Integrating non-targeted metabolomics and machine learning for comprehensive phytochemical profiling and intelligent discrimination of Acorus tatarinowii and its adulterants
Key Points
Non-targeted metabolomics successfully distinguishes Acorus tatarinowii from its adulterants, enhancing identification.
The model shows an impressive accuracy rate above 90%, confirming reliability in phytochemical profiling.
This analysis utilizes machine learning to improve the identification of complex phytochemical compositions in samples.
Such methods may enable better protection against fraudulent practices in herbal product markets.
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Integrating non-targeted metabolomics and machine learning for comprehensive phytochemical profiling and intelligent discrimination of Acorus tatarinowii and its adulterants | Synapse