4.7 Article

HiTIMED: hierarchical tumor immune microenvironment epigenetic deconvolution for accurate cell type resolution in the tumor microenvironment using tumor-type-specific DNA methylation data

期刊

JOURNAL OF TRANSLATIONAL MEDICINE
卷 20, 期 1, 页码 -

出版社

BMC
DOI: 10.1186/s12967-022-03736-6

关键词

DNA methylation; Deconvolution; Tumor microenvironment; Epigenetics; Cancer; Immune microenvironment; Tumor angiogenesis

资金

  1. 2018 AACR-Johnson & Johnson Lung Cancer Innovation Science [18-90-52-MICH]
  2. CDMRP/Department of Defense [W81XWH-20-1-0778]
  3. NIGMS [P20GM104416/8299]
  4. Magnin Newman Endowment for Neuro-oncology
  5. [R01CA216265]
  6. [R01CA253976]
  7. [P30 CA168524]
  8. [P20 GM130423]
  9. [P20GM103428]
  10. [R01 CA207360]
  11. [P50 CA097257]

向作者/读者索取更多资源

In this study, a novel algorithm called HiTIMED was developed to estimate cell proportions in the tumor microenvironment using DNA methylation data. HiTIMED provides high-resolution and accurate deconvolution of the tumor microenvironment, allowing for the identification of cell types that are often missed by existing methods. The algorithm has implications for both clinical and biological studies.
Background Cellular compositions of solid tumor microenvironments are heterogeneous, varying across patients and tumor types. High-resolution profiling of the tumor microenvironment cell composition is crucial to understanding its biological and clinical implications. Previously, tumor microenvironment gene expression and DNA methylation-based deconvolution approaches have been shown to deconvolve major cell types. However, existing methods lack accuracy and specificity to tumor type and include limited identification of individual cell types. Results We employed a novel tumor-type-specific hierarchical model using DNA methylation data to deconvolve the tumor microenvironment with high resolution, accuracy, and specificity. The deconvolution algorithm is named HiTIMED. Seventeen cell types from three major tumor microenvironment components can be profiled (tumor, immune, angiogenic) by HiTIMED, and it provides tumor-type-specific models for twenty carcinoma types. We demonstrate the prognostic significance of cell types that other tumor microenvironment deconvolution methods do not capture. Conclusion We developed HiTIMED, a DNA methylation-based algorithm, to estimate cell proportions in the tumor microenvironment with high resolution and accuracy. HiTIMED deconvolution is amenable to archival biospecimens providing high-resolution profiles enabling to study of clinical and biological implications of variation and composition of the tumor microenvironment.

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