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Australian Journal of Chemistry Australian Journal of Chemistry Society
An international journal for chemical science
RESEARCH ARTICLE

NIRS Calibration of Aflatoxin in Maize

Ross E. Darnell A F , Jagger J. Harvey B , Glen P. Fox C , Mary T. Fletcher C , James Wainaina D , Immaculate Wanjuki E and Warwick J. Turner E
+ Author Affiliations
- Author Affiliations

A DATA61, CSIRO, PO Box 2583, Brisbane, Qld 4001, Australia.

B Feed the Future Innovation Lab for the Reduction of Post-Harvest Loss, 103B Waters Hall, 1603 Old Claflin Place, Kansas State University, Manhattan, KS 66506, USA.

C Queensland Alliance for Agriculture and Food Innovation (QAAFI), The University of Queensland, Health and Food Sciences Precinct, Coopers Plains, Qld 4108, Australia.

D The University of Western Australia, Australian Research Council Centre of Excellence in Plant Energy Biology and School of Molecular Sciences, Crawley, Perth, WA 6009, Australia.

E BecA (Biosciences East Central Africa), PO Box 30709, Nairobi 00100, Kenya.

F Corresponding author. Email: ross.darnell@csiro.au

Australian Journal of Chemistry 71(11) 868-873 https://doi.org/10.1071/CH18316
Submitted: 2 July 2018  Accepted: 29 August 2018   Published: 13 September 2018

Abstract

The aim of this study is to determine the value of near-infrared spectroscopy (NIRS) as a diagnostic tool for aflatoxin contamination, specifically to rapidly predict levels of aflatoxin, either quantitatively or qualitatively, in ground maize. Maize was collected from inoculated field trials conducted across four sites in Kenya. Inoculated and uninoculated maize ears were harvested, milled, and prepared for NIRS scanning and wet chemistry-based aflatoxin quantification. Several statistical and machine learning techniques were compared. Absorbance at a single bandwidth explained 34 % of the variation in levels of aflatoxin using a regression model while a partial least-squares (PLS) method showed that NIR measurements could explain 42 % of the variation in aflatoxin levels. To compare various methods for their ability to classify samples with high (>100 ppb) levels of aflatoxin, various additional procedures were applied. The k-nearest neighbour classification method yielded sensitivity and specificity values of 0.75 and 0.52 respectively, compared with the support vector machine method with estimates of 0.81 and 0.68, whereas PLS could achieve values of 0.82 and 0.72 respectively. The corresponding false positive and false negative values are still unacceptable for NIRS to be used with confidence, as ~18 % of contaminated ground maize samples would be accepted and 28 % of good maize would be discarded or declared contaminated or downgraded. However, such calibrations could be useful in breeding programs without access to wet chemistry analysis, seeking to rank entries semiquantitatively.


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