We give general matrix Studentisation results for random vectors converging in distribution to a spherically symmetric random vector, which have wide applicability to the asymptotic properties of estimators obtained from estimating equations, for example. Appropriate matrix``square roots,'' required for normalisation of the random vectors, are shown to be the Cholesky square root and the symmetric positive definite square root.