Integrating biological knowledge and gene expression data using pathway-guided random forests: a benchmarking study

Stephan Seifert, Sven Gundlach, Olaf Junge, Silke Szymczak

Abstract

MOTIVATION: High-throughput technologies allow comprehensive characterization of individuals on many molecular levels. However, training computational models to predict disease status based on omics data is challenging. A promising solution is the integration of external knowledge about structural and functional relationships into the modeling process. We compared four published random forest-based approaches using two simulation studies and nine experimental datasets. RESULTS: The self-sufficient prediction error approach should be applied when large numbers of relevant pathways are expected. The competing methods hunting and learner of functional enrichment should be used when low numbers of relevant pathways are expected or the most strongly associated pathways are of interest. The hybrid approach synthetic features is not recommended because of its high false discovery rate. AVAILABILITY AND IMPLEMENTATION: An R package providing functions for data analysis and simulation is available at GitHub (https://github.com/szymczak-lab/PathwayGuidedRF). An accompanying R data package (https://github.com/szymczak-lab/DataPathwayGuidedRF) stores the processed and quality controlled experimental datasets downloaded from Gene Expression Omnibus (GEO). SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

OriginalspracheEnglisch
ZeitschriftBioinformatics (Oxford, England)
Jahrgang36
Ausgabenummer15
Seiten (von - bis)4301-4308
Seitenumfang8
DOIs
PublikationsstatusVeröffentlicht - 01.08.2020

Fingerprint

Untersuchen Sie die Forschungsthemen von „Integrating biological knowledge and gene expression data using pathway-guided random forests: a benchmarking study“. Zusammen bilden sie einen einzigartigen Fingerprint.

Zitieren