Title of article :
Predictive Modelling Based on Statistical Learning in Biomedicine
Author/Authors :
Gefeller, Olaf Department of Medical Informatics - Biometry & Epidemiology - Friedrich-Alexander University Erlangen-Nurnberg - Erlangen, Germany , Hofner, Benjamin Section Biostatistics - Paul-Ehrlich-Institut - Langen, Germany , Mayr, Andreas Department of Medical Informatics - Biometry & Epidemiology - Friedrich-Alexander University Erlangen-Nurnberg - Erlangen, Germany , Waldmann, Elisabeth Department of Medical Informatics - Biometry & Epidemiology - Friedrich-Alexander University Erlangen-Nurnberg - Erlangen, Germany
Abstract :
Twenty years ago, the journal Computational and Mathematical Methods in Medicine was launched under its previous title Journal of Theoretical Medicine. During those
years at the end of the last century, the understanding of
machine learning technology and its potential combination
with statistical modelling approaches was in its infancy.
The modern term “statistical learning” for this fusion of
methodology from different scientific areas could already
be found in the scientific literature (see Vapnik [1, 2]), but
its meaning was slightly different from today. The famous
textbook by Hastie et al. [3] popularised the term in its
current meaning when being published in its first edition
in 2001. During recent years, considerable research has been
devoted to exploring this combination of state-of-the-art
statistical methodology with machine learning techniques.
Such an approach provides many practical advantages, particularly regarding data situations frequently encountered in
modern biomedical research characterized by large numbers
of potential features or variables. In such situations, the
primary aim is often to obtain sparse and explanatory models,
which can be generalized effectively. Via statistical learning
approaches, interpretable prediction rules leading to accurate
forecasts for future or unseen observations can be deduced
from potentially high-dimensional data.
Keywords :
Biomedicine , CART , Modelling
Journal title :
Computational and Mathematical Methods in Medicine