TY - JOUR
AU - Neumann, Philipp
AU - Schumann, Yannis
AU - Schlumbohm, Simon
AU - Neumann, Julia
TI - High Performance Data Integration for Large-Scale Analyses of Incomplete Omic Profiles Using Batch-Effect Reduction Trees (BERT)
JO - Nature Communications
VL - 16
IS - 1
SN - 2041-1723
CY - [London]
PB - Springer Nature
M1 - PUBDB-2025-00603
SP - 7104
PY - 2025
AB - Data from high-throughput technologies assessing global patterns of biomolecules (omic data), is often afflicted with missing values and with measurement-specific biases (batch-effects), that hinder the quantitative comparison of independently acquired datasets. This work introduces batch-effect reduction trees (BERT), a high-performance method for data integration of incomplete omic profiles.We characterize BERT on large-scale data integration tasks with up to 5000 datasets from simulated and experimental data of different quantification techniques and omic types (proteomics, transcriptomics, metabolomics) as well as other datatypes e.g., clinical data, emphasizing the broad scope of the algorithm. Compared to the only available method for integration of incomplete omic data, HarmonizR, our method1) retains up to five orders of magnitude more numeric values,2) leverages multi-core and distributed-memory systems for up to 11x runtime improvement3) considers covariates and reference measurements to account for severely imbalanced or sparsely distributed conditions (up to 2x improvement of average-silhouette-width).
LB - PUB:(DE-HGF)16
DO - DOI:10.1038/s41467-025-62237-4
UR - https://bib-pubdb1.desy.de/record/623116
ER -