There is increasing evidence that exposure to nutritional factors, such as n-6 and n-3 PUFA, during the perinatal period may influence the development of the immune system and subsequent immune competence(Reference Calder, Krauss-Etschmann and de Jong1). The n-6 and n-3 PUFA are important structural components of cell membranes and particularly arachidonic acid (AA) is prominently present in immune cell membrane phospholipids (PL)(Reference Calder, Yaqoob and Harvey2, Reference Kew, Banerjee and Minihane3). AA may influence the developing immune system because it is the precursor of PGE2, which is thought to be an important mediator of immune responses(Reference Calder4, Reference Tilley, Coffman and Koller5). During pregnancy, the maternal essential fatty acid (EFA) status declines and because the EFA status of the neonate is strongly correlated with the EFA status of its mother(Reference Al, van Houwelingen and Kester6), the AA supply to the developing fetus and its immune system may not always be optimal.
Previous studies investigated the relationship between the maternal intake of long-chain n-3 PUFA during pregnancy and immune-related variables of their offspring(Reference Dunstan, Mori and Barden7, Reference Sausenthaler, Koletzko and Schaaf8). However, only a few studies considered the relationship between the prenatal long-chain n-6 PUFA status, especially AA, and immune-related variables, such as atopy later in life. Galli et al. observed that babies who developed atopic disease after 1 year of birth had 20–40 % lower levels of AA in their serum cord blood cells in comparison with non-atopic babies(Reference Galli, Picardo and Chini9). In contrast, Yu et al. found no significant differences in any of the fatty acid levels, measured in umbilical venous blood samples, of babies who did or did not develop allergic diseases during the first 6 years of life(Reference Yu, Kjellman and Bjorksten10). Furthermore, Newson et al. studied the relationship between levels of various n-3 and n-6 series fatty acids, including AA, in erythrocyte PL of women in late pregnancy and in erythrocyte PL of the umbilical cord of their children, and the prevalence of wheezing and eczema of the child from birth until 6 months and from age 30–42 months(Reference Newson, Shaheen and Henderson11). No significant associations were observed after adjustment for covariables. Thus, the relationship between prenatal AA concentrations and later immune-related variables remains relatively unexplored. Therefore, we investigated in a mother–child cohort the associations between the AA levels of maternal plasma PL, during early, middle and late pregnancy (as proxies for fetal AA exposure), and several immune-related clinical conditions and inflammation markers of the child at 7 years of age. In addition, we also investigated if these immune-related variables were associated with PL AA concentrations collected in cord plasma and vessel walls of the newborns, all assumed to reflect prenatal AA exposure.
Subject and methods
Study population and design
The Maastricht Essential Fatty Acid Birth (MEFAB) cohort resulted from observational studies performed during 1990–7, which investigated the associations between maternal or neonatal EFA status during pregnancy and pregnancy outcome in approximately 1200 pregnant women and most of their infants(Reference Al, van Houwelingen and Hornstra12, Reference Hornstra13). In 1997, the parents of the 750 singleton infants born between 1990 and 1994 were approached for an extensive follow-up and eventually 305 children participated in these studies between 1997 and 2000(Reference Rump, Popp-Snijders and Heine14, Reference Bakker, Ghys and Kester15). Results of this follow-up were also entered in the MEFAB database, which provided all data for the present study. Children with an unknown gestational age at birth or who were born before 37 weeks gestational age or after 43 weeks of pregnancy were excluded (n 25). Ultimately, the data of 280 children and their mothers were available for the present statistical analysis. Unadjusted and multivariable-adjusted regression models were applied to explore if maternal or neonatal AA concentrations, measured during pregnancy and/or directly after delivery, are related to childhood immune-related variables.
Blood and tissue sampling and fatty acid measurements
Maternal venous blood samples were collected in EDTA tubes around the 16th, 22nd and 32nd week of pregnancy, and immediately after delivery. Umbilical cord blood and a piece of the umbilical cord were obtained immediately after parturition. About 7 years later, after an overnight fast, venous blood from the children was collected by venepuncture in EDTA-treated evacuated tubes. Plasma was separated from blood cells by centrifugation. Plasma and umbilical tissue samples were stored under N2 at − 80°C until analysis. The fatty acid composition of PL isolated from plasma and cord vein and artery walls was determined by capillary GLC as described elsewhere(Reference Al, van Houwelingen and Kester6, Reference Al, van Houwelingen and Badart-Smook16). Fatty acids are expressed as relative values (% by weight of total identified PL-associated fatty acids).
Explanatory variables
Four explanatory neonatal variables were taken to reflect prenatal AA exposure, i.e. the relative AA concentrations of PL isolated from umbilical plasma and from the walls of the cord vein and artery, and the difference between these latter two concentrations, which we considered a proxy for fetal AA consumption(Reference Hornstra, van Houwelingen and Simonis17). The AA concentrations of maternal plasma PL at approximately 16, 22 and 32 weeks of gestation and at delivery were applied as four additional explanatory variables. These variables are taken to reflect the AA status of the fetus during gestation, since the maternal and neonatal EFA statuses are strongly correlated(Reference Al, van Houwelingen and Kester6).
Dependent variables
The following immune-related variables were modelled as dependent variables in the regression analyses: presence of atopic clinical conditions, peak expiratory flow (PEF) outcomes and plasma concentrations of a number of inflammation markers (all described later).
Atopy assessment
For the atopy assessment of the children, parents completed an atopy questionnaire, based on the Maastricht Atopy List(Reference Thijs, Houwelingen and Poorterman18) and the well-validated(Reference Hederos, Hasselgren and Hedlin19, Reference Jenkins, Clarke and Carlin20) International Study of Asthma and Allergies in Childhood (ISAAC) questionnaire(Reference Asher, Keil and Anderson21). This questionnaire included queries about typical atopy-related symptoms, categorised per atopic organ(Reference Johansson, Bieber and Dahl22), such as ‘Has your child ever had allergic complaints such as eczema, hay fever, and/or food allergy?’, ‘Has your child ever had asthma or asthmatic bronchitis?’ and ‘Has your child ever had wheezing or whistling in the chest?’. In addition, the following question about allergy tests was included: ‘Has your child ever undergone an allergy test like a skin-prick test, radioallergosorbent test (RAST), elimination test or otherwise? If yes, what was the test result?’. From these questionnaires, the presence of atopy was evaluated by a paediatric pulmonologist (J. J. E. H.) and scored ‘yes’ or ‘no’ when, respectively, more than one or none of the above-mentioned clinical conditions were conclusively manifest. Children whose diagnosis was inconclusive (scoring only one of the above-mentioned clinical conditions) were excluded from the analysis to prevent bias introduced by misclassification.
Peak flow measurements
Asthma is a chronic inflammatory disorder of the airways in which many different cell types play a role. In susceptible individuals this inflammation causes symptoms which are usually associated with widespread but variable airflow obstruction, that is often reversible either spontaneously or with treatment, and causes an associated increase in airway responsiveness to a variety of stimuli(23). PEF measurements are often used in everyday clinical and epidemiological environments for measuring the severity in airflow obstruction of asthma, to characterise the clinical trial population and to describe the response to treatment(Reference Reddel24). In addition, investigators of previous studies observed that in children with asthmatic symptoms atopy was associated with a greater within-day and between-day variation in PEF(Reference Clough, Williams and Holgate25, Reference Timonen, Nielsen and Schwartz26). To assess pulmonary function in the present study, PEF was measured using a Mini-Wright peak flow meter. Measurements were carried out at rest (at home) and before and after maximal physical exercise (at the laboratory), both after instructions of the research team. Under the supervision of the parents, PEF measurements at rest were performed for 2 weeks, five times per d during the morning (between 07.00 and 09.00 hours) and five times per d during the evening (between 19.00 and 21.00 hours). Each day, the highest PEF value in the morning and the highest value in the evening were recorded. To increase the reliability of the measurements, these values were only accepted if at least two other PEF values (of that series of five measurements) fell within a range of 10 % of that highest value. If this was not the case, this procedure was repeated with the next highest PEF value, etc, until two PEF values fell within the 10 % range of that next highest PEF value, otherwise a missing value was generated. The average highest PEF value at rest in the morning (PEF morning) was calculated for the 2-week measurement period. In addition, the PEF daily amplitude was calculated as the difference between the highest morning and highest evening PEF value and expressed as a percentage of the mean(Reference Higgins, Britton and Chinn27). The average daily PEF amplitude (PEF amplitude) was calculated over the 2-week measurement period. To measure PEF decline after exercise provocation (PEF exercise), PEF measurements were performed at the laboratory three times before, and three times at 2, 5, 10 and 15 min after reaching maximal exercise with the Bruce treadmill test(Reference Bruce, Kusumi and Hosmer28, Reference Rump, Verstappen and Gerver29), of which the highest PEF value was recorded each time. PEF decline after exercise provocation was calculated as: ((PEFhighest value before exercise − PEFlowest value after maximal exercise)/PEFhighest value before exercise) × 100 %(Reference Koh, Kang and Yoo30).
Plasma inflammation markers
The following factors are involved in different processes of the inflammatory response and were therefore chosen as dependent variables: fibrinogen (g/l)(Reference Kannel31), C-reactive protein (CRP; mg/l)(Reference Marnell, Mold and Du Clos32), leptin (μg/l)(Reference Otero, Lago and Gomez33) and von Willebrand factor concentrations(Reference Hernandez, Lundberg and Arocha-Pinango34). In addition, total leucocyte counts ( × 109/l blood) were measured, as well as the absolute and relative amounts of lymphocytes, granulocytes and monocytes (% of total leucocytes)(Reference Roitt, Brostoff and Male35).
Fibrinogen was assayed by the Clauss method(Reference Clauss36) and CRP was measured with an in-house ELISA using polyclonal antibodies as catching and tagging antibodies labelled with horseradish peroxidase (DAKO, Glostrup, Denmark). Plasma leptin concentrations were measured with a commercial human leptin RIA kit (Linco Research, St Charles, MO, USA) according to the manufacturer's instructions. The relative plasma content of von Willebrand factor was measured by the Cejka method(Reference Cejka37). The inter-assay and intra-assay CV were 3·3 and 3·6 % (fibrinogen), 6·5 and 3·2 % (CRP), 8·2 and 6·0 % (leptin) and 5·1 and 5·7 % (von Willebrand factor). Total leucocyte counts and relative granulocyte, lymphocyte and monocyte counts were determined on a Coulter Counter (Coulter® GEN.S; Beckmann Coulter Inc., Fullerton, CA, USA) following the manufacturer's instructions.
Covariables
The following variables were considered potential confounders: socio-economic status (SES)(Reference Forastiere, Agabiti and Corbo38), parity (none, one or ≥ two children) at study entry(Reference Al, van Houwelingen and Hornstra12, Reference Ball, Castro-Rodriguez and Griffith39), maternal smoking during pregnancy and anyone smoking at home during the 7-year follow-up period (both measured as total number of cigarettes/1000)(Reference Peat40), breast-feeding (number of months)(Reference Arruda, Sole and Baena-Cagnani41), maternal age at study entry (years)(Reference Infante-Rivard42), infant sex(Reference De Swert43), gestational age (weeks)(Reference Al, van Houwelingen and Kester6, Reference Al, van Houwelingen and Hornstra12), parent ethnicity (Caucasian or not)(Reference De Swert43), birth season (divided into quarters)(Reference Nilsson, Bjorksten and Hattevig44), season of follow-up measurements (divided into quarters)(Reference Behrendt and Becker45), day-care attendance (total number of days/100)(Reference Krämer, Heinrich and Wjst46), parental history of atopy (none, one of the parents, or both) assessed at follow-up(Reference Arruda, Sole and Baena-Cagnani41) and weight gain during the first year of life corrected for infant sex and age (sd scores)(Reference Singhal, Cole and Fewtrell47). The relative dihomo-γ-linolenic acid, EPA and DHA concentrations in umbilical cord plasma and vein and artery wall PL, and in maternal plasma PL, as well as the relative AA concentration of plasma PL of the children at follow-up were also selected as potential covariables(Reference Kelley48). Exact information on SES was not available. Therefore, parental SES was measured by proxy, using ‘income’ as an SES indicator, based on the parental postal code at the time of delivery (Geomarktprofiel; Wegener DM, The Netherlands). This information was classified in five groups ranging from 1 (twice or more modal income) to 5 (minimum income); SES values in the categories unknown (0) and diverse (6) were omitted and, thus, reported as missing values. Children who never received breast milk were classified as formula-fed and the remaining children as breast-fed. The following covariables were considered confounders in the models with PEF-related outcomes only: endurance time (time required until maximal exercise was reached, abstracted from the Bruce treadmill test)(Reference Bruce, Kusumi and Hosmer28), site of first PEF measurement (at the laboratory with extensive instructions by the research team or at home, with written instructions only) and children's height and weight at follow-up (age 7 years)(Reference Morris49).
Data evaluation and statistical analysis
All data are presented as medians and interquartile ranges, unless otherwise mentioned. Unadjusted and multivariable-adjusted linear and logistic regressions were performed to test the associations between maternal and neonatal AA concentrations and the immune-related variables. Before this, data distributions of the dependent variables were checked by means of the Shapiro–Wilk test; in case of skewness transformation was applied (natural log, square root, square or 1/square) to optimise the data distribution towards normal. When transformation improved but did not normalise the distribution, linear regression analyses were still performed, but results were accepted only if the residuals were normally distributed. If this was not the case, the variables were dichotomised and logistic regression analyses were performed. In the regression analyses with maternal AA levels this appeared the case for absolute monocyte counts and leptin concentrations. Therefore, these variables were analysed as dichotomous variables ( ≥ median v. < median). The same was done for fibrinogen and leptin concentrations in relation to neonatal AA concentrations. The von Willebrand factor values were biphasically distributed with the point of overlap situated at 68 %. Therefore, this variable was analysed as a dichotomous variable also ( ≥ 68 v. < 68 %). Because the PEF exercise variable had a non-parametric distribution, this variable was also dichotomised. Children without an asthmatic condition usually have a smaller PEF decline ( < 15 %) after exercise(23), because they will develop less bronchoconstriction compared with their asthmatic counterparts. Therefore, this value was selected as the threshold for dichotomisation ( ≥ 15 v. < 15 %).
Values of normally distributed variables (either before or after transformation) were considered outliers and removed from the dataset if they were more than four standard deviations away from the mean. Values of not normally distributed variables, even after optimal transformation, were considered outliers and were removed from the dataset if their values were more than three interquartile ranges below or above the median.
Insufficient complete cases were available to allow inclusion of all the above-mentioned covariables in the analyses. Therefore, for each of the fifteen dependent variables and each covariable, bivariable regression analyses were performed which included one dependent variable, one explanatory variable and one covariable. These analyses were used to determine which of the covariables contributed to the relationships between dependent and explanatory variables, either as a significant predictor (P < 0·05) or as a confounder (if its removal caused the B-value to change at least 10 %, and 20 % or more of the standard error of this B-value)(Reference Maldonado and Greenland50). Only covariables that appeared predictors or confounders were included in the various multivariable-adjusted analyses. For practical reasons, bivariable analyses were only done for AA concentrations in maternal plasma PL at 32 weeks of gestation and for AA concentrations in cord artery wall PL. The selected covariables were subsequently included in all models with corresponding maternal or neonatal AA variables. For all unadjusted and multivariable-adjusted regression analyses the same complete dataset was used. Data points suspected of being overly influential were checked by calculation of their Cook's distances and removed if their values were >1. Such influential data points were observed in four multivariable-adjusted regression models, but exclusion of these data points did not alter the final results.
Atopy and the three pulmonary function variables were regarded as the dependent variables of primary interest. Relationship studies with these variables were, therefore, considered the primary analyses. All other relationships were regarded of secondary interest. The significance level for the primary analyses was set at a threshold of P < 0·05, with P < 0·10 indicating a non-significant trend. Secondary relationships were considered significant at P < 0·01, to correct for multiple comparisons, and P < 0·05 indicated a non-significant trend.
SPSS 11.5 for Windows (SPSS, Inc., Chicago, IL, USA) was used for all statistical analyses.
Results
An overview of the relative concentrations of the maternal and neonatal fatty acids of interest is given in Table 1. The immune-related parameters of the children measured at 7 years of age are presented in Table 2. The maternal and neonatal characteristics screened as covariables are shown in Tables 3 and 4. In Tables 5 and 6, results of the regression analyses are only shown for combinations of dependent and explanatory variables with significant or trend contributions of AA to either the unadjusted or multivariable-adjusted models. Full results are available on request.
nd, Not detectable.
* n 273 for EPA.
N/A, not applicable; PEF, peak expiratory flow; PEF morning, average PEF in the morning; PEF amplitude, average PEF daily amplitude; PEF exercise, PEF decline after exercise provocation; CRP, C-reactive protein; vWF, von Willebrand factor.
* For all variables non-transformed values are given.
* Time required to reach maximal exercise, calculated from the Bruce test results(Reference Bruce, Kusumi and Hosmer28) and considered a measure of physical fitness.
SES, socio-economic status; PEF, peak expiratory flow.
* 1 = January–March, 2 = April–June, 3 = July–September, 4 = October–December.
R 2, coefficient of determination for linear regression, Nagelkerke R square for logistic regression; B, unstandardised regression coefficient; β, the standardised regression coefficient of B for linear regression (LIN), which is the number of outcome standard deviations that the outcome will change as a result of one predictor standard deviation change in the predictor; OR, OR for logistic regression (LOG); P, P value of AA contribution; 95 % CI, CI of B for linear regression and of OR for logistic regression, both set at 95 %; r 2, square of the semi-partial correlation coefficient of AA; PEF, peak expiratory flow.
* Significant relationship (P < 0·05 for primary analyses; P < 0·01 for explorative analyses). A non-significant trend was indicated as 0·05 ≤ P < 0·10 for primary analyses and as 0·01 ≤ P < 0·05 for secondary analyses.
† The total model P values of the (final) multivariable-adjusted analyses were between 0·000 and 0·178.
‡ Natural log transformation.
§ Covariables: site of first PEF measurement and maternal plasma PL DHA concentrations.
∥ Covariables: DHA concentrations in maternal plasma PL and AA concentration in children's plasma PL at follow-up.
†† Covariable: AA concentration in children's plasma PL at follow-up.
‡‡ Covariable: infant sex.
§§ Covariables: infant sex, DHA concentrations in maternal plasma PL and parents' socio-economic status.
¶ Square transformation.
R 2, coefficient of determination for linear regression, Nagelkerke R square for logistic regression; B, unstandardised regression coefficient; β, the standardised regression coefficient of B for linear regression (LIN), which is the number of outcome standard deviations that the outcome will change as a result of one predictor standard deviation change in the predictor; OR, OR for logistic regression (LOG); P, P value of AA contribution; 95 % CI, CI of B for linear regression and of OR for logistic regression, both set at 95 %; r 2, square of the semi-partial correlation coefficient of AA; PEF, peak expiratory flow; CRP, C-reactive protein; DGLA, dihomo-γ-linolenic acid.
* Significant relationship (P < 0·05 for primary analyses). A non-significant trend was indicated as 0·05 ≤ P < 0·10 for primary analyses and as 0·01 ≤ P < 0·05 for secondary analyses.
† The total model P values of the (final) multivariable-adjusted analyses were between 0·006 and 0·093.
‡ Natural log transformation.
§ Covariables: site of first PEF measurement, maternal age, DGLA and DHA concentrations in neonatal plasma PL, endurance time, parity and infant sex.
∥ Covariables: umbilical vein–artery differences of DGLA and DHA concentrations, first year weight gain, height at follow-up.
¶ Square root transformation.
†† Covariables: DGLA and DHA concentrations in neonatal plasma PL.
‡‡ Covariables: parity, maternal smoking during pregnancy, anyone smoking at home during follow-up period, first year weight gain, DGLA and DHA concentrations in umbilical artery wall PL and AA concentration in plasma PL of children at follow-up.
§§ Covariables: birth season, DGLA and DHA concentrations in umbilical vein wall PL and infant sex.
Associations between maternal arachidonic acid status and childhood immune-related clinical parameters
A negative trend was observed for the unadjusted association between the natural log-transformed PEF amplitude and maternal AA levels at the 22nd week of pregnancy (R 2 0·016; P = 0·069), but this trend was no longer present in the multivariable-adjusted analysis (Table 5). A significant positive association and a positive trend were observed for the unadjusted relationships between PEF exercise values and the AA levels in maternal plasma at 16 weeks of pregnancy (P = 0·033) and directly after delivery (P = 0·097), respectively. In these unadjusted models, differences in AA concentrations explained 4·5 and 2·8 % of the variance in PEF exercise, respectively. After adjustment of both models for relevant covariables, only a positive trend remained for the first relationship (P = 0·059), in which AA explained 3·5 % of the variation in PEF exercise.
For all other combinations of maternal AA concentrations and immune-related clinical parameters no significant associations or trends were found.
Associations between the maternal arachidonic acid status and childhood immune-related plasma variables
The only significant relationship observed in the unadjusted analyses was a positive association between the AA levels at week 32 of pregnancy and fibrinogen concentrations in children's plasma at follow-up (linear regression analysis after quadratic transformation of fibrinogen concentrations; P = 0·006) (Table 5). After adjustment for the child's AA concentration at follow-up, the association lost significance (P = 0·014, which is higher than 0·01 that was set for the secondary analyses) and differences in maternal AA concentrations explained 2·9 % of the variance in fibrinogen levels. Negative trends were observed for the unadjusted associations of the relative and absolute monocyte counts with AA concentrations at the 16th week of pregnancy. The models explained 2·1 and 4·5 % of the variance in relative (P = 0·030) and absolute (P = 0·034) monocyte counts, respectively. These trends persisted after adjustment for the appropriate covariables, which resulted in models in which the AA concentrations explained 1·8 % (relative monocyte values; P = 0·039) and 4·4 % (absolute monocyte counts; P = 0·030) of the monocyte variance. All other regression analyses revealed no significant associations or trends.
Associations between neonatal arachidonic acid status and childhood immune-related clinical parameters
Unadjusted regression analysis showed a significant negative association between natural log-transformed PEF amplitude values and AA concentrations in neonatal plasma PL (R 2 0·026; P = 0·020) (Table 6). However, after adjustment for relevant covariables, this association was reduced and no longer significant. A positive trend was observed for the unadjusted relationship between PEF exercise and the difference in AA concentrations between the walls of cord arteries and cord vein (P = 0·087), which explained 4·6 % of the variance in PEF exercise. This positive trend disappeared, however, after adjustment for the appropriate covariables. No significant associations or trends were observed for the other combinations of neonatal AA concentrations and clinical immune-related variables.
Associations between neonatal arachidonic acid status and childhood immune-related plasma variables
In unadjusted regression analyses, only a positive trend was observed for the relationship between absolute lymphocyte counts (square root-transformed) of the children at follow up, and their plasma PL AA concentrations at birth (R 2 0·018; P = 0·038), but this trend did not survive after adjustment for dihomo-γ-linolenic acid and DHA concentrations in neonatal plasma PL (Table 6). In multivariable-adjusted analyses, a negative trend was found for the relationship between the natural log-transformed plasma CRP levels of the children at follow-up and the AA concentrations measured in the PL of their cord artery walls (P = 0·019). In this model, AA explained 3·7 % of the CRP variance. A positive trend (P = 0·049) was observed for the multivariable-adjusted relationship between children's natural log-transformed absolute leucocyte counts at age 7 years and the AA levels of their cord vein wall PL. In this relationship, AA explained 2·3 % of the variance in leucocyte count. No other important associations or trends were noted (Table 6).
Discussion
In the unadjusted primary analyses of this prospective mother–child cohort, negative associations were observed between the average PEF daily amplitude (PEF amplitude) of 7-year-old children and the AA concentrations in plasma PL of their mothers at 22 weeks of gestation (reflecting fetal exposure to AA) and in umbilical plasma PL (reflecting prenatal AA exposure). On the other hand, positive associations were observed between the PEF decline after maximal exercise (PEF exercise) and maternal AA concentrations at 16 weeks of pregnancy and directly after delivery, respectively. These positive associations are in concordance with the positive non-significant trend between PEF exercise and neonatal vein–artery AA differences, which we consider a proxy of fetal AA consumption. For these associations and trends, variations in AA levels explained no more than 0·8 to 3·5 % of the variability of these immune-associated variables, strongly suggesting that the prenatal AA status of an individual hardly contributes to these immune-related aspects at 7 years of age. This is also supported by the finding that the associations are not only functionally inconsistent but contrasting as well. Since values for PEF amplitude and/or PEF exercise are usually increased in subjects with an asthmatic condition(23), the negative associations we observed with AA exposure imply a beneficial effect of AA on lung function, if relationships are causal. In contrast, the positive relationships between AA exposure and PEF exercise indicate a potentially adverse effect of AA. Finally, in the multivariable-adjusted analyses most significant results and trends disappeared.
Concerning the secondary analyses with the immune-related plasma markers, one significant positive association was shown between maternal AA concentrations at 32 weeks of pregnancy and plasma fibrinogen concentrations of the children at 7 years of age. For some other associations only trends were revealed but, like the primary analyses, no more than about 4 % of the functional variability was explained by differences in AA concentration. Moreover, observed associations and trends were functionally inconsistent again and therefore a major influence of early AA exposure on these immune-related plasma markers at age 7 years seems unlikely.
Relationships between early-life exposure to n-3 and n-6 fatty acids and immune-related clinical conditions measured during childhood have been previously studied(Reference Peat, Mihrshahi and Kemp51–Reference Almqvist, Garden and Xuan54). However, as far as we know, only a few studies investigated the associations between prenatal n-6 fatty acid exposure and various indicators of immune function in childhood. Newson et al. did not report any significant association between relative AA concentrations in erythrocyte PL of umbilical cord blood and maternal blood collected in a period between 20 weeks of pregnancy and delivery and the prevalence of wheezing or eczema up to 42 months of age after adjustment for confounders(Reference Newson, Shaheen and Henderson11). Furthermore, Yu et al. also observed no difference in the relative AA levels of umbilical cord blood PL of children who did or did not develop allergic disease during the first 6 years of life(Reference Yu, Kjellman and Bjorksten10). Both findings are in line with our observation that plasma AA concentrations before and around birth are not strongly associated with atopic disease in later childhood. Since these previously mentioned studies used shorter periods between fatty acid exposure measurements and assessment of immune-related variables, it can probably be excluded that the interval period of 7 years in the present study was too long to explain the non-significant results.
Galli et al. selected fifty-seven neonates at high risk for developing atopy and reported that all thirteen newborns who developed atopic disease during the first 12 months of follow-up had significantly (20–40 %) lower AA levels in their cord blood PL at birth as compared with their non-atopic counterparts(Reference Galli, Picardo and Chini9). However, no correction was made for potential confounders which may have biased their results. In addition, Sausenthaler et al. suggested that intake of n-6 fatty acid-rich foods, such as margarines and vegetable oils, during the last 4 weeks of pregnancy was associated with an increased risk of allergic diseases in children at the age of 2 years(Reference Sausenthaler, Koletzko and Schaaf8). Although these foods contain a high content of linoleic acid, the increased risk could also be related to one of the many other components of these products. Furthermore, it is known from a previous study that a higher maternal intake of linoleic acid does not relate to higher AA concentrations in maternal and umbilical plasma PL(Reference Rump and Hornstra55).
A strong aspect of the present study is that maternal and neonatal fatty acid concentrations were obtained repeatedly during pregnancy and at parturition, respectively. Since maternal and neonatal long-chain PUFA concentrations are strongly correlated(Reference Al, van Houwelingen and Hornstra12), this enabled us to investigate the associations between the child's immune-related variables at age 7 years and the AA exposure from the second trimester of pregnancy on.
Although we tested all relevant variables included in the database for their confounding or predicting potentials, residual confounding cannot be excluded, which is a general shortcoming of observational studies. Due to the absence of relevant data, we were unable to correct our analyses for differences in the postnatal AA consumption of the children, which may have contributed to the inter-individual differences in immune outcome variables at age 7 years. However, we did correct for the plasma PL AA concentration at age 7 years, which can be considered a proxy for the postnatal AA intake, since there is a positive relationship between dietary AA intake and plasma PL AA concentration(Reference Nelson, Schmidt and Bartolini56, Reference Thies, Nebe-von-Caron and Powell57).
The use of a parent questionnaire to assess the atopic state of the children is clearly inferior to a full clinical evaluation. However, in large-scale observational studies, questionnaires are often the only practical option to gather clinical information. It should be added that the questionnaire that we used was based on the ISAAC questionnaire(Reference Asher, Keil and Anderson21), which has been properly validated(Reference Hederos, Hasselgren and Hedlin19, Reference Jenkins, Clarke and Carlin20), showing sensitivity and specificity of at least 77 and 81 %, respectively. Furthermore, as mentioned before, all questionnaires were ‘scored’ by an experienced clinician (J. J. E. H.). Therefore, although not optimal, we consider our atopy-assessment method adequate for the present observational study. Finally, we cannot exclude response bias in this cohort study, since informed consent for the 7-year follow-up was obtained for only 300 out of the 750 eligible mother–child pairs.
In the present study, no clear associations were observed between atopy at age 7 years and prenatal AA exposure as reflected by maternal AA concentrations during pregnancy and at delivery and neonatal AA values at birth. In theory, this may result from too-narrow ranges in AA concentrations and/or a too-low atopy incidence in our study population in relation to our sample size. However, the AA concentrations measured in our study population compare very well with maternal(Reference van Eijsden, Hornstra and van der Wal58, Reference Grandjean and Weihe59) and neonatal(Reference Grandjean and Weihe59, Reference Dijck-Brouwer, Hadders-Algra and Bouwstra60) values observed in other studies, whereas the atopy incidence in our population is relatively high as compared with the atopy prevalence reported in a worldwide study(61). Since the OR for the atopy risk as a function of the AA concentrations in the various domains are all close to 1 (0·79–1·11 for the eight domains studied) and their 95 % CI are rather tight around 1 (the widest interval being 0·66, 1·33), we consider the power of the present study sufficient for a reliable conclusion. Comparable conclusions can be drawn for most other immune-associated variables. This supports the absence of relevant associations between the perinatal AA availability and selected aspects of the immune status at the age of 7 years.
In the present study, the same cases were used in the unadjusted as well as the multivariable-adjusted regression models, enabling us to check whether confounding was present and in which direction confounding influenced the model. In general, results were comparable when unadjusted regression analyses were performed with the maximum number of cases available (data not shown).
Finally, in the present study outliers were removed before statistical analyses were applied. Usually an outlier should only be omitted from the statistical analyses if there is a biological explanation as to why this value is inappropriate. Repeating the statistical analyses with the outliers included did not fundamentally alter the results: non-significant results did not become significant and vice versa. So, the final results and the conclusions of the present study did not change when the outliers were added in the analyses.
In conclusion, we investigated whether normally occurring differences in prenatal AA availability could be of importance for the later presence of atopy, lung function and plasma inflammation markers. From the results obtained, such an influence seems rather unlikely since physiological differences in prenatal exposure to AA show few, weak and inconsistent associations with differences in several immune-related clinical conditions and plasma markers at 7 years of age. Genetic predisposition and in utero exposure to other factors are possibly more important determinants of these variables than prenatal AA concentrations. However, because of the limitations of the present observational study (mentioned above), the involvement of early AA status in the development of the immunological system cannot be excluded.
Acknowledgements
The present study was financially supported by DSM Food Specialties (Delft, the Netherlands).
G. H. proposed and supervised the project. P. R. collected most of the data used in the paper. C. E. H. D., G. H and J. G. F. H. designed the statistical plan. J. G. F. H. calculated the PEF values and J. J. E. H. provided the atopy assessment. C. E. H. D. performed the statistical analyses. All authors contributed to the writing of the manuscript.
Moreover, the authors wish to thank Dr C. Thijs for helpful discussions and Dr A. Kester for his statistical advice. We also thank Dr W. J. M. Gerver for his expert advice concerning infant growth and Professor P. C. Calder for valuable comments on the manuscript.
M. B. is employed at DSM Food Specialties and G. H. provided scientific advice to DSM Food Specialties. None of the other authors had any personal or financial conflicts of interest.