SRP048761 Track Settings
 
Dissecting neural differentiation regulatory networks through epigenetic footprinting

Maximum display mode:       Reset to defaults   
Select views (Help):
hmr       amr       pmd       sym counts ▾       sym coverage ▾      
Select subtracks by views and experiment:
 All views hmr  amr  pmd  sym counts  sym coverage 
experiment
SRX729714 
SRX729715 
SRX729716 
SRX729717 
SRX729719 
SRX729718 
List subtracks: only selected/visible    all    ()
  experiment↓1 views↓2   Track Name↓3  
hide
 SRX729714  hmr  SRX729714 hmr   Data format 
hide
 SRX729714  amr  SRX729714 amr   Data format 
hide
 SRX729714  pmd  SRX729714 pmd   Data format 
hide
 Configure
 SRX729714  sym counts  SRX729714 sym   Data format 
hide
 Configure
 SRX729714  sym coverage  SRX729714 coverage   Data format 
hide
 SRX729715  hmr  SRX729715 hmr   Data format 
hide
 SRX729715  amr  SRX729715 amr   Data format 
hide
 SRX729715  pmd  SRX729715 pmd   Data format 
hide
 Configure
 SRX729715  sym counts  SRX729715 sym   Data format 
hide
 Configure
 SRX729715  sym coverage  SRX729715 coverage   Data format 
hide
 SRX729716  hmr  SRX729716 hmr   Data format 
hide
 SRX729716  amr  SRX729716 amr   Data format 
hide
 SRX729716  pmd  SRX729716 pmd   Data format 
hide
 Configure
 SRX729716  sym counts  SRX729716 sym   Data format 
hide
 Configure
 SRX729716  sym coverage  SRX729716 coverage   Data format 
hide
 SRX729717  hmr  SRX729717 hmr   Data format 
hide
 SRX729717  amr  SRX729717 amr   Data format 
hide
 SRX729717  pmd  SRX729717 pmd   Data format 
hide
 Configure
 SRX729717  sym counts  SRX729717 sym   Data format 
hide
 Configure
 SRX729717  sym coverage  SRX729717 coverage   Data format 
hide
 Configure
 SRX729718  sym counts  SRX729718 sym   Data format 
hide
 Configure
 SRX729718  sym coverage  SRX729718 coverage   Data format 
hide
 Configure
 SRX729719  sym counts  SRX729719 sym   Data format 
hide
 Configure
 SRX729719  sym coverage  SRX729719 coverage   Data format 
    
Assembly: Human Dec. 2013 (GRCh38/hg38)

SRP048761

Dissecting neural differentiation regulatory networks through epigenetic footprinting

Publication

Experiment Methylation Coverage HMRs HMR size AMRs AMR size PMDs PMD size Conversion Selection Label Title
SRX729714 0.761 57.5 42705 1057.9 1571 1350.8 4347 8461.4 0.984 RANDOM whole genome bisulfite sequencing embryonic stem cells GSM1521762: whole genome bisulfite sequencing of human embryonic stem cells; Homo sapiens; Bisulfite-Seq
SRX729715 0.764 55.7 48870 1148.9 1583 1291.6 3793 53142.0 0.996 RANDOM whole genome bisulfite sequencing neuroepithelial cells GSM1521763: whole genome bisulfite sequencing of neuroepithelial cells; Homo sapiens; Bisulfite-Seq
SRX729716 0.762 52.5 46698 1070.3 1411 1329.7 4065 34222.2 0.998 RANDOM whole genome bisulfite sequencing early radial glial cells GSM1521764: whole genome bisulfite sequencing of early radial glial cells; Homo sapiens; Bisulfite-Seq
SRX729717 0.763 51.8 53162 2002.8 1147 1313.1 1964 133223.4 0.998 RANDOM whole genome bisulfite sequencing mid radial glial cells GSM1521765: whole genome bisulfite sequencing of mid radial glial cells; Homo sapiens; Bisulfite-Seq
SRX729719 -- 0.0 0 0.0 0 0.0 0 0.0 0.000 Reduced Representation reduced representation bisulfite sequencing long term neural precursors GSM1521767: reduced representation bisulfite sequencing for long term neural precursors; Homo sapiens; Bisulfite-Seq
SRX729718 -- 0.0 0 0.0 0 0.0 0 0.0 0.000 Reduced Representation reduced representation bisulfite sequencing late radial glial cells GSM1521766: reduced representation bisulfite sequencing for late radial glial cells; Homo sapiens; Bisulfite-Seq

Methods

All analysis was done using a bisulfite sequnecing data analysis pipeline DNMTools developed in the Smith lab at USC.

Mapping reads from bisulfite sequencing: Bisulfite treated reads are mapped to the genomes with the abismal program. Input reads are filtered by their quality, and adapter sequences in the 3' end of reads are trimmed. This is done with cutadapt. Uniquely mapped reads with mismatches/indels below given threshold are retained. For pair-end reads, if the two mates overlap, the overlapping part of the mate with lower quality is discarded. After mapping, we use the format command in dnmtools to merge mates for paired-end reads. We use the dnmtools uniq command to randomly select one from multiple reads mapped exactly to the same location. Without random oligos as UMIs, this is our best indication of PCR duplicates.

Estimating methylation levels: After reads are mapped and filtered, the dnmtools counts command is used to obtain read coverage and estimate methylation levels at individual cytosine sites. We count the number of methylated reads (those containing a C) and the number of unmethylated reads (those containing a T) at each nucleotide in a mapped read that corresponds to a cytosine in the reference genome. The methylation level of that cytosine is estimated as the ratio of methylated to total reads covering that cytosine. For cytosines in the symmetric CpG sequence context, reads from the both strands are collapsed to give a single estimate. Very rarely do the levels differ between strands (typically only if there has been a substitution, as in a somatic mutation), and this approach gives a better estimate.

Bisulfite conversion rate: The bisulfite conversion rate for an experiment is estimated with the dnmtools bsrate command, which computes the fraction of successfully converted nucleotides in reads (those read out as Ts) among all nucleotides in the reads mapped that map over cytosines in the reference genome. This is done either using a spike-in (e.g., lambda), the mitochondrial DNA, or the nuclear genome. In the latter case, only non-CpG sites are used. While this latter approach can be impacted by non-CpG cytosine methylation, in practice it never amounts to much.

Identifying hypomethylated regions (HMRs): In most mammalian cells, the majority of the genome has high methylation, and regions of low methylation are typically the interesting features. (This seems to be true for essentially all healthy differentiated cell types, but not cells of very early embryogenesis, various germ cells and precursors, and placental lineage cells.) These are valleys of low methylation are called hypomethylated regions (HMR) for historical reasons. To identify the HMRs, we use the dnmtools hmr command, which uses a statistical model that accounts for both the methylation level fluctations and the varying amounts of data available at each CpG site.

Identifying hypermethylated regions (HyperMRs) and mosaic methylation: Hyper-methylated regions (which we call HyperMRs) are of interest in plant methylomes, invertebrate methylomes and other methylomes showing "mosaic methylation" pattern. We identify HyperMRs with the dnmtools hypermr command for those samples showing "mosaic methylation" pattern.

Partially methylated domains: Partially methylated domains are large genomic regions showing partial methylation observed in immortalized cell lines and cancerous cells. The pmd program is used to identify PMDs.

Allele-specific methylation: Allele-Specific methylated regions refers to regions where the parental allele is differentially methylated compared to the maternal allele. The program allelic is used to compute allele-specific methylation score can be computed for each CpG site by testing the linkage between methylation status of adjacent reads, and the program amrfinder is used to identify regions with allele-specific methylation.

For more detailed description of the methods of each step, please refer to the DNMTools documentation.