Projection of High-Dimensional Genome-Wide Expression on SOM Transcriptome Landscapes

Abstract:

organizing maps portraying has been proven to be a powerful approach for analysis of transcriptomic, genomic, epigenetic, single-cell, and pathway-level data as well as for “multi-omic” integrative analyses. However, the SOM method has a major disadvantage: it requires the retraining of the entire dataset once a new sample is added, which can be resource- and time-demanding. It also shifts the gene landscape, thus complicating the interpretation and comparison of results. To overcome this issue, we have developed two approaches of transfer learning that allow for extending SOM space with new samples, meanwhile preserving its intrinsic structure. The extension SOM (exSOM) approach is based on adding secondary data to the existing SOM space by “meta-gene adaptation”, while supervised SOM portrayal (supSOM) adds support vector machine regression model on top of the original SOM algorithm to “predict” the portrait of a new sample. Both methods have been shown to accurately combine existing and new data. With simulated data, exSOM outperforms supSOM for accuracy, while supSOM significantly reduces the computing time and outperforms exSOM for this parameter. Analysis of real datasets demonstrated the validity of the projection methods with independent datasets mapped on existing SOM space. Moreover, both methods well handle the projection of samples with new characteristics that were not present in training datasets.

SEEK ID: https://armlifebank.am/publications/11

DOI: 10.3390/biomedinformatics2010004

Projects: ML approaches for omic data analysis

Publication type: Journal

Journal: BioMedInformatics

Publisher: MDPI AG

Citation: BioMedInformatics,2(1):62-76

Date Published: 27th Dec 2021

URL:

Registered Mode: manually

Authors: Maria Nikoghosyan, Henry Loeffler-Wirth, Suren Davidavyan, Hans Binder, Arsen Arakelyan

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Citation
Nikoghosyan, M., Loeffler-Wirth, H., Davidavyan, S., Binder, H., & Arakelyan, A. (2021). Projection of High-Dimensional Genome-Wide Expression on SOM Transcriptome Landscapes. In BioMedInformatics (Vol. 2, Issue 1, pp. 62–76). MDPI AG. https://doi.org/10.3390/biomedinformatics2010004
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Created: 7th Mar 2024 at 11:00

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