| Literature DB >> 36035148 |
Xiao-Lin Wu1,2, George R Wiggans1, H Duane Norman1, Asha M Miles3, Curtis P Van Tassell3, Ransom L Baldwin3, Javier Burchard1, João Dürr1.
Abstract
Cost-effective milking plans have been adapted to supplement the standard supervised twice-daily monthly testing scheme since the 1960s. Various methods have been proposed to estimate daily milk yields (DMY), focusing on yield correction factors. The present study evaluated the performance of existing statistical methods, including a recently proposed exponential regression model, for estimating DMY using 10-fold cross-validation in Holstein and Jersey cows. The initial approach doubled the morning (AM) or evening (PM) yield as estimated DMY in AM-PM plans, assuming equal 12-h AM and PM milking intervals. However, in reality, AM milking intervals tended to be longer than PM milking intervals. Additive correction factors (ACF) provided additive adjustments beyond twice AM or PM yields. Hence, an ACF model equivalently assumed a fixed regression coefficient or a multiplier of "2.0" for AM or PM yields. Similarly, a linear regression model was viewed as an ACF model, yet it estimated the regression coefficient for a single milk yield from the data. Multiplicative correction factors (MCF) represented daily to partial milk yield ratios. Hence, multiplying a yield from single milking by an appropriate MCF gave a DMY estimate. The exponential regression model was analogous to an exponential growth function with the yield from single milking as the initial state and the rate of change tuned by a linear function of milking interval. In the present study, all the methods had high precision in the estimates, but they differed considerably in biases. Overall, the MCF and linear regression models had smaller squared biases and greater accuracies for estimating DMY than the ACF models. The exponential regression model had the greatest accuracies and smallest squared biases. Model parameters were compared. Discretized milking interval categories led to a loss of accuracy of the estimates. Characterization of ACF and MCF revealed their similarities and dissimilarities and biases aroused by unequal milking intervals. The present study focused on estimating DMY in AM-PM milking plans. Yet, the methods and relevant principles are generally applicable to cows milked more than two times a day.Entities:
Keywords: dairy cattle; days in milk; exponential growth function; lactation; milking interval
Year: 2022 PMID: 36035148 PMCID: PMC9399349 DOI: 10.3389/fgene.2022.943705
Source DB: PubMed Journal: Front Genet ISSN: 1664-8021 Impact factor: 4.772
Number (n) and percentage (%n) of milking records by parities, lactation years, and states in the Holstein and Jersey cattle, respectively.
| Variable | Holstein | Jersey | |||
|---|---|---|---|---|---|
| n | %n | n | %n | ||
| Parity | 1 | 3,006 | 39.9 | 366 | 30.6 |
| 2 | 4,482 | 59.4 | 831 | 69.4 | |
| 3+ | 56 | 0.70 | 0 | 0 | |
| SUM | 7,544 | 100 | 1,197 | 100 | |
| Year | 2006 | 153 | 2.00 | 434 | 36.3 |
| 2007 | 338 | 4.50 | 0 | 0 | |
| 2008 | 7,000 | 92.8 | 360 | 30.1 | |
| 2009 | 53 | 0.70 | 403 | 33.7 | |
| SUM | 7,544 | 100 | 1,197 | 100 | |
| State | Vermont | 1,738 | 23.0 | 4 | 0.30 |
| New York | 361 | 4.80 | 182 | 15.2 | |
| Pennsylvania | 1,224 | 16.2 | 333 | 27.8 | |
| Indiana | 375 | 5.00 | 206 | 17.2 | |
| Minnesota | 338 | 4.50 | 0 | 0 | |
| Iowa | 153 | 2.00 | 434 | 36.3 | |
| Delaware | 511 | 6.80 | 2 | 0.20 | |
| Maryland | 900 | 11.9 | 0 | 0 | |
| West Virginia | 252 | 3.30 | 0 | 0 | |
| Georgia | 945 | 12.5 | 36 | 3.00 | |
| Florida | 747 | 9.90 | 0 | 0 | |
| SUM | 7,544 | 100 | 1,197 | 100 | |
Statistical methods and correction factors used in the present study , , .
| Model | Equation | Additive ( |
|---|---|---|
| M0 |
|
|
| M1 |
|
|
| M2A |
| --- |
| M2B |
|
|
| M3A |
| --- |
| M3B |
|
|
| M4 |
| --- |
| M5 |
|
|
| M6 |
|
|
| M7A |
| |
| M7B |
|
|
| M8A |
| --- |
| M8B |
|
|
M0 = daily milk yield (DMY) estimated by doubling morning (AM) or evening (PM) milk yield; M1 = additive correction factor (ACF) model with categorical milking interval classes (MIC) and lactation months; M2A = ACF model with continuous variables for milking interval and days in milk (DIM); M2B = M2A with ACF computed on discretized MIC; M3A = linear regression of daily milk yield on milking interval and DIM; M3B = M3A with ACF computed on discretized MIC; M4 = M3A with quadratic terms for milking interval and DIM; M5 = multiplicative correction factor (MCF) model according to Shook et al. (1980); M6 = MCF model according to DeLorenzo and Wiggans (1986); M7A = linear regression of AM or PM proportion of DMY on milking interval and DIM (Wiggans, 1986); M7B = M7A with MCF computed for discretized MIC (Wiggans, 1986); M8A = exponential regression model (Wu et al., 2022); M8B = M8A with MCF computed on discretized MIC.
= midpoint of milking interval k of milking j, for (AM milking) or (PM milking): .
--- = computing yield correction factors is not required.
FIGURE 1Distributions of morning (AM) and evening (PM) milking interval time in Holstein cows (A) and Jersey cows (B), respectively.
FIGURE 2Distribution of morning (AM) and evening (PM) milk yields in Holstein cows (A) and Jersey cows (B), respectively.
Decomposed mean squared error, R 2 accuracy, and correlation between estimated and actual daily milk yield obtained from 10-fold cross-validation , , .
| Method | Holstein | Jersey | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Varb | Bias2 | MSE | Acc | Cor | Varb | Bias2 | MSE | Acc | Cor | ||
| M0 | 0 | 22.8 | 22.8 | 0.821 (0) | 0.927 (0) | 0.000 | 14.54 | 14.54 | 0.798 (0) | 0.948 (0) | |
| M1 | 0.003 | 11.3 | 11.3 | 0.902 (<0.001) | 0.951 (<0.001) | 0.012 | 6.718 | 6.730 | 0.895 (<0.001) | 0.952 (0.001) | |
| M2A | <0.001 | 11.3 | 11.3 | 0.902 (<0.001) | 0.951 (<0.001) | 0.002 | 6.910 | 6.912 | 0.892 (<0.001) | 0.952 (<0.001) | |
| M2B | <0.001 | 11.4 | 11.4 | 0.902 (<0.001) | 0.951 (<0.001) | 0.002 | 6.746 | 6.748 | 0.895 (<0.001) | 0.952 (<0.001) | |
| M3A | <0.001 | 10.3 | 10.3 | 0.910 (<0.001) | 0.951 (<0.001) | 0.002 | 6.078 | 6.080 | 0.904 (<0.001) | 0.953 (<0.001) | |
| M3B | <0.001 | 10.3 | 10.3 | 0.910 (<0.001) | 0.951 (<0.001) | 0.003 | 6.226 | 6.229 | 0.902 (<0.001) | 0.952 (<0.001) | |
| M4 | <0.001 | 10.2 | 10.2 | 0.911 (<0.001) | 0.952 (<0.001) | 0.025 | 6.280 | 6.305 | 0.901 (<0.001) | 0.953 (<0.001) | |
| M5 | 0.002 | 11.0 | 11.0 | 0.905 (<0.001) | 0.951 (<0.001) | 0.029 | 6.707 | 6.736 | 0.895 (<0.001) | 0.954 (<0.001) | |
| M6 | 0.001 | 11.0 | 11.0 | 0.904 (<0.001) | 0.952 (<0.001) | 0.008 | 6.517 | 6.525 | 0.898 (<0.001) | 0.953 (<0.001) | |
| M7A | <0.001 | 10.9 | 10.9 | 0.905 (<0.001) | 0.952 (<0.001) | 0.002 | 6.570 | 6.572 | 0.897 (<0.001) | 0.954 (<0.001) | |
| M7B | <0.001 | 11.0 | 11.0 | 0.904 (<0.001) | 0.951 (<0.001) | 0.004 | 6.910 | 6.914 | 0.892 (<0.001) | 0.943 (<0.001) | |
| M8A | 0.001 | 10.1 | 10.1 | 0.912 (<0.001) | 0.952 (<0.001) | 0.003 | 6.072 | 6.075 | 0.905 (<0.001) | 0.954 (<0.001) | |
| M8B | 0.001 | 11.0 | 11.0 | 0.910 (<0.001) | 0.952 (<0.001) | 0.010 | 6.088 | 6.098 | 0.903 (<0.001) | 0.953 (<0.001) | |
M0 = daily milk yield (DMY) estimated by doubling morning (AM) or evening (PM) milk yield; M1 = additive correction factor (ACF) model with categorical milking interval classes (MIC) and lactation months; M2A = ACF, model with continuous variables for milking interval and days in milk (DIM); M2B = M2A with ACF, computed on discretized MIC; M3A = linear regression of daily milk yield on milking interval and DIM; M3B = M3A with ACF, computed on discretized MIC; M4 = M3A with quadratic terms for milking interval and DIM; M5 = multiplicative correction factor (MCF) model according to Shook et al. (1980); M6 = MCF model according to DeLorenzo and Wiggans (1986); M7A = linear regression of AM or PM and proportion of DMY, on milking interval and DIM (Wiggans, 1986); M7B = M7A with MCF, computed for discretized MIC (Wiggans, 1986); M8A = exponential regression model (Wu et al., 2022); M8B = M8A with MCF, computed on discretized MIC.
Var = variance; Bias2 = squared bias; MSE, mean squared error; Acc = R 2 accuracy; Cor = correlation between the estimated and actual DMY.
Numbers in the brackets were standard errors of the R 2 accuracy estimates.
FIGURE 3Distribution of individual R 2 accuracies of the estimated daily milk yield obtained using three models, M0 (A), M2B (B), and M7B (C), respectively. M0 = two times AM or PM yield as the estimate of test-day milk yield; M2B = additive correction factor model implemented by regressing the difference between AM and PM yields on milking interval and days in milk; M7B = multiplicative correction factor model according to Wiggans (1986).
FIGURE 4Relationships between smooth splines means of individual R 2 accuracies of the estimated daily milk yield and milking interval for three models, M0, M2B, and M7B. M0 = two times AM or PM yield as the estimate of test-day milk yield; M2B = additive correction factor model implemented by regressing the difference between AM and PM yields on milking interval and days in milk; M7B = multiplicative correction factor model according to Wiggans (1986).
Estimated parameters obtained from four models (M2A, M3A, M7A, and M8A), each implemented separately or jointly for known morning (AM) or evening (PM) milk yields , .
| Statistical model | Model parameter | Holstein | Jersey | ||||
|---|---|---|---|---|---|---|---|
| AM | PM | Joint | AM | PM | Joint | ||
| M2A |
| 25.80 (0.431) | --- | 26.04 (0.302) | 9.593 (1.170) | --- | 9.789 (0.807) |
|
| --- | 27.01 (0.870) | 26.79 (0.285) | --- | 11.84 (0.951) | 11.64 (0.692) | |
|
| −2.190 (0.035) | −2.222 (0.034) | −2.206 (0.024) | −0.898 (0.090) | −0.905 (0.085) | −0.889 (0.062) | |
|
| 0.001 (3E-4) | −0.001 (3E-4) | -4.7E-5 (2E-4) | 0.001 (0.001) | -0.001 (0.001) | -1.4E-4 (4E-04) | |
| M3A |
| 27.76 (0.404) | --- | 26.64 (0.283) | 13.52 (1.402) | --- | 11.22 (0.701) |
|
| --- | 28.02 (0.382) | 27.35 (0.267) | --- | 12.49 (0.947) | 12.90 (0.652) | |
|
| −1.898 (0.033) | −1.934 (0.034) | −1.909 (0.024) | −0.797 (0.078) | −0.782 (0.086) | −0.746 (0.059) | |
|
| −0.005 (3E-4) | −0.005 (3E-4) | −0.005 (2E-4) | −0.003 (0.001) | −0.003 (0.001) | −0.003 (0.001) | |
|
| 1.720 (0.008) | 1.780 (0.008) | 1.749 (0.005) | 1.664 (0.017) | 1.860 (0.022) | 1.750 (0.014) | |
| M7A |
| 0.071 (0.008) | --- | 0.068 (0.005) | 0.269 (0.029) | --- | 0.268 (0.020) |
|
| --- | 0.053 (0.007) | 0.056 (0.005) | --- | 0.231 (0.024) | 0.231 (0.017) | |
|
| 0.036 (0.001) | 0.037 (0.001) | 0.037 (4E-04) | 0.021 (0.002) | 0.021 (0.002) | 0.021 (0.002) | |
|
| 7E-06 (5E-06) | -5E-06 (5E-06) | 8E-07 (4E-06) | 2E-05 (1E-05) | -2E-05 (1E-05) | 3.3E-06 (1E-05) | |
| M8A |
| 1.779 (0018) | --- | 1.856 (0.013) | 1.580 (0.067) | --- | 1.575 (0.048) |
|
| --- | 1.946 (0.017) | 1.877 (0.012) | --- | 1.621 (0.060) | 1.638 (0.042) | |
|
| −0.059 (0.001) | −0.070 (0.001) | −0.065 (0.001) | −0.037 (0.005) | −0.025 (0.005) | −0.032 (0.004) | |
|
| -2E-04 (1E-05) | -2E-04 (1E-05) | -2E-04 (9E-06) | -3E-04 (3E-05) | -3E-04 (4E-05) | -3E-04 (3E-05) | |
|
| 0.861 (0.004) | 0.852 (0.004) | 0.856 (0.003) | 0.812 (0.010) | 0.757 (0.011) | 0.784 (0.008) | |
M2A = additive correction factor model with continuous variables for milking interval and days in milk (DIM); M3A = linear regression of daily milk yield (DMY) on milking interval and DIM; M7A = linear regression of AM or PM and proportion of DMY, on milking interval and DIM (Wiggans, 1986); M8A = exponential regression model (Wu et al., 2022).
= intercepts for AM milk yield; = intercept for PM milk yield; = common regression coefficient for milking interval; = common regression coefficient for DIM; = common regression coefficient for AM (or PM) milk yield (M3A) or the logarithm of AM or PM milk yield (M8A).
FIGURE 5Scatterplot and linear regression fits of the actual daily milk yield against estimated daily milk yields under three scenarios: (A) estimating daily milk yield (DMY) by doubling morning (AM) or evening (PM) milk yields (model M0); (B) estimating DMY for known morning (AM) and evening (PM) milkings separately using the exponential regression model (model M8A; separate analysis); (C) estimating DMY for known AM and PM milkings jointly using the exponential regression model (model M8A; joint analysis).
FIGURE 6Average daily milk yields were obtained from five models and smooth spline (SS) means of the daily milk yield against morning (A) and evening (B) milking intervals from 9 to 15 h, respectively. M0 = daily milk yield (DMY) estimated as two times AM or PM yield; M2A = linear regression of the difference between morning (AM) and evening (PM) milk yields on milking interval and days in milk (DIM); M3A = linear regression of DMY on the milking interval and DIM; M7A = linear regression of AM or PM proportion of DMY on milking interval and DIM (Wiggans, 1986); M8A = exponential regression model (Wu et al., 2022).
FIGURE 7Comparison of additive correction factors (A) and multiplicative correction factors (B) obtained using different models. AMF = morning milk yield correction factors; PMF = evening milk yield correction factors. M0 = daily milk yield (DMY) estimated as two times AM or PM yield; M1 = additive correction factors (ACF) model with categorical milking interval (MIC) and lactation months; M2B = ACF model with continuous milking interval and days in milk (DIM); M3B = linear regression of DMY on milking interval and DIM, with ACFs computed for discretized MIC; M5 = multiplicative correction factor (MCF) model according to Shook et al. (1980); M6 = MCF model according to DeLorenzo and Wiggans (1986); M7B = MCF model according to Wiggans (1986); M8B = MCF model based on the exponential regression model (Wu et al., 2022).