Intelligent evaluation of free amino acid and crude protein content in raw peanut seed kernels using NIR spectroscopy paired with multivariable calibration.
Suleiman A HarunaHuanhuan LiWenya WeiWenhui GengSelorm Yao-Say Solomon AdadeQuansheng ChenNgouana Moffo A IvaneQuansheng ChenPublished in: Analytical methods : advancing methods and applications (2022)
Given the nutritional importance of peanuts, this study examined the free amino acid (FAA) and crude protein (CP) content in raw peanut seeds. Near-infrared spectroscopy (NIRS) was employed in combination with variable selection algorithms after successful reference data analysis using colorimetric and Kjeldahl methods. Ensuing the application of partial least squares (PLS) as a full spectral model, the genetic algorithm (GA), bootstrapping soft shrinkage (BOSS), uninformative variable elimination (UVE), and random frog (RF) models were tested and assessed. A comparison of correlation coefficients of prediction ( R p ), root mean square error of prediction (RMSEP), and residual predictive deviation (RPD) was performed to appraise the performance of the built models. Using RF-PLS, an unsurpassed outcome was achieved for FAA ( R p = 0.937, RPD = 3.38) and CP ( R p = 0.9261, RPD = 3.66). These findings demonstrated that NIR in combination with RF-PLS could be utilized for quantitative, rapid, and nondestructive prediction of FAA and CP in raw peanut seed samples.
Keyphrases
- amino acid
- machine learning
- fluorescent probe
- deep learning
- photodynamic therapy
- high resolution
- pet ct
- protein protein
- drug release
- genome wide
- optical coherence tomography
- binding protein
- living cells
- magnetic resonance imaging
- magnetic resonance
- electronic health record
- copy number
- dna methylation
- small molecule
- nitric oxide
- data analysis
- computed tomography
- low cost
- solid state