Variables a and b may be measured in different units, so there is no way to directly combine the standard errors as they may also be in different units. The most complete discussion of this is given by Fieller (1954).[1]
Fieller showed that if a and b are (possibly correlated) means of two samples with expectations and , and variances and and covariance , and if are all known, then a (1 − α) confidence interval (mL, mU) for is given by
Three features of this formula are important in this context:
a) The expression inside the square root has to be positive, or else the resulting interval will be imaginary.
b) When g is very close to 1, the confidence interval is infinite.
c) When g is greater than 1, the overall divisor outside the square brackets is negative and the confidence interval is exclusive.
Other methods
One problem is that, when g is not small, the confidence interval can blow up when using Fieller's theorem. Andy Grieve has provided a Bayesian solution where the CIs are still sensible, albeit wide.[2]Bootstrapping provides another alternative that does not require the assumption of normality.[3]
^Irwin, J. O.; Rest, E. D. Van (1961). "Edgar Charles Fieller, 1907-1960". Journal of the Royal Statistical Society, Series A. 124 (2). Blackwell Publishing: 275–277. JSTOR2984155.
Fieller, EC (1944). "A fundamental formula in the statistics of biological assay, and some applications". Quarterly Journal of Pharmacy and Pharmacology. 17: 117–123.
Motulsky, Harvey (1995) Intuitive Biostatistics. Oxford University Press. ISBN0-19-508607-4
Senn, Steven (2007) Statistical Issues in Drug Development. Second Edition. Wiley. ISBN0-471-97488-9