Evaluation of different regression models for detection of adulteration of mustard and canola oil with argemone oil using fluorescence spectroscopy coupled with chemometrics.
Kunal ShivAnupam SinghSachin KumarLal Bahadur PrasadSeema GuptaManoj Kumar BhartyPublished in: Food additives & contaminants. Part A, Chemistry, analysis, control, exposure & risk assessment (2024)
Mustard and canola oils are commonly used cooking oils in Asian countries such as India, Nepal, and Bangladesh, making them prone to adulteration. Argemone is a well-known adulterant of mustard oil, and its alkaloid sanguinarine has been linked with health conditions such as glaucoma and dropsy. Utilising a non-destructive spectroscopic method coupled with a chemometric approach can serve better for the detection of adulterants. This work aimed to evaluate the performance of various regression algorithms for the detection of argemone in mustard and canola oils. The spectral dataset was acquired from fluorescence spectrometer analysis of pure as well as adulterated mustard and canola oils with some local and commercial samples also. The prediction performance of the eight regression algorithms for the detection of adulterants was evaluated. Extreme gradient boosting regressor (XGBR), Category gradient boosting regressor (CBR), and Random Forest (RF) demonstrate potential for predicting adulteration levels in both oils with high R 2 values.
Keyphrases
- loop mediated isothermal amplification
- machine learning
- real time pcr
- label free
- single molecule
- high resolution
- healthcare
- climate change
- public health
- fatty acid
- mental health
- deep learning
- magnetic resonance imaging
- computed tomography
- molecular docking
- mass spectrometry
- magnetic resonance
- optical coherence tomography
- health information
- quantum dots
- sensitive detection
- solid state