Niu Chen, Song Xiying, Hao Jin, Zhao Mincheng, Yuan Yahong, Liu Jingyan, Yue Tianli
College of Food Science and Technology, Northwest University, Xi'an 710069, China.
The 20th Research Institute of CETC, Xi'an 710068, China.
Foods. 2024 Jan 22;13(2):351. doi: 10.3390/foods13020351.
pv. is a serious safety issue in black fungus due to the deadly toxin, bongkrekic acid. This has triggered the demand for an efficient toxigenic phenotype recognition method. The objective of this study is to develop an efficient method for the recognition of toxin-producing strains. The potential of multilocus sequence typing and a back propagation neural network for the recognition of toxigenic was explored for the first time. The virulent strains were isolated from a black fungus cultivation environment in Qinba Mountain area, Shaanxi, China. A comprehensive evaluation of toxigenic capability of 26 isolates were conducted using Ultra Performance Liquid Chromatography for determination of bongkrekic acid and toxoflavin production in different culturing conditions and foods. The isolates produced bongkrekic acid in the range of 0.05-6.24 mg/L in black fungus and a highly toxin-producing strain generated 201.86 mg/L bongkrekic acid and 45.26 mg/L toxoflavin in co-cultivation with on PDA medium. Multilocus sequence typing phylogeny (MLST) analysis showed that housekeeping gene sequences have a certain relationship with a strain toxigenic phenotype. We developed a well-trained, back-propagation neutral network for prediction of toxigenic phenotype in based on MLST sequences with an accuracy of 100% in the training set and an accuracy of 86.7% in external test set strains. The BP neutral network offers a highly efficient approach to predict toxigenic phenotype of strains and contributes to hazard detection and safety surveillance.
由于致命毒素——棒曲霉素,黄绿青霉在黑木耳中是一个严重的安全问题。这引发了对一种高效的产毒表型识别方法的需求。本研究的目的是开发一种识别产毒菌株的有效方法。首次探索了多位点序列分型和反向传播神经网络用于识别产毒能力的潜力。从中国陕西省秦巴山区的黑木耳栽培环境中分离出有毒菌株。使用超高效液相色谱法对26株分离株的产毒能力进行了综合评估,以测定不同培养条件和食品中棒曲霉素和毒黄素的产量。这些分离株在黑木耳中产生的棒曲霉素含量在0.05 - 6.24毫克/升之间,一株高产毒菌株在与在PDA培养基上共培养时产生了201.86毫克/升的棒曲霉素和45.26毫克/升的毒黄素。多位点序列分型系统发育(MLST)分析表明,管家基因序列与菌株的产毒表型有一定关系。我们基于MLST序列开发了一个训练良好的反向传播神经网络,用于预测黄绿青霉的产毒表型,在训练集中准确率为100%,在外部测试集菌株中准确率为86.7%。BP神经网络为预测菌株的产毒表型提供了一种高效的方法,并有助于危害检测和安全监测。