| Literature DB >> 30115830 |
Leila M Larson1, Junjie Guo2, Anne M Williams3, Melissa F Young4, Sanober Ismaily5, O Yaw Addo6, David Thurnham7, Sherry A Tanumihardjo8, Parminder S Suchdev9,10, Christine A Northrop-Clewes11.
Abstract
The accurate estimation of vitamin A deficiency (VAD) is critical to informing programmatic and policy decisions that could have important public health implications. However, serum retinol and retinol binding protein (RBP) concentrations, two biomarkers often used to estimate VAD, are temporarily altered during the acute phase response, potentially overestimating the prevalence of VAD in populations with high levels of inflammation. In 22 nationally-representative surveys, we examined (1) the association between C-reactive protein (CRP) or α1-acid glycoprotein (AGP) and retinol or RBP, and (2) how different adjustment approaches for correcting for inflammation compare with one another. In preschool age children (PSC) and school age children (SAC), the association between inflammation and retinol and RBP was largely statistically significant; using the regression approach, adjustments for inflammation decreased the estimated prevalence of VAD compared to unadjusted VAD (range: -22.1 to -6.0 percentage points). In non-pregnant women of reproductive age (WRA), the association between inflammation and vitamin A biomarkers was inconsistent, precluding adjustments for inflammation. The burden of VAD can be overestimated if inflammation is not accounted for, and the regression approach provides a method for adjusting retinol and RBP for inflammation across the full range of concentrations in PSC and SAC.Entities:
Keywords: Vitamin A; infection; inflammation; retinol; retinol binding protein
Mesh:
Substances:
Year: 2018 PMID: 30115830 PMCID: PMC6115742 DOI: 10.3390/nu10081100
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 5.717
Age, inflammation, vitamin A status, and malaria among preschool age children, school age children, and women of reproductive age, Biomarkers Reflecting Inflammation and Nutritional Determinants of Anemia (BRINDA) project.
| Country, year |
| Age (Months) Mean (Min, Max) | RBP (μmol/L) Median (95% CI) | Serum Retinol (μmol/L) Median (95% CI) | CRP > 5mg/L Percent (95% CI) | AGP > 1g/L Percent (95% CI) | CRP > 5mg/L or AGP > 1g/L Percent (95% CI) |
|---|---|---|---|---|---|---|---|
|
| |||||||
| Afghanistan, 2013 | 657 | 29.1 (6, 58) | 0.70 (0.67, 0.73) | 10.1 (6.9, 13.4) | 23.6 (19.3, 27.9) | 25.7 (20.8, 30.5) | |
| Azerbaijan, 2013 | 1053 | 35.6 (6, 59) | 1.01 (0.98, 1.03) | 8.1 (6.0, 10.1) | 29.9 (26.2, 33.5) | 30.9 (27.1, 34.6) | |
| Bangladesh, 2010 | 1493 | 8.3 (6, 11) | 0.88 (0.87, 0.90) | 14.3 (11.8, 16.7) | 33.4 (29.9, 36.9) | 35.8 (32.2, 39.5) | |
| Bangladesh, 2012 | 458 | 36.5 (6, 59) | 0.85 (0.81, 0.89) | 7.3 (3.2, 11.5) | 28.5 (22.6, 34.4) | 29.0 (23.1, 34.9) | |
| Cambodia, 2014 | 665 | 35.9 (6, 60) | 1.32 (1.23, 1.40) | 10.0 (7.3, 12.8) | 36.2 (29.5, 42.9) | 38.3 (30.6, 46.0) | |
| Cameroon, 20091 | 774 | 31 (12, 60) | 0.84 (0.82, 0.87) | 0.70 (0.62, 0.77) | 37.5 (32.7, 42.3) | 39.3 (33.7, 45.0) | 48.3 (43.1, 53.5) |
| Colombia, 2010 | 3794 | 37.6 (12, 59) | 0.85 (0.83, 0.87) | 18.8 (17.1, 20.6) | |||
| Côte d’Ivoire, 2007 | 733 | 31.7 (6, 59) | 0.89 (0.86, 0.92) | 40.4 (36.5, 44.3) | 64.5 (60.3, 68.6) | 67.5 (63.8, 71.3) | |
| Ecuador, 2012 | 2017 | 30.8 (6, 59) | 0.88 (0.86, 0.90) | 12.5 (10.1, 14.9) | |||
| Kenya, 2007 | 888 | 19.9 (6, 36) | 0.87 (0.85, 0.90) | 27.8 (23.9, 31.7) | 64.2 (60.2, 68.2) | 66.0 (61.9, 70.1) | |
| Kenya, 2010 | 843 | 21.4 (6, 35) | 0.84 (0.81, 0.87) | 34.2 (29.6, 38.7) | 60.7 (56.0, 65.4) | 61.9 (57.2, 66.6) | |
| Liberia, 2011 | 1434 | 19.9 (6, 36) | 0.85 (0.82, 0.88) | 29.5 (26.5, 32.5) | 56.2 (52.5, 60.0) | 59.1 (55.6, 62.7) | |
| Mongolia, 2006 2 | 202 | 20 (7, 36) | 0.79 (0.74, 0.83) | 26.2 (20.2, 32.3) | |||
| Malawi, 2016 1 | 1084 | 32.5 (6, 59) | 0.86 (0.82, 0.90) | 1.00 (0.82, 1.19) | 23.7 (18.6, 28.7) | 55.9 (50.3, 61.5) | 57.0 (51.2, 62.7) |
| Mexico, 2012 | 2512 | 39.1 (12, 60) | 0.93 (0.91, 0.96) | 11.6 (9.3, 14.0) | |||
| Nigeria, 2005 | 1420 | 33.4 (6, 60) | 1.22 (1.17, 1.26) | 24.0 (20.5, 27.5) | |||
| Pakistan, 2011 | 7318 | 27.3 (6, 59) | 0.67 (0.65, 0.69) | 35.3 (33.8, 36.8) | |||
| Papua New Guinea, 2005 | 871 | 31.4 (6, 60) | 0.87 (0.84, 0.90) | 31.6 (27.2, 36.0) | 54.1 (49.4, 58.9) | 57.0 (52.6, 61.5) | |
| Philippines, 2011 | 1767 | 15 (6, 24) | 1.03 (1.01, 1.05) | 13.9 (11.6, 16.2) | 21.2 (17.7, 24.6) | 26.0 (22.4, 29.5) | |
| Vietnam, 2010 | 360 | 37.3 (10, 60) | 1.16 (1.11, 1.21) | 12.8 (9.7, 15.8) | |||
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| |||||||
| Bangladesh, 2010 | 1271 | 9.4 (6, 14) | 0.86 (0.83, 0.88) | 4.3 (2.0, 6.6) | 15.4 (12.1, 18.7) | 16.0 (12.6, 19.4) | |
| Ecuador, 2012 | 3281 | 7.6 (5, 15) | 0.92 (0.90, 0.94) | 7.7 (5.7, 9.7) | |||
| Malawi, 2016 1 | 750 | 9.5 (5, 15) | 0.98 (0.94, 1.01) | 1.11 (1.02, 1.19) | 16.2 (12.3, 20.2) | 32.9 (28.6, 37.3) | 35.0 (30.2, 39.8) |
| Mexico, 2012 | 3144 | 8.6 (5, 12) | 1.17 (1.15, 1.18) | 7.7 (6.4, 9.0) | |||
| United Kingdom, 2014 | 556 | 9.9 (5, 14) | 1.16 (1.12, 1.19) | 4.6 (2.2, 6.9) | |||
| United States, 2006 | 3089 | 10.8 (6, 15) | 1.33 (1.32, 1.35) | 6.6 (5.2, 8.1) | |||
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| Afghanistan, 2013 | 1046 | 30.9 (15, 49) | 1.13 (1.07, 1.19) | 12.8 (10.4, 15.2) | 11.6 (8.8, 14.4) | 19.3 (15.8, 22.8) | |
| Azerbaijan, 2013 | 2656 | 32.1 (15, 50) | 1.46 (1.44, 1.49) | 13.2 (11.3, 15.1) | 31.3 (29, 33.6) | 34.5 (32.0, 36.9) | |
| Bangladesh, 2012 | 897 | 29.7 (15, 49) | 1.12 (1.07, 1.16) | 5.7 (3.2, 8.2) | 12.8 (8.9, 16.6) | 16.7 (12.4, 20.9) | |
| Cambodia, 2014 | 705 | 30.2 (16, 49) | 1.96 (1.74, 2.18) | 9.5 (7.1, 11.8) | 33.5 (24.9, 42.2) | 36.7 (27.3, 46.0) | |
| Cameroon, 2009 1 | 751 | 27.2 (15, 48) | 1.44 (1.40, 1.48) | 1.24 (1.16, 1.32) | 17.8 (14.8, 20.7) | 7.2 (5.1, 9.3) | 19.7 (16.6, 22.9) |
| Côte d’Ivoire, 2007 | 816 | 27.6 (15, 48) | 1.49 (1.44, 1.54) | 19.7 (16.5, 22.8) | 26.9 (23.5, 30.4) | 33.7 (29.6, 37.9) | |
| Ecuador, 2012 | 5979 | 33.2 (19, 49) | 1.27 (1.25, 1.28) | 19.0 (17.1, 21.0) | |||
| Liberia, 2011 | 1875 | 28.6 (15, 50) | 1.33 (1.30, 1.36) | 14.3 (12.1, 16.4) | 10.4 (8.7, 12.2) | 18.5 (16.2, 20.8) | |
| Malawi, 2016 1 | 753 | 28.1 (15, 49) | 1.39 (1.34, 1.44) | 1.39 (1.26, 1.53) | 7.5 (5.1, 9.9) | 10.7 (7.5, 13.8) | 13.0 (9.6, 16.4) |
| Pakistan, 2011 | 5929 | 30.8 (16, 49) | 0.84 (0.81, 0.88) | 12.0 (11.0, 13.0) | 24.1 (22.7, 25.6) | 31.6 (30.0, 33.1) | |
| Papua New Guinea, 2005 | 749 | 29.1 (15, 49) | 1.61 (1.57, 1.66) | 10.0 (7.5, 12.5) | 21.8 (18.1, 25.6) | 24.8 (21.0, 28.7) | |
| United Kingdom, 2014 | 875 | 34.6 (15, 49) | 1.61 (1.55, 1.68) | 15.8 (12.5, 19.1) | |||
| United States, 2006 | 3145 | 33.5 (15, 50) | 1.74 (1.72, 1.77) | 25.7 (23.5, 27.8) | |||
| Vietnam, 2010 | 1434 | 32.3 (15, 49) | 1.62 (1.59, 1.65) | 6.7 (5.5, 7.9) | |||
1 Cameroon and Malawi’s serum retinol was measured in a subgroup (Cameroon N = 115 for preschool children and N = 104 for women; Malawi N = 73 for preschool children, N = 84 for school children, and N = 89 for women.); 2 Mongolia did not apply complex survey design.
Figure 1Estimated prevalence (95% CI) of vitamin A deficiency in preschool age children by C-reactive protein (CRP) (top) and α1-acid glycoprotein (AGP) (bottom) deciles. Top figure: solid line represents prevalence of retinol binding protein (RBP) < 0.70 μmol/L (n = 11,605), dotted line represents prevalence of retinol < 0.70 μmol/L (n = 9798). Bottom figure: Solid line represents prevalence of RBP < 0.70 μmol/L (n = 11,605), dotted line represents prevalence of retinol < 0.70 μmol/L (n = 10,055). AGP, α1-acid glycoprotein; CRP, C-reactive protein; RBP, retinol binding protein.
Figure 2Estimated prevalence (95% CI) of vitamin A deficiency in school age children by CRP (top) and AGP (bottom) deciles. Top figure: solid line represents prevalence of RBP < 0.70 μmol/L (n = 750), dotted line represents prevalence of retinol < 0.70 μmol/L (n = 11,341). Bottom figure: Solid line represents prevalence of RBP < 0.70 μmol/L (n = 750), dotted line represents prevalence of retinol < 0.70 μmol/L (n = 1,271). AGP, α1-acid glycoprotein; CRP, C-reactive protein; RBP, retinol binding protein.
Summary of change in estimated vitamin A deficiency (VAD) by adjustment method across surveys, preschool age children, and school age children, BRINDA project.
| Approach | Absolute Median (Range) Percentage Point (pp) Difference for Surveys That Measured both CRP and AGP | Absolute Median (Range) Percentage Point (pp) Difference for Surveys That Measured either CRP or AGP | ||
|---|---|---|---|---|
| RBP 1 | Retinol | RBP 1 | Retinol | |
|
| ||||
| Sample size (No. of surveys) | 10 | 2 | - | 6 |
| Exclusion | −12.0 pp (−18.0 pp, −5.5 pp) | −6.6 pp (−8.3 pp, −4.9 pp) | - | −3.4 pp (−7.2 pp, −0.2 pp) |
| ICF | −10.1 pp (−13.6 pp, −5.1 pp) | −4.5 pp (−6.1 pp, −2.8 pp) | - | −3.6 pp (−4.9 pp, −0.5 pp) |
| IRC | −16.4 pp (−22.1 pp, −6.0 pp) | −13.1 pp (−15.9 pp, −10.2 pp) | - | −6.4 pp (−9.9 pp, −1.1 pp) |
|
| ||||
| Sample size (No. of surveys) | 1 | 1 | - | 4 |
| Exclusion | −6.6 pp | −4.0 pp | - | −0.5 pp (−2.0 pp, −0.3 pp) |
| ICF | −7.1 pp | −3.0 pp | - | −0.5 pp (−1.6 pp, −0.1 pp) |
| IRC | −8.8 pp | −6.9 pp | - | −0.8 pp (−3.9 pp, −0.2 pp) |
1. All countries with RBP data measured both CRP and AGP. ICF, Internal Correction; IRC, Internal Regression Correction; CRP, C-reactive protein; AGP, α1-acid glycoprotein; RBP, retinol binding protein; VAD, vitamin A deficiency; BRINDA, Biomarkers Reflecting Inflammation and Nutritional Determinants of Anemia.