Shuang Liu, Hongjing Dong, Minmin Zhang, Wei Geng, Xiao Wang
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Identification of different degrees of processed Ginger using GC-IMS combined with machine learning
• GC-IMS can analyze VOCs in different ginger processed products nondestructively and quickly • Nine indicator compounds are uncovered to distinguish different grades of processing ginger • Three machine learning models were built, with an accuracy of > 90% • These models were successfully validated in testing set
期刊介绍:
The Journal of Pharmaceutical Analysis (JPA), established in 2011, serves as the official publication of Xi'an Jiaotong University.
JPA is a monthly, peer-reviewed, open-access journal dedicated to disseminating noteworthy original research articles, review papers, short communications, news, research highlights, and editorials in the realm of Pharmacy Analysis. Encompassing a wide spectrum of topics, including Pharmaceutical Analysis, Analytical Techniques and Methods, Pharmacology, Metabolism, Drug Delivery, Cellular Imaging & Analysis, Natural Products, and Biosensing, JPA provides a comprehensive platform for scholarly discourse and innovation in the field.