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Hydroelectric reservoir inundation (Rio Madeira Basin, Amazon) and changes in traditional lifestyle: impact on growth and neurodevelopment of pre-school children

Published online by Cambridge University Press:  13 October 2010

Rejane C Marques
Affiliation:
Escola de Enfermagem Anna Nery, Universidade Federal do Rio de Janeiro, Rio de Janeiro, RJ, Brazil
José G Dórea*
Affiliation:
Department of Nutrition, Universidade de Brasília, C.P. 04322, 70919-970 Brasilia, DF, Brazil
Concepta McManus
Affiliation:
Department of Animal Science, Universidade de Brasília, Brasília, DF, Brazil
Renata S Leão
Affiliation:
Instituto de Biofísica Carlos Chagas Filho, Universidade Federal do Rio de Janeiro, Rio de Janeiro, RJ, Brazil
Katiane G Brandão
Affiliation:
Medical School, Universidade Federal de Rondônia, Porto Velho, RO, Brazil
Rayson C Marques
Affiliation:
Prefeitura Municipal de Porto Velho, Porto Velho, RO, Brazil
Igor H Ito Vieira
Affiliation:
Medical School, Universidade Federal de Rondônia, Porto Velho, RO, Brazil
Jean-Remy D Guimarães
Affiliation:
Instituto de Biofísica Carlos Chagas Filho, Universidade Federal do Rio de Janeiro, Rio de Janeiro, RJ, Brazil
Olaf Malm
Affiliation:
Instituto de Biofísica Carlos Chagas Filho, Universidade Federal do Rio de Janeiro, Rio de Janeiro, RJ, Brazil
*
*Corresponding author: Email [email protected]
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Abstract

Objective

To assess the dependence on fish consumption of families and its impact on nutritional status and neurodevelopment of pre-school children.

Design

Cross-sectional study that measured children’s hair mercury (HHg) as an indicator of family fish consumption, growth (anthropometric Z-scores, WHO standards) and neurological (Gesell developmental scores (GDS)) development.

Setting

Traditional living conditions among families residing in the area adjacent to the Samuel Dam (Western Amazon) hydroelectric reservoir.

Subjects

Two hundred and forty-nine pre-school children (1–59 months of age) from families transitioning from the traditional Amazonian lifestyle.

Results

Family fish consumption was significantly correlated with children’s HHg concentration (Spearman’s r = 0·246, P < 0·0001); however, HHg had no significant association with growth (Z-scores). Overall, the prevalence of severe malnutrition, i.e. stunting (height-for-age Z-score (HAZ) ≤ −3), underweight (weight-for-age Z-score (WAZ) ≤ −3) and wasting (weight-for-height Z-score (WHZ) ≤ −3) was 5·2 % (n 13), 0 % and 0·8 % (n 2), respectively. The prevalence of moderate stunting (HAZ ≥ −3 to ≤ −2), underweight (WAZ ≥ −3 to ≤ −2) and wasting (WHZ ≥ −3 to ≤ −2) was 8·8 % (n 22), 2·4 % (n 6) and 4·8 % (n 12), respectively. Although 76 % of the children showed adequate GDS (>85), multiple regression analysis showed that fish consumption (as HHg) had no impact on GDS, but that some variables did interact significantly with specific domains (motor and language development).

Conclusions

The study showed that the families’ shift in fish consumption had no negative impact on the growth of young children and that ensuing methylmercury exposure has not been a noticeable neurodevelopmental hindrance.

Type
Research paper
Copyright
Copyright © The Authors 2010

The riverine populations that inhabit the Amazon rain-forest have been subjected to changes in their lifestyle due to the region’s economic development over the past 40 years. Road building, deforestation for agricultural projects and flooding of large areas for hydroelectric dams have meant that traditional subsistence lifestyles (isolated in the dense forest) are changing fast due to rural reoccupation and immigration. These events are shaping a new urban profile. Rapid urbanization is gradually replacing riverine communities and changing the traditional food supply chain.

The contrast of traditional Amazonian living conditions with new lifestyles brought by immigrants has recently been described by Piperata(Reference Piperata1); the use of markets for food supply is replacing the traditional dominance of fish caught by the local population as the source of animal protein. Piperata points out that the current diet of native populations is dependent on more industrialized, processed or mass-produced foods. On account of the central role of fish in the Amazon riverine diet(Reference Dórea2), the key challenge in studies of nutrition transition of this population is the ability to characterize changes in the extent of fish consumption and its impact on nutritional status. Indeed, traditional communities living further from urban centres tend to have higher fish consumption(Reference Alves, Fraiji and Barbosa3). Monrroy et al.(Reference Monrroy, Lopez and Roulet4) also observed the same pattern among the more isolated and impoverished inhabitants of the Bolivian Amazon.

Owing to its natural abundance in Amazonian rivers, fish is thoroughly utilized by riverine populations(Reference Dufour5) as the main source of animal protein that balances their starchy diet(Reference Dórea2). These starchy foods are also low in essential micronutrients and are known to hinder their absorption. Fish provides abundant sulfur amino acids that neutralize the cyanogenic glucuronides present in cassava roots(Reference Dórea2). Essential trace minerals, such as Zn, are significantly higher in fish than in foods with low protein content(Reference Terrés, Navarro and Martín-Lagos6). Dietary fish also enhances absorption of both Zn(Reference Garcia-Arias, Castrillon and Navarro7) and Fe(Reference Layrisse, Martínez-Torres and Méndez-Castellano8Reference Navas-Carretero, Pérez-Granados and Sarriá10) from plant foods. When prepared and eaten as a whole unit, small fish have five times more Cu, twice as much Ca, and two orders of magnitude more Zn, Fe and Mn(Reference Larsen, Thilsted and Kongsbak11). Indeed, a diet rich in fish has shown a positive effect on children’s ferritin stores(Reference Michaelsen, Milman and Samuelson12, Reference Gunnarsson, Thorsdottir and Palsson13). Fish consumption is positively correlated with women’s iodine status;(Reference Zollner, Below and Franke14) its decrease has been considered a risk for iodine deficiency in Iceland(Reference Gunnarsdottir, Gustavsdottir and Thorsdottir15) and may have compromised adequate micronutrient nutrition in the transitioning diet of pregnant Seychelloise women(Reference Bonham, Duffy and Robson16). Amazonian fish is a good source of Se, which is an essential nutrient also capable of counteracting the toxic effects of Hg(Reference Dórea, Moreira and East17). Furthermore, both iodine and sulfur-containing amino acids provided by fish can counterbalance goitrogens in cassava-based diets produced in the iodine-depleted soils of the tropical rainforests(Reference Dórea18). Fish is also the main source for n-3 PUFA; these nutrients are important in the maternal diet during pregnancy and lactation(Reference Rice19). These elongated fatty acids include DHA and EPA, which are essential for optimal neural tissue development and function(Reference Koletzko, Lien and Agostoni20).

As a byproduct of the methylating bacteria abundant in the Amazon biomass, methylmercury (MeHg) is a secondary obligatory component of fish. However, the MeHg concentrations found in fish fluctuate as a function of the aquatic food-chain length(Reference Barbosa, de Souza and Dórea21); predatory species concentrate more MeHg than non-predatory ones. As a consequence, Amazonian populations with high fish consumption are also exposed to MeHg(Reference Barbieri and Gardon22). The ratio of blood to hair mercury (HHg) is high(Reference Gosselin, Brunet and Carrier23), which makes HHg a particularly easy and reliable biomonitor to track fish consumption(Reference Dórea24). Although the consumption patterns of fish vary with season, there is little overall variation in MeHg exposure for subsistence Amazonian populations(Reference Oliveira, Dórea and Bernardi25). Therefore, HHg has proven to be a convenient alternative to assess family fish consumption(Reference Oliveira, Dórea and Bernardi25), and it can also differentiate occupational and environmental Hg exposure in the Amazon(Reference Barbosa, Boischio and East26).

It has been shown previously that among native Amazonian tribes, differences in the rate of fish consumption (127 g fish/d v. 30 g fish/d) were compensated by other protein sources that showed no significant correlation with the attained growth of Amer-Indian children(Reference Dórea, Barbosa and Ferrari27). Subsequent studies with an urban Amazonian population indicated that the habitual dominance of fish consumption, although important for some nutrients, can be successfully replaced by other animal food sources(Reference Marques, Dórea and Bernardi28).

The Amazonian forest environment, especially in the state of Rondonia (western region), has undergone dramatic change over the past 40 years. It started with the gold rush in the 1970s, then the opening of roads and agricultural projects, which attracted people from different parts of the country. Land occupation by agriculture, logging, mining operations and ensuing urbanization have created a demand for energy that has been met with the construction of large hydroelectric dams. As a consequence, water reservoirs have flooded extensive forest areas, resulting in the displacement of traditional subsistence living. The reservoir of the Samuel Dam (a hydroelectric plant that provides most of the electricity consumed in the state of Rondonia) was flooded in 1988, and the present study is the first one that looks into the impact, brought about by relocation, on the traditional lifestyle of families that lived in the inundated areas. Fearnside(Reference Fearnside29) has addressed the environmental costs of the flooded forest and fish contamination resulting from methylation of Hg present in the soil of the Samuel Dam, as well as examining the social costs of the dam in terms of resettlement of families.

The objective of the present paper was to study the dependence on fish consumption of families (a result of transitioning from a traditional lifestyle) and its impact on nutritional status and neurodevelopment of children under 5 years of age.

Materials and methods

This was part of an ongoing study to evaluate the impact of land occupation (mining, agricultural resettlement) on the general health and nutrition status of pre-school children (under 5 years of age). The protocol for the present study was approved by the Ethics Committee for Studies in Humans of the Federal University of Rondonia. Written consent (stating that participation was voluntary and confidentiality was assured) was provided by the participant mother, who could withdraw from the study at any time. The study took place between February 2006 and December 2007, over which time several visits were undertaken.

The study area in Fig. 1 illustrates the Samuel Hydroelectric Dam area and the adjacent villages of the studied population (scattered in the municipalities of Candeias do Jamari and Itapuã d’Oeste) along the Rio Jamari (a tributary of the Rio Madeira). These villages were formed principally (but not exclusively) by riverine communities that were displaced by the compulsory confiscation of lands for the Samuel reservoir; in these villages we found rural workers as well as people who continued fishing for a living. The studied population consisted of six communities designated on the map (Pescadores, Linha Azul, Triunfo, Rei do Peixe, Comunidade do Rio Preto do Crespo and Garimpo Clandestino). Most of these families were still living without basic health and sanitation and the children attended a compromised school system. The nearest hospital and school were located 19 km away in the town of Itapuã d’Oeste.

Fig. 1 Map of the studied area with designated communities (1, Vila dos Pescadores; 2, Linha Azul; 3, Triunfo; 4, Rei do Peixe; 5, Comunidade do Rio Preto do Crespo; 6, Garimpo Clandestino)

Data collection

During visits, a questionnaire was used to collect data on general aspects of demographics and, especially, information on family fish consumption. A trained interviewer applied the questionnaire to obtain demographic information, number of persons per home, family income and related maternal (educational level and breast-feeding practices) variables. Each family was interviewed and examined on a single occasion. They were asked how many fish meals were consumed daily; in order to complement fish intake information, hair was also collected from the children who were studied. Samples of hair were taken from all pre-school children (<5 years of age) after recording age (birth certificate) and measuring height and weight. Stainless steel scissors were used to cut the hair close to the scalp, always in the same occipital area. The sampled hair was bundled together and placed in a labelled envelope and taken to the Radioisotopes Laboratory of the Federal University of Rio de Janeiro for analysis.

Anthropometric and neurodevelopment measurements

Weight and height (length in young children) were measured by trained nurses according to standard procedures(Reference Marques, Dórea and Bastos30). Length of babies and infants was measured in recumbent position with a 0·1 cm stadiometer. The standing height (to the nearest 0·1 cm with a stadiometer) and weight (to the nearest 0·1 kg with an electronic scale) were measured in older children, who were dressed solely in underwear and barefoot. Weight (kg) and height (m2) were used to calculate BMI (kg/m2). Z-scores for attained weight-for-age (WAZ), height/length-for-age (HAZ), BMI-for-age and weight-for-length (WHZ) were based on the WHO Child Growth Standards (WHO Multicentre Growth Reference Study Group)(31), and were calculated using WHO Anthro version 2 (Department of Nutrition, WHO, Geneva) and the WHO recommended growth curves.

The Gesell developmental schedules (GDS), which have been revised and adopted to be used in Brazil(Reference Gesell32, Reference Gesell and Amatruda33), were applied by trained professionals to evaluate neurodevelopment reactions (voluntary, spontaneous or learned) and reflexes. Postural reactions, hand pressure, locomotion and coordination, constructive ability (which is influenced by motor development), visible and audible communication, individual reactions regarding people and stimulations (depending mainly on the temperament of the child and the surroundings) were also evaluated. The results were expressed as developmental scores (or development quotient, DQ) of the specific domains: Adaptive ability, Language development and Motor abilities (gross motor) and Personal–social ability. These were joined to give a single number (mean of the four domains in percentage).

The GDS was conceived to provide a neurological and intellectual evaluation of children and is widely used in several countries(Reference Tang, Li and Liu34). Tang et al.(Reference Tang, Li and Liu34) described the GDS application, stressing its adoption by the WHO for use in resource-poor settings. The DQ was standardized (100). A DQ of 85 is considered to be the cut-off point for determining normal and developmental delay; a DQ <85 suggests a child with a high probability of some organic impairment. DQ of 70–85 is indicative of moderate delay, whereas DQ <70 indicates severe delay. The GDS has a significant correlation with mental development at 6–7 years as measured by an adapted version of the Wechsler Intelligence Scales for Children(Reference Tang, Li and Liu34).

Hair mercury determination

Hair sample preparation and analytical procedures to determine total Hg concentrations were performed according to standardized laboratory procedure(Reference Fonseca, Dórea and Bastos35). Briefly, the hair samples were weighed and digested before analysis. The samples were comminuted with stainless steel scissors and washed with EDTA 0·01 % (w/v), then dried in an oven at 50°C. The hair was then digested at 80°C for 40 min with concentrated HNO3 (3 ml) and KMnO4 (5 % (w/v); 6 ml) in a microwave oven system for 35 min (MDS 2000; CEM Corporation, Matthews, NC, USA). The determination of total Hg was made by cold vapour atomic absorption spectrometry (CV-AAS) with a flow injection system FIMS 400; Perkin-Elmer, Ueberlingen, Germany). Precision and accuracy of Hg determinations were assured by the use of internal standards, use of triplicate analyses of samples and certified reference materials (IAEA-085 and 086, Vienna, Austria) with recoveries of 92 %. All glassware used was washed clean, rinsed with 5 % (w/v) EDTA and double distilled water and left to rest in 5 % (w/v) HNO3 overnight. Then it was rinsed again in double-distilled water and dried at 100°C for 12 h.

Statistical analysis

Data summarization (means, sd, changes in variables) and correlation analysis were carried out by statistical packages. Prism software version 10IC (GraphPad Software Inc., San Diego, CA, USA) was used to generate graphs and determine Spearman’s (ρ) correlation to examine the strength of association between HHg (marker of fish consumption) and neurological and anthropometric measures. Multiple regression (stepwise) statistical analysis to test the effect of variables on children’s attained growth and DQ was further carried out using the SAS statistical software package version 6·0 (SAS Institute, Cary, NC, USA).

Results

The general characteristics of the studied population are summarized in Table 1. The majority of the families consumed fish less than three times per week, whereas fish consumption on a daily basis was currently reported by only 10 % of the families (Table 1, Fig. 2). Nevertheless, the correlation between family fish intake and children’s HHg concentration was statistically significant (Spearman’s r = 0·2480, P < 0·0001). The cumulative frequency of HHg concentrations (reflecting fish consumption) in pre-school children is shown in Fig. 3; median HHg concentration was 3·95 μg/g. Despite the variation in fish consumption, the correlation between children’s HHg and the attained Z-scores was not statistically significant.

Table 1 General characteristics related to the frequency of fish consumption (including HHg concentrations) and anthoropometric data of children (n 249) enrolled in the study

HHg, total hair mercury concentrations; WHZ, weight-for-height Z-score; HAZ, height-for-age Z-score; WAZ, weight-for-age Z-score; TCV, thimerosal-containing vaccine.

*Thirty-eight of 249 mothers were still breast-feeding and only thirteen never breast-fed.

Fig. 2 Spearman’s correlation of family fish consumption and attendant total hair mercury (HHg) concentrations in pre-school children

Fig. 3 Cumulative frequency distribution of total hair mercury (HHg) exposure in pre-school children; this is a proxy of frequency of fish consumption

The nutritional status of these pre-school children is shown in Fig. 4 as the cumulative distribution of Z-scores. Overall, the prevalence of severe malnutrition, i.e. stunting (HAZ ≤ −3), underweight (WAZ ≤ −3) and wasting (WHZ ≤ −3) was 5·2 % (n 13), 0 % and 0·8 % (n 2), respectively. The prevalence of moderate stunting (HAZ ≥ −3 to ≤ −2), underweight (WAZ ≥ −3 to ≤ −2) and wasting (WHZ ≥ −3 to ≤ −2) was 8·8 % (n 22), 2·4 % (n 6) and 4·8 % (n 12), respectively.

Fig. 4 Cumulative frequency distribution of attained anthropometric measurements (Z-scores) of children under 5 years of age (▵, weight-for-height; ▾, height-for-age; ○, weight-for-age)

Regarding effects of MeHg exposure (in consumed fish) and neurobehavioral effects, 32·1 % of the pre-school children had HHg concentrations above 5 ppm (Fig. 3), but only 3·8 % showed an indication of compromised GDS below 70 % (Fig. 5). Indeed, in the bivariate model, there was also no statistically significant correlation between HHg concentrations and GDS scores. However, the stepwise regression model, which included constitutional (age, birth weight, birth length, anthropometric measures) and environmental (HHg, total Hg in thimerosal-containing vaccine (TCV), frequency of fish consumed, breast-feeding, family size, income and maternal school-years) variables, showed that only specific domains could significantly interact with specified variables. In the multivariate model (Table 2), HHg was not a risk factor that could affect the general development (GD) score; only the language domain was shown to be significantly influenced by HHg.

Fig. 5 Cumulative frequency distribution of Gesell general development scores (DQ, development quotient)

Table 2 Multivariate linear regression model (showing variables that met the 0·050 significance level) to estimate the effect of infant early exposure to mercury (that included ethylmercury in thimerosal vaccines) and maternal variables on the Gesell development scoresFootnote * of 249 pre-school children (0–5 years)

HHg, total hair mercury concentrations; WAZ, weight-for-age Z-score.

* Domains showing (or approaching) statistically significant interactions.

It seems that anthropometric attainment had no apparent impact on neurodevelopment (GD scores). Indeed, only the WAZ was significantly associated with the language domain, and birth length was associated with adaptive and personal Gesell scores. The distribution of GD scores is illustrated in Table 3 as a function of the main factors known to influence child neurodevelopment. Invariably, for all the considered factors (children’s growth standards and HHg, maternal age and school-years, family income and fish meals) not only were the mean values close but also great variation existed.

Table 3 Frequency distribution of neurodevelopment (Gesell schedules) of children and summary of corresponding markers of mercury exposure and relevant measured variables

HHg, total hair mercury concentrations; WHZ, weight-for-height Z-score; HC, head circumference.

In this cross-sectional sample of children, breast-feeding practices were high; median duration was 12 months. In all, 94 % of infants younger than 6 months were reported to be or had been breast-fed, whereas only 5 % of the children overall were reported to have never been breast-fed. Considering that this was a cross-sectional study, the mean breast-feeding duration may have been even higher. In the present circumstances, breast-feeding was not significantly associated with GDS.

Discussion

The environmental effects of reservoir flooding have dramatically changed the Amazon landscape, impacting its biota and affecting the lifestyle of the subsistence population. The present study is the first one addressing the changes in fish consumption (and attendant MeHg exposure) and their effects on children’s nutritional status and neurodevelopment. The study revealed that HHg concentrations in pre-school children were much lower than in the recent past as a result of diminished fish consumption. This proxy of fish consumption (biomarker of MeHg exposure) indicated that changing the centrality of fish in the diet was not the main determinant of children’s growth and neurodevelopment. Nevertheless, given the still relatively high consumption of fish and attendant essential nutrients (especially PUFA), this could be an attenuating factor in the exposure to MeHg.

Although the median HHg concentration in the studied families was relatively low compared to subsistence populations(Reference Oliveira, Dórea and Bernardi25), the pattern of fish consumption was still variable (Table 1). Compared to traditional subsistence families from the Rio Madeira Basin(Reference Oliveira, Dórea and Bernardi25), fish consumption is losing predominance in transitioning populations. Many families were eating less than one fish meal per week (Fig. 2). In this situation, it seemed that dietary protein requirements for children’s growth were met by sources other than fish. This is in agreement with previous studies in Amazonian Amer-Indians(Reference Dórea, Barbosa and Ferrari27) and urban pre-school children from Porto Velho(Reference Marques, Dórea and Bernardi28).

A relatively small percentage of children could be classified as malnourished (Fig. 4). We can speculate that, at least for older children, protein sources (other than fish) were adequately replaced. The nutritional value of fish to combat micronutrient deficiencies in developing countries is widely recognized(Reference Roos, Wahab and Chamnan36) and, indeed, fish plays a central role in sustaining health and nutritional status of native communities of the Rio Madeira Basin(Reference Monrroy, Lopez and Roulet4, Reference Benefice, Monrroy and Rodriguez37, Reference Barbieri, Cournil and Gardon38). Among people still living traditionally, Benefice et al.(Reference Gesell and Amatruda33) showed a significant relationship between HHg and nutritional indices in 5–10-year-old children, but not in the younger age group. The children reported by Benefice et al.(Reference Benefice, Monrroy and Rodriguez37) had HHg concentrations (3·9 ppm) comparable to the studied pre-school children. However, in the Brazilian Amazonian populations’ transitioning lifestyles, their less habitual fish consumption (diminishing HHg concentrations) did not determine the attained anthropometric scores. Anaemia and intestinal parasites are still a public health problem for Amazonian children(Reference Muniz, Castro and Araújo39); and although we did not take such variables into account, the percentages of children in the present study who were classified as malnourished are higher than reported recently for pre-school children in two Amazon towns in the neighbouring state of Acre(Reference Muniz, Castro and Araújo39).

Since fish is still an important item in the diet of Western Amazonians, it is possible to compare fish consumption in this fast-changing environment and the attendant lifestyle of populations. Compared to 5-year-old children (2·6 ppm) of urban families(Reference Marques, Dórea and Bernardi28), our children older than 36 months had a higher mean HHg concentration (4·7 ppm). However, this was much lower than the mean HHg observed in children of subsistence families still living traditionally. In the Puruzinho village (320 km from the present study site), the children had a mean HHg concentration of 18·4 ppm, which was clearly different from a median HHg concentration (0·3 ppm) in Brazilian children who did not consume fish(Reference Fonseca, Dórea and Bastos35). Our mean values, however, are within the value range for children from villages along the Rio Tapajós (Eastern Amazonia) reported by Pinheiro et al.(Reference Pinheiro, Crespo-López and Vieira40).

Early studies addressing high fish consumption in subsistence adult villagers of the Rio Madeira Basin showed elevated HHg concentrations as high as 90·6–303·1 ppm without apparent neurological syndromes(Reference Boischio and Barbosa41). Nevertheless, Passos and Mergler(Reference Passos and Mergler42) summarized neurobehavioral studies in Amazonian children showing that higher mean HHg levels (>10 ppm) tended to show a significant decrease in some tests (vision acuity, muscle performance, motor functions, neurobehavioural), whereas studies of children with lower mean HHg (<5 ppm) showed no significant effects on the tested neurobehavioral functions. Since then, some studies have compared Amazonian subsistence populations or high fish eaters against low fish eaters. Comparing Wayama children (French Guiana) with Brazilian children from the Rio Tapajós (both Amazonian fish-eating populations), Chevrier et al.(Reference Chevrier, Sullivan and White43) reported increased risks of making rotation or simplification errors in the drawings made by the Rio Tapajós children. The Brazilian children had twice the mean levels of HHg concentrations of those from French Guiana. Although fish MeHg could be a determinant of the small differences in neurobehavioural tests, there were other ecological and Hg exposure factors that differentiated French Guianese and Brazilian children.

Pre- and postnatal Hg exposure between the two Amazonian populations studied by Chevrier et al.(Reference Chevrier, Sullivan and White43) was associated with differences in schedule and type of vaccines used in French Guiana and Brazil(Reference Dórea44). In addition to having successful coverage of tetanus vaccine during pregnancy, the immunization schedule in Brazil starts at birth with hepatitis B, with a TCV (that degrades into ethylmercury) as a preservative. In French Guiana, these vaccines are available free of thimerosal. However, breast-fed children do overcome sensitivity to early Hg exposure (which also includes vaccine ethylmercury) as measured by neurobehavioural tests at 5 years of age;(Reference Marques, Dórea and Bernardi45) the effects of breast-feeding on improved performance of neurobehavioural tests have been established and partly attributed to high concentrations of PUFA(Reference Kramer, Aboud and Mironova46). Furthermore, comparing the high fish consumption of subsistence riverine children (Western Amazon) with those who rarely ate fish, a striking difference in HHg (fifty-eight times) was seen, but no significant differences in the results of neurocognitive tests(Reference Fonseca, Dórea and Bastos35). The nutritional substances in fish (most likely PUFA) may attenuate the neurotoxic effect of MeHg. Indeed, studies have shown that greater maternal fish consumption is associated with improved child neurodevelopment(Reference Oken47).

Both childhood malnutrition(Reference Belfort, Rifas-Shiman and Rich-Edwards48) and early (pre- and postnatal) exposure to neurotoxic MeHg(Reference Grandjean and Landrigan49) can be negatively associated with neurocognition tests later in life. It is also acknowledged that social factors are capable of affecting neurocognition. Studies have frequently found an association between mothers’ and children’s intellectual test scores(Reference Paine, Dórea and Pasquali50). Cheung and Ashorn(Reference Cheung and Ashorn51) reported that cognitive and academic achievements were sensitive to linear growth in Filipino children. Although none of the maternal variables had any significant effect on GD, the number of maternal school-years showed a significant association with motor development. It appears that other environmental and nutritional alternatives were determining nutritional status of children while not affecting their neurodevelopment.

The uniqueness of addressing two determinants of nutrition (high-quality protein of nutrient-dense fish) and neurotoxic exposure (MeHg) at the sensitive developmental age (1–59 months) also carried several limitations. As this was a transversal descriptive study, variability in neurological development related to age was one of them. Other limitations lay with the possibility of missing confounding factors, difficult to properly adjust in observational design. Family income is a very crude assessment to estimate various differences in health characteristics of the home and living conditions that might interfere with both growth and neurodevelopment. Nevertheless, regarding fish consumption, HHg concentrations have proven a more reliable biomarker because of their integrative power(Reference Oliveira, Dórea and Bernardi25). It is an important continuous variable to measure in association with growth and neurodevelopment.

The present research added information regarding changes in fish consumption in transitioning lifestyles of Amazonian populations where fish has long been central as a protein source. It showed that families’ shift from a fish-rich diet had no negative impact on the growth of young children and that the ensuing MeHg exposure was not a noticeable neurodevelopmental hindrance.

Acknowledgements

The present study was partly supported by the National Research Council of Brazil-CNPq (CT-HIDRO, project-555516/2006-7; CT-AMAZONIA, project-575573/2008-2. The authors declared that they have no competing financial interests. R.C.M. helped in design of the project, supervision of field trips, anthropometry training of young investigators, data organization and writing of the manuscript; J.G.D. contributed to the planning and supervision of the study, organization and analysis of the data and writing of the manuscript; C.M. contributed to the statistical analysis of data and discussion of results; K.G.B., R.C.M. and I.H.I.V. contributed to the anthropometric measurements and neurological assessment of children; R.S.L. performed mercury determination in hair samples; J.R.D.G. and O.M. performed laboratory supervision for hair analysis and Hg determination and discussion of results. The authors thank the mothers who gracefully participated in the study, the Secretaria de Saúde de Itapuã D’Oeste, and Elen Noujain, Rogério Monteiro, José Luiz Lazarini Jr and Verusca G Santos for their dedication.

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Figure 0

Fig. 1 Map of the studied area with designated communities (1, Vila dos Pescadores; 2, Linha Azul; 3, Triunfo; 4, Rei do Peixe; 5, Comunidade do Rio Preto do Crespo; 6, Garimpo Clandestino)

Figure 1

Table 1 General characteristics related to the frequency of fish consumption (including HHg concentrations) and anthoropometric data of children (n 249) enrolled in the study

Figure 2

Fig. 2 Spearman’s correlation of family fish consumption and attendant total hair mercury (HHg) concentrations in pre-school children

Figure 3

Fig. 3 Cumulative frequency distribution of total hair mercury (HHg) exposure in pre-school children; this is a proxy of frequency of fish consumption

Figure 4

Fig. 4 Cumulative frequency distribution of attained anthropometric measurements (Z-scores) of children under 5 years of age (▵, weight-for-height; ▾, height-for-age; ○, weight-for-age)

Figure 5

Fig. 5 Cumulative frequency distribution of Gesell general development scores (DQ, development quotient)

Figure 6

Table 2 Multivariate linear regression model (showing variables that met the 0·050 significance level) to estimate the effect of infant early exposure to mercury (that included ethylmercury in thimerosal vaccines) and maternal variables on the Gesell development scores* of 249 pre-school children (0–5 years)

Figure 7

Table 3 Frequency distribution of neurodevelopment (Gesell schedules) of children and summary of corresponding markers of mercury exposure and relevant measured variables