Go to content

The number of subjects per variable required in linear regression analyses

Share

Objective — To determine the number of independent variables that can be included in a linear regression model.

Study Design and Setting — The researchers used a series of Monte Carlo simulations to examine the impact of the number of subjects per variable (SPV) on the accuracy of estimated regression coefficients and standard errors, on the empirical coverage of estimated confidence intervals, and on the accuracy of the estimated R2 of the fitted model.

Results — A minimum of approximately two SPV tended to result in estimation of regression coefficients with relative bias of less than 10%. Furthermore, with this minimum number of SPV, the standard errors of the regression coefficients were accurately estimated and estimated confidence intervals had approximately the advertised coverage rates. A much higher number of SPV was necessary in order to minimize bias in estimating the model R2, although adjusted R2 estimates behaved well. The bias in estimating the model R2 statistic was inversely proportional to the magnitude of the proportion of variation explained by the population regression model.

Conclusion — Linear regression models require only two subjects per variable for adequate estimation of regression coefficients, standard errors and confidence intervals.

Information

Citation

Austin PC, Steyerberg EW. J Clin Epidemiol. 2015; 68(6):627-36. Epub 2015 Jan 22.

View Source

Contributing ICES Scientists

Research Programs

Associated Sites