I know that this question has been asked quite a lot - but I did want to see what people's opinions currently were on how applicable Multiple Imputation (MI) is to perform on a dataset with a high missing rate.
The dataset I have this issue with contains ~15,000 cases (patients in a database). Each case has 5-6 variables of interest that I will be inputting as covariates in a Cox-PH model. Two of these variables have a high missing rate, reaching roughly 75% each. The pattern of missingness has been identified as MAR. I plan to use 100 imputations for the MI procedure.
From what I have read - there is no hard-n-fast rule as to how high a missing rate is tolerable. However, I was hoping that someone may be able to guide me on some, perhaps, diagnostic statistics (or references) I could interpret that may help justify performing MI on this dataset (or not!)...