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Series GSE142330 Query DataSets for GSE142330
Status Public on Mar 30, 2021
Title Epigenomic Tensor Predicts Disease Subtypes and Reveals Constrained Tumor Evolution [ATAC-seq]
Organism Homo sapiens
Experiment type Genome binding/occupancy profiling by high throughput sequencing
Summary Understanding the epigenomic evolution and specificity of disease subtypes from complex patient data remains a major biomedical problem. We here present DeCET (Decomposition and Classification of Epigenomic Tensors), an integrative computational approach for simultaneously analyzing hierarchical heterogeneous data, to identify robust epigenomic differences between tissue types, differentiation states, and disease subtypes. Applying DeCET to our own data from 21 uterine benign tumor (leiomyoma) patients identifies distinct epigenomic features discriminating normal myometrium and leiomyoma subtypes. Leiomyomas possess preponderant alterations in distal enhancers and long-range histone modifications confined to chromatin contact domains that constrain the evolution of pathological epigenomes. Moreover, we demonstrate the power and advantage of DeCET on multiple publicly available epigenomic datasets representing different cancers and cellular states. Epigenomic features extracted by DeCET can thus help improve our understanding of disease states, cellular development, and differentiation, thereby facilitating future therapeutic, diagnostic and prognostic strategies.
 
Overall design ATAC-seq was used to assess chromatin accessibility in matched leiomyoma and healthy myometrium tissue samples from 8 patients. Basecalls were performed using RTA v.2.4.11 on Nextseq instrument. Sequenced reads were adapter trimmed using TrimGalore v0.4.4 with parameters --illumina --stringency 13 --paired. Trimmed reads were aligned to the hg19 genome using bowtie2 v2.3.2 with parameters --end-to-end --sensitive --score-min L,-1.5,-0.3 --no-unal. Aligned reads were filtered using samtools v1.7 view with parameters -b -f 2 -F 2828 -F 1024 -q13. Peaks were called from the filtered alignment files using MACS2 v2.1.1 with parameters -f BAMPE -g hs -B --keep-dup 1.
 
Contributor(s) Leistico JR, Saini P, Futtner CR, Hejna M, Omura Y, Soni PN, Sandlesh P, Milad M, Wei J, Bulun S, Parker JB, Barish GD, Song JS, Chakravarti D
Citation(s) 33789109
Submission date Dec 19, 2019
Last update date Nov 12, 2021
Contact name Jun S Song
E-mail(s) songj@illinois.edu
Phone (217) 244-7750
Organization name University of Illinois, Urbana-Champaign
Department Department of Physics
Street address 1110 West Green Street, MC 704
City Urbana
State/province IL
ZIP/Postal code 61801-3003
Country USA
 
Platforms (1)
GPL18573 Illumina NextSeq 500 (Homo sapiens)
Samples (16)
GSM4225561 pt3 myo ATACseq
GSM4225562 pt3 leio ATACseq
GSM4225563 pt4 myo ATACseq
This SubSeries is part of SuperSeries:
GSE142332 Epigenomic Tensor Predicts Disease Subtypes and Reveals Constrained Tumor Evolution
Relations
BioProject PRJNA596653
SRA SRP238210

Download family Format
SOFT formatted family file(s) SOFTHelp
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Supplementary file Size Download File type/resource
GSE142330_RAW.tar 9.8 Mb (http)(custom) TAR (of NARROWPEAK)
SRA Run SelectorHelp
Raw data are available in SRA
Processed data provided as supplementary file

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