| Literature DB >> 32399210 |
Sadjad Danesh Mesgaran1, Anja Eggert2, Peter Höckels3, Michael Derno1, Björn Kuhla1.
Abstract
BACKGROUND: Transformation of feed energy ingested by ruminants into milk is accompanied by energy losses via fecal and urine excretions, fermentation gases and heat. Heat production may differ among dairy cows despite comparable milk yield and body weight. Therefore, heat production can be considered an indicator of metabolic efficiency and directly measured in respiration chambers. The latter is an accurate but time-consuming technique. In contrast, milk Fourier transform mid-infrared (FTIR) spectroscopy is an inexpensive high-throughput method and used to estimate different physiological traits in cows. Thus, this study aimed to develop a heat production prediction model using heat production measurements in respiration chambers, milk FTIR spectra and milk yield measurements from dairy cows.Entities:
Keywords: Dairy cattle; Heat production; Milk spectra; Partial least square regression; Respiration chamber
Year: 2020 PMID: 32399210 PMCID: PMC7204237 DOI: 10.1186/s40104-020-00455-0
Source DB: PubMed Journal: J Anim Sci Biotechnol ISSN: 1674-9782
Ingredients, nutrient composition and energy content of the diets fed to the animals during the respiration chamber experiments
| Item | Minimum | Maximum | Mean | Median | SD |
|---|---|---|---|---|---|
| Ingredients, g/kg of DM | |||||
| Grass silage | 500 | 915 | 692 | 680 | 81 |
| Corn silage | 238.0 | 452.5 | 360.0 | 375.0 | 93.3 |
| Barley straw | 42 | 423 | 214 | 259 | 93 |
| Concentrate | 4.6 | 27.9 | 17.7 | 17.8 | 3.4 |
| Nutrient composition | |||||
| DM, g/kg | 353 | 941 | 529 | 388 | 235 |
| NDFa, g/kg of DM | 275 | 497 | 377 | 377 | 51 |
| ADFb, g/kg of DM | 146 | 254 | 197 | 197 | 23 |
| Crude protein, g/kg of DM | 122 | 171 | 152 | 155 | 13 |
| Crude fat, g/kg of DM | 24 | 33 | 30 | 30 | 2 |
| Ash, g/kg of DM | 38 | 135 | 71 | 69 | 19 |
| MEc, MJ/kg of DM | 8.5 | 11.6 | 10.3 | 10.5 | 0.7 |
aNeutral detergent fiber
bAcid detergent fiber
cMetabolizable energy
Descriptive analysis of animal performance, gas exchange measurements and computed heat production (n = 168)
| Item | Minimum | Maximum | Mean | Median | SD |
|---|---|---|---|---|---|
| Animal performance | |||||
| BW, kg | 500 | 915 | 692 | 680 | 80 |
| mBWa, kg0.75 | 105.7 | 166.4 | 134.8 | 133.3 | 11.7 |
| Lactation number | 1.0 | 10 | 2.9 | 3.0 | 1.6 |
| Days in milk, d | 42.0 | 423.0 | 213.5 | 259.0 | 92.8 |
| DMI, kg/d | 4.6 | 27.9 | 17.7 | 17.8 | 3.4 |
| Milk yield, L/d | 5.2 | 51.4 | 25.7 | 24.0 | 10.3 |
| Gas exchange measurements | |||||
| O2, L | 4686 | 9238 | 6786 | 6740 | 720 |
| CO2, L | 4615 | 9313 | 7072 | 7099 | 908 |
| CH4, L | 299 | 792 | 570 | 579 | 81 |
| Heat production, kJ/kg BW0.75 | 712 | 1469 | 1067 | 1068 | 136 |
aMetabolic bodyweight (mBW = BW075)
The statistics of partial least square regression approach for the milk Fourier transform mid-infrared spectrometry-based estimation model for heat production of dairy cows
| Trait | Prediction model | Calibration | LVc | Cross Validation | External Validation | |||
|---|---|---|---|---|---|---|---|---|
| R2 | RMSEPb | R2CV | RMSECVd | R2V | RMSEVe | |||
| Heat production, kJ/kg BW0.75 | M1a | 0.23 | 99.9 | 14 | 0.25 | 86.7 | 0.18 | 114.1 |
| M2a | 0.52 | 93.2 | 4 | 0.55 | 89.4 | 0.48 | 84.0 | |
| M3a | 0.54 | 91.2 | 5 | 0.57 | 86.5 | 0.47 | 95.5 | |
aModel M1 was developed using the averaged morning and afternoon spectral data. The prediction model M2 was developed by averaging the morning and afternoon spectral data and subsequent multiplication with daily milk yield. The prediction model M3 was computed by weighted averaging, where each morning or afternoon absorption spectra was multiplied to the respective milk yield
bThe square root of the mean squared error of prediction
cLatent variables; i.e. the partial least square regression components for the prediction model
dRoot mean squared error of cross validation
eRoot mean squared error of external validation
Fig. 1Predicted against observed measurements (a) and residual against predicted measurements (b) applying the milk Fourier transform mid-infrared spectrometry partial least square (PLS) regression model M2 predicting heat production (HP) of dairy cattle in respiration chamber. Prediction model M2 was developed by averaging the morning and afternoon spectral data and multiply to the milk yield at the day of sampling
Fig. 2Predicted against observed measurements (a) and residual against predicted measurements (b) applying the milk Fourier transform mid-infrared spectrometry partial least square (PLS) regression model M3 predicting heat production (HP) of dairy cattle in respiration chamber. Prediction model M3 was computed by weighted averaging the morning and afternoon milk spectral data, in which each morning or afternoon absorption spectra was multiplied to the respective milk yield and subsequently the average spectrum was computed