Combining multivariate image analysis with high-performance thin-layer chromatography for development of a reliable tool for saffron authentication and adulteration detection
Arian Amirvaresi(Mitchell Institute), Hadi Parastar(Technische Hochschule Mannheim), Maryam Amirahmadi(Iran Nanohealth Committee Food and Drug Organization), Bahram Daraei(Shahid Beheshti University), Masoumeh Rashidi(Iran Nanohealth Committee Food and Drug Organization), Marzyeh Kamyar(Iran Nanohealth Committee Food and Drug Organization)
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