Literature DB >> 33222859

A comparison of 4 different machine learning algorithms to predict lactoferrin content in bovine milk from mid-infrared spectra.

H Soyeurt1, C Grelet2, S McParland3, M Calmels4, M Coffey5, A Tedde6, P Delhez7, F Dehareng2, N Gengler6.   

Abstract

Lactoferrin (LF) is a glycoprotein naturally present in milk. Its content varies throughout lactation, but also with mastitis; therefore it is a potential additional indicator of udder health beyond somatic cell count. Condequently, there is an interest in quantifying this biomolecule routinely. First prediction equations proposed in the literature to predict the content in milk using milk mid-infrared spectrometry were built using partial least square regression (PLSR) due to the limited size of the data set. Thanks to a large data set, the current study aimed to test 4 different machine learning algorithms using a large data set comprising 6,619 records collected across different herds, breeds, and countries. The first algorithm was a PLSR, as used in past investigations. The second and third algorithms used partial least square (PLS) factors combined with a linear and polynomial support vector regression (PLS + SVR). The fourth algorithm also used PLS factors, but included in an artificial neural network with 1 hidden layer (PLS + ANN). The training and validation sets comprised 5,541 and 836 records, respectively. Even if the calibration prediction performances were the best for PLS + polynomial SVR, their validation prediction performances were the worst. The 3 other algorithms had similar validation performances. Indeed, the validation root mean squared error (RMSE) ranged between 162.17 and 166.75 mg/L of milk. However, the lower standard deviation of cross-validation RMSE and the better normality of the residual distribution observed for PLS + ANN suggest that this modeling was more suitable to predict the LF content in milk from milk mid-infrared spectra (R2v = 0.60 and validation RMSE = 162.17 mg/L of milk). This PLS +ANN model was then applied to almost 6 million spectral records. The predicted LF showed the expected relationships with milk yield, somatic cell score, somatic cell count, and stage of lactation. The model tended to underestimate high LF values (higher than 600 mg/L of milk). However, if the prediction threshold was set to 500 mg/L, 82% of samples from the validation having a content of LF higher than 600 mg/L were detected. Future research should aim to increase the number of those extremely high LF records in the calibration set.
Copyright © 2020 American Dairy Science Association. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  lactoferrin; machine learning; mid infrared; milk

Mesh:

Substances:

Year:  2020        PMID: 33222859     DOI: 10.3168/jds.2020-18870

Source DB:  PubMed          Journal:  J Dairy Sci        ISSN: 0022-0302            Impact factor:   4.034


  5 in total

1.  In-line near-infrared analysis of milk coupled with machine learning methods for the daily prediction of blood metabolic profile in dairy cattle.

Authors:  Diana Giannuzzi; Lucio Flavio Macedo Mota; Sara Pegolo; Luigi Gallo; Stefano Schiavon; Franco Tagliapietra; Gil Katz; David Fainboym; Andrea Minuti; Erminio Trevisi; Alessio Cecchinato
Journal:  Sci Rep       Date:  2022-05-16       Impact factor: 4.996

2.  Identification of milk quality and adulteration by surface-enhanced infrared absorption spectroscopy coupled to artificial neural networks using citrate-capped silver nanoislands.

Authors:  Sherif M Eid; Sherine El-Shamy; Mohamed A Farag
Journal:  Mikrochim Acta       Date:  2022-07-29       Impact factor: 6.408

3.  Prediction of Indirect Indicators of a Grass-Based Diet by Milk Fourier Transform Mid-Infrared Spectroscopy to Assess the Feeding Typologies of Dairy Farms.

Authors:  Hélène Soyeurt; Cyprien Gerards; Charles Nickmilder; Jérôme Bindelle; Sébastien Franceschini; Frédéric Dehareng; Didier Veselko; Carlo Bertozzi; Nicolas Gengler; Antonino Marvuglia; Alper Bayram; Anthony Tedde
Journal:  Animals (Basel)       Date:  2022-10-04       Impact factor: 3.231

4.  Multiple Country Approach to Improve the Test-Day Prediction of Dairy Cows' Dry Matter Intake.

Authors:  Anthony Tedde; Clément Grelet; Phuong N Ho; Jennie E Pryce; Dagnachew Hailemariam; Zhiquan Wang; Graham Plastow; Nicolas Gengler; Eric Froidmont; Frédéric Dehareng; Carlo Bertozzi; Mark A Crowe; Hélène Soyeurt
Journal:  Animals (Basel)       Date:  2021-05-04       Impact factor: 2.752

5.  Selecting Milk Spectra to Develop Equations to Predict Milk Technological Traits.

Authors:  Maria Frizzarin; Isobel Claire Gormley; Alessandro Casa; Sinéad McParland
Journal:  Foods       Date:  2021-12-11
  5 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.