| Literature DB >> 30696365 |
Meng Ping Jiang1,2, Shao Yan Zheng1,2, Hao Wang1,2, Shu Yao Zhang1,2,3, Dong Sheng Yao1,2,4, Chun Fang Xie1,2,4, Da Ling Liu1,2.
Abstract
Predictions of aflatoxin (AF) in grain at post-harvest can be useful for ensuring the safety of stored grain. Versicolorin (Ver) A, a precursor of AFB1, can serve as an early indicator of AF contamination, even when AFs themselves are present at undetectable levels. In the current research, we developed a probabilistic model based on logistic regression and Ver A levels to estimate the risk of AF contamination in stored corn. Moisture content, aflatoxigenic fungal load, and initial and maximum values of Ver A in the first three sampling cycles were experimentally determined as the four important factors for the probabilistic model. Both internal and external model validations were shown to be high at 96.4% and 93.3%, respectively. For high-risk samples, a precise model was developed to predict the maximum period of safe storage, which can be useful for decision-making by the stakeholders in feed and food supply chain. Our findings provide a basis tool for establishing an early warning system for AF contamination in granaries, which can improve global food safety.Entities:
Keywords: Aflatoxin; aflatoxin contamination; logistic regression; predictive mycology; versicolorin A
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Year: 2019 PMID: 30696365 DOI: 10.1080/19440049.2018.1562226
Source DB: PubMed Journal: Food Addit Contam Part A Chem Anal Control Expo Risk Assess ISSN: 1944-0057