Olsson J, Börjesson T, Lundstedt T, Schnürer J
Olligon AB, Uppsala, Sweden.
Int J Food Microbiol. 2002 Feb 5;72(3):203-14. doi: 10.1016/s0168-1605(01)00685-7.
Mycotoxin contamination of cereal grains can be detected and quantified using complex extraction procedures and analytical techniques. Normally, the grain odour, i.e. the presence of non-grain volatile metabolites, is used for quality classification of grain. We have investigated the possibility of using fungal volatile metabolites as indicators of mycotoxins in grain. Ten barley samples with normal odour, and 30 with some kind of off-odour were selected from Swedish granaries. The samples were evaluated with regard to moisture content, fungal contamination, ergosterol content, and levels of ochratoxin A (OA) and deoxynivalenol (DON). Volatile compounds were also analysed using both an electronic nose and gas chromatography combined with mass spectrometry (GC-MS). Samples with normal odour had no detectable ochratoxin A and average DON contents of 16 microg kg(-1) (range 0-80), while samples with off-odour had average OA contents of 76 microg kg(-1) (range 0-934) and DON contents of 69 microg kg(-1) (range 0-857). Data were evaluated by multivariate data analysis using projection methods such as principal component analysis (PCA) and partial least squares (PLS). The results show that it was possible to classify the OA level as below or above the maximum limit of 5 microg kg(-1) cereal grain established by the Swedish National Food Administration, and that the DON level could be estimated using PLS. Samples with OA levels below 5 microg kg(-1) had higher concentration of aldehydes (nonanal, 2-hexenal) and alcohols (1-penten-3-ol, 1-octanol). Samples with OA levels above 5 microg kg(-1) had higher concentrations of ketones (2-hexanone, 3-octanone). The GC-MS system predicted OA concentrations with a higher accuracy than the electronic nose, since the GC-MS misclassified only 3 of 37 samples and the electronic nose 7 of 37 samples. No correlation was found between odour and OA level, as samples with pronounced or strong off-odours had OA levels both below and above 5 microg kg(-1). We were able to predict DON levels in the naturally contaminated barley samples using the volatile compounds detected and quantified by either GC-MS or the electronic nose. Pentane, methylpyrazine, 3-pentanone, 3-octene-2-ol and isooctylacetate showed a positive correlation with DON, while ethylhexanol, pentadecane, toluene, 1-octanol, 1-nonanol, and 1-heptanol showed a negative correlation with DON. The root mean square error of estimation values for prediction of DON based on GC-MS and electronic nose data were 16 and 25 microg kg(-1), respectively.
谷物中的霉菌毒素污染可通过复杂的提取程序和分析技术进行检测和定量。通常,谷物气味,即非谷物挥发性代谢物的存在,用于谷物的质量分类。我们研究了使用真菌挥发性代谢物作为谷物中霉菌毒素指标的可能性。从瑞典粮仓中挑选了10个气味正常的大麦样品和30个有某种异味的样品。对样品的水分含量、真菌污染、麦角固醇含量以及赭曲霉毒素A(OA)和脱氧雪腐镰刀菌烯醇(DON)的含量进行了评估。还使用电子鼻和气相色谱-质谱联用(GC-MS)分析了挥发性化合物。气味正常的样品未检测到赭曲霉毒素A,DON平均含量为16微克/千克(范围为0 - 80),而异味样品的OA平均含量为76微克/千克(范围为0 - 934),DON含量为69微克/千克(范围为0 - 857)。使用主成分分析(PCA)和偏最小二乘法(PLS)等投影方法通过多变量数据分析对数据进行了评估。结果表明,有可能将OA水平分类为低于或高于瑞典国家食品管理局规定的谷物5微克/千克的最大限量,并且可以使用PLS估计DON水平。OA水平低于5微克/千克的样品中醛类(壬醛、2-己烯醛)和醇类(1-戊烯-3-醇、1-辛醇)的浓度较高。OA水平高于5微克/千克的样品中酮类(2-己酮、3-辛酮)的浓度较高。GC-MS系统预测OA浓度的准确性高于电子鼻,因为GC-MS在37个样品中仅误分类了3个,而电子鼻误分类了37个样品中的7个。未发现气味与OA水平之间存在相关性,因为有明显或强烈异味的样品中OA水平既有低于5微克/千克的,也有高于5微克/千克的。我们能够使用GC-MS或电子鼻检测和定量的挥发性化合物预测天然污染大麦样品中的DON水平。戊烷、甲基吡嗪、3-戊酮、3-辛烯-2-醇和异辛基乙酸酯与DON呈正相关,而乙基己醇、十五烷、甲苯、1-辛醇、1-壬醇和1-庚醇与DON呈负相关。基于GC-MS和电子鼻数据预测DON的估计值的均方根误差分别为16和25微克/千克。