Jonsson A, Winquist F, Schnürer J, Sundgren H, Lundström I
Swedish Farmers Supply and Marketing Association, Stockholm, Sweden.
Int J Food Microbiol. 1997 Apr 1;35(2):187-93. doi: 10.1016/s0168-1605(96)01218-4.
The odour of grains is in many countries the primary criterion of fitness for consumption. However, smelling of grain for quality grading should be avoided since inhalation of mould spores or toxins may be hazardous to the health and determinations of the off-odours are subjective. An electronic nose, i.e. a gas sensor array combined with a pattern recognition routine might serve as an alternative. We have used an electronic nose consisting of a sensor array with different types of sensors. The signal pattern from the sensors is collected by a computer and further processed by an artificial neural network (ANN) providing the pattern recognition system. Samples of oats, rye and barley with different odours and wheat with different levels of ergosterol, fungal and bacterial colony forming units (cfu) were heated in a chamber and the gas in the chamber was led over the sensory array. The ANN could predict the odour classes of good, mouldy, weakly and strongly musty oats with a high degree of accuracy. The ANN also indicated the percentage of mouldy barley or rye grains in mixtures with fresh grains. In wheat a high degree of correlation between ANN predictions and measured ergosterol as well as with fungal and bacterial cfu was observed. The electronic nose can be developed to provide a simple and fast method for quality classification of grain and is likely to find applications also in other areas of food mycology.
在许多国家,谷物的气味是判断其是否适合食用的主要标准。然而,通过闻谷物气味进行质量分级的方式应予以避免,因为吸入霉菌孢子或毒素可能对健康有害,而且异味的判定具有主观性。电子鼻,即一种结合了模式识别程序的气体传感器阵列,或许可以作为一种替代方法。我们使用了一种由不同类型传感器组成的传感器阵列构成的电子鼻。传感器的信号模式由计算机收集,并通过提供模式识别系统的人工神经网络(ANN)进行进一步处理。将具有不同气味的燕麦、黑麦和大麦样本以及具有不同麦角固醇水平、真菌和细菌菌落形成单位(cfu)的小麦样本在一个腔室中加热,腔室内的气体被引导至传感阵列上方。人工神经网络能够高度准确地预测出优质、发霉、轻微发霉和严重发霉的燕麦的气味类别。人工神经网络还能指出与新鲜谷物混合的大麦或黑麦中发霉谷物的百分比。在小麦中,观察到人工神经网络预测结果与测得的麦角固醇以及真菌和细菌cfu之间存在高度相关性。电子鼻可以发展成为一种用于谷物质量分类的简单快速方法,并且很可能在食品真菌学的其他领域也能找到应用。