Nakai Silvia A, Siebert Karl J
The National Food Laboratory, Dublin, CA 94568, USA.
Int J Food Microbiol. 2003 Sep 15;86(3):249-55. doi: 10.1016/s0168-1605(02)00551-2.
Organic acids occur naturally in foods and have been used in many food products as preservatives because they inhibit the growth of most microorganisms. The acids commonly found in foods differ greatly in both their structure and inhibitory effects for different bacteria. A way to represent relationships between different acids was previously described in which principal components analysis (PCA) was applied to 11 physical and chemical properties of 17 organic acids, to arrive at principal properties. These were used for development of regression models that related the minimum inhibitory concentrations (MICs) of organic acids to their principal properties. Separate MIC models were constructed for six different bacteria. The objective of the present study was to test the predictive capabilities of the organism models using different organic acids from the ones used to construct the original models. MIC predictions were made for three acids for each of the six bacteria for which models were previously constructed. MIC determinations for these acids were then carried out and compared with the predictions; these were in good agreement, thus validating the models. The new data were combined with that obtained previously to produce similar, but slightly stronger models. These had R(2) values between 0.861 and 0.992.
有机酸天然存在于食物中,并且由于它们能抑制大多数微生物的生长,已在许多食品中用作防腐剂。食品中常见的酸在结构和对不同细菌的抑制作用方面差异很大。之前描述了一种表示不同酸之间关系的方法,其中主成分分析(PCA)应用于17种有机酸的11种物理和化学性质,以得出主要性质。这些性质用于建立将有机酸的最低抑菌浓度(MIC)与其主要性质相关联的回归模型。针对六种不同的细菌构建了单独的MIC模型。本研究的目的是使用与构建原始模型所用不同的有机酸来测试生物体模型的预测能力。对之前构建模型的六种细菌中的每一种,针对三种酸进行了MIC预测。然后对这些酸进行MIC测定并与预测结果进行比较;二者吻合良好,从而验证了模型。将新数据与之前获得的数据相结合,以生成类似但稍强的模型。这些模型的R²值在0.861至0.992之间。