On Jan 23, 4:01 pm,
ndgr...@yahoo.com wrote:
Sorry for replying to my own post, but I fear that I may have been
unclear. The suggestion is to do the nonlinear least squares regression
of the above equation using the (1/CI)^2 values as weights, where these
are CI's for the LD50 estimates.
-N
That wouldn't be totally wrong, but it does assume that the CIs (which
I assume are based on the usual asymptotic estimates of the covariance
matrices of the regression coefficients) have negligible error.
You could also try analyzing the merged data from all the experiments,
with LD50 constrained to being proportional to sqrt(g), and comparing
the deviance to the sum of the deviances from the separate analyses.
To follow up on this, why not just fit a model with concentration,