TY - JOUR
T1 - A Preliminary Study to Classify Corn Silage for High or Low Mycotoxin Contamination by Using near Infrared Spectroscopy
AU - Ghilardelli, F
AU - Barbato, M
AU - Gallo, Antonio
PY - 2022
Y1 - 2022
N2 - 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., mu g/kg dry matter) or count (i.e., n) of (i) total detectable mycotoxins; (ii) regulated and emerging Fusarium toxins; (iii) emerging Fusarium toxins; (iv) Fumonisins and their metabolites; and (v) Penicillium 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 mu g/kg DM (i.e., 96.0 +/- 2.7%) or 34 (i.e., 97.1 +/- 1.8%), respectively. Regulated and emerging Fusarium mycotoxins achieved accuracies slightly less than 90%. For the Penicillium mycotoxin contamination category, an accuracy of 95.1 +/- 2.8% was obtained by using a cut-off limit of 350 mu g/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.
AB - 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., mu g/kg dry matter) or count (i.e., n) of (i) total detectable mycotoxins; (ii) regulated and emerging Fusarium toxins; (iii) emerging Fusarium toxins; (iv) Fumonisins and their metabolites; and (v) Penicillium 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 mu g/kg DM (i.e., 96.0 +/- 2.7%) or 34 (i.e., 97.1 +/- 1.8%), respectively. Regulated and emerging Fusarium mycotoxins achieved accuracies slightly less than 90%. For the Penicillium mycotoxin contamination category, an accuracy of 95.1 +/- 2.8% was obtained by using a cut-off limit of 350 mu g/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.
KW - emerging mycotoxins
KW - forage
KW - machine learning
KW - random forest
KW - emerging mycotoxins
KW - forage
KW - machine learning
KW - random forest
UR - https://publicatt.unicatt.it/handle/10807/219577
UR - https://www.scopus.com/inward/citedby.uri?partnerID=HzOxMe3b&scp=85130112701&origin=inward
UR - https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85130112701&origin=inward
U2 - 10.3390/toxins14050323
DO - 10.3390/toxins14050323
M3 - Article
SN - 2072-6651
VL - 14
SP - N/A-N/A
JO - Toxins
JF - Toxins
IS - 5
ER -