Mapping complex traits using Random Forests
Open Access
- 31 December 2003
- journal article
- Published by Springer Nature in BMC Genomic Data
- Vol. 4 (S1) , 1-S64
- https://doi.org/10.1186/1471-2156-4-s1-s64
Abstract
Random Forest is a prediction technique based on growing trees on bootstrap samples of data, in conjunction with a random selection of explanatory variables to define the best split at each node. In the case of a quantitative outcome, the tree predictor takes on a numerical value. We applied Random Forest to the first replicate of the Genetic Analysis Workshop 13 simulated data set, with the sibling pairs as our units of analysis and identity by descent (IBD) at selected loci as our explanatory variables. With the knowledge of the true model, we performed two sets of analyses on three phenotypes: HDL, triglycerides, and glucose. The goal was to approach the mapping of complex traits from a multivariate perspective. The first set of analyses mimics a candidate gene approach with a high proportion of true genes among the predictors while the second set represents a genome scan analysis using microsatellite markers. Random Forest was able to identify a few of the major genes influencing the phenotypes, such as baseline HDL and triglycerides, but failed to identify the major genes regulating baseline glucose levels.Keywords
This publication has 5 references indexed in Scilit:
- Genetic Analysis Workshop 13: Simulated longitudinal data on families for a system of oligogenic traitsBMC Genomic Data, 2003
- Random ForestsMachine Learning, 2001
- Tree‐Based Linkage and Association Analyses of AsthmaGenetic Epidemiology, 2001
- Parametric and nonparametric linkage analysis: a unified multipoint approach.1996
- The investigation of linkage between a quantitative trait and a marker locusBehavior Genetics, 1972