Cell-type-specific resolution epigenetics without the need for cell sorting or single-cell biology

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作者
Elior Rahmani
Regev Schweiger
Brooke Rhead
Lindsey A. Criswell
Lisa F. Barcellos
Eleazar Eskin
Saharon Rosset
Sriram Sankararaman
Eran Halperin
机构
[1] University of California,Department of Computer Science
[2] Los Angeles,Blavatnik School of Computer Science
[3] Tel Aviv University,Computational Biology Graduate Group
[4] MyHeritage Ltd.,Russell/Engleman Rheumatology Research Center, Department of Medicine
[5] University of California,School of Public Health
[6] Berkeley,Department of Human Genetics
[7] University of California,Department of Computational Medicine
[8] San Francisco,Department of Statistics
[9] University of California,Department of Anesthesiology and Perioperative Medicine
[10] Berkeley,undefined
[11] University of California,undefined
[12] Los Angeles,undefined
[13] University of California,undefined
[14] Los Angeles,undefined
[15] Tel Aviv University,undefined
[16] University of California,undefined
[17] Los Angeles,undefined
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摘要
High costs and technical limitations of cell sorting and single-cell techniques currently restrict the collection of large-scale, cell-type-specific DNA methylation data. This, in turn, impedes our ability to tackle key biological questions that pertain to variation within a population, such as identification of disease-associated genes at a cell-type-specific resolution. Here, we show mathematically and empirically that cell-type-specific methylation levels of an individual can be learned from its tissue-level bulk data, conceptually emulating the case where the individual has been profiled with a single-cell resolution and then signals were aggregated in each cell population separately. Provided with this unprecedented way to perform powerful large-scale epigenetic studies with cell-type-specific resolution, we revisit previous studies with tissue-level bulk methylation and reveal novel associations with leukocyte composition in blood and with rheumatoid arthritis. For the latter, we further show consistency with validation data collected from sorted leukocyte sub-types.
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