Comparison of the Monte Carlo and guide to uncertainty in measurement methods in estimating measurement uncertainty: Indirect measurement of the CaMV35S promoter in mixed samples of genetically modified soybean

Food Control - Tập 90 - Trang 131-139 - 2018
Jun Song1, Bei Niu2, Dong Wang1, Fuli Zhang1
1Analytical and Testing Center, Sichuan Academy of Agricultural Science, Chengdu 610066, PR China
2School of Medicine, Chengdu University, Chengdu 610106, PR China

Tài liệu tham khảo

The International Service for the Acquisition of Agri-biotech Applications (ISAAA), 2016 Arumuganathan, 1991, Nuclear DNA content of some important plant species, Plant Molecular Biology Reporter, 9, 208, 10.1007/BF02672069 Berne, 2001, Comparison of the uncertainties calculated for the results of radiochemical determinations using the law of propagation of uncertainty and a Montel Carlo simulation, Journal of Radio Analytical and Nuclear Chemistry, 248, 179, 10.1023/A:1010671301618 BIMP, 1993 Chen, 2016, Comparison of GUM and Monte Carlo methods for evaluating measurement uncertainty of perspiration measurement systems, Measurement, 87, 27, 10.1016/j.measurement.2016.03.007 International Organization for Standardization (ISO), 2008 ISO/IEC 17025, 2005 Joint Committee for Guides in Metrology JCGM 101, 2008 Macarthur, 2010, Construction of measurement uncertainty profiles for quantitative analysis of genetically modified organisms based on interlaboratory validation data, Journal of AOAC International, 93, 1046, 10.1093/jaoac/93.3.1046 Marchiosi, 2009, Glyphosate-induced metabolic changes in susceptible and glyphosate-resistant soybean (Glycine max L.) roots, Pesticide Biochemistry and Physiology, 93, 28, 10.1016/j.pestbp.2008.09.003 Ministry of agriculture of the people’s republic of China (MOA China), 2011 Nicolia, 2014, An overview of the last 10 years of genetically engineered crop safety research, Critical Reviews in Biotechnology, 34, 77, 10.3109/07388551.2013.823595 Octavian, 2016, Application of GUM Supplement1 to uncertainty of MonteCarlo computed efficiency in gamma-ray spectrometry, Applied Radiation and Isotopes, 109, 493, 10.1016/j.apradiso.2015.11.097 Ronald, 2011, Plant genetics, sustainable agriculture and global food security, Genetics, 188, 11, 10.1534/genetics.111.128553 Scott, 2016, Evidence for absolute moral opposition to genetically modified food in the United States, Perspectives on Psychological Science, 11, 315, 10.1177/1745691615621275 Song, 2017, Quantifying the measurement uncertainty of the nopaline synthase terminator in mixed samples of genetically modified rice using a bottom-up approach, Food Control, 73, 1548, 10.1016/j.foodcont.2016.11.020 The National Aeronautics and Space Administration of USA (NASA), 2010, Measurement uncertainty analysis principles and methods, NASA measurement quality assurance handbook–annex, 3 Theodorou, 2011, Comparison of ISO-GUM and Monte Carlo methods for the evaluation of measurement uncertainty: Application to direct cadmium measurement in water by GFAAS, Talanta, 83, 1568, 10.1016/j.talanta.2010.11.059 Zel, 2007, Calculation of measurement uncertainty in quantitative analysis of genetically modified organisms using intermediate precision-a practical approach, Journal of AOAC International, 582, 10.1093/jaoac/90.2.582 Zhang, 2015, An event-specific qualitative and real-time PCR detection of 98140 maize in mixed samples, Food Control, 57, 1, 10.1016/j.foodcont.2015.04.002