventions and support for long-term management.

6. Address modifiable risk factors: Develop and implement interventions to address modifiable risk factors for GDM, such as overweight and high caloric intake. This can include nutritional counseling, exercise programs, and support for healthy lifestyle choices during pregnancy.

7. Utilize technology for remote monitoring: Explore the use of technology, such as mobile applications or telemedicine, to enable remote monitoring and support for pregnant women with GDM. This can improve access to healthcare services, especially for women in remote or underserved areas.

8. Collaborate with community health workers: Engage community health workers in the detection and management of GDM. They can play a crucial role in raising awareness, conducting screenings, and providing support and education to pregnant women in their communities.

By implementing these recommendations, access to maternal health can be improved, leading to better detection, management, and outcomes for women with gestational diabetes mellitus.
AI Innovations Methodology
To improve access to maternal health, here are some potential recommendations based on the study:

1. Implement universal testing: Consider adopting the “one-step” screening approach for gestational diabetes mellitus (GDM) detection, as recommended in Ghana’s current guidelines. This involves testing all pregnant women for urine glucose at every antenatal care (ANC) visit and performing a 2-hour oral glucose tolerance test (OGTT) between 24-32 weeks of gestation.

2. Improve healthcare infrastructure: Address the discrepancies in screening and management practices at different levels of healthcare (primary, secondary, and tertiary) to ensure consistent and standardized care for pregnant women. This may involve strengthening ANC services, increasing access to skilled attendants at birth, and improving the availability of necessary equipment and medications.

3. Enhance healthcare provider training: Provide comprehensive training to healthcare providers on GDM detection, diagnosis, and management. This should include education on the recommended diagnostic criteria, risk factors, and obstetric outcomes associated with GDM. Additionally, training should cover the appropriate use of hypoglycemic agents, such as insulin and metformin, in cases where diet therapy is insufficient.

4. Promote healthy lifestyle interventions: Emphasize the importance of modifiable risk factors, such as maintaining a healthy weight, adopting a balanced diet, and engaging in regular physical activity, in preventing GDM. Implement strategies to promote healthy lifestyle interventions during pregnancy, including nutrition counseling and exercise programs.

To simulate the impact of these recommendations on improving access to maternal health, a methodology could include the following steps:

1. Define the target population: Determine the population of pregnant women in the study region who would benefit from improved access to maternal health services, specifically related to GDM prevention, detection, and management.

2. Collect baseline data: Gather data on the current prevalence of GDM, existing healthcare infrastructure, healthcare provider training, and lifestyle interventions in the study region. This can be done through surveys, interviews, and data analysis of existing health records.

3. Develop a simulation model: Create a mathematical model that incorporates the various factors influencing access to maternal health, such as healthcare infrastructure, healthcare provider training, and lifestyle interventions. This model should consider the potential impact of the recommended innovations on improving access to maternal health services.

4. Input data and run simulations: Input the collected baseline data into the simulation model and run multiple simulations to assess the potential impact of the recommended innovations. This can involve adjusting different variables, such as the implementation of universal testing, improvements in healthcare infrastructure, and increased healthcare provider training, to observe their effects on access to maternal health services.

5. Analyze results: Analyze the simulation results to determine the projected impact of the recommended innovations on improving access to maternal health. This can include evaluating changes in GDM prevalence, healthcare utilization rates, and obstetric outcomes.

6. Validate and refine the model: Validate the simulation model by comparing the projected results with real-world data, if available. Refine the model based on feedback and additional data to improve its accuracy and reliability.

By following this methodology, policymakers and healthcare stakeholders can gain insights into the potential impact of implementing the recommended innovations on improving access to maternal health services, specifically related to GDM prevention, detection, and management.

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