NIR Spectroscopy for Rapid Freshness Assessment and Quality Classification of Chicken Eggs
DOI:
https://doi.org/10.35516/jjas.v21i1.2121Keywords:
Classification of eggs, , Freshness of chicken eggs, NIR Spectroscopy, Non-destructive method, , MSC, SNV, SG 1st Derivate, PLS-R, SVM-R, PLS-DA, SVM-CAbstract
Eggs undergo significant alterations during storage, which results in a loss of quality. To keep an eye on the freshness and quality of the eggs, it is essential to predict these changes. This study's objective was to assess the use of visible Near infrared (NIR) spectroscopy, which is a quick, non-destructive, online method for evaluating the quality of eggs. During the study six hundred sixty whole fresh eggs with white shells produced by the same group of hens fed a typical feed was acquired. They were placed in temperature-controlled environments whose temperature was 20°C and 30°C respectively and observed their spectra for 25 days of storage. The spectra of 40 eggs were collected for 0, 4,7,10,14,17,19,21,25 days within the NIR spectral range of 902 to 1810 nm; the absorption spectrum data was found to be collected for every 4nm span. The spectral non-destructive data was contrasted with the Haugh Units (HU) of the egg sample in terms of freshness and to the quantity of storage days in terms of quality. This study explores the potential of Near-Infrared (NIR) spectroscopy combined with chemometric analysis for non-destructive egg quality assessment, focusing on predicting Haugh Units (HU) and storage duration. The research involved systematic data collection, preprocessing of NIR spectra, and developing predictive models using Partial Least Squares (PLS) regression. Results demonstrated a high accuracy in predicting HU values and storage duration, with an R² value of 0.986 for calibration. Eggs stored at 20°C maintained higher HU values than those stored at 30°C, significantly impacting freshness assessment. Principal Component Analysis (PCA) effectively reduced data dimensionality, enhancing model precision. Combining shell measurement areas and preprocessing techniques improved PLS-DA model performance, achieving up to 95.75% accuracy in classifying egg freshness. The findings highlight the practical application of NIR spectroscopy and chemometric analysis in the food industry for ensuring egg quality and freshness.
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Coronel-Reyes, J., Ramirez-Morales, I., Fernandez-Blanco, E., Rivero, D., Pazos, A. (2018). Determination of egg storage time at room temperature using a low-cost NIR spectrometer and machine learning techniques. Computers and Electronics in Agriculture, 145, 1–10. https://doi.org/10.1016/j.compag.2017.12.030
Fu, D., et al. (2022). Assessment of integrated freshness index of different varieties of eggs using the visible and near-infrared spectroscopy. International Journal of Food Properties, 26(1), 155–166. https://doi.org/10.1080/10942912.2022.2158866
Zhang, J., et al. (2023). Nondestructive detection of egg freshness based on infrared thermal imaging. Sensors, 23(12), 5530. https://doi.org/10.3390/s23125530
Dong, X., Tang, X., et al. (2018). Nondestructive egg freshness assessment of air chamber diameter by Vis-NIR spectroscopy. Proceedings of the 2018 Detroit Conference, 29-31. https://doi.org/10.13031/aim.201801022
Puertas, G., & Vázquez, M. (2019). Fraud detection in hen housing system declared on the eggs' label: An accuracy method based on UV-Vis-NIR spectroscopy and chemometrics. Food Chemistry, 288, 8–14. https://doi.org/10.1016/j.foodchem.2019.02.106
Loffredi, E., et al. (2021). Spectroscopic approaches for non-destructive shell egg quality and freshness evaluation: Opportunities and challenges. Food Control, 129, 108255. https://doi.org/10.1016/j.foodcont.2021.108255
Liu, C., et al. (2022). Origins classification of egg with different storage durations using FT-NIR: A characteristic wavelength selection approach based on information entropy. Biosystems Engineering, 222, 82–92. https://doi.org/10.1016/j.biosystemseng.2022.07.016
Wang, T., et al. (2022). Smartphone imaging spectrometer for egg/meat freshness monitoring. Analytical Methods, 14(5), 508–517. https://doi.org/10.1039/d1ay01726h
Guo, H., et al. (2022). A novel NIR-based strategy for rapid freshness assessment of preserved eggs. Food Analytical Methods, 15(5), 1457–1469. https://doi.org/10.1007/s12161-021-02218-7
Dong, X., Zhang, B., et al. (2020). Egg freshness prediction using a comprehensive analysis based on visible near infrared spectroscopy. Spectroscopy Letters, 53(7), 512–522. https://doi.org/10.1080/00387010.2020.1787455
Dong, X., Dong, J., et al. (2019). Maintaining the predictive abilities of egg freshness models on new variety based on Vis-NIR spectroscopy technique. Computers and Electronics in Agriculture, 156, 669–676. https://doi.org/10.1016/j.compag.2018.12.012
Akowuah, T. O., et al. (2020). Rapid and nondestructive determination of egg freshness category and marked date of lay using spectral fingerprint. Journal of Spectroscopy, 2020, 1–11. https://doi.org/10.1155/2020/8838542
Wang, F., et al. (2021). Egg freshness evaluation using transmission and reflection of NIR spectroscopy coupled with multivariate analysis. Foods, 10(9), 2176. https://doi.org/10.3390/foods10092176
Brasil, Y. L., et al. (2022). Fast online estimation of quail eggs freshness using portable NIR spectrometer and machine learning. Food Control, 131, 108418. https://doi.org/10.1016/j.foodcont.2021.108418
Cruz-Tirado, J. P., et al. (2021). On-line monitoring of egg freshness using a portable NIR spectrometer in tandem with machine learning. Journal of Food Engineering, 306, 110643. https://doi.org/10.1016/j.jfoodeng.2021.110643
Lin, H., et al. (2011). Freshness measurement of eggs using near infrared (NIR) spectroscopy and multivariate data analysis. Innovative Food Science & Emerging Technologies, 12(2), 182–186. https://doi.org/10.1016/j.ifset.2011.01.008
Zhao, J., et al. (2010). Identification of egg’s freshness using NIR and support vector data description. Journal of Food Engineering, 98(4), 408–414. https://doi.org/10.1016/j.jfoodeng.2010.01.018
Yang, Q. H., Jia, M. M., Xun, Y., & Bao, G. J. (2018). Detection of egg stains based on local texture feature clustering. International Journal of Agricultural & Biological Engineering, 11(1), 199–205.
Wang, F., & Wen, Y. (2011). Detecting preserved eggshell cracks using machine vision. 2011 International Conference on Information Technology, Computer Engineering and Management Sciences, 3, 180-184. IEEE.
Holst, W. F., Almquist, H. J., & Lorenz, F. W. (1931). Study of shell texture of the hen's egg. Poultry Science, 10, 150–157.
Nachev, V., Damyanov, C., & Titova, T. (2012). Wavelet neural network for non-destructive egg freshness determination. Academic Journal of Science, 1(2), 95–103.
Soltani, M., et al. (2014). Egg quality prediction using dielectric and visual properties based on artificial neural network. Food Analytical Methods, 8(3), 710–717. https://doi.org/10.1007/s12161-014-9948-x
Mehdizadeh, S. A., Minaei, S., Hancock, N. H., & Karimi Torshizi, M. A. (2014). An intelligent system for egg quality classification based on visible-infrared transmittance spectroscopy. Information Processing in Agriculture, 1, 105–114.
Karoui, R., Kemps, B., Bamelis, F., De Ketelaere, B., Decuypere, E., & De Baerdemaeker, J. (2005). Methods to evaluate egg freshness in research and industry: A review. European Food Research and Technology, 222(6), 727–732.
Mota-Grajales, R., Torres-Peña, J. C., Camas-Anzueto, J. L., Pérez-Patricio, M., Grajales Coutiño, R., López-Estrada, F. R., Escobar-Gómez, E. N., Guerra-Crespo, H. (2018). Defect detection in eggshell using a vision system to ensure the incubation in poultry production. Measurement, 116, 503-511.
Abdel-Nour, N. (2008). Chicken egg quality assessment from visible/near infrared observations. [Master's thesis, Graduate and Postdoctoral Office]. https://www.uoguelph.ca
Lordelo, M., Fernandes, E., Bessa, R. J. B., & Alves, S. P. (2017). Quality of eggs from different laying hen production systems, from indigenous breeds and specialty eggs. Poultry Science, 96, 1485–1491.
Ketta, M., & Tůmová, E. (2016). Eggshell structure, measurements, and quality-affecting factors in laying hens: A review. Czech Journal of Animal Science, 61(7), 299–309.
Aboonajmi, M., Akram, A., Nishizu, T., Kondo, N., Setarehdan, S. K., & Rajabipour, A. (2010). An ultrasound-based technique for the determination of poultry egg quality. Research in Agricultural Engineering, 56(1), 26–32.
Sun, L., Yuan, L., Cai, J., Lin, H., & Zhao, J. (2015). Egg freshness on-line estimation using machine vision and dynamic weighing. Food Analytical Methods, 8, 922–928.
Ramírez-Gutiérrez, K. A., Medina-Santiago, A., Martínez-Cruz, A., Algredo-Badillo, I., & Peregrina-Barreto, H. (2019). Eggshell deformation detection applying computer vision. Computers and Electronics in Agriculture, 158, 133–139.
Monira, K. N., Salahuddin, M., & Miah, G. (2003). Effect of breed and holding period on egg quality characteristics of chicken. International Journal of Poultry Science, 2, 261–263.
Roberts, J. R. (2004). Factors affecting egg internal quality and eggshell quality in laying hen. Journal of Poultry Science, 41, 161–177.
Zhao, J., Lin, H., Chen, Q. H., Huang, X. Y., Sun, Z. B., & Zhou, F. (2010). Identification of egg’s freshness using NIR and support vector data description. Journal of Food Engineering, 98(4), 408–414. https://doi.org/10.1016/j.jfoodeng.2010.01.018
Jacob, J. P., Miles, R. D., & Mather, F. B. (2008). Egg quality. University of Florida IFAS Extension. https://edis.ifas.ufl.edu
Brake, J., Walsh, T. J., Benton, C. E. Jr., Petitte, J. N., Meijerhof, R., & Peñalva, G. (1997). Egg handling and storage. Poultry Science, 76, 144–151.
Akyurek, H., & Okur, A. A. (2009). Effect of storage time, temperature and hen age on egg quality in free-range layer hens. Journal of Animal and Veterinary Advances, 8(10), 1953–1958.
Tamiru, H., Duguma, M., Furgasa, W., & Yimer, L. (2019). Review on chicken egg quality determination, grading, and affecting factors. Asian Journal of Medical Science Research & Review, 1(1), 1–11.
Freni, F., Quattrocchi, A., Piccolo, S. A., & Montanini, R. (2019). Quantitative evaluation of eggs freshness using flash thermography. Quantitative InfraRed Thermography Journal, 17(2), 35–50.
Tůmová, E., Gous, R. M., & others (2014). Effect of hen age, environmental temperature, and oviposition time on eggshell quality and eggshell and serum mineral contents in laying and broiler breeder hens. Czech Journal of Animal Science, 59(9), 435–443.
Bao, G. J., Jia, M. M., Xun, Y., Cai, S. B., & Yang, Q. H. (2019). Cracked egg recognition based on machine vision. Computers and Electronics in Agriculture, 158, 159–166. https://doi.org/10.1016/j.compag.2019.01.002
Suktanarak, S., & Teerachaichayut, S. (2017). Non-destructive quality assessment of hens’ eggs using hyperspectral images. Journal of Food Engineering, 215, 97–103.
Hosen, S. Z., Swati, P., & Dibyajyoti, S. (2013). Artificial and fake eggs: Dance of death. Advances in Pharmacological Pharm, 1(1), 13–17.
Puertas, G., Cazón, P., & Vázquez, M. (2023). A quick method for fraud detection in egg labels based on egg centrifugation plasma. Food Chemistry, 402, 134507.
Zhang, W., Pan, L., Tu, S., Zhan, G., & Tu, K. (2015). Non-destructive internal quality assessment of eggs using a synthesis of hyperspectral imaging and multivariate analysis. Journal of Food Engineering, 157, 41–48.
Barker, M., & Rayens, W. (2003). Partial least squares for discrimination. Journal of Chemometrics, 17(3), 166–173. https://doi.org/10.1002/cem.809
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Copyright (c) 2025 Jordan Journal of Agricultural Sciences

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
Accepted 2024-08-19
Published 2025-03-01