A ricin forensic profiling approach based on a complex set of biomarkers

A forensic method for the retrospective determination of preparation methods used for illicit ricin toxin production was developed. The method was based on a complex set of biomarkers, including carbohydrates, fatty acids, seed storage proteins, in combination with data on ricin and Ricinus communis...

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Veröffentlicht in:Talanta (Oxford) 2018-08, Vol.186, p.628-635
Hauptverfasser: Fredriksson, Sten-Åke, Wunschel, David S., Lindström, Susanne Wiklund, Nilsson, Calle, Wahl, Karen, Åstot, Crister
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Sprache:eng
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Zusammenfassung:A forensic method for the retrospective determination of preparation methods used for illicit ricin toxin production was developed. The method was based on a complex set of biomarkers, including carbohydrates, fatty acids, seed storage proteins, in combination with data on ricin and Ricinus communis agglutinin. The analyses were performed on samples prepared from four castor bean plant (R. communis) cultivars by four different sample preparation methods (PM1–PM4) ranging from simple disintegration of the castor beans to multi-step preparation methods including different protein precipitation methods. Comprehensive analytical data was collected by use of a range of analytical methods and robust orthogonal partial least squares-discriminant analysis- models (OPLS-DA) were constructed based on the calibration set. By the use of a decision tree and two OPLS-DA models, the sample preparation methods of test set samples were determined. The model statistics of the two models were good and a 100% rate of correct predictions of the test set was achieved. [Display omitted] •Retrospective determination of the methods used for ricin production.•Four ricin preparation methods and four castor bean ecotypes in calibration model.•Use of a complex set of chemical attribution signatures.•100% correct prediction of test set samples.
ISSN:0039-9140
1873-3573
DOI:10.1016/j.talanta.2018.03.070