Department of Animal Science, Food and Nutrition (DIANA), Faculty of Agricultural, Food and Environmental Sciences, Università Cattolica del Sacro Cuore, 29122 Piacenza, Italy.
Toxins (Basel). 2022 May 3;14(5):323. doi: 10.3390/toxins14050323.
Mycotoxins should be monitored in order to properly evaluate corn silage safety quality. In the present study, corn silage samples (n = 115) were collected in a survey, characterized for concentrations of mycotoxins, and scanned by a NIR spectrometer. Random Forest classification models for NIR calibration were developed by applying different cut-offs to classify samples for concentration (i.e., μg/kg dry matter) or count (i.e., n) of (i) total detectable mycotoxins; (ii) regulated and emerging toxins; (iii) emerging toxins; (iv) and their metabolites; and (v) toxins. An over- and under-sampling re-balancing technique was applied and performed 100 times. The best predictive model for total sum and count (i.e., accuracy mean ± standard deviation) was obtained by applying cut-offs of 10,000 µg/kg DM (i.e., 96.0 ± 2.7%) or 34 (i.e., 97.1 ± 1.8%), respectively. Regulated and emerging mycotoxins achieved accuracies slightly less than 90%. For the mycotoxin contamination category, an accuracy of 95.1 ± 2.8% was obtained by using a cut-off limit of 350 µg/kg DM as a total sum or 98.6 ± 1.3% for a cut-off limit of five as mycotoxin count. In conclusion, this work was a preliminary study to discriminate corn silage for high or low mycotoxin contamination by using NIR spectroscopy.
为了正确评估玉米青贮的安全质量,应监测真菌毒素。本研究通过调查采集了 115 个玉米青贮样本,对其真菌毒素浓度进行了特征描述,并采用近红外光谱仪进行了扫描。通过应用不同的截止值,为(i)总可检测真菌毒素;(ii)受监管和新兴毒素;(iii)新兴毒素;(iv)及其代谢物;和(v)镰刀菌毒素的浓度(即μg/kg 干物质)或计数(即 n),开发了用于 NIR 校准的随机森林分类模型。采用过采样和欠采样再平衡技术重复进行了 100 次。通过应用 10,000µg/kg DM(即 96.0±2.7%)或 34(即 97.1±1.8%)的截止值,获得了总和计数(即准确率均值±标准偏差)的最佳预测模型。受监管和新兴真菌毒素的准确率略低于 90%。对于 真菌毒素污染类别,通过使用 350µg/kg DM 的总和截止值或 5 的真菌毒素计数截止值,获得了 95.1±2.8%的准确率。总之,这项工作是使用近红外光谱法区分高或低真菌毒素污染玉米青贮的初步研究。