Background
Fungi provide valuable contributions to the diet (mushrooms, cheeses), to medications (penicillins, statins), to food preservation (for example, citric acid production) and to fermentation, and even support complex chemical synthesis of novel compounds; however, some species frequently contaminate cereal crops, and under certain environmental conditions can produce potent toxins (mycotoxins) that can contaminate many dietary staples(1, Reference Miller2). These mycotoxins contaminate up to 25 % of the world's cereal crops(1). Whilst there are many hundreds of mycotoxins identified, only a few have received significant research activity. Those of major concern to human health include those toxins produced from Aspergillus and Penicillium, the aflatoxins and ochratoxins; and those produced from Fusarium, the fumonisins, trichothecenes (for example, deoxynivalenol (DON), nivalenol, T2-toxin) and zearalenone. Based on their current worldwide frequency of contamination, their established toxicity and our ability to understand exposure based on the use of existing and newly developed biomonitoring tools (also known as exposure biomarkers), the present review will focus on aflatoxins, fumonisins and DON. It is probable that the global distribution of mycotoxin contamination will change alongside anticipated climatic adjustments over the next century(Reference Miraglia, Marvin and Kleter3), and that this change in distribution of mycotoxins may ultimately change the focus of this research area. The present review will highlight the known human health effects, the suspected health effects and the hypothesised mechanisms of toxicity, with a particular focus on children and growth, and their possible carcinogenic effects. The complex immune toxicologies of the mycotoxins are not reviewed. Epidemiologists focused on understanding disparate disease aetiologies should remember that exposure to mycotoxins is almost unavoidable in cereal-consuming populations and, as a result, they have the capacity to negatively affect human health and modify human disease susceptibility.
Mycotoxins are typically resistant to processing and are stable in many cooking processes; thus complete avoidance without major dietary restriction is not feasible(1, Reference Miller2). The specific type of mycotoxin produced is dependent in part on climatic conditions; aflatoxins and fumonisins are more prevalent in tropical and semi-tropical conditions whilst DON occurs in temperate climates(1, Reference Miller2). The frequency and the amount of mycotoxin exposure are influenced by wealth(1–Reference Wild and Turner6). In developed countries, wealth affords access to greater food choices and the freedom to avoid contaminated foods at the individual level and prevent it from entering commerce at the regulatory level. The poorest regions of the world have neither the infrastructure nor the luxury to allow for such decisions. Additionally, the wealthier countries can restrict imports of contaminated crops, resulting in an additional burden on developing countries(Reference Miraglia, Marvin and Kleter3, Reference Williams, Phillips and Jolly5, Reference Wild and Turner6). Despite the differences in contamination levels, exposure to mycotoxins is apparent on all continents, but the impact on health in most instances remains poorly examined in all regions and requires significant research effort.
Whilst the consequences of individual mycotoxins are more typically examined, in reality typical exposures will include mixtures of mycotoxins, on a background of a wide range of other susceptibility factors that affect human health including additional chemical and biological agents, genetic susceptibility, varied nutrition and immune status. Thus, there is an increasing recognition of the need to examine multiple exposures to understand the health effects from mycotoxin exposures.
Aspergillus and Fusarium mycotoxins
Of the about 200 species of Aspergillus, 10 % of these are harmful to man through a variety of mechanisms(1, Reference Miller2). Aspergillus flavus and A. parasiticus produce a potent family of liver toxins, known as aflatoxins, whilst A. ochraceus produces the nephrotoxic ochratoxin A.
Aflatoxins predominately occur in hot and humid regions of the world where an estimated 4·5 billion individuals are at risk of exposure(Reference Williams, Phillips and Jolly5). Aflatoxins contaminate dietary staples including maize and groundnuts; thus, populations highly reliant on these staples, and with limited agricultural capacity and storage facilities, are most frequently exposed though diet(Reference Williams, Phillips and Jolly5, Reference Wild and Turner6). Biomarker-derived exposure data (see below) reveal that some of the world's poorest populations experience chronic exposure to aflatoxins throughout life, often at high levels.
Fusarium verticillioides (Sacc.) Nirenberg (formerly known as F. moniliforme Sheldon) and F. proliferatum (Matsushima) Nirenberg are important fungi that contaminate maize and produce fumonisins(1, Reference Miller2, Reference Marasas7). Fumonisins predominantly contaminate maize in hot and humid climates, and co-contamination of maize with aflatoxins and fumonisins are reported(Reference Sun, Wang and Hu8–Reference Wang, Liang and Nguyen18). Chronic high levels of exposure are predicted in parts of South Africa, Central America and Asia. Fusarium graminearum (Gibberella zeae) and F. culmorum infection of wheat and maize in more temperate regions (Europe, North and South America and parts of Asia) causes significant economic loss in the form of head blight and contamination by DON and other related trichothecene mycotoxins(1, Reference Miller2, Reference Rotter, Prelusky and Pestka19). A survey of >45 000 food items from countries within the European Union revealed that 57 % of cereals tested were contaminated with DON, demonstrating the frequent contamination of this mycotoxin(Reference Brera and Miraglia20).
Biomarkers of exposure
The presence of an accurately quantified amount of a toxin, and/or its metabolite(s), alone, is insufficient for a bio-measure to be classified as a biomarker. In the present review, an exposure biomarker is a biological measure which is correlated with the quantity of the xenobiotic ingested, resulting in improved exposure classification over approaches that are more traditional. The development and validation of aflatoxin exposure biomarkers occurred over 20 years ago(Reference Wild and Turner6, Reference Wild, Turner, Millar, Bartsch, Boffetta, Dragsted and Vainio21, Reference Kensler, Roebuck and Wogan22); they have been extensively reviewed elsewhere(Reference Wild and Turner6, Reference Wild, Turner, Millar, Bartsch, Boffetta, Dragsted and Vainio21–23) and so will not be discussed here in detail. The development of biomarkers for fumonisins and DON is more novel and the present review will highlight this.
Aflatoxins
The aflatoxins are a family of highly substituted coumarins containing a fused dihydrofurofuran moiety(23). Aflatoxins B1, B2, G1 and G2 all occur naturally, whilst aflatoxin B1 occurs most frequently and is the most toxic and carcinogenic (Fig. 1). In many developing countries, maize and groundnuts (peanuts) are the predominant contaminated food items, often at high levels. Aflatoxin metabolism (Fig. 2) gives rise to a variety of metabolites(23, Reference Eaton, Ramsdell, Neal, Eaton and Groopman24) including aflatoxin M1, a frequent metabolite in milk of exposed lactating animals, including human breast milk following maternal exposure to dietary aflatoxin B1(23–Reference Zarba, Wild and Hall25). The parent toxins, aflatoxins B1, G1, etc., also occur in breast milk(23, Reference Polychronaki, West and Turner26, Reference Polychronaki, Turner and Mykkänen27). The consequences of breast milk exposures to aflatoxins in the developing infant remain poorly examined.
Aflatoxin B1 is metabolised by a number cytochrome P450s(Reference Guengerich, Ueng and Kim28, Reference Gallagher, Kunze and Stapleton29) and generates two reactive epoxide species, an exo-8,9-epoxide and endo-8,9-epoxide, in addition to several hydroxy metabolites, for example, aflatoxins M1, Q1 and P1(Reference Wild and Turner6, Reference Kensler, Roebuck and Wogan22, 23) (Fig. 2). The two epoxides are highly reactive and can cause cellular and macromolecule damage by covalently binding to proteins and nucleic acids(Reference Wild and Turner6, Reference Kensler, Roebuck and Wogan22, 23, Reference Raney, Harris and Stone30). The exo-epoxide is toxic and mutagenic; the specific role of the endo-epoxide is less well examined, but it is predicted to cause a similar level of toxicity as the exo-epoxide. The exo-epoxide additionally forms a stable covalent adduct with the N7 moiety of guanine(Reference Wild and Turner6, Reference Kensler, Roebuck and Wogan22, 23, Reference Raney, Harris and Stone30). Depurination at this site releases 8,9-dihydro-8-(N7guanyl)-9-hydroxy aflatoxin B1 (AFB1–N7-Gua), which is observed, in addition to aflatoxin M1, in the urine of aflatoxin-dosed animals and individuals exposed to aflatoxin through diet(Reference Polychronaki, Wild and Mykkänen31–Reference Zhu, Zhang and Hu36). The urinary concentration of AFB1–N7-Gua in two separate studies (r 0·80, P < 0·0001; and r 0·82, P < 0·0001) and urinary aflatoxin M1 (r 0·82; P < 0·0001) strongly correlated with aflatoxin intake in chronically exposed individuals, and both serve as validated exposure biomarkers(Reference Groopman, Wild and Hasler33–Reference Zhu, Zhang and Hu36).
Hydrolysis of both epoxides to aflatoxin B1-8,9-dihydrodiol leads to a slow base-catalysed ring opening resulting in a resonating dialdehyde phenolate ion, capable of forming adducts with protein amino groups, particularly lysine(Reference Sabbioni, Skipper and Büchi37, Reference Sabbioni, Ambs and Wogan38) (Fig. 2). One such protein adduct known as aflatoxin–albumin is present in the sera of aflatoxin-dosed animals and individuals naturally exposed to aflatoxin through diet(Reference Sabbioni, Skipper and Büchi37–Reference Scussel, Haas, Gong, Njapau, Trujillo, van Egmond and Park61). The concentration of aflatoxin–albumin in sera was strongly correlated (r 0·69; P < 0·0001) with aflatoxin intake and provides an additional validated exposure biomarker(Reference Gan, Skipper and Peng39, Reference Wild, Hudson and Sabbioni43). The reliability of multiple measuring techniques (including immunoassay, HPLC and LC-MS) on a single set of samples by selected laboratories, and the long-term stability in cryopreserved samples provide additional confidence in its use as a valuable biomarker of exposure(Reference Scholl and Groopman62–Reference Scholl, Turner and Sutcliffe64). In high-risk regions of the world, greater than 95 % of those individuals tested are positive for aflatoxin–albumin over a 3 log range, from approximately 3–5 pg/mg albumin to >1000 pg/mg(Reference Sabbioni, Skipper and Büchi37–Reference Kensler, He and Otieno59), whilst more developed regions rarely have detectable levels of the biomarker(Reference Wild, Jiang and Allen44, Reference Johnson, Qian and Xu65). Given that aflatoxins are genotoxic carcinogens, there is no safe threshold for exposure(Reference Williams, Phillips and Jolly5, Reference Wild and Turner6, Reference Wild, Turner, Millar, Bartsch, Boffetta, Dragsted and Vainio21–23). Whilst unmetabolised aflatoxin B1 occurs in the urine of exposed individuals, there is no significant correlation with intake(Reference Groopman, Wild and Hasler33), perhaps in part due to extensive metabolism of the parent toxin to various metabolites. Thus, urinary aflatoxin B1 itself is not a useful indicator of the amount of aflatoxin exposure(Reference Wild and Turner6, Reference Kensler, Roebuck and Wogan22, Reference Groopman, Wild and Hasler33–Reference Zhu, Zhang and Hu36, Reference Gan, Skipper and Peng39).
Fumonisins
Fumonsins are secondary metabolites produced by F. verticillioides (Sacc.) Nirenberg and F. proliferatum (Matsushima) Nirenberg, primarily in maize grown in hot and humid climates(1, Reference Miller2, 23). Whilst numerous fumonisin analogues are described, the fumonisin B (FB) series predominates, and within this series the occurrence frequency is FB1>FB2>FB3; FB1 (Fig. 3) is reported to represent on average about 70 % of the fumonisins in naturally contaminated maize(Reference Shephard, Marasas and Burger66). Fumonisins do not appear to undergo significant metabolism(Reference Merrill, Wang and Vales67–Reference Dilkin, Direito and Simas73); thus biomarker development has not followed the metabolite profile approach used for aflatoxins.
Fumonisins mimic naturally occurring sphingoid bases, and inhibit sphingolipid metabolism via competing with ceramide synthase(Reference Merrill, Wang and Vales67, Reference Van der Westhuizen, Shephard and Van Schalkwyk74, Reference Riley, An and Showker75). Fumonisin modulation of sphingoid base (sphinganine and sphingosine) concentrations in dosed animals has been reviewed(Reference Van der Westhuizen, Shephard and Van Schalkwyk74–Reference Turner, Nikiema and Wild77), and this disruption is plausibly linked to their mechanism of toxicity(Reference Merrill, Wang and Vales67, Reference Shephard, Van der Westhuizen and Sewram76–Reference Merrill, Sullards and Wang78) including liver and kidney cancer, and neural tube defects (NTD). The capacity of fumonisins to alter levels of sphingoid bases, as observed in experimental animals, highlighted the possibility that their measurement in human bio-fluids may yield a useful exposure biomarker, though to date no such biomarker has been established. Due to the limited metabolism of fumonisin, measurement of the concentration of the parent compound in bio-fluids provides an alternative route for developing a biomarker. Animal studies indicate that the transfer of fumonisins to urine was about 0·4–2·0 % of that ingested(Reference Shephard, Thiel and Sydenham68–Reference Dilkin, Direito and Simas73), though typically these percentages refer to total transfer over several days, and often at doses higher than would be observed in human subjects.
There have been relatively few studies in human subjects reporting urinary FB1 measurements. In one study, a subset of Mexican (Morelos County) women were selected based on tortilla consumption (lowest (n 25), medium (n 25) and highest (n 25)) from a larger cohort (n 996), and their urine analysed for FB1(Reference Gong, Torres-Sanchez and Lopez-Carrillo79). Overall, fifty-six of seventy-five women (74·6 %) had detectable urinary FB1 (>20 pg/ml) (range of non-detectable to 9312 pg/ml). Urinary FB1 was detected more frequently in the high (96 %) compared with the medium (80 %) and the low (45 %) consumption groups, and the geometric means were associated (P < 0·001) with consumption of tortillas (geometric means and 95th percentiles were 147 (88, 248), 63 (37, 108) and 35 (19, 65) pg/ml, respectively). No food samples were collected from this survey; though based on the urinary measures, Gong et al. (Reference Gong, Torres-Sanchez and Lopez-Carrillo79) cautiously estimated FB1 intake in this region to range from non-detectable to 23 μg/kg body weight (BW) per d, using a number of assumptions, including estimated average transfer from animal models. The provisional maximum tolerable daily intake for FB1, FB2 and FB3 combined or individually is 2 μg/kg BW per d(80) and, consequently, fumonisin exposure is a significant health concern in this region.
Urinary FB1 was also measured in the urine from Chinese adults from Huaian County, Jiangsu Province (n 43) and Fusui County, Guangxi Zhuang Autonomous Region (n 34). The frequency of urinary FB1 detection was similar in both regions, with 84 and 83 % of samples positive for FB1, respectively, though the mean concentrations were significantly higher in Huaian county (13 630 pg/mg creatinine: range non-detectable to 256 000 pg/mg; median 3910 pg/mg) as compared with Fusui county (720 pg/mg: range non-detectable to 3720 pg/mg; median 390 pg/mg). Moreover, the average estimated FB intakes were about three- to four-fold higher in the Huaian region(Reference Xu, Cai and Tang81). These data would suggest that about 1–2 % of the ingested FB was transferred to urine. However, FFQ information and food measures of household items for FB1 were used to estimate typical FB1 intake. No significant correlation between urinary FB1 and estimated intake was found, an observation likely to reflect that the FFQ used measured typical intakes over weeks rather than recent intake (in d) at the time of urine collection. Regardless, in both regions, the mean predicted intake of fumonisin was similar to that in Mexico(Reference Gong, Torres-Sanchez and Lopez-Carrillo79) and South Africa(Reference van der Westhuizen, Shephard and Burger82), and the provisional maximum tolerable daily intake will frequently be exceeded.
A more targeted validation approach to assess the relationship between urinary FB1 and FB1 ingestion was attempted in South Africa(Reference van der Westhuizen, Shephard and Burger82). Here, urinary FB1 was measured on two consecutive days whilst FB1 intake was assessed using plate-ready food (a maize porridge) on the days immediately before urine collection. Here, the resulting urinary FB1 concentrations were roughly of the same order as those in both Mexico(Reference Gong, Torres-Sanchez and Lopez-Carrillo79) and Fusui County, China(Reference Xu, Cai and Tang81), but significantly lower than those reported in Huaian County, China(Reference Xu, Cai and Tang81). In the South African study the geometric mean daily estimated FB1 consumption over 2 d was 4·84 (95th percentiles 2·87, 8·14) μg/kg BW per d, and the geometric mean urinary FB1 concentration for subsequent mornings' first void was 225 (95 % CI 144, 350) pg/ml. Urinary FB1 data were also presented after adjustment for creatinine (geometric mean 470 (95 % CI 295, 750) pg/mg). After data were natural log-transformed, a statistically significant, albeit moderate correlation (r 2 0·31) was observed between estimated FB1 intake/kg BW per d and urinary FB1 adjusted for creatinine. Based on rough estimates (by authors of the present review) back-transformed data suggest that the highest estimated intake of FB1 was 90 μg/kg BW per d (forty-five times the recommended tolerable daily intake for FB1) and the highest urinary FB concentration was approximately 4900 pg/mg; these were not measures for the same individual. The reported correlation used natural log-transformed data, and whilst statistically appropriate, comparisons of the correlations or r 2 values in this survey and those used in part to validate other mycotoxin exposure markers are not straightforward. The authors of the South Africa study additionally conducted a successful hand-sorting and kernel-washing intervention on the maize to reduce FB contamination in it(Reference van der Westhuizen, Shephard and Burger82). Overall, a significant (P < 0·05) 62 % reduction in estimated FB1 intake was reported based on FB1 in plate-ready maize porridge before and following the intervention, whilst a borderline (P = 0·06) 41 % reduction in mean urinary FB1 (pg FB1/mg creatinine) was reported. Further, this paper presented an estimate of the transfer of FB1 to urine to be approximately 0·075 % of that ingested, a value comparable with, but slightly lower than that reported in animals(Reference Shephard, Thiel and Sydenham68–Reference Dilkin, Direito and Simas73) and similar to values in a limited human kinetics study conducted in the USA(Reference Riley83). Based on this quantitative data, urinary FB1 was regarded as an exposure biomarker for fumonisin(Reference van der Westhuizen, Shephard and Burger82).
Urinary FB1 concentrations were more moderate in a recent report from Sri Lanka, though biomarker validation was not discussed(Reference Desalegn, Nanayakkara and Harada84). Further confirmatory work in using urinary fumonisin as an exposure biomarker in humans is anticipated, including stability studies, with additional interest in measurements of modified sphingoid bases, rather than the unsuccessful alternative putative markers of fumonisin exposure (at least to date) that utilised sphinganine and sphingosine bio-measures(Reference Shephard, Van der Westhuizen and Sewram76, Reference Zitomer and Riley85).
Deoxynivalenol
DON is a type B trichothecene mycotoxin (Fig. 4) which is predominantly associated with crop contamination with Fusarium graminearum (Gibberella zeae) and F. culmorum fungi. Both of these fungi are important plant pathogens that cause Fusarium head blight in wheat and Gibberella ear rot in maize(1). Also known as vomitoxin, DON is a common contaminant of cereals such as wheat, maize and barley(Reference Rotter, Prelusky and Pestka19, Reference Pestka and Smolinski86). The potent gastrointestinal effects (and hence ‘vomitoxin’) in animals and suspected in humans have been reviewed in detail(Reference Rotter, Prelusky and Pestka19, Reference Pestka and Smolinski86) and not discussed further.
In resistant animal species, DON is readily detoxified by gut microbiota to a de-epoxy metabolite known as DOM-1 (de-epoxydeoxynivalerol)(Reference He, Young and Forsberg87–Reference Young, Zhou and Yu90), though this pathway was not apparent in a small survey of human faecal metabolism(Reference Eriksen and Pettersson91). DON can also be metabolised in the liver to a glucuronide(Reference Rotter, Prelusky and Pestka19, Reference Pestka and Smolinski86). Based on DON metabolism and toxicokinetics in the rat and a pilot survey in human subjects, the combined measure of unmetabolised DON or ‘free’ DON (fD) and DON-glucuronide (DG), subsequently referred to here as urinary fD+DG, was suggested as a putative urinary exposure biomarker by Meky et al. (Reference Meky, Turner and Ashcroft92). Improved DG enzymic digestion conditions to release fD, and the use of [13C15]DON as an internal standard have provided significant improvements in precision and accuracy in the urinary assay(Reference Turner, Burley and Rothwell93). The process of validating this putative exposure biomarker was subsequently undertaken using this modified assay.
In a survey of UK adults, urinary DON was measured in a subset of 300 individuals selected based on cereal consumption from the 2nd/3rd, the 5th/6th and the 9th deciles (100 individuals from each group) from a larger cohort of 1724 individuals. Urinary fD+DG was detected in 98·7 % of individuals (geometric mean 8·9 (95 % CI 8·2, 9·7; range non-detectable–48·2) ng/mg)(Reference Turner, Rothwell and White94). A modest, but significant, positive association was observed between the urinary measure and cereal consumption (P < 0·001; r 2 0·23). Of the cereal items consumed, bread predominated in both frequency and mean level of consumption. In order to improve our understanding of the role of cereal in the diet and its relation to the biomarker concentration, a wheat restriction intervention was used to assess the effects of a 4 d avoidance of major sources of dietary DON on subsequent urinary fD+DG concentration. The intervention reduced wheat intake by >90 %, and the urinary concentration of fD+DG was also significantly (P < 0·001) reduced (geometric mean pre-intervention 7·2 (95 % CI 4·9, 10·5) ng/mg) by > 90 % (geometric mean post-intervention 0·6 (95 % CI 0·4, 0·9) ng/mg)(Reference Seeling, Danicke and Valenta88). This intervention restricted the types of food consumed rather than attempting to reduce the contamination level within the consumed food; thus readers should avoid a direct comparison of this outcome with that of the FB intervention above(Reference van der Westhuizen, Shephard and Burger82). The intervention on DON was a more simple study to improve our understanding of the biomarker, whilst the FB intervention was a more practical study aimed at providing a solution to the exposure. These data on DON provided further support for the approach of Meky et al. (Reference Meky, Turner and Ashcroft92) using urinary fD+DG as an exposure biomarker.
Subsequently the concentration of urinary fD+DG was assessed over a longer period (6 d) during the consumption of the normal diet(Reference Turner, White and Burley95). The frequency of detection and range were similar to those of earlier studies (geometric mean 10·1 ng/mg creatinine; range non-detectable–70·7 ng/mg); again, the concentration of DON was significantly, but moderately, associated with cereal intake (R 2 0·23; P < 0·001). A 4 d dietary restriction was then initiated in which bread provided the only major source of cereals potentially contaminated with DON; consumption of alternative starch-based foods were suggested to maintain energy intake (for example, rice, potatoes). Participants provided a duplicate portion of every bread sample consumed for DON analysis, and they recorded the quantity consumed of each bread sample. The mean bread consumption was 155 (range 0–455) g/d. The mean contamination level of the bread was 74 (range 20–316) μg/kg, and the estimated average daily intake of DON was 10·6 (range 0–42·5) μg/d. On a daily basis, urinary fD+DG was correlated with DON intake (P < 0·001; r 2 0·56, 0·49, 0·54, 0·64, for each day respectively), and a more integrated assessment of the 4 d combined revealed a highly significant correlation (r 2 0·74; P < 0·001). After adjustment for age, sex and BMI, all correlations remained significant (P < 0·001; adjusted r 2 0·63, 0·68. 0·65, 0·63 and 0·83, respectively), providing the first data of a strong quantitative relationship between exposure and the urinary biomarker.
Further studies have been initiated to assess the stability of urinary fD+DG during the collection phase when samples may be at ambient temperature for prolonged periods (hours), and during the cryopreservation period (years). No losses were observed in samples stored at ambient temperature (18°C) for up to 24 h, or at 4°C for 48 h. No reduction in biomarker levels were found in cryopreserved samples kept at − 40°C for up to 3 years(Reference Turner, Hopton and Lecluse96). In studies to date DG appears to be the major metabolite of DON in human urine, whilst the de-epoxy metabolite has rarely been observed(Reference Meky, Turner and Ashcroft92–Reference Turner, Ji and Shu101). Urinary fD+DG represents best exposure in the previous 24–48 h(Reference Turner, White and Burley95, Reference Turner, Taylor and White102), though average cereal intake over 7 d was significantly, but not as strongly, associated with the biomarker. Additionally, colleagues in Austria are investigating a putative direct measure of urinary DG(Reference Warth, Sulyok and Berthiller103). The combined measure of urinary fD+DG now serves as a validated exposure biomarker for DON intake(Reference Turner, Burley and Rothwell93–Reference Turner, White and Burley95, Reference Turner, Burley and Rothwell99, Reference Turner100), at least in moderately exposed populations. To date, populations predicted to have the highest DON exposures remain unexamined with this assay(Reference Turner, Burley and Rothwell93). Nevertheless, for all of the European studies to date, approximately 1–5 % of the population of adults are predicted to exceed the recommended tolerable daily intake of 1 μg/kg BW per d(104). An earlier and perhaps less robust version of this assay was used to analyse urinary fD+DG in a pilot survey in a high-risk region of China(Reference Meky, Turner and Ashcroft92). Data from that survey revealed a mean level of urinary fD+DG about three to four times greater than the mean reported in surveys of Europeans(Reference Turner100). Urinary fD+DG has now been observed in studies from the UK, France, Sweden and China(Reference Turner100), and independently in Spain and Italy(Reference Rubert, Soriano and Mañes105, Reference Lattanzio, Solfrizzo and De Girolamo106), whilst urinary DG was observed in Austrians(Reference Warth, Sulyok and Berthiller103).
All of the mycotoxin biomarker approaches discussed here are summarised in Table 1; ochratoxin A is additionally included for completeness, as the only other mycotoxin for which biomarker development has been reported(Reference Gilbert, Brereton and MacDonald107). Summaries of aflatoxin biomarker surveys are in numerous reviews; here only aflatoxin–albumin biomarkers are presented from studies of West African infants and children (Table 2), as these relate to latter sections of this review. A summary of surveys on Fusarium biomarkers is included (Tables 3 and 4).
* Only the fumonisin study used intake/kg body weight per d. The higher the correlation coefficient the stronger the relationship; thus, for example, urinary OTA would be regarded as the preferred exposure biomarker to assess the level of ochratoxin A exposure compared with serum ochratoxin A, and urinary aflatoxin–N7-guanine would be regarded as strong for aflatoxin exposure.
† Correlation used natural log-transformed data of both intake and the urinary measure; correlations for all other mycotoxin comparisons used unmodified data.
‡ Adjusted for age.
§ Deoxynivalenol and deoxynivalenol-glucuronide combined.
∥ Adjusted for age, body weight and sex.
nd, Non-detectable.
* Adapted from Turner et al. (Reference Turner, Van Der Westhuizen, Nogueira Da Costa, Knudsen and Merlo53).
† A total of 200 children measured at three time points within an 8-month period.
* Geometric means are reported except for the study in China(Reference Diallo, Sylla and Sidibé116).
† Overall, 56/75 were positive (> 20 pg/ml): mean 70 pg/ml; range non-detectable to 9312 pg/ml.
‡ Urinary data are the mean of 2 d data, overall range of data non-detectable to 3900 pg/ml (estimated by the authors of the present review).
nd, Non-detectable.
* Both interventions were voluntary restrictions of major sources of dietary wheat products. The two studies have completely independent data.
It is also prudent to emphasise a significant difference in the urinary assays for aflatoxin, fumonisin and DON. Whilst the analytical sensitivity may be suggestive of greater, lesser or a similar sensitivity in the exposure assessment, the overall sensitivity of the bio-measurement is also related to the transfer kinetics of the toxins. If, for example, we compare urinary biomarkers for aflatoxin M1, FB1 and fD+DG, the analytical limits of detection are 5, 20 and 500 pg/ml, respectively, whilst the mean estimated amounts transferred to urine are about 2, 0·075 and 72 %, respectively. Assuming average BW of about 65 kg and 1·5 litres of urine excreted, the limits of detection correspond to a mean intake of 0·006, 0·615 and 0·015 μg/kg BW per d, respectively. Thus, similar levels of these bio-measures in urine do not represent similar levels of exposure, and across a range of typical human exposures, urinary DON will be detected more frequently than FB1, for example, despite a greater analytical sensitivity for FB1 compared with DON.
Mycotoxins and human disease
In many parts of the developing world, chronic exposure to aflatoxins at high levels remains a significant health burden(Reference Williams, Phillips and Jolly5–Reference Marasas7, Reference Wild, Turner, Millar, Bartsch, Boffetta, Dragsted and Vainio21–23, Reference Liu and Wu108–Reference Gong, Turner, Hall, Leslie, Bandyopadhyay and Visconti110). About 20 years ago, aflatoxin B1 was classified as a potent liver carcinogen(23), a conclusion in part defined using the above biomarkers, and mentioned only briefly here; readers are directed to an excellent recent review of the topic(Reference Kensler, Roebuck and Wogan22) for further details. This section of the review will focus more on the recent observation between aflatoxin and growth faltering.
Aflatoxins and liver cancer
In high-risk parts of Asia and Africa >95 % of populations studied to date are chronically exposed to aflatoxins(Reference Williams, Phillips and Jolly5, Reference Wild and Turner6, Reference Wild, Turner, Millar, Bartsch, Boffetta, Dragsted and Vainio21–23). Aflatoxins are potent liver toxins and it is likely that a combination of non-specific liver damage/toxicity and specific DNA damage via aflatoxin exo-epoxide covalently binding to N7-guanine of DNA contribute to the carcinogenicity of aflatoxins(Reference Williams, Phillips and Jolly5–Reference Marasas7, Reference Wild, Turner, Millar, Bartsch, Boffetta, Dragsted and Vainio21–23). It is notable that a synergistic interaction between aflatoxin and hepatitis B virus (HBV) occurs(Reference Kensler, Roebuck and Wogan22, 23), perhaps in part a reflection of modulation of aflatoxin metabolism (favouring activation over detoxification) and liver regeneration in HBV-infected individuals(Reference Turner, Mendy and Whittle55); this effect may enrich the liver for mutations caused by aflatoxin–DNA damage. One important facet of this is an apparent difference in susceptibility of children compared with adults. In The Gambia, chronic exposure to aflatoxins is ubiquitous(Reference Zarba, Wild and Hall25, Reference Wild, Jiang and Sabbioni42, Reference Wild, Jiang and Allen44–Reference Allen, Wild and Wheeler46); although Gambian adults chronically carrying HBV and those without HBV have a similar aflatoxin–albumin biomarker level(Reference Allen, Wild and Wheeler46), a significantly higher mean and range of aflatoxin–albumin adduct levels were apparent in young Gambian children with HBV compared with non-carriers(Reference Turner, Mendy and Whittle55). Aflatoxin–albumin and aflatoxin–DNA damage are correlated; thus, while the temporal nature of this observation awaits further research, if HBV does increase body burden of the activated toxin (the epoxide) then it is occurring at a time of rapid cell growth and provides an opportunity to enrich any resultant mutations. Additionally, the damage is occurring early in life and thus affords an extensive timeframe for any effects to manifest.
The global burden of liver cancer is about 550 000 to 600 000 cases annually, predominantly due to hepatitis infections and aflatoxins(23). It was estimated that up to 28 % of this burden might be due to aflatoxin alone(Reference Liu and Wu108). Moreover, the onset of liver cancer in populations with both HBV and aflatoxin is significantly earlier than those with just HBV(Reference Williams, Phillips and Jolly5–Reference Marasas7, Reference Wild, Turner, Millar, Bartsch, Boffetta, Dragsted and Vainio21–23, Reference Liu and Wu108Reference Wogan, Kensler and Groopman109), such that reductions in aflatoxin exposure may reduce not only the occurrence, but delay the onset of disease(Reference Kensler, Roebuck and Wogan22). To improve our understanding of this potential mechanism, it would be of value to assess more detailed aflatoxin metabolite profiles in both HBV carriers and non-carriers. Such information may support intervention strategies that combine both reductions in exposure(Reference Turner, Sylla and Gong111) and dietary modulation of aflatoxin metabolism (for reviews, see Kensler(Reference Kensler, Roebuck and Wogan22) and Wogan et al. (Reference Wogan, Kensler and Groopman109)).
Aflatoxins and growth faltering
In animals, aflatoxins suppress the immune system and cause growth faltering(Reference Bondy and Pestka112, Reference Dersjant-Li, Verstegen and Gerrits113). Given the frequent chronic human exposure to this toxin, it is important to understand whether typical levels of ingestion in some high-risk regions restrict growth in children.
Aflatoxin–albumin exposure patterns in infants
Longitudinal biomarker data on aflatoxin exposure during the peri-natal and postnatal period are limited in the literature. One longitudinal study in The Gambia revealed a pattern of maternal, cord blood, week-16 infant and week-52 infant aflatoxin–albumin adducts at 100 % (range 5–400 pg/mg), 49 % (range non-detectable–50 pg/mg), 11 % (non-detectable–50 pg/mg) and 92 % (non-detectable–390 pg/mg) positive, respectively(Reference Turner, Collinson and Cheung52, Reference Turner, Van Der Westhuizen, Nogueira Da Costa, Knudsen and Merlo53). Whilst no data are available on infants from developed countries, a recent survey in North American adults revealed that less than 1 % would exceed 3–5 pg/mg(Reference Johnson, Qian and Xu65), the limit of detection in the Gambian study(Reference Turner, Collinson and Cheung52, Reference Turner, Van Der Westhuizen, Nogueira Da Costa, Knudsen and Merlo53). Week-16 adduct positivity correlated with the introduction of weaning foods, and by 52 weeks, most infants (>95 %) had started the weaning process. The week-16 and week-52 data reveal that aflatoxin from diet occurs early in life once weaning foods are introduced. The cord blood data reveal that both exposure and metabolism to reactive epoxides occurs in utero.
A cross-sectional survey of children aged 9–60 months from Benin revealed a 99 % positive rate (mean adduct level 33 pg/mg; range non-detectable–1064 pg/mg); geometric mean aflatoxin biomarker levels were twice the level in 1- and 2-year-olds compared with children < 1 year old, and twice as high again in 2- and 3-year-olds(Reference Gong, Cardwell and Hounsa48). No significant increases were apparent in older children up to 5 years old. In two separate studies of Gambian children the frequency of detection and range of aflatoxin–albumin adducts were similar between 3- and 4-year-olds (100 % positive; range 2–459 pg/mg)(Reference Turner, Mendy and Whittle55) and 6- to 9-year-olds (93 % positive; range non-detectable–456 pg/mg)(Reference Turner, Moore and Hall54) and such patterns of exposure reflect those observed in Gambian adults(Reference Wild, Yin and Turner47, Reference Turner, Van Der Westhuizen, Nogueira Da Costa, Knudsen and Merlo53). Exposure patterns between children (aged >2 years) and adults in Guinea were similar also(Reference Turner, Sylla and Kuang51, Reference Turner, Sylla and Diallo114–Reference Diallo, Sylla and Sidibé116). Thus, there is a rapid increase in aflatoxin–albumin biomarker frequency and level as infants from high-risk countries go through the weaning process.
Aflatoxin biomarker levels are associated with growth faltering
A cross-sectional survey in Benin demonstrated a strong association between aflatoxin biomarker level (aflatoxin–albumin) and growth of children aged < 5 years(Reference Gong, Cardwell and Hounsa48). Growth was assessed as height-for-age and weight-for-age Z scores. Both height-for-age and weight-for-age Z scores were inversely associated with the aflatoxin exposure biomarker, indicative of a relationship between aflatoxin and both stunting and being underweight (P < 0·001 for both). A subsequent longitudinal study in infants from different villages, but from the same region, further support these cross-sectional observations(Reference Gong, Hounsa and Egal49). These latter data suggested that across an exposure spectrum in which 16 % of those infants measured exceeded an adduct burden of 100 pg/mg albumin, that 100 pg/mg difference in exposure approximates to about a 1 cm reduction in height over an 8-month period. In a separate study in slightly older Gambian children (aged 6–9 years), a more modest association between aflatoxin exposure and growth faltering was reported, though only 7 % of samples in that study exceeded 100 pg/mg(Reference Turner, Moore and Hall54). Thus, it remains unclear whether the strength of effect reflects differences by age, the adduct burden, or perhaps both.
In The Gambia, the average level of aflatoxin–albumin adducts in maternal blood during pregnancy (collected at two time points separated by >1 month) was strongly associated (P < 0·001) with growth faltering of the infant during the first year of life(Reference Turner, Collinson and Cheung52). The aflatoxin–albumin adduct level of the infant at 16 weeks significantly negatively correlated (P < 0·05) with infant growth(Reference Turner, Collinson and Cheung52). These studies are further supported by data in additional epidemiological studies(Reference Abdulrazzaq, Osman and Yousif117, Reference Abdulrazzaq, Osman and Ibrahim118).
Aflatoxin and gastrointestinal toxicity
Growth faltering in West Africa does not seem to be fully explained by either lack of nutrition or by infectious episodes(Reference Campbell, Elia and Lunn119–Reference Prentice121), though these remain critically important contributors. Growth faltering and intestinal damage in this region are apparent following the introduction of weaning foods and independently strong associations between aflatoxin and growth faltering, as described above(Reference Gong, Cardwell and Hounsa48, Reference Gong, Hounsa and Egal49, Reference Turner, Collinson and Cheung52) and elsewhere(Reference Tchana, Moundipa and Tchouanguep122, Reference Hendrickse123), have been revealed. Human aflatoxin exposure is primarily through dietary contamination and, given the requisite metabolism to form the reactive epoxide, the intestine is a primary target for aflatoxin-induced damage. The intestinal epithelium separates the intestinal lumen from the underlying lamina propria. These epithelial cells are tightly bound by intercellular junctional complexes, which regulate the paracellular permeability, and thus maintain epithelial integrity. In confluent Caco-2 monolayers, a cell line that mimics the intestinal barrier, aflatoxin appears to affect the integrity of the monolayer by modulating paracellular transport(Reference Gratz, Wu and El-Nezami124). Thus, aflatoxin may further exacerbate dietary restricted individuals, and perhaps prolong a cycle of poor nutrient retention, extended gastrointestinal infection, and enteropathy. Intestinal enteropathy, often described as ‘intestinal leakiness’, is associated with the level of growth faltering in Gambian infants(Reference Campbell, Elia and Lunn119, Reference Lunn, Northro-Clewes and Downes120), though to date dose–response relationships between intestinal enteropathy and aflatoxin load remain to be demonstrated.
A variety of proteins are involved in the formation of intercellular functional complexes including tight junction complexes(Reference Madara125). Tight junctions are in part regulated by specific phosphatases and kinases. Interactions between transmembrane proteins and the actomyosin ring are controlled by several signalling proteins, including protein kinase C, mitogen-activated protein kinases, myosin light chain kinase and the Rho family of small GTPases(Reference Ulluwishewa, Anderson and McNabb126). Phosphorylation of tight junction proteins controls epithelial barrier function(Reference Ulluwishewa, Anderson and McNabb126). One of the key toxic effects of aflatoxin is disruption of phosphorylation patterns of structural and enzymic proteins, due to steric hindrance caused by the epoxide binding(Reference Cullen, Newberne, Eaton and Groopman127). It is therefore plausible that the intestinal cell enteropathy observed in vitro reflects aflatoxin-induced disruption of the phosphorylation of key structural proteins in tight junction formation. To improve our understanding of this potential mechanism of growth faltering it will be valuable to understand aflatoxin-induced changes in tight junction protein localisation and phosphorylation status.
Aflatoxin and zinc
Human Zn deficiency has been a recognised health concern for about 50 years; typical symptoms include growth retardation, skin abnormalities and mental lethargy(Reference Plum, Rink and Haase128). Dietary deficiency is a particular problem in developing countries, and a number of studies support supplementation of children aged < 5 years to improve linear growth and reduce growth stunting(Reference Imdad and Bhutta129). In animal models, aflatoxins have a clear effect on growth, and it is notable that piglets of aflatoxin-exposed sows exhibit growth faltering(Reference Harvey, Kubena and Huff130). One interesting observation is a reduced plasma Zn level in piglets from aflatoxin-exposed sows compared with those from non-exposed sows(Reference Mocchegiani, Corradi and Santarelli131); this was related to a reduced Zn-carrying capacity due to thymulin–Zn complex formation in the offspring from exposed sows, rather than a lack of Zn in the diet(Reference Mocchegiani, Corradi and Santarelli131). Importantly, doses used in this animal study are in line with those observed in studies of maize for human consumption(23). Thus, a second area of research into growth faltering in human subjects from regions with chronic and high aflatoxin exposure is to understand mechanisms that control the balance between inactive thymulin and active (Zn-bound) thymulin.
Aflatoxin and insulin-like growth factor
Aflatoxins can modulate gene expression in target organs including the liver. A number of growth factors are critical components in maintaining animal longitudinal growth. One such factor is liver-derived insulin-like growth factor (IGF)-1, which supplies at least 75 % of IGF-1 in circulation. Locally produced IGF-1 also affects linear bone growth, though both local and liver-derived sources are believed to be important(Reference Olson, Ohlsson and Mohan132). Microarray data comparing livers of untreated and aflatoxin-treated chicks revealed down-regulation of genes responsible for fatty acid metabolism, oxidative phosphorylation, energy production, cell proliferation, immune response, metabolism, growth and development in treated animals(Reference Yarru, Settivari and Antoniou133). Of particular interest regarding growth was the down-regulation of IGF-1, which could have contributed to the observed reduction in growth rates in this particular study. This type of growth faltering was consistent with earlier reports of the effect of aflatoxins on broiler chick growth(Reference Huff, Kubena and Harvey134).
Studies in children suggest a link between aflatoxin exposure and kwashiorkor, a form of protein malnutrition(Reference Tchana, Moundipa and Tchouanguep122, Reference Hendrickse123), though designs of this particular study were not ideal. Aflatoxin exposure was certainly occurring in those children; however, validated exposure biomarkers were not utilised, and thus dose–responses were not measurable. In one study, twenty-two children with protein–energy malnutrition (either kwashiorkor (n 9) or marasmus (n 13)) from Gabon aged < 30 months were examined for their nutritional status with reference to the growth hormone–insulin-like growth factor axis(Reference Zamboni, Dufillot and Antoniazzi135). Although aflatoxins were not measured, this region does experience chronic exposure to aflatoxins. In this study, IGF-1 was significantly lower in malnourished children compared with controls. These authors speculate that the change is related to the extent of malnutrition, as refeeding improved IGF-1 levels. However, no data were presented for a role for aflatoxin in this study, and IGF-1 levels may simply reflect poor growth, rather than exposure to aflatoxin; thus data on the temporal nature of aflatoxin exposure with this measure would be more informative. It has also been suggested that aflatoxin-induced up-regulation of IGF-2 may be important in hepatocarcinogenesis(Reference Ubagai, Kikuchi and Fukusato136); though IGF-2 does not play an important role in linear growth. At this point additional research is required to understand this hypothesised interaction between aflatoxin, the IGF axis and growth faltering.
Fumonisin B, deoxynivalenol and growth faltering
To date, there are no strong epidemiological data on links between Fusarium mycotoxins and child growth, though it is hoped that the use of biomarkers discussed above may allow improved exposure assessment to inform such studies. In cultured cells, prolonged exposure to FB1 has been demonstrated to reduce intestinal barrier integrity(Reference Bouhet and Oswald137), and to cause an increase in the ease of movement of macromolecules across the monolayer(Reference Caloni, Spotti and Pompa138). The mechanism(s) for such an effect remains unknown, though it is clearly established that fumonisins disrupt sphingolipid metabolism, key components in the integrity of the cell membranes(Reference Merrill, Wang and Vales67, Reference Merrill, Sullards and Wang78). A recent survey from Tanzania suggests an association between estimated FB consumption at age 6 months and the subsequent height and weight of the child at the age of 12 months(Reference Kimanya, De Meulenaer and Roberfroid139). The study included 215 infants with maize consumption estimated for each child and the level of FB contamination in collected maize samples determined. Maize was consumed frequently (89 % consumers) and 69 % of the maize-consuming infants were exposed to detectable levels of fumonisin; the range of fumonisins in maize was 21–3201 μg/kg, and twenty-six infants were predicted to have exceeded the provisional maximum tolerable daily intake of 2 μg/kg BW(80). Infant height and weight were significantly negatively (P < 0·05) associated with estimated fumonisin intake. The authors identify a number of limitations in their study. First, there was no use of fumonisin exposure biomarkers. Second, exposure estimates were at 6 months but not 12 months. In that respect, it would also have been interesting to have data on growth velocity. It is notable that the co-occurrence of both aflatoxin and fumonisin contamination had been reported in an earlier survey of maize in this region(Reference Fandohan, Zoumenou and Hounhouigan140), and that aflatoxins and fumonisins also co-contaminate maize in Benin(Reference Kimanya, De Meulenaer and Tiisekwa10), where strong associations between aflatoxin and growth faltering were reported(Reference Gong, Cardwell and Hounsa48, Reference Gong, Hounsa and Egal49). This research arena eagerly awaits descriptive epidemiology on multiple mycotoxin biomarker measurements to understand the potential causes and mechanisms of dietary contaminants and growth faltering in high-risk regions.
In contrast to the aflatoxins and fumonisins, the trichothecenes occur most frequently in cooler, moist conditions(1, Reference Miller2). Their global distribution thus differs from aflatoxin and fumonisins, predominantly in Europe, North America and parts of South America, China, Japan and New Zealand. DON is one of the most frequently observed trichothecenes found globally and the mechanism of toxicity is associated with its ability to inhibit ribosomal protein synthesis by restricting elongation and termination of polypeptide chains(Reference Rotter, Prelusky and Pestka19). This ribosomal binding is responsible for DON's effect on the immune system, termed the ‘ribotoxic stress response’, which causes increased apoptosis in leucocytes and increased cytokine production(Reference Pestka141).
Most instances of DON-induced feed refusal occur in experimental animals exposed to dietary DON(Reference Arnold, McGuire and Nera142–Reference Young, McGirr and Valli144). However, pigs given an intraperitoneal infusion of DON also show reduced food intake of a DON-free diet(Reference Prelusky145), suggesting that DON may affect food intake via a neuroendocrine mechanism. Indeed, pigs given an intravenous infusion of DON show increased levels of the serotonin metabolite 5-hydroxyindoleacetic acid in cerebral spinal fluid(Reference Prelusky146), although similar studies have found no changes in plasma serotonin levels(Reference Prelusky147). DON can also cross into brain tissue(Reference Pestka, Islam and Amuzie148), and cause regional changes in the neurochemistry of pigs, turkeys and rats(Reference Fitzpatrick, Boyd and Wilson149–Reference Prelusky, Yeung and Thompson151).
Recent data from Girardet et al. (Reference Girardet, Bonnet and Jdir152) suggest that DON acts centrally to reduce food intake. Here, a 20 μg per mouse intracerebroventricular (ICV) injection of DON caused a significant reduction in food intake over a 12 h period. We point out that 2 μg DON per mouse (weight of 0·020–0·025 kg) is an approximate dose of 0·8–1·0 mg/kg BW and DON has been shown to cause acute anorexia when given via intraperitoneal injection at 1·0 mg/kg BW in female mice(Reference Flannery, Wu and Pestka153). Furthermore, Girardet et al. (Reference Girardet, Bonnet and Jdir152) determined that oral DON administration increased central protein expression of the transcription factor c-fos and mRNA expression of the pro-inflammatory mediators IL-1β, TNF-α, IL-6 and cyclo-oxygenase-2 (COX-2), suggesting that DON does indeed cause physiological changes within the brain.
Given DON's capacity to elicit systemic pro-inflammatory cytokines and cause inflammation in vivo, it has been hypothesised that COX-2 may be important for DON's ability to cause anorexia and subsequent growth suppression in vivo (Reference Zhou, Yan and Pestka154). COX-2, along with microsomal PGE synthase-1 (mPGES-1), are two enzymes responsible for converting arachidonic acid into PGE2 during an inflammatory response(Reference Ristimaki155) and COX-2 has been shown to serve a function in anorexia caused by systemic inflammation(Reference Johnson, Vogt and Burney156, Reference Swiergiel and Dunn157). Indeed, DON induces COX-2 gene expression in vitro (RAW 264·7 murine macrophages) and in vivo (Reference Islam, Moon and Zhou158, Reference Moon and Pestka159), though the recent use of mPGES-1 knockout mice suggests that a PGE2-independent mechanism causes DON-induced anorexia(Reference Girardet, Bonnet and Jdir152).
Male and female mice fed 5 and 10 parts per million (ppm) DON over a 2-year period exhibit significant weight suppression(Reference Iverson, Armstrong and Nera160); yet, food intake was only significantly reduced in males fed 10 ppm DON, indicating that anorexia may not be the only mechanism by which DON reduces weight. Recently, DON exposure in mice was associated with decreased IGF acid-labile subunit(Reference Amuzie and Pestka161), a binding protein of IGF-1 known to be critical for growth(Reference Boisclair, Wang and Shi162, Reference Heath, Argente and Barrios163). DON-induced decreases in IGF acid-labile subunit may lead to alterations in the growth hormone system and subsequent growth suppression.
Taken together, growth suppression exhibited by experimental animals exposed to DON probably results from a combination of anorexia caused by alterations in neuroendocrine signalling and modifications of the growth hormone axis.
Fumonisins and neural tube defects
Fumonisins have been demonstrated to cause NTD in animals(Reference Marasas, Riley and Hendricks164–Reference Gelineau-van Waes, Starr and Maddox166), and given the frequency and high levels of exposure in certain maize-consuming populations in South Africa, Central America and Asia, there are concerns of similar effects in humans. For example, women living in Cameron County, Texas–Mexico border had NTD incidence of 290 per 100 000, whilst Mexican Americans in general have NTD incidence of 90–160 per 100 000; this is a significantly higher frequency compared with white Caucasians (60 per 100 000)(Reference Missmer, Suarez and Felkner167). Sphingolipids are important structural components in cell membranes, and fumonisin disruption of sphingolipid biosynthesis interferes with folate receptors, and thus folate bioavailability(Reference Marasas, Riley and Hendricks164, Reference Gelineau-van Waes, Voss and Stevens168). In a study conducted in pregnant mice, fumonisin given during early gestation caused NTD in 79 % of exposed fetuses. Alterations in sphingolipid profiles for both maternal and embryonic tissues occurred, as did both the folate concentration and expression of the folate receptor(Reference Marasas, Riley and Hendricks164). Of note in this study was that folate supplementation partially reduced the phenotype of NTD; although the dose level was relatively high, these observations raise some concern for humans chronically exposed to fumonisins.
An increased risk of NTD was significantly associated (OR 2·4; 95 % CI 1·1, 5·3) with moderate compared with low consumption of tortillas in the first trimester of pregnancy for women on the Texas–Mexico border(Reference Marasas, Riley and Hendricks164). Fumonisins are common contaminants of maize in this region, and maize consumption in the form of tortillas forms a major dietary staple. To better assess fumonisin exposure, maternal sphingolipid disruption (measured as the ratio of plasma sphinganine:sphingosine) and estimated FB consumption based on a limited food survey with FB measurements were determined. Both of these measures followed a similar pattern, with an increased risk of NTD between low and moderate groups, but not with the high exposure group. The authors suggest a threshold effect was possible, above which live births may not be occurring. It is important to note that the sphinganine:sphingosine measure was taken some time after birth (weeks), though the authors suggest that diets, and therefore exposure patterns, do not change much. More critical is the fact that sphinganine:sphingosine remains a putative but, to date, unvalidated exposure biomarker. NTD represent a significant health burden in maize-consuming populations where fumonisin exposure is frequent and at high levels. The animal and epidemiological data strongly support a role for this dietary toxin in increasing the risk of NTD through changes in folate receptor activity. Authors of the above studies highlight the desire for better exposure assessment tools to evaluate the temporal variation of fumonisins during critical exposure periods.
Fusarium mycotoxins and cancer
The incidence of squamous-cell carcinomas of the oesophagus (SCCO) is particularly high in parts of China, Iran and South Africa(23). China reports about 50 % of all SCCO cases, with incidence rates in Lixian county as high as 151 and 115 per 100 000 for males and females, respectively. At-risk populations are typically maize consumers, and Fusarium mycotoxins, for example, fumonisins and trichothecenes (DON, nivalenol), frequently contaminate maize in these regions. Ecological surveys examining the differences in the natural occurrence of Fusarium mycotoxins in high-risk regions of both China and South Africa are suggestive of a link with SCCO, and in vitro and animal data provide additional support(Reference Luo, Yoshizawa and Katayama169–Reference Hsia, Tzian and Harris174), though no biomarker-driven epidemiology is available at this point. Fumonisins cause cancer in the liver and kidneys in rodents(Reference Howard, Eppley and Stack175). Whilst FB1 has been classified by the International Agency for Research on Cancer (IARC)(23) as class 2B (possibly carcinogenic), data for DON are insufficient. Exposure biomarkers to Fusarium mycotoxins should support an improved understanding of their potential role in SCCO.
Conclusions
Mycotoxins are frequent contaminants of the diet in all locations of the world that consume cereals, and additional exposure from nuts predominates in some countries; in fact, 25 % of the world's cereal crops are predicted to be contaminated(1). In animals, toxicity is clearly established. Aflatoxins are carcinogenic, affect the immune systems and cause growth faltering. Moreover, aflatoxins cause immune suppression and increased susceptibility to infection. There is moderate evidence that they cause disruption to tight junctions and thus exposure may mimic the intestinal enteropathy observed in growth-faltering children. Fumonisins disrupt cell–cell communications and cell integrity via a mechanism linked to sphingolipid biosynthesis disruption; they also cause liver and kidney cancers in rodents, and in rodents cause NTD and intestinal toxicity. DON has potent effects on the immune system, causes gastroenteritis, anorexia and growth faltering in animals, though biomarker-driven epidemiology is lacking.
The present review has highlighted a number of areas including:
(1) Established exposure biomarkers for the carcinogenic aflatoxins.
(2) Biomarkers to assess the suggested role of aflatoxin in growth faltering.
(3) Potential mechanisms of mycotoxin-induced growth faltering.
(4) Recent development and the need for Fusarium biomarkers for epidemiology.
Intervention strategies to restrict exposure to aflatoxins have been recently reviewed(Reference Kensler, Roebuck and Wogan22). Notable examples include intervention research in China that has focused on chemoprevention(Reference Kensler, Roebuck and Wogan22), whilst a Novacil clay that can be added in small quantities to food and act to bind and restrict the bioavailability of aflatoxin has been reported in clinical trials conducted in West Africa(Reference Phillips, Afriyie-Gyawu and Williams176). In middle-income countries or regions where exposures may be more moderate, probiotic interventions have been suggested(Reference El-Nezami, Polychronaki and Ma177); these probiotics restrict aflatoxin bioavailability by binding and then shuttling the toxin through the gastrointestinal tract. Such an approach has been suggested as plausible in a region such as Egypt(Reference Piekkola, Turner and Abdel-Hamid178) where sources of exposure are less well defined(Reference Polychronaki, West and Turner26, Reference Polychronaki, Turner and Mykkänen27, Reference Turner, Loffredo and El-Kafrawy60). In terms of growth, this approach was successful in a rodent model in that in the intervention arm, both the aflatoxin-driven growth faltering was improved and the aflatoxin biomarker level was reduced(Reference Gratz, Täubel and Juvonen179). Whilst effective but highly technical approaches are used in wealthier regions, the small-scale peasant farmers, who represent the majority of those at highest risk of exposure, still remain without established, affordable and sustainable methods to restrict exposures. A primary intervention in such populations successfully restricted contamination at the harvest/post-harvest stage by simple sorting and drying of the main crops(Reference Turner, Sylla and Gong111). The study focused on aflatoxin from the groundnut (peanut) crop in Guinea, and demonstrated over a 6-month period a significant (P < 0·001) reduction in aflatoxin biomarkers, by >50 %, in the intervention villages. Such an approach is simple and relatively affordable. It is now important to demonstrate efficacy in different settings and with other high-risk crops such as maize. Dissemination and application of this and other intervention data, in an appropriate manner is then urgently required(Reference James, Adda and Cardwell180), such that the research efforts are translated into the community settings where risk is greatest.
It is also important to note that we believe that whilst evidence for aflatoxin ‘contributing’ to growth faltering is strong, this occurs alongside a background of additional factors, including limited nutritional quantity and choice, and infection. Thus, one postulated mechanism is that aflatoxin exacerbates pathologies important in intestinal enteropathy-driven growth faltering. Other mechanisms related to aflatoxin toxicity discussed here remain poorly researched. The molecular epidemiology for other mycotoxins is lacking, but exposure biomarkers may better support current epidemiological approaches to assess the potential burden of mycotoxin-driven chronic disease.
Acknowledgements
This research received no specific grant from any funding agency in the public, commercial or not-for-profit sectors. All authors contributed to writing the manuscript. There are no conflicts of interest.