Title of article :
Nonparametric Subgroup Identification by PRIM and CART: A Simulation and Application Study
Author/Authors :
Ott, Armin Technische Universitat Munchen - Munich, Germany , Hapfelmeier, Alexander Technische Universitat Munchen - Munich, Germany
Abstract :
Two nonparametric methods for the identification of subgroups with outstanding outcome values are described and compared to
each other in a simulation study and an application to clinical data. The Patient Rule Induction Method (PRIM) searches for boxshaped areas in the given data which exceed a minimal size and average outcome. This is achieved via a combination of iterative
peeling and pasting steps, where small fractions of the data are removed or added to the current box. As an alternative, Classification
and Regression Trees (CART) prediction models perform sequential binary splits of the data to produce subsets which can be
interpreted as subgroups of heterogeneous outcome. PRIM and CART were compared in a simulation study to investigate their
strengths and weaknesses under various data settings, taking different performance measures into account. PRIM was shown to
be superior in rather complex settings such as those with few observations, a smaller signal-to-noise ratio, and more than one
subgroup. CART showed the best performance in simpler situations. A practical application of the two methods was illustrated
using a clinical data set. For this application, both methods produced similar results but the higher amount of user involvement of
PRIM became apparent. PRIM can be flexibly tuned by the user, whereas CART, although simpler to implement, is rather static.
Keywords :
PRIM , CART , Simulation , Nonparametric
Journal title :
Computational and Mathematical Methods in Medicine