Iterative Random Forests to detect predictive and stable high-order interactions
Sumanta Basu, Karl Kumbier, James B. Brown, Bin Yu

TL;DR
The paper introduces iRF, an iterative Random Forest algorithm capable of efficiently detecting stable, high-order interactions in genomic data, revealing both known and novel molecular relationships.
Contribution
iRF extends Random Forests to identify high-order interactions with minimal additional computational cost, enabling new insights into genome regulation mechanisms.
Findings
80% of stable interactions in Drosophila are previously reported
Identified novel third-order interactions in Drosophila
Discovered high-order interactions involving chromatin marks in human cells
Abstract
Genomics has revolutionized biology, enabling the interrogation of whole transcriptomes, genome-wide binding sites for proteins, and many other molecular processes. However, individual genomic assays measure elements that interact in vivo as components of larger molecular machines. Understanding how these high-order interactions drive gene expression presents a substantial statistical challenge. Building on Random Forests (RF), Random Intersection Trees (RITs), and through extensive, biologically inspired simulations, we developed the iterative Random Forest algorithm (iRF). iRF trains a feature-weighted ensemble of decision trees to detect stable, high-order interactions with same order of computational cost as RF. We demonstrate the utility of iRF for high-order interaction discovery in two prediction problems: enhancer activity in the early Drosophila embryo and alternative splicing…
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Taxonomy
TopicsRNA Research and Splicing · Genomics and Chromatin Dynamics · RNA and protein synthesis mechanisms
