1. Supervised machine learning models and protein-protein interaction network analysis of gene expression profiles induced by omega-3 polyunsaturated fatty acids
- Author
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Jane Pei-Chen Chang, Ching-Fang Sun, Sergey Shityakov, David Ta-Wei Guu, Thomas Dandekar, and Kuan-Pin Su
- Subjects
genetic structures ,Biochemistry ,Chemistry ,Gene expression ,lipids (amino acids, peptides, and proteins) ,sense organs ,behavioral disciplines and activities ,psychological phenomena and processes ,OMEGA-3 POLYUNSATURATED FATTY ACIDS ,Protein protein interaction network - Abstract
BackgroundOmega-3 polyunsaturated fatty acids (PUFAs), such as eicosapentaenoic (EPA) and docosahexaenoic (DHA) acids have beneficial effects on human health but their effect on gene expression in elderly individuals (age ≥ 65) is largely unknown. To examine this, the gene expression profiles were analyzed in the healthy subjects (n = 96) at baseline and after 26 weeks of supplementation with EPA+DHA to determine up-regulated and down-regulated differentially expressed genes (DEGs) triggered by PUFAs. The protein-protein interaction networks were constructed by mapping these DEGs to a human interactome and linking them to the specific pathways.ResultsThe results revealed that up-regulated DEGs were associated with neurotrophin/MAPK signaling, whereas the down-regulated DEGs were linked to the cancer, acute myeloid leukemia, and long-term depression pathways. Additionally, machine learning (ML) approaches were able to cluster the EPA/DHA-treated and control groups by the logistic regression algorithm performing the best. ConclusionOverall, this study highlights the pivotal changes in DEGs induced by PUFAs and provides the rationale for the implementation of ML algorithms as predictive models for this type of biomedical data.
- Published
- 2020
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