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Article

Prenatal Mercury Exposure and Infant Weight Trajectories in a UK Observational Birth Cohort

1
Medical Research Council Integrative Epidemiology Unit, University of Bristol, Bristol BS8 2BN, UK
2
Nic Waals Institute, Lovisenberg Diaconal Hospital, 0771 Oslo, Norway
3
Population Health Sciences, Bristol Medical School, University of Bristol, Bristol BS8 2BN, UK
4
Centre for Academic Child Health, Bristol Medical School, University of Bristol, Bristol BS8 1NU, UK
*
Author to whom correspondence should be addressed.
Toxics 2023, 11(1), 10; https://doi.org/10.3390/toxics11010010
Submission received: 17 November 2022 / Revised: 15 December 2022 / Accepted: 20 December 2022 / Published: 22 December 2022

Abstract

:
Mercury is highly toxic metal found in trace quantities in common foods. There is concern that exposure during pregnancy could impair infant development. Epidemiological evidence is mixed, but few studies have examined postnatal growth. Differences in nutrition, exposures, and the living environment after birth may make it easier to detect a negative impact from mercury toxicity on infant growth. This study includes 544 mother–child pairs from the Avon Longitudinal Study of Parents and Children. Blood mercury was measured in early pregnancy and infant weight at 10 intervals between 4 and 61 months. Mixed-effect models were used to estimate the change in infant weight associated with prenatal mercury exposure. The estimated difference in monthly weight gain was −0.02 kg per 1 standard deviation increase in Hg (95% confidence intervals: −0.10 to 0.06 kg). When restricted to the 10th decile of Hg, the association with weight at each age level was consistently negative but with wide confidence intervals. The lack of evidence for an association may indicate that at Hg levels in this cohort (median 1.9 µg/L) there is minimal biological impact, and the effect is too small to be either clinically relevant or detectable.

1. Introduction

Infant growth is a common concern for both parents and health professionals because it can be used to approximate overall postnatal health [1,2,3]. Children who grow at a slower rate than expected according to growth charts standardised by age and sex [4] are described as having faltering growth (or previously, failure to thrive) [5,6]. Observational evidence indicates that the consequences of slow growth early in life can include persistently lower weight and height throughout childhood [7,8], lower psychomotor, cognitive and IQ scores [7,9,10], and weakened immune systems [8]. Nutritional intake is the primary factor affecting growth during childhood [11], but growth can also be disrupted by disease, behavioural factors, and environmental exposures [12]. Toxic metals have been suggested to interfere with metabolic processes essential for physical development [13], and this may include the element mercury.
Mercury (Hg) is a metal released into the environment primarily through industrial activity [14,15] and to a lesser extent from volcanoes, geothermal vents, and other natural sources [16,17]. This may contaminate nearby water, soil, and food supplies of local populations [18]. Emissions also disperse globally through the atmosphere and into oceans where methylation into methylmercury (MeHg) can occur, which can bioaccumulate in predatory and/or long-lived fish (e.g., swordfish, bluefin tuna) [19,20]. Seafood consumption in a UK cohort was estimated to account for 9% of the variance in blood mercury, and another 11% was due to other dietary sources [21]. The relative importance of exposure sources remains uncertain, and it is likely that there are genetic factors that mediate metabolism [22].
Mercury is highly reactive with multiple toxic mechanisms that could impact infant development and growth. Methylmercury has a high affinity for selenohydrl and sulfhydrl groups that deplete antioxidant enzymes such as glutathione peroxidase, catalase, and copper/zinc superoxide dismutase [14,23,24], promoting oxidative stress, which may disrupt the cellular processes involved in child growth [25]. Other mechanisms that may affect growth include the depletion of metallothionein proteins required for copper and zinc homeostasis [26], DNA methylation [27] and cell death [28], and the inhibition of cell proliferation [29] and DNA repair [30]. Prenatal exposure is of particular relevance to infant growth because mercury can readily cross the placenta and accumulate in the infant’s body, where it may remain for a prolonged time after delivery [31]. This could impair both in utero and postnatal growth through the direct toxic effects described earlier. Mercury is also known to trigger epigenetic alterations [27], and epigenetic foetal programming is known to be a factor in both pre- and postnatal growth [32].
The risks to childhood development from mercury exposure are most clearly seen in two well documented incidents of local contamination in Iraq and Japan, where infant mortality and development were severely worsened [33,34]. However, this does not reflect the context of exposure for most individuals, namely chronic exposure to relatively low concentrations of mercury. Here the evidence of developmental harm is less clear. Epidemiological studies of mercury and growth have mostly focused on the impact on birth outcomes [35,36,37]. There are some indications that mercury is associated with a reduction in birth weight at the highest levels of chronic exposure [37,38,39,40], but this finding is not replicated in all high-exposure populations [41,42].
It is possible that prenatal mercury exposure may also impact growth in the postnatal period due to the slow clearance rate of mercury. The biological half-life of mercury—the speed at which concentrations are halved—is estimated to be between 30 and 120 days for methylmercury [43] and 30 to 60 days for inorganic mercury [44]. However, in children metabolic rates may differ, and in certain tissues, such as the brain, retention is believed to be much longer [45]. The postnatal environment may differ from the prenatal in ways which are less protective of the toxic effects of mercury, and the impact on growth may be more detectable. For example, it is possible after birth for the intake of long-chain polyunsaturated fatty acids to fall [45], a nutrient protective against Hg toxicity [45].
Two previous studies have assessed prenatal mercury and infant growth. The Mothers and Children’s Environmental Health study (MOCEH) in South Korea reported a negative relationship between maternal blood mercury and childhood weight at 12 and 24 months, with the strongest evidence for blood taken at 28–42 weeks gestation and weight at 24 months of age [46]. These findings were broadly replicated in a 2021 study in the Norwegian Mother, Father and Child Cohort Study (MoBa) of infant growth between 0 and 8 years of age [47]. The top decile of prenatal mercury exposure was associated with lower weight, height, and BMI gain over the study period, with particularly strong evidence of an association with weight from 18 months of age onwards [47].
Selenium (Se) is a known antagonist of mercury [48]: dietary sources include cereals, animal organs, and fish [49]. Experimental findings indicate that selenium can bind with mercury and remove it from circulation [50,51] in addition to selenium being a key precursor to thyroid hormones associated with growth [52]. However, epidemiological evidence that selenium has a clinically notable effect on mercury toxicity is scarce and inconsistent [53,54,55,56]. It may also be that the causal relationship is reversed so that one of the primary mechanisms of mercury toxicity is due to it creating selenium insufficiency [56].
This study aims (1) to assess whether maternal blood mercury is negatively associated with change in infant weight between 4 and 61 months in a UK birth cohort using mixed effects models, (2) to explore if the association between mercury and growth is mediated through an interaction effect with blood selenium, and (3) to determine the association between prenatal mercury and static weight at 10 time intervals from 4 to 61 months.

2. Materials and Methods

2.1. Study Population

The Avon Longitudinal Study of Parents and Children (ALSPAC) is a UK-based birth cohort designed to examine how environmental and genetic characteristics affect long-term health. The study recruited 14,541 women living in the former Avon Health Authority area with an expected delivery date between April 1991 and December 1992, resulting in a cohort of 14,062 live births [57]. A detailed cohort description is available [58] and the study website (http://www.bristol.ac.uk/alspac/researchers/our-data/ accessed on 16 November 2022) contains details of all the data that are available, including data sources and questionnaires, through a fully searchable data dictionary and variable search tool.

2.2. Exposure Assessment

Blood samples were obtained from 4484 women during a routine antenatal care visit early in pregnancy. Midwives used a vacutainer system to collect blood samples. The median time of collection was at 11 weeks’ gestation and interquartile range 9–13 weeks, with 93% of samples collected before 18 weeks. Whole blood samples were stored at 4 °C before being sent within 1–4 days to the central Bristol laboratory. Samples were transported at room temperature for up to 3 h and stored at 4 °C as whole blood until the time of analysis.
The mercury content of blood samples was measured using inductively coupled plasma dynamic reaction cell mass spectrometry (ICP-DRC-MS) at the Centers for Disease Control and Prevention (CDC), Bethesda, CDC method 3009.1. Quality control procedures were applied as previously described [21,59,60]. The number of valid measurements following quality control were 4131. One sample was below the limit of detection for mercury (0.24 μg/L) and was assigned a value of 0.7 times the lower limit of detection [61].

2.3. Outcome

A 10% sample of the ALSPAC cohort, known as the Children in Focus (CIF) group, were selected at random from births that occurred during the final 6 months of maternal recruitment to the study. Families included in the CIF sample were invited to attend clinics at the University of Bristol at approximately 4, 8, 12, 18, 25, 31, 37, 43, 49, and 61 months of age. At each clinic an array of measurements was taken, including the child’s weight to the nearest 0.010 kg. In total, 1432 children attended at least one clinic, with the total attendees per clinic time point ranging from 994 to 1314 children. Details of attendance rates per clinic time point and the procedures used to measure weight are described in a previous study [62].
Weight was not standardised by birth weight or gestational age because this risked introducing collider or mediation bias [63], and it was not necessary given that we used a multilevel approach where differences in starting weight were accounted for using a random intercept.

2.4. Covariates

Potential confounding factors that could be associated with both mercury exposure and infant growth were identified based on previous studies. These were maternal age (years), parity, pre-pregnancy BMI, alcohol consumption (units per week), smoking habits (cigarettes per day), socio-economic status approximated through highest level of education (none/CSE/vocational/O-level and A-level/degree), and frequency of oily fish, white fish, and shellfish consumption. Information was obtained from questionnaires completed by the mother at 8 and 32 weeks’ gestation and prior to delivery.
Selenium was identified as a both potential key competing exposure which could explain variance in growth, and possible modifier of mercury toxicity expression on growth. Selenium blood concentration measurements were obtained from the same blood samples as mercury, using ICP-DRC-MS and the same quality control measures described above [64].
Child’s exact age at the time of clinic attendance (in weeks) was used as the time variable for the multilevel models, centred at first clinic attendance. Place of residence and ethnicity were identified as potential confounders but not adjusted for because the sample did not vary by location and the proportion of participants not classified as “white” was low (2.4%).

2.5. Statistical Analysis

Statistical analyses were carried out in R version 4.1.0 [65].
Children born very prematurely (<33 weeks’ gestation) and from multiple pregnancies were excluded. Descriptive statistics were generated for the full ALSPAC sample, participants with mercury samples, and for the Children in Focus subsample to assess the representativeness of the included participants. Histograms of the distribution of mercury, graphs of postnatal growth patterns, a correlation matrix of all continuous variables, and boxplots of categorical variables were all produced using the ggplot2 library [66]. The missingness of the data was evaluated by comparing participants with and without missing data, with no systematic pattern of missingness apparent (further details in Supplementary Table S1). Missing covariate values were estimated using multiple imputation with the MICE package in R, with 20 iterations of 9 imputations.
Mixed-effect modelling was used to estimate the associations between mercury and postnatal growth, using repeated assessments of weight from the same children across early childhood. Mercury was standardised to 1 standard deviation unit, which was 1.048 μg/L. A random intercept allowed for variation in starting weight amongst children. A random slope allowed for individual differences in growth trajectory across child age. Models were adjusted for pre-specified covariates likely to confound the exposure-outcome relationships of interest, based on evidence from prior studies and the use of a directed acyclic graph (Supplementary Figure S1). To improve model convergence and interpretability, all covariates were centred to the covariate mean values and standardized to have a mean of zero and standard deviation of one. Selenium was included as a covariate standardised to 1 SD unit (26.66 μg/L) to estimate its association as an interaction term with mercury.
The following covariates and parameters were not considered to be confounding factors but were considered to improve model fit and precision: child sex, interaction terms between child age and other covariates, and non-linear terms for fish consumption variables. None of these were found to improve model fit as estimated by AIC and BIC [67].
Residual diagnostic plots indicated that linear modelling was a poor fit. To model non-linear change in growth across child age, splines with a linear, polynomial, and cubic function were evaluated. The spline parameterisation was found to be using linear splines on child age with knot points at 10 and 34 months.
The final covariate set of the mixed-effects model of child weight included mercury plus selenium, maternal age, parity, pre-pregnancy BMI, education level, smoking status, alcohol intake, white fish consumption, oily fish consumption, shellfish consumption, child age with linear spline knots at 10 and 34 months, a random intercept of participant and random slope of child age (further details in Supplementary Table S2). A second model was used for the purpose of extracting the interaction estimate between mercury and selenium. Results were extracted as normalised coefficients with 95% confidence intervals.
Linear multivariable models were used to estimate the association between mercury and static weight at each of the 10 time-points. To explore possible non-linearity, the 10 static weight models were repeated with subsets of the 10th Hg decile and 1st–9th Hg deciles. Each weight model was adjusted for the same covariates as the primary growth models, including child age to adjust for minor variation in the exact age of clinic attendance.

3. Results

3.1. Sample Characteristics

There were 593 children who (a) had at least one weight measurement between the age of 4 to 61 months from a Children in Focus clinic and (b) were born to mothers with a blood mercury measurement. After excluding very preterm births and multiple pregnancies, 544 children were included in the study (Figure 1).
The study subset was in general representative of the wider ALSPAC cohort (Table 1). There were slightly fewer participants smoking and more drinking alcohol during pregnancy in the subset, and they had higher levels of education.
Complete data for all selected covariates were available for 416 of the mother–child pairs, with the remaining 128 having at least one missing measurement. The most common missing variables were maternal pre-pregnancy BMI and alcohol consumed per week at 8 weeks’ gestation, both missing for 11% of mothers. There were no notable differences in the characteristics of those with or without missing data (full details in Supplementary Table S1). A directed acyclic graph illustrating how we understand these variables to be related to mercury and infant weight is available in Supplementary Figure S1.
Pearson correlation coefficients between mercury and continuous covariates were calculated, and visualisations are available in Supplementary Figure S2a–c, including boxplots for categorical variables. Blood mercury and selenium levels were positively correlated (Pearson’s ρ = 0.20). Mean mercury increased with frequency of oily, white, and shellfish consumption and with the highest education qualification obtained, and was positively correlated with mother’s age (ρ = 0.24).

3.2. Exposure and Outcome Characteristics

In total, 544 children attended at least one Child in Focus clinic between the ages of 4 and 61 months, and the median number of time points attended was eight. The lowest attended time points were at 4 and 6 months with 381 children, and the highest was at 12 months with 484 children. The mean child weight at 4 months was 6.8 kg (SD: 0.8 kg) and at 61 months was 19.7 kg (SD: 2.8 kg). There were minimal differences between sexes: at 4 months, the median weights for boys and girls were 6.9 kg and 6.4 kg, respectively, and at 61 months they were 19.8 kg and 19.6 kg, respectively. Child growth trajectory and variance were similar for boys and girls (Figure 2), which was consistent with our model findings where the inclusion of child sex did not improve model performance at explaining variance in weight.
The median maternal blood mercury concentration was 1.9 µg/L, with an interquartile range of 1.1 µg/L (1st–3rd quartiles: 1.5 to 2.6 µg/L). The median time of blood collection was 11 weeks (IQR: 4 weeks), with 72% of samples collected in the first trimester (1–12 weeks) and 28% after. We did not find evidence of a difference in the distribution of mercury by time of collection (mean first trimester: 2.12 µg/L, mean after first trimester: 1.99 µg/L, two-sample t-test p = 0.99) and therefore included all samples in the subsequent analysis. The asymmetric distribution of mercury was left-skewed (Figure in Supplementary Figure S3a,b), and a similar distribution could be seen for selenium (median 109.7 µg/L).

3.3. Mercury, Selenium, and Change in Weight

There was little evidence of an association between mercury and postnatal growth after adjustment for potential confounders. A 1 SD unit (1.048 μg/L) change in blood mercury corresponded to 0.02 kg less weight gain per month, 95% CI: −0.10 to 0.06 kg. There was no evidence of an interaction effect between mercury and selenium on child weight gain (Table 2).

3.4. Mercury and Weight at Specific Time Points

When weight at each of the 10 clinic time points was modelled with mercury, there was no strong evidence of an association at any time point (Table 3). The 95% confidence intervals of the mercury coefficient overlapped with the null in each model, with the least overlap in the model of weight at 61 months, where 1 μg/L of mercury was estimated to change weight by 330 g (95% confidence interval: −3 g to 670 g).
There were indications of non-normally distributed residuals and heteroskedasticity in residual plots. To assess a possible non-linear relationship between mercury and weight, subsets of the 10th Hg decile (n = 53) and 1st–9th decile were modelled separately (n = 491) (Table 4). In the 10th decile subset, the estimate between mercury and weight was consistently negative across all ages but in all cases with a 95% confidence interval overlapping with zero. In the 1st–9th decile subset, the coefficient for mercury on weight was positive but overlapping the null. The point estimates between the 10th and 1st–9th decile subsets were consistently in opposite directions, which may indicate a threshold effect in those most exposed to mercury.

4. Discussion

This study of 544 mothers and children examined infant weight change between ages 4 and 61 months. Maternal mercury concentrations in whole blood during early pregnancy did not appear to be strongly associated with change in infant weight, and 95% confidence intervals overlapped with zero change. The coefficient estimate for 1 SD mercury of −0.02 kg per month would not amount to a considerable difference in weight at 61 months on an individual level but when applied to a whole population could be important. Mercury and selenium levels were positively correlated, but there was no indication of an interaction effect between the two metals on postnatal growth.
The results are consistent with those from a study of the Norwegian MoBa cohort [47]. Infant weight between 1 month and 8 years was modelled in a subset of 227 mother-child pairs in the 10th Hg decile (>2.23 µg/L). Maternal mercury (in µg/L) was estimated to change infant weight by −19 g per month, but with confidence intervals overlapping the null (95% CI: −102 g to 64 g) [47]. However, our study was smaller in sample size and not able to run a growth model in solely the 10th decile.
The second aim of this study was to model static infant weight and mercury at 10 intervals. When all children were included in a single linear multivariable model, we found no strong evidence that mercury was associated with a change in weight at any age. However, residual plots indicated that when modelling all children together the assumption of normality was not met. Model fit was improved by modelling the 1st–9th and 10th deciles separately, but results from these models continued to suggest no difference in weight change according to mercury exposure. There was weak evidence of a detrimental effect of mercury from the 10th decile mercury coefficients consistently being negative, a finding which replicates results from the previously mentioned Norway study, but in the Norwegian study 95% confidence intervals did not overlap with the null from age 18 months and onwards [47]. The MOCEH study in South Korea also reported a negative association between maternal mercury and weight at 24 months of age [46]. In both studies, the effect size and result certainty appeared to become stronger in older age groups. The size of the top Hg decile in our study was much smaller (n = 53) than in MoBa (n = 227) or MOCEH (n = 921), and this likely had a strong impact on the certainty of our results.
The concentrations of mercury found in maternal blood samples were intermediate to those in MoBa and MOCEH: the median in ALSPAC was 1.9 μg/L, which was higher than MoBa (1.03 μg/L) [47] but lower than MOCEH (early pregnancy: 3.5 μg/L) [46]. ALSPAC mercury concentrations were similar to those reported in other countries [68], including the USA, Canada, European countries, Iran, Turkey, and South Africa. However, there are countries where studies have reported higher concentrations, such as Greenland, Taiwan, Brazil, and Japan. There are few recommendations regarding the safe limit of blood mercury concentrations. In the context of acute mercury poisoning, a clinical review indicated that blood total Hg concentrations below 20 μg/L are considered acceptable [69]. However, a lower guidance value of 8 μg/L is recommended by Health Canada for women including those who are pregnant [70]. Guidance specific to pregnant women is limited, most likely because of the uncertain evidence regarding harms. A study located in the USA recommended that risks to foetal nervous development could be avoided with a reference dose level of 3.5 μg/L [71]. In this study most women were below the above thresholds (75% below 2.46 μg/L), but if the toxic expression of mercury is linear as some studies suggest [72], then any exposure should be minimized and could have an impact on growth at a population level.
The contribution of demographic characteristics and diet to mercury levels in ALSPAC have been explored extensively elsewhere [21]. In this subsample of the wider ALSPAC cohort, similar correlations were identified. From the selected covariates, maternal age, the highest level of education attained, and all forms of fish consumption were positively correlated with mercury concentrations. The correlation between fish consumption and mercury is possibly less than expected given the prominence placed in the literature on fish as a source of mercury exposure. A large proportion of the variance in mercury remained unexplained in the analysis by Golding et al. [21], which may reflect at least partly genetic variation in mercury metabolism. Despite the small geographic area (approximately 25 km2 [57]), there are local industries that could lead to variation in environmental exposure.
In summary, the results from this and prior studies [46,47] present weak evidence for an association between prenatal mercury exposure and postnatal growth. Although all studies report negative point estimates, in many cases confidence intervals overlap with the null and the range of possibilities for the true association remains wide. The uncertainty could be because postnatal growth is influenced by numerous other factors such as maternal and paternal smoking status [73], social class [73], child health [74], macronutrient intake [75], and exposure to other pollutants [76], to name a few, which increases model error terms as these factors are not fully measured. It may be that there is a non-linear effect of mercury that affects weight detectably at higher concentrations of mercury than those present in this study. Genetic variance in how mercury is absorbed, metabolised, and removed in either the mother and/or infant could mediate the effects of Hg exposure, which our analysis did not account for. The mother’s wider diet is also likely to play an important role in mediating mercury toxicity, and it could be that in this cohort there was adequate consumption of nutrients known to interact with mercury and mitigate its harms. This study investigated selenium and found no evidence of an interaction with mercury, but other key nutrients could include long-chain polyunsaturated fatty acids [77], vitamin D, iron, and zinc [78]. Consumption of these nutrients is likely linked to socio-economic status, which our models adjusted for, but they were not directly measured and together potentially could mitigate some of the risk from prenatal mercury exposure.
Our study had many strengths, including that child weight was measured at multiple time points, and we used mixed-effect models with linear splines split at knot points to account for the non-linear pattern of growth with child age. This allowed us to investigate the association between prenatal mercury exposure and change in weight, rather than only weight at specific time points. Additionally, the ALSPAC cohort database contains detailed measurements of family social and behavioural characteristics, which allowed us to adjust or control for previously identified confounders. Previous studies of mercury and birthweight have often failed to adjust for fish consumption [37], which is a potential positive confounder that could obscure any negative relationship because of the effects of beneficial nutrients in fish [79,80].
A limitation of this study is that we assume that maternal mercury concentrations can be used as a proxy for the infants’ prenatal mercury exposure. This study measured total mercury in whole blood, and the specific Hg species are not quantified. While there is strong evidence that certain forms of mercury can cross the placenta and accumulate in the developing child [81], this is not the case for inorganic mercury [82] and maternal variance of this compound may be irrelevant to prenatal exposure. Secondly, concentrations of micronutrients and other elements such as zinc [83], along with the infants’ mercury metabolism, are likely to affect the half-life of mercury and were also not measured. Studies that are able to include these elements as covariates will have greater model precision by accounting for more outcome variance, which would provide greater power to detect smaller effect sizes. Finally, some studies show that fish eating may moderate the effects of mercury toxicity [84], but the small size of this study made it impractical to stratify between fish eaters and non-fish eaters to investigate it.

5. Conclusions

In this study we examined maternal mercury concentration and repeated measures of weight during infancy using multilevel modelling. We found no strong evidence of an association, nor did selenium appear to interact with mercury levels to affect growth. An analysis that accounts for the full range of environmental contaminants and micronutrients that interact with mercury would be useful in confirming these findings.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/toxics11010010/s1, Figure S1, Directed acyclic graph of mercury, postnatal growth, and associated factors. Figure S2, Comparisons between exposures and covariates. Figure S3, The distribution of mercury and selenium concentrations in maternal blood samples (n = 544); Table S1, Missing data summary. Table S2, Full parameterisation of the mixed-effects model used to estimate change in postnatal growth from mercury and sele-nium.

Author Contributions

Conceptualization, K.D., C.M.T., and S.J.L.; methodology, K.D. and R.E.W.; formal analysis, K.D.; investigation, K.D.; writing—original draft preparation, K.D.; writing—review and editing, R.E.W., C.M.T., and S.J.L.; visualization, K.D.; supervision, S.J.L. All authors have read and agreed to the published version of the manuscript.

Funding

The UK Medical Research Council and Wellcome (Grant ref: 217065/Z/19/Z) and the University of Bristol provide core support for ALSPAC. A comprehensive list of grants funding is available on the ALSPAC website (http://www.bristol.ac.uk/alspac/external/documents/grant-acknowledgements.pdf, accessed on 16 November 2022). This publication is the work of the authors and will serve as guarantor for the contents of this paper. Publication was supported by MRC IEU grant MC_UU_00011/1. KD is supported by a PhD studentship from the MRC Integrative Epidemiology Unit at the University of Bristol (faculty matched place for MRC and Peter and Jean James Scholarship). CMT is supported by an MRC Career Development Award (MR/T010010/1). Robyn Wootton is supported by a postdoctoral fellowship from the South-Eastern Regional Health Authority (2020024). SJL is supported by the NIHR Bio-medical Research Centre at University Hospitals Bristol and Weston NHS Foundation Trust and the University of Bristol.

Institutional Review Board Statement

Ethical approval for the study was obtained from the ALSPAC Ethics and Law Committee and the Local Research Ethics Committees. Consent for biological samples has been collected in accordance with the Human Tissue Act (2004). Informed consent for the use of data collected via questionnaires and clinics was obtained from participants following the recommendations of the ALSPAC Ethics and Law Committee at the time.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

Access to ALSPAC data is through a system of managed open access (http://www.bristol.ac.uk/alspac/researchers/access/, accessed on 16 November 2022).

Acknowledgments

We are extremely grateful to all the families who took part in this study, the midwives for their help in recruiting them, and the whole ALSPAC team, which includes interviewers, computer and laboratory technicians, clerical workers, research scientists, volunteers, managers, receptionists, and nurses.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Eidelman, A.I.; Schanler, R.J. Breastfeeding and the use of human milk. Pediatrics 2012, 129, e827–e841. [Google Scholar] [CrossRef] [Green Version]
  2. Macdonald, P.D. Postnatal weight monitoring should be routine. Arch. Dis. Child. 2007, 92, 374–375. [Google Scholar] [PubMed]
  3. Sellwood, M.; Huertas-Ceballos, A. Review of NICE guidelines on routine postnatal infant care. Arch. Dis. Child. Fetal Neonatal Ed. 2008, 93, F10. [Google Scholar] [CrossRef] [PubMed]
  4. National Guideline Alliance. National Institute for Health and Care Excellence: Clinical Guidelines. In Faltering Growth–Recognition and Management; National Institute for Health and Care Excellence: London, UK, 2017. [Google Scholar]
  5. Gonzalez-Viana, E.; Dworzynski, K.; Murphy, M.S.; Peek, R. Faltering growth in children: Summary of NICE guidance. BMJ 2017, 358, j4219. [Google Scholar] [CrossRef] [PubMed]
  6. Lezo, A.; Baldini, L.; Asteggiano, M. Failure to Thrive in the Outpatient Clinic: A New Insight. Nutrients 2020, 12, 2202. [Google Scholar] [CrossRef]
  7. Rudolf, M.C.J.; Logan, S. What is the long term outcome for children who fail to thrive? A systematic review. Arch. Dis. Child. 2005, 90, 925. [Google Scholar] [CrossRef]
  8. Perrin, E.C.; Cole, C.H.; Frank, D.A.; Glicken, S.R.; Guerina, N.; Petit, K.; Sege, R.; Volpe, M.V.; Lau, J.; McFadden, C.A.; et al. Criteria for determining disability in infants and children: Failure to thrive. Evid. Rep. Technol. Assess. Summ. 2003, 72, 1–5. [Google Scholar]
  9. Emond, A.M.; Blair, P.S.; Emmett, P.M.; Drewett, R.F. Weight Faltering in Infancy and IQ Levels at 8 Years in the Avon Longitudinal Study of Parents and Children. Pediatrics 2007, 120, e1051–e1058. [Google Scholar] [CrossRef]
  10. Corbett, S.S.; Drewett, R.F. To what extent is failure to thrive in infancy associated with poorer cognitive development? A review and meta-analysis. J. Child Psychol. Psychiatry 2004, 45, 641–654. [Google Scholar] [CrossRef]
  11. McAlpine, J.; Nielsen, D.K.; Lee, J.; Larsen, B.M. Growth Faltering: The New and the Old. Clin. Pediatr. 2019, 2, 10. [Google Scholar]
  12. Vilcins, D.; Sly, P.D.; Jagals, P. Environmental Risk Factors Associated with Child Stunting: A Systematic Review of the Literature. Ann. Global Health 2018, 84, 551–562. [Google Scholar] [CrossRef]
  13. Gardner, R.M.; Kippler, M.; Tofail, F.; Bottai, M.; Hamadani, J.; Grandér, M.; Nermell, B.; Palm, B.; Rasmussen, K.M.; Vahter, M. Environmental Exposure to Metals and Children’s Growth to Age 5 Years: A Prospective Cohort Study. Am. J. Epidemiol. 2013, 177, 1356–1367. [Google Scholar] [CrossRef] [PubMed]
  14. Rafati Rahimzadeh, M.; Rafati Rahimzadeh, M.; Kazemi, S.; Moghadamnia, A.-A. Cadmium toxicity and treatment: An update. Caspian J. Intern. Med. 2017, 8, 135–145. [Google Scholar] [CrossRef] [PubMed]
  15. Driscoll, C.T.; Mason, R.P.; Chan, H.M.; Jacob, D.J.; Pirrone, N. Mercury as a Global Pollutant: Sources, Pathways, and Effects. Environ. Sci. Technol. 2013, 47, 4967–4983. [Google Scholar] [CrossRef]
  16. Pirrone, N.; Cinnirella, S.; Feng, X.; Finkelman, R.B.; Friedli, H.R.; Leaner, J.; Mason, R.; Mukherjee, A.B.; Stracher, G.B.; Streets, D.G.; et al. Global mercury emissions to the atmosphere from anthropogenic and natural sources. Atmos. Chem. Phys. 2010, 10, 5951–5964. [Google Scholar] [CrossRef] [Green Version]
  17. Futsaeter, G.; Wilson, S. The UNEP Global Mercury Assessment: Sources, Emissions and Transport. E3S Web Conf. 2013, 1, 36001. [Google Scholar] [CrossRef] [Green Version]
  18. United Nations Environment Programme. World Health Organization. In Guidance for Identifying Populations at Risk from Mercury Exposure; UNEP: Nairobi, Kenya, 2008. [Google Scholar]
  19. Oliveira, C.S.; Nogara, P.A.; Ardisson-Araújo, D.M.P.; Aschner, M.; Rocha, J.B.T.; Dórea, J.G. Neurodevelopmental Effects of Mercury. Adv. Neurotoxicol. 2018, 2, 27–86. [Google Scholar] [CrossRef]
  20. Barone, G.; Storelli, A.; Meleleo, D.; Dambrosio, A.; Garofalo, R.; Busco, A.; Storelli, M.M. Levels of Mercury, Methylmercury and Selenium in Fish: Insights into Children Food Safety. Toxics 2021, 9, 39. [Google Scholar] [CrossRef]
  21. Golding, J.; Steer, C.D.; Hibbeln, J.R.; Emmett, P.M.; Lowery, T.; Jones, R. Dietary predictors of maternal prenatal blood mercury levels in the ALSPAC birth cohort study. Environ. Health Perspect. 2013, 121, 1214–1218. [Google Scholar] [CrossRef] [Green Version]
  22. Love, T.M.; Wahlberg, K.; Pineda, D.; Watson, G.E.; Zareba, G.; Thurston, S.W.; Davidson, P.W.; Shamlaye, C.F.; Myers, G.J.; Rand, M.; et al. Contribution of child ABC-transporter genetics to prenatal MeHg exposure and neurodevelopment. Neurotoxicology 2022, 91, 228–233. [Google Scholar] [CrossRef]
  23. Carvalho, L.V.B.; Hacon, S.S.; Vega, C.M.; Vieira, J.A.; Larentis, A.L.; Mattos, R.C.O.C.; Valente, D.; Costa-Amaral, I.C.; Mourão, D.S.; Silva, G.P.; et al. Oxidative Stress Levels Induced by Mercury Exposure in Amazon Juvenile Populations in Brazil. Int. J. Environ. Res. Public Health 2019, 16, 2682. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  24. Reardon, A.M.; Bhat, H.K. Methylmercury neurotoxicity: Role of oxidative stress. Toxicol. Environ. Chem. 2007, 89, 535–554. [Google Scholar] [CrossRef]
  25. Rodríguez-Rodríguez, P.; Ramiro-Cortijo, D.; Reyes-Hernández, C.G.; López de Pablo, A.L.; González, M.C.; Arribas, S.M. Implication of Oxidative Stress in Fetal Programming of Cardiovascular Disease. Front. Physiol. 2018, 9, 602. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  26. Peixoto, N.C.; Serafim, M.A.; Flores, E.M.; Bebianno, M.J.; Pereira, M.E. Metallothionein, zinc, and mercury levels in tissues of young rats exposed to zinc and subsequently to mercury. Life Sci. 2007, 81, 1264–1271. [Google Scholar] [CrossRef]
  27. Khan, F.; Momtaz, S.; Abdollahi, M. The relationship between mercury exposure and epigenetic alterations regarding human health, risk assessment and diagnostic strategies. J. Trace Elem. Med. Biol. 2019, 52, 37–47. [Google Scholar] [CrossRef]
  28. Liu, S.; Tsui, M.T.-K.; Lee, E.; Fowler, J.; Jia, Z. Uptake, efflux, and toxicity of inorganic and methyl mercury in the endothelial cells (EA.hy926). Sci. Rep. 2020, 10, 9023. [Google Scholar] [CrossRef]
  29. Burke, K.; Cheng, Y.; Li, B.; Petrov, A.; Joshi, P.; Berman, R.F.; Reuhl, K.R.; DiCicco-Bloom, E. Methylmercury elicits rapid inhibition of cell proliferation in the developing brain and decreases cell cycle regulator, cyclin E. Neurotoxicology 2006, 27, 970–981. [Google Scholar] [CrossRef] [Green Version]
  30. Cebulska-Wasilewska, A.; Panek, A.; Zabiński, Z.; Moszczyński, P.; Au, W.W. Occupational exposure to mercury vapour on genotoxicity and DNA repair. Mutat. Res. 2005, 586, 102–114. [Google Scholar] [CrossRef]
  31. Chen, Z.; Myers, R.; Wei, T.; Bind, E.; Kassim, P.; Wang, G.; Ji, Y.; Hong, X.; Caruso, D.; Bartell, T.; et al. Placental transfer and concentrations of cadmium, mercury, lead, and selenium in mothers, newborns, and young children. J. Expo Sci. Environ. Epidemiol. 2014, 24, 537–544. [Google Scholar] [CrossRef] [Green Version]
  32. Zhu, Z.; Cao, F.; Li, X. Epigenetic Programming and Fetal Metabolic Programming. Front. Endocrinol. 2019, 10, 764. [Google Scholar] [CrossRef] [Green Version]
  33. Bakir, F.; Damluji, S.F.; Amin-Zaki, L.; Murtadha, M.; Khalidi, A.; Al-Rawi, N.Y.; Tikriti, S.; Dhahir, H.I.; Clarkson, T.W.; Smith, J.C.; et al. Methylmercury Poisoning in Iraq. Science 1973, 181, 230–241. [Google Scholar] [CrossRef] [PubMed]
  34. Dos Santos, A.A.; Chang, L.W.; Guo, G.L.; Aschner, M. Chapter 35—Fetal Minamata Disease: A Human Episode of Congenital Methylmercury Poisoning. In Handbook of Developmental Neurotoxicology, 2nd ed.; Slikker, W., Paule, M.G., Wang, C., Eds.; Academic Press: Cambridge, MA, USA, 2018; pp. 399–406. [Google Scholar]
  35. Perrone, S.; Negro, S.; Tataranno, M.L.; Buonocore, G. Oxidative stress and antioxidant strategies in newborns. J. Matern. Fetal Neonatal Med. 2010, 23 (Suppl. 3), 63–65. [Google Scholar] [CrossRef] [PubMed]
  36. Thompson, L.P.; Al-Hasan, Y. Impact of oxidative stress in fetal programming. J. Pregnancy 2012, 2012, 582748. [Google Scholar] [CrossRef] [PubMed]
  37. Dack, K.; Fell, M.; Taylor, C.M.; Havdahl, A.; Lewis, S.J. Mercury and Prenatal Growth: A Systematic Review. Int. J. Environ. Res. Public Health 2021, 18, 7140. [Google Scholar] [CrossRef] [PubMed]
  38. Taylor, C.M.; Golding, J.; Emond, A.M. Blood mercury levels and fish consumption in pregnancy: Risks and benefits for birth outcomes in a prospective observational birth cohort. Int. J. Hyg. Environ. Health 2016, 219, 513–520. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  39. Kim, B.M.; Chen, M.H.; Chen, P.C.; Park, H.; Ha, M.; Kim, Y.; Hong, Y.C.; Kim, Y.J.; Ha, E.H. Path analysis of prenatal mercury levels and birth weights in Korean and Taiwanese birth cohorts. Sci. Total Environ. 2017, 605–606, 1003–1010. [Google Scholar] [CrossRef]
  40. Foldspang, A.; Hansen, J.C. Dietary intake of methylmercury as a correlate of gestational length and birth weight among newborns in Greenland. Am. J. Epidemiol. 1990, 132, 310–317. [Google Scholar] [CrossRef] [PubMed]
  41. Grandjean, P.; Bjerve, K.S.; Weihe, P.; Steuerwald, U. Birthweight in a fishing community: Significance of essential fatty acids and marine food contaminants. Int. J. Epidemiol. 2001, 30, 1272–1278. [Google Scholar] [CrossRef] [Green Version]
  42. Murcia, M.; Ballester, F.; Enning, A.M.; Iñiguez, C.; Valvi, D.; Basterrechea, M.; Rebagliato, M.; Vioque, J.; Maruri, M.; Tardon, A.; et al. Prenatal mercury exposure and birth outcomes. Environ. Res. 2016, 151, 11–20. [Google Scholar] [CrossRef]
  43. Rand, M.D.; Caito, S.W. Variation in the biological half-life of methylmercury in humans: Methods, measurements and meaning. Biochim. Biophys. Acta Gen. Subj. 2019, 1863, 129301. [Google Scholar] [CrossRef]
  44. Fisher, J.F.; World Health Organization. Elemental Mercury and Inorganic Mercury Compounds: Human Health Aspects; World Health Organization: Geneva, Switzerland, 2003. [Google Scholar]
  45. Rooney, J.P.K. The retention time of inorganic mercury in the brain—A systematic review of the evidence. Toxicol. Appl. Pharmacol. 2014, 274, 425–435. [Google Scholar] [CrossRef] [PubMed]
  46. Kim, B.-M.; Lee, B.-E.; Hong, Y.-C.; Park, H.; Ha, M.; Kim, Y.-J.; Kim, Y.; Chang, N.; Kim, B.-N.; Oh, S.-Y.; et al. Mercury levels in maternal and cord blood and attained weight through the 24months of life. Sci. Total Environ. 2011, 410–411, 26–33. [Google Scholar] [CrossRef] [PubMed]
  47. Papadopoulou, E.; Botton, J.; Caspersen, I.H.; Alexander, J.; Eggesbø, M.; Haugen, M.; Iszatt, N.; Jacobsson, B.; Knutsen, H.K.; Meltzer, H.M.; et al. Maternal seafood intake during pregnancy, prenatal mercury exposure and child body mass index trajectories up to 8 years. Int. J. Epidemiol. 2021, 50, 1134–1146. [Google Scholar] [CrossRef] [PubMed]
  48. Khan, M.A.K.; Wang, F. Mercury-selenium compounds and their toxicological significance: Toward a molecular understanding of the mercury-selenium antagonism. Environ. Toxicol. Chem. 2009, 28, 1567–1577. [Google Scholar] [CrossRef] [PubMed]
  49. Olza, J.; Aranceta-Bartrina, J.; González-Gross, M.; Ortega, R.M.; Serra-Majem, L.; Varela-Moreiras, G.; Gil, Á. Reported Dietary Intake and Food Sources of Zinc, Selenium, and Vitamins A, E and C in the Spanish Population: Findings from the ANIBES Study. Nutrients 2017, 9, 697. [Google Scholar] [CrossRef] [PubMed]
  50. Watanabe, C. Modification of Mercury Toxicity by Selenium: Practical Importance? Tohoku J. Exp. Med. 2002, 196, 71–77. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  51. Gailer, J. Arsenic–selenium and mercury–selenium bonds in biology. Coord. Chem. Rev. 2007, 251, 234–254. [Google Scholar] [CrossRef]
  52. Hawkes, W.C.; Keim, N.L. Dietary Selenium Intake Modulates Thyroid Hormone and Energy Metabolism in Men. J. Nutr. 2003, 133, 3443–3448. [Google Scholar] [CrossRef] [Green Version]
  53. Everson, T.M.; Kappil, M.; Hao, K.; Jackson, B.P.; Punshon, T.; Karagas, M.R.; Chen, J.; Marsit, C.J. Maternal exposure to selenium and cadmium, fetal growth, and placental expression of steroidogenic and apoptotic genes. Environ. Res. 2017, 158, 233–244. [Google Scholar] [CrossRef]
  54. Wang, X.; Bao, R.; Fu, J. The Antagonistic Effect of Selenium on Cadmium-Induced Damage and mRNA Levels of Selenoprotein Genes and Inflammatory Factors in Chicken Kidney Tissue. Biol. Trace Elem. Res. 2018, 181, 331–339. [Google Scholar] [CrossRef]
  55. Branca, J.J.V.; Morucci, G.; Maresca, M.; Tenci, B.; Cascella, R.; Paternostro, F.; Ghelardini, C.; Gulisano, M.; Di Cesare Mannelli, L.; Pacini, A. Selenium and zinc: Two key players against cadmium-induced neuronal toxicity. Toxicol. Vitr. 2018, 48, 159–169. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  56. Spiller, H.A. Rethinking mercury: The role of selenium in the pathophysiology of mercury toxicity. Clin. Toxicol. 2018, 56, 313–326. [Google Scholar] [CrossRef] [PubMed]
  57. Boyd, A.; Golding, J.; Macleod, J.; Lawlor, D.A.; Fraser, A.; Henderson, J.; Molloy, L.; Ness, A.; Ring, S.; Davey Smith, G. Cohort Profile: The ‘children of the 90s’—The index offspring of the Avon Longitudinal Study of Parents and Children. Int. J. Epidemiol. 2013, 42, 111–127. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  58. Fraser, A.; Macdonald-Wallis, C.; Tilling, K.; Boyd, A.; Golding, J.; Davey Smith, G.; Henderson, J.; Macleod, J.; Molloy, L.; Ness, A.; et al. Cohort Profile: The Avon Longitudinal Study of Parents and Children: ALSPAC mothers cohort. Int. J. Epidemiol. 2013, 42, 97–110. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  59. Taylor, C.M.; Golding, J.; Hibbeln, J.; Emond, A.M. Environmental factors predicting blood lead levels in pregnant women in the UK: The ALSPAC study. PLoS ONE 2013, 8, e72371. [Google Scholar] [CrossRef]
  60. Evans, D.M.; Zhu, G.; Dy, V.; Heath, A.C.; Madden, P.A.F.; Kemp, J.P.; McMahon, G.; St Pourcain, B.; Timpson, N.J.; Golding, J.; et al. Genome-wide association study identifies loci affecting blood copper, selenium and zinc. Hum. Mol. Genet. 2013, 22, 3998–4006. [Google Scholar] [CrossRef] [Green Version]
  61. Hornung, R.W.; Reed, L.D. Estimation of Average Concentration in the Presence of Nondetectable Values. Appl. Occup. Environ. Hyg. 1990, 5, 46–51. [Google Scholar] [CrossRef]
  62. Taylor, C.M.; Golding, J.; Kordas, K. Prenatal lead exposure: Associations with growth and anthropometry in early childhood in a UK observational birth cohort study [version 2; peer review: 1 approved, 1 approved with reservations]. Wellcome Open Res. 2021, 5. [Google Scholar] [CrossRef]
  63. Wilcox, A.J.; Weinberg, C.R.; Basso, O. On the pitfalls of adjusting for gestational age at birth. Am. J. Epidemiol. 2011, 174, 1062–1068. [Google Scholar] [CrossRef]
  64. Golding, J.; Gregory, S.; Iles-Caven, Y.; Hibbeln, J.; Emond, A.; Taylor, C.M. Associations between prenatal mercury exposure and early child development in the ALSPAC study. Neurotoxicology 2016, 53, 215–222. [Google Scholar] [CrossRef] [Green Version]
  65. R Core Team. R: A Language and Environment for Statistical Computing (Version 4.1.0); R Core Team: Vienna, Austria, 2021. [Google Scholar]
  66. Wickham, H. ggplot2: Elegant Graphics for Data Analysis; Springer International Publishing: Berlin/Heidelberg, Germany, 2016. [Google Scholar]
  67. Chakrabarti, A.; Ghosh, J.K. AIC, BIC and Recent Advances in Model Selection. In Philosophy of Statistics; Bandyopadhyay, P.S., Forster, M.R., Eds.; North-Holland: Amsterdam, The Netherlands, 2011; Volume 7, pp. 583–605. [Google Scholar]
  68. Taylor, C.M.; Golding, J.; Emond, A.M. Lead, cadmium and mercury levels in pregnancy: The need for international consensus on levels of concern. J. Dev. Orig. Health Dis. 2014, 5, 16–30. [Google Scholar] [CrossRef] [PubMed]
  69. Ye, B.J.; Kim, B.G.; Jeon, M.J.; Kim, S.Y.; Kim, H.C.; Jang, T.W.; Chae, H.J.; Choi, W.J.; Ha, M.N.; Hong, Y.S. Evaluation of mercury exposure level, clinical diagnosis and treatment for mercury intoxication. Ann. Occup. Environ. Med. 2016, 28, 5. [Google Scholar] [CrossRef] [PubMed]
  70. Mercury in Canadians. Available online: https://www.canada.ca/en/health-canada/services/environmental-workplace-health/reports-publications/environmental-contaminants/human-biomonitoring-resources/mercury-canadians.html (accessed on 13 December 2022).
  71. Mahaffey, K.R.; Clickner, R.P.; Bodurow, C.C. Blood organic mercury and dietary mercury intake: National Health and Nutrition Examination Survey, 1999 and 2000. Environ. Health Perspect. 2004, 112, 562–570. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  72. Solan, T.D.; Lindow, S.W. Mercury exposure in pregnancy: A review. J. Perinat. Med. 2014, 42, 725–729. [Google Scholar] [CrossRef] [PubMed]
  73. Hindmarsh, P.C.; Geary, M.P.P.; Rodeck, C.H.; Kingdom, J.C.P.; Cole, T.J. Factors Predicting Ante- and Postnatal Growth. Pediatr. Res. 2008, 63, 99–102. [Google Scholar] [CrossRef] [Green Version]
  74. Nguyen, H.T.; Eriksson, B.; Petzold, M.; Bondjers, G.; Tran, T.K.; Nguyen, L.T.; Ascher, H. Factors associated with physical growth of children during the first two years of life in rural and urban areas of Vietnam. BMC Pediatr. 2013, 13, 149. [Google Scholar] [CrossRef] [Green Version]
  75. Sjöström, E.S.; Öhlund, I.; Ahlsson, F.; Norman, M.; Engström, E.; Hellström, A.; Fellman, V.; Olhager, E.; Domellöf, M. 349 Effects of Postnatal Energy and Macronutrient Intakes on Growth in Extremely Preterm Infants: A Population-Based Study. Arch. Dis. Child. 2012, 97, A102. [Google Scholar] [CrossRef] [Green Version]
  76. Iszatt, N.; Stigum, H.; Verner, M.-A.; White, R.A.; Govarts, E.; Murinova, L.P.; Schoeters, G.; Trnovec, T.; Legler, J.; Pelé, F.; et al. Prenatal and Postnatal Exposure to Persistent Organic Pollutants and Infant Growth: A Pooled Analysis of Seven European Birth Cohorts. Environ. Health Perspect. 2015, 123, 730–736. [Google Scholar] [CrossRef]
  77. Strain, J.J.; Davidson, P.W.; Bonham, M.P.; Duffy, E.M.; Stokes-Riner, A.; Thurston, S.W.; Wallace, J.M.W.; Robson, P.J.; Shamlaye, C.F.; Georger, L.A.; et al. Associations of maternal long-chain polyunsaturated fatty acids, methyl mercury, and infant development in the Seychelles Child Development Nutrition Study. Neurotoxicology 2008, 29, 776–782. [Google Scholar] [CrossRef] [Green Version]
  78. Clarkson, T.W.; Strain, J.J. Nutritional Factors May Modify the Toxic Action of Methyl Mercury in Fish-Eating Populations. J. Nutr. 2003, 133, 1539S–1543S. [Google Scholar] [CrossRef] [Green Version]
  79. Nielsen, S.J.; Kit, B.K.; Aoki, Y.; Ogden, C.L. Seafood consumption and blood mercury concentrations in adults aged ≥20 y, 2007–2010. Am. J. Clin. Nutr. 2014, 99, 1066–1070. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  80. Mohanty, B.P.; Ganguly, S.; Karunakaran, D.; Chakraborty, K.; Sharma, A.P.; Mohapatra, P.K.R.; Nayak, N.R. Maternal Fish Consumption and Prevention of Low Birth Weight in the Developing World. Natl. Acad. Sci. Lett. 2012, 35, 433–438. [Google Scholar] [CrossRef]
  81. Tong, M.; Yu, J.; Liu, M.; Li, Z.; Wang, L.; Yin, C.; Ren, A.; Chen, L.; Jin, L. Total mercury concentration in placental tissue, a good biomarker of prenatal mercury exposure, is associated with risk for neural tube defects in offspring. Environ. Int. 2021, 150, 106425. [Google Scholar] [CrossRef] [PubMed]
  82. Yoshida, M. Placental to fetal transfer of mercury and fetotoxicity. Tohoku J. Exp. Med. 2002, 196, 79–88. [Google Scholar] [CrossRef] [Green Version]
  83. Mesquita, M.; Pedroso, T.F.; Oliveira, C.S.; Oliveira, V.A.; do Santos, R.F.; Bizzi, C.A.; Pereira, M.E. Effects of zinc against mercury toxicity in female rats 12 and 48 hours after HgCl2 exposure. EXCLI J. 2016, 15, 256–267. [Google Scholar] [CrossRef]
  84. Golding, J.; Taylor, C.; Iles-Caven, Y.; Gregory, S. The benefits of fish intake: Results concerning prenatal mercury exposure and child outcomes from the ALSPAC prebirth cohort. Neurotoxicology 2022, 91, 22–30. [Google Scholar] [CrossRef]
Figure 1. Flowchart of ALSPAC data available for this study.
Figure 1. Flowchart of ALSPAC data available for this study.
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Figure 2. Weight trajectories from measurements of 544 children taken between 4 and 61 months of age, and mean weight highlighted in black.
Figure 2. Weight trajectories from measurements of 544 children taken between 4 and 61 months of age, and mean weight highlighted in black.
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Table 1. Characteristics of mother and child in ALSPAC and study samples. Median (IQR) or count (percent).
Table 1. Characteristics of mother and child in ALSPAC and study samples. Median (IQR) or count (percent).
VariableAll ALSPAC Mercury SamplesMercury and Child Weight
Mother
Number of births14,0623844544
Maternal age (years)28 (6)28 (6)28 (6.5)
Parity
0 5585 (44.8%)1597 (44.4%)243 (46.0%)
1 4361 (35.0%)1233 (34.3%)171 (32.4%)
2+2522 (20.2%)765 (21.3%)111 (21.0%)
Highest level of education
O-level/below7755 (64.6%)2137 (61.6%)306 (59.0%)
A-level/degree4241 (35.4%)1333 (38.4%)212 (40.8%)
Pre-pregnancy BMI (kg/m2)22.2 (3.9)22.3 (4.0)22.5 (4.1)
Smoker at 8 weeks’ gestation
No9348 (79.4%)2803 (79.4%)439 (85.9%)
Yes2432 (20.6%)727 (20.6%)71 (13.9%)
Drank alcohol at 8 weeks’ gestation
No7932 (69.8%)2351 (69.3%)314 (64.5%)
Yes3427 (30.2%)1042 (30.7%)172 (35.3%)
Oily fish consumption
No4961 (42.3%)1463 (42.7%)199 (38.9%)
Yes6769 (57.7%)1965 (57.3%)312 (61.1%)
White fish consumption
No2157 (18.4%)639 (18.6%)89 (17.4%)
Yes9573 (81.6%)2789 (81.4%)422 (82.6%)
Shellfish consumption
No9451 (80.6%)2740 (79.9%)391 (76.5%)
Yes2279 (19.4%)688 (20.1%)121 (23.5%)
Whole blood metal
Mercury (µg/L)1.88 (1.17)1.88 (1.17)1.91 (1.13)
Selenium (µg/L)108.4 (25.3)108.4 (25.3)109.7 (26.3)
Child
Male6934 (51.5%)1985 (51.6%)299 (55.0%)
Female6535 (48.5%)1859 (48.3%)245 (45.0%)
Birthweight (g)3440 (640)3440 (650)3500 (620)
Gestational age (days)280 (14)281 (14)282 (11)
Table 2. Estimated growth (kg) per month between 4 and 61 months in the ALSPAC cohort using mixed effect modelling.
Table 2. Estimated growth (kg) per month between 4 and 61 months in the ALSPAC cohort using mixed effect modelling.
PredictorUnadjusted (n = 544)Adjusted (n = 544)
Coefficient95% CICoefficient95% CI
Mercury (1.048 μg/L)−0.02−0.09 to 0.06−0.02−0.10 to 0.06
Mercury * selenium interaction0.00−0.10 to 0.090.01−0.09 to 0.12
Adjusted model: mothers’ age, parity, highest level of education, pre-pregnancy BMI, cigarettes per day, alcohol units per week, selenium, frequency of consumption of oily fish, white fish, and shellfish.
Table 3. Estimated associations between maternal blood mercury (μg/L) and child weight (kg), at 10 clinic visits.
Table 3. Estimated associations between maternal blood mercury (μg/L) and child weight (kg), at 10 clinic visits.
Clinic AgeMean Weight (kg)nCoefficient95% CI
4 months6.67381−0.01−0.09 to 0.07
8 months8.90497−0.02−0.12 to 0.07
12 months10.274840.02−0.09 to 0.14
18 months11.494450.03−0.09 to 0.16
25 months12.834250.05−0.10 to 0.20
31 months14.114380.10−0.07 to 0.27
37 months15.224180.12−0.07 to 0.30
43 months16.414130.14−0.06 to 0.34
49 months17.403930.12−0.11 to 0.35
61 months19.693810.33−0.00 to 0.67
Adjusted for mothers’ age, child’s age at time of clinic visit, parity, highest level of education, pre-pregnancy BMI, cigarettes per day, alcohol units per week, selenium, frequency of consumption of oily fish, white fish, and shellfish.
Table 4. Estimated associations between deciles of maternal blood mercury (μg/L) and child weight (kg), at 10 clinic visits.
Table 4. Estimated associations between deciles of maternal blood mercury (μg/L) and child weight (kg), at 10 clinic visits.
Clinic AgeMean Weight (kg)1st–9th Deciles Maternal Hg10th Decile Maternal Hg
nCoefficient95% CInCoefficient95% CI
4 months6.673380.03−0.11 to 0.1743−0.05−0.33 to 0.22
8 months8.904440.05−0.12 to 0.2153−0.18−0.49 to 0.12
12 months10.274300.05−0.13 to 0.2354−0.08−0.45 to 0.30
18 months11.493970.06−0.15 to 0.2648−0.22−0.70 to 0.22
25 months12.833790.14−0.10 to 0.3946−0.34−0.86 to 0.17
31 months14.113880.12−0.16 to 0.4050−0.20−0.78 to 0.37
37 months15.223710.25−0.06 to 0.60 47−0.09−0.42 to 0.60
43 months16.413620.22−0.13 to 0.5650−0.21−0.82 to 0.41
49 months17.403490.22−0.15 to 0.6044−0.26−1.03 to 0.51
61 months19.693370.50−0.02 to 1.0144−0.01−1.74 to 1.73
Adjusted for mothers’ age, child’s age at time of clinic visit, parity, highest level of education, pre-pregnancy BMI, cigarettes per day, alcohol units per week, selenium, frequency of consumption of oily fish, white fish, and shellfish.
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Dack, K.; Wootton, R.E.; Taylor, C.M.; Lewis, S.J. Prenatal Mercury Exposure and Infant Weight Trajectories in a UK Observational Birth Cohort. Toxics 2023, 11, 10. https://doi.org/10.3390/toxics11010010

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Dack K, Wootton RE, Taylor CM, Lewis SJ. Prenatal Mercury Exposure and Infant Weight Trajectories in a UK Observational Birth Cohort. Toxics. 2023; 11(1):10. https://doi.org/10.3390/toxics11010010

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Dack, Kyle, Robyn E. Wootton, Caroline M. Taylor, and Sarah J. Lewis. 2023. "Prenatal Mercury Exposure and Infant Weight Trajectories in a UK Observational Birth Cohort" Toxics 11, no. 1: 10. https://doi.org/10.3390/toxics11010010

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