Englander Institute for Precision Medicine

DeepMILO: a deep learning approach to predict the impact of non-coding sequence variants on 3D chromatin structure.

TitleDeepMILO: a deep learning approach to predict the impact of non-coding sequence variants on 3D chromatin structure.
Publication TypeJournal Article
Year of Publication2020
AuthorsTrieu T, Martinez-Fundichely A, Khurana E
JournalGenome Biol
Volume21
Issue1
Pagination79
Date Published2020 Mar 26
ISSN1474-760X
KeywordsCCCTC-Binding Factor, Cell Cycle Proteins, Cell Line, Tumor, Chromatin, Chromosomal Proteins, Non-Histone, Deep Learning, Humans, Insulator Elements, Mutation, Neoplasms, Whole Genome Sequencing
Abstract

Non-coding variants have been shown to be related to disease by alteration of 3D genome structures. We propose a deep learning method, DeepMILO, to predict the effects of variants on CTCF/cohesin-mediated insulator loops. Application of DeepMILO on variants from whole-genome sequences of 1834 patients of twelve cancer types revealed 672 insulator loops disrupted in at least 10% of patients. Our results show mutations at loop anchors are associated with upregulation of the cancer driver genes BCL2 and MYC in malignant lymphoma thus pointing to a possible new mechanism for their dysregulation via alteration of insulator loops.

DOI10.1186/s13059-020-01987-4
Alternate JournalGenome Biol
PubMed ID32216817
PubMed Central IDPMC7098089
Grant ListR01 CA218668 / CA / NCI NIH HHS / United States

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