Search for differentially methylated regions in ancient and modern genomes

Currently, active research is focused on investigating the mechanisms that regulate the development of various pathologies and their evolutionary dynamics. Epigenetic mechanisms, such as DNA methylation, play a significant role in evolutionary processes, as their changes have a faster impact on the...

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Main Authors: D. D. Borodko, S. V. Zhenilo, F. S. Sharko
Format: Article
Language:English
Published: Siberian Branch of the Russian Academy of Sciences, Federal Research Center Institute of Cytology and Genetics, The Vavilov Society of Geneticists and Breeders 2023-12-01
Series:Вавиловский журнал генетики и селекции
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Online Access:https://vavilov.elpub.ru/jour/article/view/3982
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author D. D. Borodko
S. V. Zhenilo
F. S. Sharko
author_facet D. D. Borodko
S. V. Zhenilo
F. S. Sharko
author_sort D. D. Borodko
collection DOAJ
description Currently, active research is focused on investigating the mechanisms that regulate the development of various pathologies and their evolutionary dynamics. Epigenetic mechanisms, such as DNA methylation, play a significant role in evolutionary processes, as their changes have a faster impact on the phenotype compared to mutagenesis. In this study, we attempted to develop an algorithm for identifying differentially methylated regions associated with metabolic syndrome, which have undergone methylation changes in humans during the transition from a hunter­gatherer to a sedentary lifestyle. The application of existing whole­genome bisulfite sequencing methods is limited for ancient samples due to their low quality and fragmentation, and the approach to obtaining DNA methylation profiles differs significantly between ancient hunter­gatherer samples and modern tissues. In this study, we validated DamMet, an algorithm for reconstructing ancient methylomes. Application of DamMet to Neanderthal and Denisovan genomes showed a moderate level of correlation with previously published methylation profiles and demonstrated an underestimation of methylation levels in the reconstructed profiles by an average of 15–20 %. Additionally, we developed a new Python­based algorithm that allows for the comparison of methylomes in ancient and modern samples, despite the absence of methylation profiles in modern bone tissue within the context of obesity. This analysis involves a two­step data processing approach, where the first step involves the identification and  filtration of tissue­specific methylation regions, and the second step focuses on the direct search for differentially methylated regions in specific areas associated with the researcher’s target condition. By applying this algorithm to test data, we identified 38 differentially methylated regions associated with obesity, the majority of which were located in promoter regions. The pipeline demonstrated sufficient efficiency in detecting these regions. These results confirm the feasibility of reconstructing DNA methylation profiles in ancient samples and comparing them with modern methylomes. Furthermore, possibilities for further methodological development and the implementation of a new step for studying differentially methylated positions associated with evolutionary processes are discussed.
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institution Kabale University
issn 2500-3259
language English
publishDate 2023-12-01
publisher Siberian Branch of the Russian Academy of Sciences, Federal Research Center Institute of Cytology and Genetics, The Vavilov Society of Geneticists and Breeders
record_format Article
series Вавиловский журнал генетики и селекции
spelling doaj-art-5c79777db19848d988d301bcc80a59292025-02-01T09:58:12ZengSiberian Branch of the Russian Academy of Sciences, Federal Research Center Institute of Cytology and Genetics, The Vavilov Society of Geneticists and BreedersВавиловский журнал генетики и селекции2500-32592023-12-0127710.18699/VJGB-23-951410Search for differentially methylated regions in ancient and modern genomesD. D. Borodko0S. V. Zhenilo1F. S. Sharko2Federal Research Center “Fundamentals of Biotechnology” of the Russian Academy of SciencesFederal Research Center “Fundamentals of Biotechnology” of the Russian Academy of SciencesFederal Research Center “Fundamentals of Biotechnology” of the Russian Academy of SciencesCurrently, active research is focused on investigating the mechanisms that regulate the development of various pathologies and their evolutionary dynamics. Epigenetic mechanisms, such as DNA methylation, play a significant role in evolutionary processes, as their changes have a faster impact on the phenotype compared to mutagenesis. In this study, we attempted to develop an algorithm for identifying differentially methylated regions associated with metabolic syndrome, which have undergone methylation changes in humans during the transition from a hunter­gatherer to a sedentary lifestyle. The application of existing whole­genome bisulfite sequencing methods is limited for ancient samples due to their low quality and fragmentation, and the approach to obtaining DNA methylation profiles differs significantly between ancient hunter­gatherer samples and modern tissues. In this study, we validated DamMet, an algorithm for reconstructing ancient methylomes. Application of DamMet to Neanderthal and Denisovan genomes showed a moderate level of correlation with previously published methylation profiles and demonstrated an underestimation of methylation levels in the reconstructed profiles by an average of 15–20 %. Additionally, we developed a new Python­based algorithm that allows for the comparison of methylomes in ancient and modern samples, despite the absence of methylation profiles in modern bone tissue within the context of obesity. This analysis involves a two­step data processing approach, where the first step involves the identification and  filtration of tissue­specific methylation regions, and the second step focuses on the direct search for differentially methylated regions in specific areas associated with the researcher’s target condition. By applying this algorithm to test data, we identified 38 differentially methylated regions associated with obesity, the majority of which were located in promoter regions. The pipeline demonstrated sufficient efficiency in detecting these regions. These results confirm the feasibility of reconstructing DNA methylation profiles in ancient samples and comparing them with modern methylomes. Furthermore, possibilities for further methodological development and the implementation of a new step for studying differentially methylated positions associated with evolutionary processes are discussed.https://vavilov.elpub.ru/jour/article/view/3982ancient dnamethylationepigeneticsdammetdmr
spellingShingle D. D. Borodko
S. V. Zhenilo
F. S. Sharko
Search for differentially methylated regions in ancient and modern genomes
Вавиловский журнал генетики и селекции
ancient dna
methylation
epigenetics
dammet
dmr
title Search for differentially methylated regions in ancient and modern genomes
title_full Search for differentially methylated regions in ancient and modern genomes
title_fullStr Search for differentially methylated regions in ancient and modern genomes
title_full_unstemmed Search for differentially methylated regions in ancient and modern genomes
title_short Search for differentially methylated regions in ancient and modern genomes
title_sort search for differentially methylated regions in ancient and modern genomes
topic ancient dna
methylation
epigenetics
dammet
dmr
url https://vavilov.elpub.ru/jour/article/view/3982
work_keys_str_mv AT ddborodko searchfordifferentiallymethylatedregionsinancientandmoderngenomes
AT svzhenilo searchfordifferentiallymethylatedregionsinancientandmoderngenomes
AT fssharko searchfordifferentiallymethylatedregionsinancientandmoderngenomes