I am running a mixed effect model with nlme package in R. My data include 82 animals (with repetition), these 82 animals are grouped by 3 breeds (defined as categorical variable), my continuous variable is time time-squared, response is MY. The form of mixed model is:

```
model<-lme(MY~time + breed*time + time-squared,random=1|Animal, data=mydata)
```

The results obtained as follows:

```
Linear mixed-effects model fit by REML
Data: na.omit(centred_phuong)
AIC BIC logLik
93698.27 93769.46 -46840.13
Random effects:
Formula: ~1 | Cow_code
(Intercept) Residual
StdDev: 1.283306 2.453689
Fixed effects: MY ~ time + time * Breed + time_squared
Value Std.Error DF t-value p-value
(Intercept) 1.3398578 0.2495665 20048 5.36874 0.0000
DFC 0.0523516 0.0003675 20048 142.43468 0.0000
Breed2 0.4998856 0.3521235 78 1.41963 0.1597
Breed3 -0.3683371 0.3520760 78 -1.04619 0.2987
Time_squared 0.0001213 0.0000025 20048 48.14845 0.0000
Time:Breed2 0.0084160 0.0005011 20048 16.79463 0.0000
Time:Breed3 -0.0086297 0.0005028 20048 -17.16272 0.0000
```

As I understood from these results, the model compares intercepts and slopes of breed 2 and 3 with that of breed 1., and there is no comparison between breed 2 and breed 2? IS there anyway to specify this?

I hope to get you advices! Thanks

`glht`

in package multcomp. – Roland Jan 16 '14 at 8:13