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Detection of the dipicolinic acid biomarker in Bacillus spores using Curie-point pyrolysis mass spectrometry and Fourier transform infrared spectroscopy.利用居里点热解质谱法和傅里叶变换红外光谱法检测芽孢杆菌孢子中的吡啶二羧酸生物标志物。
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利用傅里叶变换红外光谱和机器学习快速定量检测肉类的微生物腐败

Rapid and quantitative detection of the microbial spoilage of meat by fourier transform infrared spectroscopy and machine learning.

作者信息

Ellis David I, Broadhurst David, Kell Douglas B, Rowland Jem J, Goodacre Royston

机构信息

Institute of Biological Sciences. Department of Computer Sciences, University of Wales, Aberystwyth, Ceredigion SY23 3DD, Wales, United Kingdom.

出版信息

Appl Environ Microbiol. 2002 Jun;68(6):2822-8. doi: 10.1128/AEM.68.6.2822-2828.2002.

DOI:10.1128/AEM.68.6.2822-2828.2002
PMID:12039738
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC123922/
Abstract

Fourier transform infrared (FT-IR) spectroscopy is a rapid, noninvasive technique with considerable potential for application in the food and related industries. We show here that this technique can be used directly on the surface of food to produce biochemically interpretable "fingerprints." Spoilage in meat is the result of decomposition and the formation of metabolites caused by the growth and enzymatic activity of microorganisms. FT-IR was exploited to measure biochemical changes within the meat substrate, enhancing and accelerating the detection of microbial spoilage. Chicken breasts were purchased from a national retailer, comminuted for 10 s, and left to spoil at room temperature for 24 h. Every hour, FT-IR measurements were taken directly from the meat surface using attenuated total reflectance, and the total viable counts were obtained by classical plating methods. Quantitative interpretation of FT-IR spectra was possible using partial least-squares regression and allowed accurate estimates of bacterial loads to be calculated directly from the meat surface in 60 s. Genetic programming was used to derive rules showing that at levels of 10(7) bacteria.g(-1) the main biochemical indicator of spoilage was the onset of proteolysis. Thus, using FT-IR we were able to acquire a metabolic snapshot and quantify, noninvasively, the microbial loads of food samples accurately and rapidly in 60 s, directly from the sample surface. We believe this approach will aid in the Hazard Analysis Critical Control Point process for the assessment of the microbiological safety of food at the production, processing, manufacturing, packaging, and storage levels.

摘要

傅里叶变换红外(FT-IR)光谱法是一种快速、非侵入性技术,在食品及相关行业具有巨大的应用潜力。我们在此表明,该技术可直接用于食品表面,以产生具有生物化学可解释性的“指纹图谱”。肉类变质是微生物生长和酶活性导致的分解及代谢产物形成的结果。利用FT-IR测量肉类基质内的生化变化,可增强并加速对微生物变质的检测。从一家全国性零售商处购买鸡胸肉,粉碎10秒,然后在室温下放置24小时使其变质。每小时使用衰减全反射直接从肉表面进行FT-IR测量,并通过经典平板计数法获得总活菌数。使用偏最小二乘回归对FT-IR光谱进行定量解释,能够在60秒内直接从肉表面准确计算出细菌载量。利用遗传编程得出的规则表明,在细菌含量为10(7) CFU·g(-1) 时,变质的主要生化指标是蛋白水解的开始。因此,使用FT-IR我们能够在60秒内直接从样品表面获取代谢快照,并准确、快速且非侵入性地定量食品样品的微生物载量。我们相信这种方法将有助于在危害分析关键控制点过程中,对食品在生产、加工、制造、包装和储存阶段的微生物安全性进行评估。