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DNA methylation-based age prediction from saliva: High age predictability by combination of 7 CpG markers

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TLDR
This study generated genome-wide DNA methylation profiles of saliva from 54 individuals and identified CpG markers that showed a high correlation between methylation and age and generated a linear regression model that enabled age prediction in saliva with high accuracy.
Abstract
DNA methylation is currently one of the most promising age-predictive biomarkers. Many studies have reported DNA methylation-based age predictive models, but most of these are based on DNA methylation patterns from blood. Only a few studies have examined age-predictive DNA patterns in saliva, which is one of the most frequently-encountered body fluids at crime scenes. In this study, we generated genome-wide DNA methylation profiles of saliva from 54 individuals and identified CpG markers that showed a high correlation between methylation and age. Because the age-associated marker candidates from saliva differed from those of blood, we investigated DNA methylation patterns of 6 age-associated CpG marker candidates (cg00481951, cg19671120, cg14361627, cg08928145, cg12757011, and cg07547549 of the SST, CNGA3, KLF14, TSSK6, TBR1, and SLC12A5 genes, respectively) in addition to a cell type-specific CpG marker (cg18384097 of the PTPN7 gene) in an independent set of saliva samples obtained from 226 individuals aged 18 to 65 years. Multiplex methylation SNaPshot reactions were used to generate the data. We then generated a linear regression model with age information and the methylation profile from the 113 training samples. The model exhibited a 94.5% correlation between predicted and chronological age with a mean absolute deviation (MAD) from chronological age of 3.13 years. In subsequent validation using 113 test samples, we also observed a high correlation between predicted and chronological age (Spearman's rho=0.952, MAD from chronological age=3.15years). The model composed of 7 selected CpG sites enabled age prediction in saliva with high accuracy, which will be useful in saliva analysis for investigative leads.

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Citations
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Journal ArticleDOI

Chronological age prediction based on DNA methylation: Massive parallel sequencing and random forest regression

TL;DR: This work presents an age-prediction tool for whole blood based on massive parallel sequencing (MPS) and a random forest machine learning algorithm that uncovered well-known DNAm age-dependent markers, as well as additional new age- dependent sites for improvement of the model, and allowed the creation of a reliable and accurate epigenetic tool for age-Prediction without restriction to a linear change in DNAm with age.
Journal ArticleDOI

DNA methylation of the ELOVL2, FHL2, KLF14, C1orf132/MIR29B2C, and TRIM59 genes for age prediction from blood, saliva, and buccal swab samples.

TL;DR: The multiplex methylation SNaPshot assay and the age prediction models in this study would be useful in forensic analysis, which frequently involves DNA from blood, saliva, and buccal swab samples.
Journal ArticleDOI

Independent validation of DNA-based approaches for age prediction in blood.

TL;DR: This study demonstrates the usefulness of the proposed markers and the genotyping method in an independent dataset, and suggests the possibility of combining different types of DNA markers to improve prediction accuracy.
Journal ArticleDOI

Recent progress, methods and perspectives in forensic epigenetics.

TL;DR: The most recent literature on these three main topics of current forensic epigenetic investigations are summarized, which provides future perspectives with regard to new research questions, new epigenetic markers and recent technological advances that will move the field towards forensic epigenomics in the near future.
Journal ArticleDOI

Back to the future: Epigenetic clock plasticity towards healthy aging.

TL;DR: The epigenetic clock signature could be used as a lifestyle management tool to monitor healthy aging, to evaluate preventive interventions against chronic aging disorders and to extend healthy lifespan.
References
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Journal ArticleDOI

DNA methylation age of human tissues and cell types

TL;DR: It is proposed that DNA methylation age measures the cumulative effect of an epigenetic maintenance system, and can be used to address a host of questions in developmental biology, cancer and aging research.
Journal ArticleDOI

Genome-wide Methylation Profiles Reveal Quantitative Views of Human Aging Rates

TL;DR: A quantitative model of aging is built using measurements at more than 450,000 CpG markers from the whole blood of 656 human individuals, aged 19 to 101, to measure the rate at which an individual's methylome ages, which is impacted by gender and genetic variants.
Journal ArticleDOI

MethPrimer: designing primers for methylation PCRs

TL;DR: MethPrimer, based on Primer 3, is a program for designing PCR primers for methylation mapping that takes a DNA sequence as its input and searches the sequence for potential CpG islands, and picks primers around the predicted C pG islands or around regions specified by users.
Journal ArticleDOI

BatchPrimer3: A high throughput web application for PCR and sequencing primer design

TL;DR: BatchPrimer3 is a comprehensive web primer design program to develop different types of primers in a high-throughput manner and has been designed using the Primer3 core program and validated in several laboratories.
Journal ArticleDOI

Epigenetic Predictor of Age

TL;DR: A measurement of relevant sites in the genome could be a tool in routine medical screening to predict the risk of age-related diseases and to tailor interventions based on the epigenetic bio-age instead of the chronological age.
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