| Literature DB >> 29057843 |
Win Khaing1,2, Sakda Arj-Ong Vallibhakara3, Visasiri Tantrakul4, Orawin Vallibhakara5, Sasivimol Rattanasiri6, Mark McEvoy7, John Attia8, Ammarin Thakkinstian9.
Abstract
Vitamin D supplementation effects with or without calcium in pregnancy for reducing risk of preeclampsia and gestational or pregnancy induced hypertension are controversial. Literature was systematically searched in Medline, Scopus and Cochrane databases from inception to July 2017. Only randomized controlled trials (RCTs) in English were selected if they had any pair of interventions (calcium, vitamin D, both, or placebo). Systematic review with two-step network-meta-analysis was used to indirectly estimate supplementary effects. Twenty-seven RCTs with 28,000 women were eligible. A direct meta-analysis suggested that calcium, vitamin D, and calcium plus vitamin D could lower risk of preeclampsia when compared to placebo with the pooled risk ratios (RRs) of 0.54 (0.41, 0.70), 0.47 (0.24, 0.89) and 0.50 (0.32, 0.78), respectively. Results of network meta-analysis were similar with the corresponding RRs of 0.49 (0.35, 0.69), 0.43 (0.17, 1.11), and 0.57 (0.30, 1.10), respectively. None of the controls were significant. Efficacy of supplementation, which was ranked by surface under cumulative ranking probabilities, were: vitamin D (47.4%), calcium (31.6%) and calcium plus vitamin D (19.6%), respectively. Calcium supplementation may be used for prevention for preeclampsia. Vitamin D might also worked well but further large scale RCTs are warranted to confirm our findings.Entities:
Keywords: calcium; gestational hypertension; network meta-analysis; preeclampsia; prevention; systematic review; vitamin D
Mesh:
Substances:
Year: 2017 PMID: 29057843 PMCID: PMC5691757 DOI: 10.3390/nu9101141
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 5.717
Figure 1Flow of selection of studies.
Characteristics of included studies.
| Author (Year) | Country | Outcome | Study Period (Months) | Type of Pregnancy | Supplement Started GA (Weeks) | Mean Age (Years) | Mean GA at Enrolment (Weeks) | Mean GA at Delivery (Weeks) | SBP (mmHg) | DBP (mmHg) | BMI (kg/m2) | Weight Gain (g/Week) | Nulliparity (%) | ||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Aghamohammadi (2015) [ | Iran | PE | - | High Risk Women | 40 | 40 | <20 weeks | 37.15 | - | - | - | - | 26.8 | - | - |
| Almirante (1998) [ | Philippines | PE | - | High Risk Women | 210 | 212 | <20 weeks | - | 18.00 | - | - | - | - | - | 100.00 |
| Bassaw (1998) [ | Bangladesh | Both | 36 | Low Risk Women | 250 | 81 | <20 weeks | 27 | - | 38.6 | - | - | - | - | - |
| Belizan (1991) [ | Argentina | Both | 33 | High Risk Women | 588 | 579 | ≥20 weeks | 23.70 | 20.80 | - | 103.95 | 66.45 | - | - | 100.00 |
| Crowther (1999) [ | Australian | Both | 53 | Low Risk Women | 229 | 227 | ≥20 weeks | 24.70 | 18.37 | - | 115.80 | 68.20 | 26.60 | - | 100.00 |
| Kumar (2009) [ | New Delhi | PE | 36 | Low Risk Women | 251 | 273 | <20 weeks | 21.85 | 17.83 | 38.44 | 113.19 | 74.00 | 23.35 | - | - |
| Levine (1997) [ | US | Both | 36 | Low Risk Women | 2294 | 2295 | <20 weeks | 21.00 | 17.15 | 38.90 | 106.50 | 59.70 | - | - | 100.00 |
| Lopez-Jaramillo (1997) [ | Ecuador | PE | 56 | High Risk Women | 135 | 125 | ≥20 weeks | 15.99 | 20.00 | 39.13 | - | - | - | 414.19 | 100.00 |
| Lopez-Jaramillo (1990) [ | Ecuador | Both | 30 | Low Risk Women | 34 | 22 | ≥20 weeks | 19.4 | - | - | - | - | - | - | 100.00 |
| Lopez-Jaramillo (1989) [ | Ecuador | GH/PIH | 30 | Low Risk Women | 43 | 49 | ≥20 weeks | 18.47 | 23.00 | - | - | - | - | 430.80 | 100.00 |
| Nenad (2011) [ | Serbia | Both | - | Low Risk Women | 4588 | 4590 | <20 weeks | - | 18.50 | - | - | - | - | - | 100.00 |
| Niromanesh (2001) [ | Iran | Both | - | High Risk Women | 15 | 15 | ≥20 weeks | 23.15 | 29.70 | 38.60 | - | - | - | - | - |
| Puwar (1996) [ | India | Both | 15 | Low Risk Women | 93 | 97 | ≥20 weeks | 21.93 | 18.07 | 37.50 | 103.02 | 63.32 | - | - | 100.00 |
| Rogers (1999) [ | Hong Kong | GH/PIH | 30 | High Risk Women | 75 | 144 | ≥20 weeks | 27.31 | 21.67 | 38.9 | - | - | - | - | 100.00 |
| Sanchez-Ramos (1994) [ | Florida | Both | 55 | High Risk Women | 34 | 29 | ≥20 weeks | 18.38 | 24.44 | - | 113.50 | 64.01 | - | - | 100.00 |
| Villar (1987) [ | Baltimore, Argentina | GH/PIH | 36 | Low Risk Women | 27 | 25 | ≥20 weeks | 21.10 | - | - | - | - | - | 388.2 | 100.00 |
| Villar (1990) [ | Baltimore | Both | 36 | High Risk Women | 88 | 90 | ≥20 weeks | 16.25 | 23.55 | 38.55 | 102.75 | 61.10 | - | - | 85.26 |
| Villar (2006) [ | Argentina, Egypt, India, Peru, South Africa, Vietnam | Both | 21 | Low Risk Women | 4161 | 4151 | <20 weeks | 22.65 | 15.10 | - | 105.05 | 60.80 | 21.90 | - | 100.00 |
| Wanchu (2001) [ | India | PE | - | High Risk Women | 50 | 50 | ≥20 weeks | - | 14.2 | - | 111.57 | 72.45 | - | - | 100.00 |
| Asemi (2013) [ | Iran | PE | 4 | High Risk Women | 27 | 27 | ≥20 weeks | 17.44 | 26 | - | - | - | 30.8 | - | - |
| Naghshineh (2016) [ | Iran | PE | 5 | High Risk Women | 70 | 68 | <20 weeks | 25 | - | 37.4 | - | - | - | - | 100.00 |
| Sablok (2015) [ | India | PE | 36 | High Risk Women | 57 | 108 | <20 weeks | - | - | - | - | - | - | - | 100.00 |
| Asemi (2012) [ | Pakistan | PE | 11 | High Risk Women | 25 | 24 | ≥20 weeks | 24.9 | - | - | - | - | 27.58 | - | 100.00 |
| Marya (1987) [ | India | PE | - | Low Risk Women | 200 | 200 | ≥20 weeks | - | 22.00 | - | - | - | - | - | - |
| Taherian (2002) [ | Iran | PE | 36 | Low Risk Women | 330 | 330 | ≥20 weeks | 21.55 | 20.00 | 38.80 | 97.25 | 57.88 | 22.55 | 10.25 * | - |
| Samimi (2015) [ | Iran | PE | 6 | High Risk Women | 30 | 30 | ≥20 weeks | 27.2 | - | - | 111.7 | 72.4 | 26.5 | - | - |
| Hossain (2014) [ | Pakistan | Both | 21 | Low Risk Women | 89 | 86 | ≥20 weeks | 25.57 | 20.00 | 37.61 | - | - | 23.64 | - | - |
n = number of subjects, GA = Gestational Age (weeks), SBP = Mean Systolic Blood Pressure (mmHg), DBP = Mean Diastolic Blood Pressure (mmHg), BMI = Mean Body Mass Index (kg/m2), PE = Preeclampsia only, GH/PIH = Gestational Hypertension or Pregnancy Induced Hypertension only, Both = Both PE or GH/PIH, * Mean weight gain in kg.
Figure 2Forest plot of intervention effects compared to placebo on preeclampsia: a network meta-analysis.
Estimation of multiple supplementation effects on preeclampsia.
| Intervention | Calcium | Vitamin D | Calcium + Vitamin D |
|---|---|---|---|
|
| 0.49 (0.35 0.69) * {66.1, 31.6} | 0.89 (0.33, 2.41) *† | 1.18 (0.58, 2.37) *‡ |
|
| 0.43 (0.17, 1.11) † {70.7, 47.4} | 1.33 (0.42, 4.18) †‡ | |
|
| 0.57 (0.30, 1.10) ‡ {52.2, 19.6} |
Values are expressed as pooled RR along with 95% CIs in round parentheses; on diagonal cells comparing supplement vs. placebo, off the diagonal cells comparing column vs. row supplements; values < 1 indicates that the intervention listed in the column is more effective than the one in the row; Values in the diagonal in curly parentheses indicate surface under the cumulative ranking curve and the probability of being the best treatment. The larger is the surface under the cumulative ranking curve or probability of being the best treatment, the better is the treatment. * Calcium vs. Placebo: 16 RCTs, n = 12,876 vs. 13,060, number of PE cases = 722 vs. 931; † Vitamin D vs. Placebo: 3 RCTs, n = 203 vs. 154, number of PE cases = 20 vs. 14; ‡ Calcium + Vitamin D vs. Placebo: 4 RCTs, n = 584 vs. 585, number of PE cases = 27 vs. 55; *‡ Calcium + Vitamin D vs. Calcium: 1 RCT, n = 89 vs. 86, number of PE cases = 10 vs. 6; *† Calcium vs. Vitamin D: 19 RCTs, n = 25,936 vs. 357, number of PE cases = 722 vs. 14; †‡ Calcium + Vitamin D vs. Vitamin D: 7 RCTs, n = 1169 vs. 357, number of PE cases = 55 vs. 14.
PICO Searching.
| Domain | Terms | |
|---|---|---|
| 1 | Pregnancy | “pregnancy”[Mesh] ◈ |
| 2 | “pregnant women” | |
| 3 | 1 OR 2 | |
| 4 | Calcium supplementation | calcium supplement* |
| 5 | “calcium carbonate” | |
| 6 | “calcium gluconate” | |
| 7 | “calcium acetate” | |
| 8 | “calcium citrate” | |
| 9 | “calcium lactate” | |
| 10 | 4 OR 5 OR 6 OR 7 OR 8 OR 9 | |
| 11 | Vitamin D supplementation | “vit* D supplement*” |
| 12 | “cholecalciferol” | |
| 13 | “ergocalciferol” | |
| 14 | 11 OR 12 OR 13 | |
| 15 | Calcium or Vitamin D | 10 OR 14 |
| 16 | Preeclampsia | “pre-eclampsia”[Mesh] ◈ |
| 17 | “eclampsia”[Mesh] ◈ | |
| 18 | “preeclampsia” | |
| 19 | “gestational hypertension” | |
| 20 | “gestational hypertensive disorder” | |
| 21 | “hypertensive disorder during pregnancy” | |
| 22 | “pregnancy induced hypertension” | |
| 23 | PIH | |
| 24 | “pre-eclamptic toxaemia” | |
| 25 | 16 OR 17 OR 18 OR 19 OR 20 OR 21 OR 22 OR 23 OR 24 | |
| 26 | 3 AND 15 AND 25 | |
| 27 | systematic[sb] AND 26 ◈ |
◈ Option for Medline.
General information of the study.
| Study ID | ……………………………………………………………………… | ||
|---|---|---|---|
| Reviewer | ……………………………………………………………………… | ||
| Date of review | (DD/MM/YYYY) ………………………………….……………… | ||
| Study title | ……………………………………………………………………… | ||
| First Authors | ……………………………………………………………………… | ||
| Journal | ……………………………………………… | Year | ………… |
Study Setting
| Setting | ☐ 1. Hospital Based | ☐ 2. Community Based |
|---|---|---|
| Country of study | ………………………………………………………………… | |
General Characteristics of study.
| Study Design | ☐ 1. Randomized Controlled Trial | ☐ 2. Quasi-Experimental Design |
|---|---|---|
| Period of the study | ……………………………………………… months | |
Participants.
Intervention.
| ☐ 1. Yes ☐ 2. No | |||
| Form | ☐ 1. Calcium carbonate ☐ 2. Calcium gluconate | ||
| Dosage | …………………… g | Duration | ………… weeks |
| Timing | ☐ 1. Single Dose ☐ 2. Daily | ||
| Started at | ☐ 1. First Trimester (0 to 13 Weeks) | ||
| Co-Supplement | ☐ 1. Yes, specify…………………… | ||
| ☐ 1. Yes ☐ 2. No | |||
| Form | ☐ 1. Ergocalciferol ☐ 2 .Cholecalciferol | ||
| Dosage | …………………… IU | Duration | ………… weeks |
| Timing | ☐ 1. Single Dose ☐ 2. Daily | ||
| Started at | ☐ 1. First Trimester (0 to 13 Weeks) | ||
| Co-Supplement | ☐ 1. Yes, specify…………………… | ||
| ☐ 1. Yes ☐ 2. No | |||
| Calcium Form | ☐ 1. Calcium carbonate ☐ 2. Calcium gluconate | ||
| Dosage | …………………… g | Duration | ………… weeks |
| Timing | ☐ 1. Single Dose ☐ 2. Daily | ||
| Vit D Form | ☐ 1. Ergocalciferol ☐ 2 .Cholecalciferol | ||
| Dosage | …………………… IU | Duration | ………… weeks |
| Timing | ☐ 1. Single Dose ☐ 2. Daily | ||
| Started at | ☐ 1. First Trimester (0 to 13 Weeks) | ||
| Co-Supplement | ☐ 1. Yes, specify…………………… | ||
General baseline characteristics of participants.
| Characteristics | Intervention | Control | Total |
|---|---|---|---|
| Mean Age (year) | |||
| Mean Gestation age at enrolment (week) (mean, SD) | |||
| SBP (mean, SD) | |||
| DBP (mean, SD) | |||
| Abnormal Proteinuria (%) | |||
| BMI (mean, SD) | |||
| Primigravida (%) | |||
| Nulliparous (%) | |||
| Gestational Diabetes Mellitus (%) | |||
| Smoking (%) | |||
| Mean total weight gain (mean, SD) | |||
| % Withdraw (lost FU) | |||
| Mean gestational age at delivery (mean, SD) | |||
| Mean baseline calcium level (mean, SD) | |||
| Mean baseline vitamin D level (mean, SD) |
Type of Outcomes and Definitions.
| ☐ 1. Yes ☐ 2. No | ||
| ☐ Preeclampsia | ☐ SBP ≥ 140 mmHg, DBP ≥ 90 mmHg and Proteinuria >2+ | |
| ☐ Severe preeclampsia | ☐ SBP ≥ 160 mmHg, DBP ≥ 1100 mmHg and Proteinuria >2+ | |
| ☐ Early onset preeclampsia | ☐ preeclampsia occur <34 weeks’ gestation | |
| ☐ Late onset preeclampsia | ☐ preeclampsia occur ≥34 weeks’ gestation | |
| ☐ 1. Yes ☐ 2. No | ||
| ☐ 1. Yes ☐ 2. No | ||
Dichotomous outcomes for Preeclampsia.
| Treatment | Preeclampsia | |||
|---|---|---|---|---|
| Yes | No | RR/OR | 95% CI | |
| Calcium | ||||
| Vitamin D | ||||
| Calcium + Vit D | ||||
| Placebo | ||||
Dichotomous outcomes for Eclampsia.
| Treatment | Eclampsia | |||
|---|---|---|---|---|
| Yes | No | RR/OR | 95% CI | |
| Calcium | ||||
| Vitamin D | ||||
| Calcium + Vit D | ||||
| Placebo | ||||
Dichotomous outcomes for GH/PIH.
| Treatment | GH/PIH | |||
|---|---|---|---|---|
| Yes | No | RR/OR | 95% CI | |
| Calcium | ||||
| Vitamin D | ||||
| Calcium + Vit D | ||||
| Placebo | ||||
Risk of bias.
| Low | High | Unclear | Comment | |
|---|---|---|---|---|
| Adequate sequence generation | ☐ | ☐ | ☐ | |
| Allocation concealment | ☐ | ☐ | ☐ | |
| Blinding of participants and personnel | ☐ | ☐ | ☐ | |
| Blinding of outcome assessment | ☐ | ☐ | ☐ | |
| Incomplete outcome data addressed | ☐ | ☐ | ☐ | |
| Selective outcome reporting | ☐ | ☐ | ☐ | |
| Other sources of bias | ☐ | ☐ | ☐ |
Random Sequence Generation.
| Selection Bias (Biased Allocation to Interventions) Due to Inadequate Generation of a Randomized Sequence | |
|---|---|
| Criteria for judgment of “Low risk” of bias | Randomization was performed using any of following methods: |
| Criteria for judgment of “High risk” of bias | Systematic, non-random sequence generation was performed using any of the follow methods: |
| Criteria for judgment of “Unclear risk” of bias | Insufficient information about the sequence generation process to permit judgement of ‘Low risk’ or ‘High risk’. |
Allocation Concealment.
| Selection Bias (Biased Allocation to Interventions) Due to Inadequate Concealment of Allocations Prior to Assignment | |
|---|---|
| Criteria for judgment of “Low risk” of bias | If any of following was applied or mentioned |
| Criteria for judgment of “High risk” of bias | Authors used any of following |
| Criteria for judgment of “Unclear risk” of bias | Insufficient information to permit judgement of ‘Low risk’ or ‘High risk’. This is usually the case if the method of concealment is not described or not described in sufficient detail to allow a definite judgement–for example if the use of assignment envelopes is described, but it remains unclear whether envelopes were sequentially numbered, opaque and sealed |
Blinding of Participants and Personnel.
| Performance Bias Due to Knowledge of the Allocated Interventions by Participants and Personnel during the Study | |
|---|---|
| Criteria for judgment of “Low risk” of bias | Any one of the following: |
| Criteria for judgment of “High risk” of bias | Any one of the following: |
| Criteria for judgment of “Unclear risk” of bias | Any one of the following: |
Blinding of Outcome Assessment.
| Detection Bias Due to Knowledge of the Allocated Interventions by Outcome Assessors | |
|---|---|
| Criteria for judgment of “Low risk” of bias | Any one of the following: |
| Criteria for judgment of “High risk” of bias | Any one of the following: |
| Criteria for judgment of “Unclear risk” of bias | Any one of the following: |
Incomplete Outcome Data.
| Attrition Bias Due to Amount, Nature or Handling of Incomplete Outcome Data | |
|---|---|
| Criteria for judgment of “Low risk” of bias | Any one of the following: |
| Criteria for judgment of “High risk” of bias | Any one of the following: |
| Criteria for judgment of “Unclear risk” of bias | Any one of the following: |
Selective Reporting.
| Reporting Bias Due to Selective Outcome Reporting | |
|---|---|
| Criteria for judgment of “Low risk” of bias | Any of the following: |
| Criteria for judgment of “High risk” of bias | Any one of the following: |
| Criteria for judgment of “Unclear risk” of bias | Insufficient information to permit judgement of ‘Low risk’ or ‘High risk’. It is likely that the majority of studies will fall into this category. |
Other Bias.
| Bias Due to Problems Not Covered Elsewhere in the Table | |
|---|---|
| Criteria for judgment of “Low risk” of bias | The study appears to be free of other sources of bias like baseline imbalance of important factors like obesity, or smoking by checking characteristics of participants between groups |
| Criteria for judgment of “High risk” of bias | There is at least one important risk of bias. For example, the study: |
| Criteria for judgment of “Unclear risk” of bias | There may be a risk of bias, but there is either: |