I have read that for null hypothesis $H_0 : \beta = \beta_0$, the likelihood ratio statistic from profile-likelihood is $$LR = 2 (\log L_p(\hat{\beta_p}) - \log L_p(\beta_0))$$ where $\hat{\beta_p}$ maximises the profiled likelihood $L_p(\beta) = \max_{\gamma} L(\beta, \gamma)$.
And that by assuming $LR$ has some distribution we can create a confidence interval for $\beta$. I've seen a lot of questions asking how to do this - I understand that - but I am confused as to why we can do this.
I.e. why (/when) can I assume LR has say a normal distribution given I know $\beta$ and $\gamma$'s distributions for example? I feel I am missing something obvious as I can't find any good resources on this.