| Literature DB >> 29914547 |
Karin Alvåsen1, Ian Dohoo2, Anki Roth3, Ulf Emanuelson4.
Abstract
BACKGROUND: Longevity is an important trait for increasing the profitability of dairy production. Long cow longevity is also essential to reduce the environmental impact of milk production, and to maintain positive consumer attitude. Genetic selection for increased longevity has been effective, but the phenotypic trend of longevity in Swedish dairy cows has not been improved. The objective of this study was to identify herd characteristics and management routines that are associated with the average cow longevity in a herd. To obtain this information, a questionnaire was developed and sent out to 661 Swedish dairy farmers.Entities:
Keywords: Dairy cattle; Life expectancy; Lifespan; Longevity; Management; Multiple imputation
Mesh:
Year: 2018 PMID: 29914547 PMCID: PMC6006783 DOI: 10.1186/s13028-018-0390-8
Source DB: PubMed Journal: Acta Vet Scand ISSN: 0044-605X Impact factor: 1.695
Fig. 1Causal diagram for analysis of the effects of farmer attitudes and management practices on longevity in dairy cows
Predictors selected as candidates for multivariable modeling
| Variable | n | Continuous | Categorical | Overall | |
|---|---|---|---|---|---|
| Categories | n (%) | P-valuea | |||
| Farmer characteristics | |||||
| Age of farmer (year) | 225 | 48.7, 11.3 (20, 79) | < 0.001 | ||
| Herd characteristics | |||||
| Herd size (no. of cows) | 213 | 87.6, 84.6 (26, 1000) | 0.192 | ||
| Housing type | 227 | Tie stall | 100 (56) | 0.017 | |
| Free stall | 127 (44) | ||||
| Region | 228 | South Sweden | 32 (14) | 0.089 | |
| East Sweden | 62 (27) | ||||
| West Sweden | 74 (32) | ||||
| Middle Sweden | 20 (9) | ||||
| North Sweden | 40 (18) | ||||
| Farmer attitudes | |||||
| Expected future herd size | 224 | Same or fewer | 163 (73) | 0.046 | |
| Expectation that the farm will still be operating in 5 year | 227 | 7.6, 2.7 (1, 10) | 0.144 | ||
| Interest in animal breeding (genetic selection) | 223 | 7.9, 2.0 (0.5, 10) | 0.145 | ||
| Management factors | |||||
| Composition of workforce | 222 | Only family members | 94 (42) | 0.141 | |
| Used herd health advice during the last year | 182 | No | 82 (45) | 0.029 | |
| Used breeding advice during the last year | 204 | No | 55 (27) | 0.123 | |
| Calving occurs in individual calving pens | 227 | Yes | 78 (34) | 0.017 | |
| Time required for drying off (d) | 214 | 7.8, 4.3 (0, 21) | 0.019 | ||
| Call veterinarian for lame cows | 210 | 4.4, 3.1 (0, 10) | 0.003 | ||
| Move lame cows to isolation pen | 202 | 5.3, 3.2 (0, 10) | 0.029 | ||
| Call veterinarian for unhealthy cows | 219 | 7.5, 2.4 (0.1, 10) | 0.011 | ||
| Move unhealthy cows to isolation pen | 213 | 6.1, 3.2 (0, 10) | 0.121 | ||
| Initiate treatment of unhealthy cows on my own | 215 | 5.0, 3.4 (0, 10) | 0.148 | ||
Predictors selected as candidates for multivariable modeling of associations with average herd longevity according to the categories identified in the causal diagram
aUnivariable P-values for the confounders (age, herd size, region), but multivariable P-values for the predictors
Distribution of herd characteristics among respondents and non-respondents
| Variable | Category | Respondents (n = 228) | Non-respondents (n = 443) | P-value1 |
|---|---|---|---|---|
| Age at 1st calving (days) | 866 (99.1)2 | 898 (115.3) | < 0.01 | |
| BMSCC (1000 cells/ml) | 254 (85) | 256 (88) | 0.37 | |
| Breed3 | SR | 18.5 | 18.0 | 0.19 |
| SH | 20.3 | 26.6 | ||
| Mixed | 61.2 | 55.4 | ||
| Calving interval (mo) | 13.4 (1.1) | 13.8 (1.3) | < 0.01 | |
| Herd size (cow-year) | 94 (107) | 88 (73) | 0.79 | |
| Milk yield (kg ECM/ | 9264 (1457) | 9191 (1656) | 0.71 | |
| Region | North | 20.2 | 22.4 | 0.60 |
| Middle | 57.0 | 52.9 | ||
| South | 22.8 | 24.7 |
Distribution of herd characteristics (percentage of observations for categorical variables and means with standard deviations for continuous variables) among respondents and non-respondents to the questionnaire
BMSCC bulk milk somatic cell count
1Significance level (t-test for continuous variables and χ2 test for categorical variables)
2Mean (standard deviation)
3SR = > 80% Swedish Red; SH = > 80% Swedish Holstein; Mixed = all other herds
Final complete case model of associations between management practices and average herd longevity
| Variable | Coefficient | SE | P > t | 95% CI |
|---|---|---|---|---|
| Age of farmera (year) | 7.15 | 1.65 | 0.000 | 3.89; 10.40 |
| Herd sizea | − 0.03 | 0.22 | 0.887 | − 0.47; 0.41 |
| Housinga | ||||
| Tie stall | Reference | |||
| Free stall | 73.65 | 42.96 | 0.089 | − 11.27; 158.56 |
| Regiona,b | ||||
| South Sweden | Reference | |||
| East Sweden | 10.02 | 61.68 | 0.871 | − 111.89; 131.93 |
| West Sweden | − 53.10 | 59.35 | 0.372 | − 170.41; 64.21 |
| Middle Sweden | − 119.62 | 93.33 | 0.202 | − 304.09; 64.85 |
| North Sweden | − 70.88 | 66.68 | 0.290 | − 202.67; 60.90 |
| Initiate treatment on my own when recognizing unhealthy cows | − 16.14 | 5.80 | 0.006 | − 27.61; − 4.68 |
| Use of breeding advisory services | ||||
| No | Reference | |||
| Yes | 108.87 | 44.38 | 0.015 | 21.15; 196.59 |
| Use of preventive herd | ||||
| No | Reference | |||
| Yes | − 121.41 | 43.32 | 0.006 | − 207.03; − 35.78 |
| Intercept | 1317.05 | 103.75 | ||
Final model of associations between management practices and average herd longevity (days) from the complete case analysis based on data from 156 herds
aConfounders forced into the model
bRegion: overall P-value = 0.38 (Wald test)
Final model multiple imputation model of associations between management practices and average herd longevity
| Variable | Coefficient | SE | P > t | 95% CI |
|---|---|---|---|---|
| Age of farmera (year) | 5.45 | 1.65 | 0.001 | 2.21; 8.70 |
| Herd sizea | 0.01 | 0.23 | 0.977 | − 0.44; 0.46 |
| Housinga | ||||
| Tie stall | Reference | |||
| Free stall | 30.55 | 40.91 | 0.456 | − 50.10; 111.19 |
| Regionab | ||||
| South Sweden | Reference | |||
| East Sweden | − 49.54 | 59.77 | 0.408 | − 167.37; 68.29 |
| West Sweden | − 104.32 | 57.31 | 0.070 | − 217.30; 8.65 |
| Middle Sweden | − 143.15 | 78.27 | 0.069 | − 297.45; 11.15 |
| North Sweden | − 140.06 | 64.89 | 0.032 | − 267.98; − 12.14 |
| Call the veterinarian when recognizing unhealthy cows | 22.59 | 8.26 | 0.007 | 6.28; 38.91 |
| Interest in animal breeding (genetic selection) | − 21.09 | 9.87 | 0.034 | − 40.56; − 1.62 |
| Used breeding advisory services during the last year | ||||
| No | Reference | |||
| Yes | 116.88 | 48.34 | 0.017 | 21.19; 212.58 |
| Used preventive herd | ||||
| No | Reference | |||
| Yes | − 124.26 | 43.15 | 0.005 | − 209.48; − 39.04 |
| Intercept | 1366.83 | 144.22 | ||
Final model of associations between management practices and average herd longevity (days) following multiple imputation of missing data. The analysis is based on data from 228 herds
aConfounders forced into the model
bRegion: overall P-value = 0.13 (Wald test)
Comparison of complete case and multiple imputation models
| Variable | Models with all 17 selected predictorsa | Final modelsb | ||
|---|---|---|---|---|
| Complete case analysis | Multiple imputation | Complete case analysis | Multiple imputation | |
| Confounders forced into model | ||||
| Age of farmer | 4.71** | 5.06*** | 7.15*** | 5.45*** |
| Herd size | 0.13 | 0.1 | − 0.03 | 0.01 |
| Housing | ||||
| Tie stall | Reference | |||
| Free stall | 95.80* | − 18.21 | 73.65* | 30.55 |
| Region | ||||
| South Sweden | Reference | |||
| East Sweden | 13.21 | − 67.1 | 10.02 | − 49.54 |
| West Sweden | − 43.05 | − 103.93* | − 53.1 | − 104.32* |
| Middle Sweden | − 117.93 | − 171.90** | − 119.62 | − 143.15* |
| North Sweden | − 49.84 | − 130.49* | − 70.88 | − 140.06** |
| Predictors available for selection | ||||
| Expected future herd size | ||||
| Same or fewer | Reference | |||
| Expand | − 48.23 | − 77.56* | ||
| Probability that the farm will still be operating in 5 year | − 7.8 | − 0.94 | ||
| Interest in animal breeding (genetic selection) | − 0.6 | − 16.11 | − 21.09** | |
| Composition of workforce | ||||
| Only family members | Reference | |||
| Employee(s) | − 37.05 | − 50.03 | ||
| Used preventive herd health advisory services during the last year | ||||
| No | Reference | |||
| Yes | − 43.1 | − 107.33** | − 121.41*** | − 124.26*** |
| Used breeding advisory services during the last year | ||||
| No | Reference | |||
| Yes | 86.87* | 113.21** | 108.87** | 116.88** |
| Calving occurs in individual calving pens | ||||
| No | Reference | |||
| Only individual calving pens | − 24.02 | − 60.42 | ||
| Average time for dry-off (d) | − 1.11 | 1.69 | ||
| Call veterinarian when recognizing a lame cow | 8.62 | 6.04 | ||
| Move to isolation pen when recognizing a lame cow | − 7.14 | − 9.89 | ||
| Call veterinarian when recognizing | 15.08 | 16.70* | 22.59*** | |
| Move to isolation pen when recognizing an unhealthy cow | 9.39 | 5.12 | ||
| Initiate treatment on my own when recognizing unhealthy cows | − 8.79 | − 4.69 | − 16.14*** | |
| Intercept | 1295.35*** | 1483.90*** | 1317.05*** | 1366.83*** |
Comparison of full and final models from both the complete case and the multiple imputation models of associations between management practices and average herd longevity (*P < 0.1, **P < 0.05, ***P < 0.001)