Literature DB >> 29680644

Mining data from milk infrared spectroscopy to improve feed intake predictions in lactating dairy cows.

J R R Dórea1, G J M Rosa2, K A Weld1, L E Armentano3.   

Abstract

Feed intake is one of the most important components of feed efficiency in dairy systems. However, it is a difficult trait to measure in commercial operations for individual cows. Milk spectrum from mid-infrared spectroscopy has been previously used to predict milk traits, and could be an alternative to predict dry matter intake (DMI). The objectives of this study were (1) to evaluate if milk spectra can improve DMI predictions based only on cow variables; (2) to compare artificial neural network (ANN) and partial least squares (PLS) predictions; and (3) to evaluate if wavelength (WL) selection through Bayesian network (BN) improves prediction quality. Milk samples (n = 1,279) from 308 mid-lactation dairy cows [127 ± 27 d in milk (DIM)] were collected between 2014 and 2016. For each milk spectra time point, DMI (kg/d), body weight (BW, kg), milk yield (MY, kg/d), fat (%), protein (%), lactose (%), and actual DIM were recorded. The DMI was predicted with ANN and PLS using different combinations of explanatory variables. Such combinations, called covariate sets, were as follows: set 1 (MY, BW0.75, DIM, and 361 WL); set 2 [MY, BW0.75, DIM, and 33 WL (WL selected by BN)]; set 3 (MY, BW0.75, DIM, and fat, protein, and lactose concentrations); set 4 (MY, BW0.75, DIM, 33 WL, fat, protein, and lactose); set 5 (MY, BW0.75, DIM, 33 WL, and visit duration in the feed bunk); set 6 (MY, DIM, and 33 WL); set 7 (MY, BW0.75, and DIM); set-WL (included 361 WL); and set-BN (included just 33 selected WL). All models (i.e., each combination of covariate set and fitting approach, ANN or PLS) were validated with an external data set. The use of ANN improved the performance of models 2, 5, 6, and BN. The use of BN combined with ANN yielded the highest accuracy and precision. The addition of individual WL compared with milk components (set 2 vs. set 3) did not improve prediction quality when using PLS. However, when ANN was employed, the model prediction with the inclusion of 33 WL was improved over the model containing only milk components (set 2 vs. set 3; concordance correlation coefficient = 0.80 vs. 0.72; coefficient of determination = 0.67 vs. 0.53; root mean square error of prediction 2.36 vs. 2.81 kg/d). The use of ANN and the inclusion of a behavior parameter, set 5, resulted in the best predictions compared with all other models (coefficient of determination = 0.70, concordance correlation coefficient = 0.83, root mean square error of prediction = 2.15 kg/d). The addition of milk spectra information to models containing cow variables improved the accuracy and precision of DMI predictions in lactating dairy cows when ANN was used. The use of BN to select more informative WL improved the model prediction when combined with cow variables, with further improvement when combined with ANN.
Copyright © 2018 American Dairy Science Association. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  dry matter intake; machine learning; milk spectra

Mesh:

Year:  2018        PMID: 29680644     DOI: 10.3168/jds.2017-13997

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


  10 in total

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Journal:  J Anim Sci       Date:  2019-05-30       Impact factor: 3.159

2.  Prediction of dry matter intake and gross feed efficiency using milk production and live weight in first-parity Holstein cows.

Authors:  Matome A Madilindi; Cuthbert B Banga; Oliver T Zishiri
Journal:  Trop Anim Health Prod       Date:  2022-09-08       Impact factor: 1.893

3.  Integrating diverse data sources to predict disease risk in dairy cattle-a machine learning approach.

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Journal:  J Anim Sci       Date:  2021-11-01       Impact factor: 3.338

4.  Influence of Estrus on the Milk Characteristics and Mid-Infrared Spectra of Dairy Cows.

Authors:  Chao Du; Liangkang Nan; Chunfang Li; Ahmed Sabek; Haitong Wang; Xuelu Luo; Jundong Su; Guohua Hua; Yabing Ma; Shujun Zhang
Journal:  Animals (Basel)       Date:  2021-04-22       Impact factor: 2.752

5.  Disentangling data dependency using cross-validation strategies to evaluate prediction quality of cattle grazing activities using machine learning algorithms and wearable sensor data.

Authors:  Leonardo Augusto Coelho Ribeiro; Tiago Bresolin; Guilherme Jordão de Magalhães Rosa; Daniel Rume Casagrande; Marina de Arruda Camargo Danes; João Ricardo Rebouças Dórea
Journal:  J Anim Sci       Date:  2021-09-01       Impact factor: 3.338

Review 6.  A Vision for Development and Utilization of High-Throughput Phenotyping and Big Data Analytics in Livestock.

Authors:  James E Koltes; John B Cole; Roxanne Clemmens; Ryan N Dilger; Luke M Kramer; Joan K Lunney; Molly E McCue; Stephanie D McKay; Raluca G Mateescu; Brenda M Murdoch; Ryan Reuter; Caird E Rexroad; Guilherme J M Rosa; Nick V L Serão; Stephen N White; M Jennifer Woodward-Greene; Millie Worku; Hongwei Zhang; James M Reecy
Journal:  Front Genet       Date:  2019-12-17       Impact factor: 4.599

7.  Would large dataset sample size unveil the potential of deep neural networks for improved genome-enabled prediction of complex traits? The case for body weight in broilers.

Authors:  Tiago L Passafaro; Fernando B Lopes; João R R Dórea; Mark Craven; Vivian Breen; Rachel J Hawken; Guilherme J M Rosa
Journal:  BMC Genomics       Date:  2020-11-09       Impact factor: 3.969

Review 8.  Over 20 Years of Machine Learning Applications on Dairy Farms: A Comprehensive Mapping Study.

Authors:  Philip Shine; Michael D Murphy
Journal:  Sensors (Basel)       Date:  2021-12-22       Impact factor: 3.576

Review 9.  Opportunities to Harness High-Throughput and Novel Sensing Phenotypes to Improve Feed Efficiency in Dairy Cattle.

Authors:  Cori J Siberski-Cooper; James E Koltes
Journal:  Animals (Basel)       Date:  2021-12-22       Impact factor: 2.752

Review 10.  Infrared Spectrometry as a High-Throughput Phenotyping Technology to Predict Complex Traits in Livestock Systems.

Authors:  Tiago Bresolin; João R R Dórea
Journal:  Front Genet       Date:  2020-08-20       Impact factor: 4.599

  10 in total

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