» Articles » PMID: 33335112

Detecting Methylation Signatures in Neurodegenerative Disease by Density-based Clustering of Applications with Reducing Noise

Overview
Journal Sci Rep
Specialty Science
Date 2020 Dec 18
PMID 33335112
Citations 3
Authors
Affiliations
Soon will be listed here.
Abstract

There have been numerous genetic and epigenetic datasets generated for the study of complex disease including neurodegenerative disease. However, analysis of such data often suffers from detecting the outliers of the samples, which subsequently affects the extraction of the true biological signals involved in the disease. To address this critical issue, we developed a novel framework for identifying methylation signatures using consecutive adaptation of a well-known outlier detection algorithm, density based clustering of applications with reducing noise (DBSCAN) followed by hierarchical clustering. We applied the framework to two representative neurodegenerative diseases, Alzheimer's disease (AD) and Down syndrome (DS), using DNA methylation datasets from public sources (Gene Expression Omnibus, GEO accession ID: GSE74486). We first applied DBSCAN algorithm to eliminate outliers, and then used Limma statistical method to determine differentially methylated genes. Next, hierarchical clustering technique was applied to detect gene modules. Our analysis identified a methylation signature comprising 21 genes for AD and a methylation signature comprising 89 genes for DS, respectively. Our evaluation indicated that these two signatures could lead to high classification accuracy values (92% and 70%) for these two diseases. In summary, this framework will be useful to better detect outlier-free genetic and epigenetic signatures in various complex diseases and their developmental stages.

Citing Articles

Integrative multi-omics and systems bioinformatics in translational neuroscience: A data mining perspective.

OConnor L, OConnor B, Lim S, Zeng J, Lo C J Pharm Anal. 2023; 13(8):836-850.

PMID: 37719197 PMC: 10499660. DOI: 10.1016/j.jpha.2023.06.011.


Phenotype clustering in health care: A narrative review for clinicians.

Loftus T, Shickel B, Balch J, Tighe P, Abbott K, Fazzone B Front Artif Intell. 2022; 5:842306.

PMID: 36034597 PMC: 9411746. DOI: 10.3389/frai.2022.842306.


Machine Learning in Epigenomics: Insights into Cancer Biology and Medicine.

Arslan E, Schulz J, Rai K Biochim Biophys Acta Rev Cancer. 2021; 1876(2):188588.

PMID: 34245839 PMC: 8595561. DOI: 10.1016/j.bbcan.2021.188588.

References
1.
Saelens W, Cannoodt R, Saeys Y . A comprehensive evaluation of module detection methods for gene expression data. Nat Commun. 2018; 9(1):1090. PMC: 5854612. DOI: 10.1038/s41467-018-03424-4. View

2.
Sun W, Zang L, Shu Q, Li X . From development to diseases: the role of 5hmC in brain. Genomics. 2014; 104(5):347-51. DOI: 10.1016/j.ygeno.2014.08.021. View

3.
Mallik S, Zhao Z . Towards integrated oncogenic marker recognition through mutual information-based statistically significant feature extraction: an association rule mining based study on cancer expression and methylation profiles. Quant Biol. 2018; 5(4):302-327. PMC: 6135253. DOI: 10.1007/s40484-017-0119-0. View

4.
Jirtle R, Skinner M . Environmental epigenomics and disease susceptibility. Nat Rev Genet. 2007; 8(4):253-62. PMC: 5940010. DOI: 10.1038/nrg2045. View

5.
Chouliaras L, Mastroeni D, Delvaux E, Grover A, Kenis G, Hof P . Consistent decrease in global DNA methylation and hydroxymethylation in the hippocampus of Alzheimer's disease patients. Neurobiol Aging. 2013; 34(9):2091-9. PMC: 3955118. DOI: 10.1016/j.neurobiolaging.2013.02.021. View