tooluniverse-epigenomics

安装量: 134
排名: #6425

安装

npx skills add https://github.com/mims-harvard/tooluniverse --skill tooluniverse-epigenomics

Genomics and Epigenomics Data Processing Production-ready computational skill for processing and analyzing epigenomics data. Combines local Python computation (pandas, scipy, numpy, pysam, statsmodels) with ToolUniverse annotation tools for regulatory context. Designed to solve BixBench-style questions about methylation, ChIP-seq, ATAC-seq, and multi-omics integration. When to Use This Skill Triggers : User provides methylation data (beta-value matrices, Illumina arrays) and asks about CpG sites Questions about differential methylation analysis Age-related CpG detection or epigenetic clock questions Chromosome-level methylation density or statistics ChIP-seq peak files (BED format) with analysis questions ATAC-seq chromatin accessibility questions Multi-omics integration (expression + methylation, expression + ChIP-seq) Genome-wide epigenomic statistics Questions mentioning "methylation", "CpG", "ChIP-seq", "ATAC-seq", "histone", "chromatin", "epigenetic" Questions about missing data across clinical/genomic/epigenomic modalities Regulatory element annotation for processed epigenomic data Example Questions This Skill Solves : "How many patients have no missing data for vital status, gene expression, and methylation data?" "What is the ratio of filtered age-related CpG density between chromosomes?" "What is the genome-wide average chromosomal density of unique age-related CpGs per base pair?" "How many CpG sites show significant differential methylation (padj < 0.05)?" "What is the Pearson correlation between methylation and expression for gene X?" "How many ChIP-seq peaks overlap with promoter regions?" "What fraction of ATAC-seq peaks are in enhancer regions?" "Which chromosome has the highest density of hypermethylated CpGs?" "Filter CpG sites by variance > threshold and map to nearest genes" "What is the average beta value difference between tumor and normal for chromosome 17?" NOT for (use other skills instead): Gene regulation lookup without data files -> Use existing epigenomics annotation pattern RNA-seq differential expression -> Use tooluniverse-rnaseq-deseq2 Variant calling/annotation from VCF -> Use tooluniverse-variant-analysis Gene enrichment analysis -> Use tooluniverse-gene-enrichment Protein structure analysis -> Use tooluniverse-protein-structure-retrieval Required Python Packages

Core (MUST be available)

import pandas as pd import numpy as np from scipy import stats import statsmodels . stats . multitest as mt

Optional but useful

import pysam

BAM/CRAM file access

import gseapy

Enrichment of genes from methylation analysis

ToolUniverse (for annotation)

from
tooluniverse
import
ToolUniverse
KEY PRINCIPLES
Data-first approach
- Load and inspect data files BEFORE any analysis
Question-driven
- Parse what the user is actually asking and extract the specific numeric answer
File format detection
- Automatically detect methylation arrays, BED files, BigWig, clinical data
Coordinate system awareness
- Track genome build (hg19, hg38, mm10), handle chr prefix differences
Statistical rigor
- Proper multiple testing correction, effect size filtering, sample size awareness
Missing data handling
- Explicitly report and handle NaN/missing values
Chromosome normalization
- Always normalize chromosome names (chr1 vs 1, chrX vs X)
CpG site identification
- Parse Illumina probe IDs (cg/ch probes), genomic coordinates
Report-first
- Create output file first, populate progressively
English-first queries
- Use English in all tool calls
Complete Workflow
Phase 0: Question Parsing and Data Discovery
CRITICAL FIRST STEP
Before writing ANY code, parse the question to identify what is being asked and what data files are available. 0.1 Discover Available Data Files import os import glob data_dir = "."

or specified path

all_files

glob . glob ( os . path . join ( data_dir , "*/" ) , recursive = True )

Categorize files

methylation_files

[ f for f in all_files if any ( x in f . lower ( ) for x in [ 'methyl' , 'beta' , 'cpg' , 'illumina' , '450k' , '850k' , 'epic' , 'mval' ] ) ] chipseq_files = [ f for f in all_files if any ( x in f . lower ( ) for x in [ 'chip' , 'peak' , 'narrowpeak' , 'broadpeak' , 'histone' ] ) ] atacseq_files = [ f for f in all_files if any ( x in f . lower ( ) for x in [ 'atac' , 'accessibility' , 'openChromatin' , 'dnase' ] ) ] bed_files = [ f for f in all_files if f . endswith ( ( '.bed' , '.bed.gz' , '.narrowPeak' , '.broadPeak' ) ) ] bigwig_files = [ f for f in all_files if f . endswith ( ( '.bw' , '.bigwig' , '.bigWig' ) ) ] clinical_files = [ f for f in all_files if any ( x in f . lower ( ) for x in [ 'clinical' , 'patient' , 'sample' , 'metadata' , 'phenotype' , 'survival' ] ) ] expression_files = [ f for f in all_files if any ( x in f . lower ( ) for x in [ 'express' , 'rnaseq' , 'fpkm' , 'tpm' , 'counts' , 'transcriptom' ] ) ] manifest_files = [ f for f in all_files if any ( x in f . lower ( ) for x in [ 'manifest' , 'annotation' , 'probe' , 'platform' ] ) ]

Print summary

for category , files in [ ( 'Methylation' , methylation_files ) , ( 'ChIP-seq' , chipseq_files ) , ( 'ATAC-seq' , atacseq_files ) , ( 'BED' , bed_files ) , ( 'BigWig' , bigwig_files ) , ( 'Clinical' , clinical_files ) , ( 'Expression' , expression_files ) , ( 'Manifest' , manifest_files ) , ] : if files : print ( f" { category } : { files } " ) 0.2 Parse Question Parameters Extract these from the question: Parameter Default Example Question Text Significance threshold 0.05 "padj < 0.05", "FDR < 0.01" Beta difference threshold 0 " Variance filter None "variance > 0.01", "top 5000 most variable" Chromosome filter All "chromosome 17", "autosomes only" Genome build hg38 "hg19", "GRCh37", "mm10" CpG type filter All "cg probes only", "exclude ch probes" Region filter None "promoter", "gene body", "intergenic" Missing data handling Report "complete cases", "no missing data" Specific comparison Infer "tumor vs normal", "old vs young" Specific statistic Infer "density", "ratio", "count", "average" 0.3 Decision Tree Q: What type of epigenomics data? METHYLATION -> Phase 1 (Methylation Processing) CHIP-SEQ -> Phase 2 (ChIP-seq Processing) ATAC-SEQ -> Phase 3 (ATAC-seq Processing) MULTI-OMICS -> Phase 4 (Integration) CLINICAL -> Phase 5 (Clinical Integration) ANNOTATION -> Phase 6 (ToolUniverse Annotation) Q: Is this a genome-wide statistics question? YES -> Focus on chromosome-level aggregation (Phase 7) NO -> Focus on site/region-level analysis Phase 1: Methylation Data Processing 1.1 Load Methylation Data import pandas as pd import numpy as np def load_methylation_data ( file_path , ** kwargs ) : """Load methylation beta-value or M-value matrix. Expected format: - Rows: CpG probes (cg00000029, cg00000108, ...) - Columns: Samples (TCGA-XX-XXXX, ...) - Values: Beta values (0-1) or M-values (log2 ratio) """ ext = os . path . splitext ( file_path ) [ 1 ] . lower ( ) if ext in [ '.csv' ] : df = pd . read_csv ( file_path , index_col = 0 , ** kwargs ) elif ext in [ '.tsv' , '.txt' ] : df = pd . read_csv ( file_path , sep = '\t' , index_col = 0 , ** kwargs ) elif ext in [ '.parquet' ] : df = pd . read_parquet ( file_path , ** kwargs ) elif ext in [ '.h5' , '.hdf5' ] : df = pd . read_hdf ( file_path , ** kwargs ) else :

Try tab first, then comma

try : df = pd . read_csv ( file_path , sep = '\t' , index_col = 0 , ** kwargs ) except Exception : df = pd . read_csv ( file_path , index_col = 0 , ** kwargs ) return df def detect_methylation_type ( df ) : """Detect if data is beta values (0-1) or M-values (unbounded).""" sample_vals = df . iloc [ : 1000 , : 5 ] . values . flatten ( ) sample_vals = sample_vals [ ~ np . isnan ( sample_vals ) ] if sample_vals . min ( )

= 0 and sample_vals . max ( ) <= 1 : return 'beta' else : return 'mvalue' def beta_to_mvalue ( beta ) : """Convert beta values to M-values: M = log2(beta / (1 - beta)).""" beta = np . clip ( beta , 1e-6 , 1 - 1e-6 ) return np . log2 ( beta / ( 1 - beta ) ) def mvalue_to_beta ( mvalue ) : """Convert M-values to beta values: beta = 2^M / (2^M + 1).""" return 2 ** mvalue / ( 2 ** mvalue + 1 ) 1.2 Load Methylation Manifest / Probe Annotation def load_probe_annotation ( manifest_path ) : """Load Illumina methylation array manifest. Common columns: IlmnID, Name, CHR, MAPINFO (position), Strand, UCSC_RefGene_Name, UCSC_RefGene_Group, Relation_to_UCSC_CpG_Island """

Try reading manifest - may have header rows to skip

for skiprows in [ 0 , 7 , 8 ] : try : manifest = pd . read_csv ( manifest_path , skiprows = skiprows , low_memory = False ) if 'CHR' in manifest . columns or 'chr' in manifest . columns : break if 'Name' in manifest . columns or 'IlmnID' in manifest . columns : break except Exception : continue

Normalize column names

col_map

{ } for col in manifest . columns : lower = col . lower ( ) if lower in [ 'chr' , 'chromosome' ] : col_map [ col ] = 'chr' elif lower in [ 'mapinfo' , 'position' , 'pos' , 'start' ] : col_map [ col ] = 'position' elif lower in [ 'name' , 'ilmnid' , 'probe_id' , 'cpg_id' ] : col_map [ col ] = 'probe_id' elif 'refgene_name' in lower or 'gene' in lower : col_map [ col ] = 'gene_name' elif 'refgene_group' in lower : col_map [ col ] = 'gene_group' elif 'cpg_island' in lower or 'relation' in lower : col_map [ col ] = 'cpg_island_relation' manifest = manifest . rename ( columns = col_map ) return manifest def normalize_chromosome ( chrom ) : """Normalize chromosome name: '1' -> 'chr1', 'chrX' -> 'chrX', etc.""" if chrom is None or pd . isna ( chrom ) : return None chrom = str ( chrom ) . strip ( ) if not chrom . startswith ( 'chr' ) : chrom = 'chr' + chrom return chrom def get_chromosome_lengths ( genome = 'hg38' ) : """Return chromosome lengths for common genome builds."""

hg38 chromosome sizes (main chromosomes)

hg38

{ 'chr1' : 248956422 , 'chr2' : 242193529 , 'chr3' : 198295559 , 'chr4' : 190214555 , 'chr5' : 181538259 , 'chr6' : 170805979 , 'chr7' : 159345973 , 'chr8' : 145138636 , 'chr9' : 138394717 , 'chr10' : 133797422 , 'chr11' : 135086622 , 'chr12' : 133275309 , 'chr13' : 114364328 , 'chr14' : 107043718 , 'chr15' : 101991189 , 'chr16' : 90338345 , 'chr17' : 83257441 , 'chr18' : 80373285 , 'chr19' : 58617616 , 'chr20' : 64444167 , 'chr21' : 46709983 , 'chr22' : 50818468 , 'chrX' : 156040895 , 'chrY' : 57227415 , } hg19 = { 'chr1' : 249250621 , 'chr2' : 243199373 , 'chr3' : 198022430 , 'chr4' : 191154276 , 'chr5' : 180915260 , 'chr6' : 171115067 , 'chr7' : 159138663 , 'chr8' : 146364022 , 'chr9' : 141213431 , 'chr10' : 135534747 , 'chr11' : 135006516 , 'chr12' : 133851895 , 'chr13' : 115169878 , 'chr14' : 107349540 , 'chr15' : 102531392 , 'chr16' : 90354753 , 'chr17' : 81195210 , 'chr18' : 78077248 , 'chr19' : 59128983 , 'chr20' : 63025520 , 'chr21' : 48129895 , 'chr22' : 51304566 , 'chrX' : 155270560 , 'chrY' : 59373566 , } mm10 = { 'chr1' : 195471971 , 'chr2' : 182113224 , 'chr3' : 160039680 , 'chr4' : 156508116 , 'chr5' : 151834684 , 'chr6' : 149736546 , 'chr7' : 145441459 , 'chr8' : 129401213 , 'chr9' : 124595110 , 'chr10' : 130694993 , 'chr11' : 122082543 , 'chr12' : 120129022 , 'chr13' : 120421639 , 'chr14' : 124902244 , 'chr15' : 104043685 , 'chr16' : 98207768 , 'chr17' : 94987271 , 'chr18' : 90702639 , 'chr19' : 61431566 , 'chrX' : 171031299 , 'chrY' : 91744698 , } genomes = { 'hg38' : hg38 , 'hg19' : hg19 , 'mm10' : mm10 } return genomes . get ( genome , hg38 ) 1.3 CpG Site Filtering def filter_cpg_probes ( df , manifest = None , filters = None ) : """Filter CpG probes based on various criteria. Args: df: Methylation matrix (probes x samples) manifest: Probe annotation DataFrame filters: dict with keys: - 'variance_threshold': float, minimum variance across samples - 'mean_beta_range': tuple (min, max), filter probes with extreme mean beta - 'missing_threshold': float (0-1), max fraction of NaN allowed per probe - 'chromosomes': list, keep only these chromosomes - 'exclude_sex_chr': bool, remove chrX and chrY - 'probe_type': 'cg' or 'ch', keep only one type - 'cpg_island': str ('Island', 'Shore', 'Shelf', 'OpenSea') - 'gene_group': str ('TSS200', 'TSS1500', 'Body', '1stExon', etc.) - 'top_n_variable': int, keep top N most variable probes """ if filters is None : filters = { } probe_mask = pd . Series ( True , index = df . index )

Probe type filter (cg vs ch)

if 'probe_type' in filters : ptype = filters [ 'probe_type' ] probe_mask & = df . index . str . startswith ( ptype )

Missing data filter

if 'missing_threshold' in filters : threshold = filters [ 'missing_threshold' ] missing_frac = df . isna ( ) . mean ( axis = 1 ) probe_mask & = missing_frac <= threshold

Variance filter

if 'variance_threshold' in filters : var_threshold = filters [ 'variance_threshold' ] probe_var = df . var ( axis = 1 , skipna = True ) probe_mask & = probe_var

= var_threshold

Mean beta range filter

if 'mean_beta_range' in filters : min_beta , max_beta = filters [ 'mean_beta_range' ] probe_mean = df . mean ( axis = 1 , skipna = True ) probe_mask & = ( probe_mean

= min_beta ) & ( probe_mean <= max_beta )

Top N most variable

if 'top_n_variable' in filters : n = filters [ 'top_n_variable' ] probe_var = df . var ( axis = 1 , skipna = True ) top_probes = probe_var . nlargest ( n ) . index probe_mask & = df . index . isin ( top_probes )

Manifest-based filters

if manifest is not None and len ( manifest )

0 : probe_id_col = 'probe_id' if 'probe_id' in manifest . columns else manifest . columns [ 0 ] manifest_indexed = manifest . set_index ( probe_id_col ) if probe_id_col in manifest . columns else manifest

Chromosome filter

if 'chromosomes' in filters and 'chr' in manifest_indexed . columns : valid_chr = [ normalize_chromosome ( c ) for c in filters [ 'chromosomes' ] ] chr_probes = manifest_indexed [ manifest_indexed [ 'chr' ] . apply ( normalize_chromosome ) . isin ( valid_chr ) ] . index probe_mask & = df . index . isin ( chr_probes )

Exclude sex chromosomes

if filters . get ( 'exclude_sex_chr' , False ) and 'chr' in manifest_indexed . columns : sex_chr = [ 'chrX' , 'chrY' , 'X' , 'Y' ] nonsex_probes = manifest_indexed [ ~ manifest_indexed [ 'chr' ] . apply ( normalize_chromosome ) . isin ( [ 'chrX' , 'chrY' ] ) ] . index probe_mask & = df . index . isin ( nonsex_probes )

CpG island relation filter

if 'cpg_island' in filters and 'cpg_island_relation' in manifest_indexed . columns : relation = filters [ 'cpg_island' ] island_probes = manifest_indexed [ manifest_indexed [ 'cpg_island_relation' ] . str . contains ( relation , na = False , case = False ) ] . index probe_mask & = df . index . isin ( island_probes )

Gene group filter (TSS200, Body, etc.)

if 'gene_group' in filters and 'gene_group' in manifest_indexed . columns : group = filters [ 'gene_group' ] group_probes = manifest_indexed [ manifest_indexed [ 'gene_group' ] . str . contains ( group , na = False , case = False ) ] . index probe_mask & = df . index . isin ( group_probes ) filtered_df = df [ probe_mask ] return filtered_df 1.4 Differential Methylation Analysis from scipy import stats import statsmodels . stats . multitest as mt def differential_methylation ( beta_df , group1_samples , group2_samples , test = 'ttest' , correction = 'fdr_bh' , alpha = 0.05 ) : """Perform differential methylation analysis between two groups. Args: beta_df: Beta-value matrix (probes x samples) group1_samples: list of sample IDs for group 1 group2_samples: list of sample IDs for group 2 test: 'ttest', 'wilcoxon', or 'ks' (Kolmogorov-Smirnov) correction: multiple testing correction method alpha: significance threshold Returns: DataFrame with columns: mean_g1, mean_g2, delta_beta, pvalue, padj """ g1 = beta_df [ group1_samples ] g2 = beta_df [ group2_samples ] results = [ ] for probe in beta_df . index : vals1 = g1 . loc [ probe ] . dropna ( ) . values vals2 = g2 . loc [ probe ] . dropna ( ) . values if len ( vals1 ) < 2 or len ( vals2 ) < 2 : results . append ( { 'probe' : probe , 'mean_g1' : np . nan , 'mean_g2' : np . nan , 'delta_beta' : np . nan , 'pvalue' : np . nan } ) continue mean1 = np . nanmean ( vals1 ) mean2 = np . nanmean ( vals2 ) delta = mean2 - mean1 if test == 'ttest' : stat , pval = stats . ttest_ind ( vals1 , vals2 , equal_var = False ) elif test == 'wilcoxon' : stat , pval = stats . mannwhitneyu ( vals1 , vals2 , alternative = 'two-sided' ) elif test == 'ks' : stat , pval = stats . ks_2samp ( vals1 , vals2 ) else : stat , pval = stats . ttest_ind ( vals1 , vals2 , equal_var = False ) results . append ( { 'probe' : probe , 'mean_g1' : mean1 , 'mean_g2' : mean2 , 'delta_beta' : delta , 'pvalue' : pval } ) result_df = pd . DataFrame ( results ) . set_index ( 'probe' )

Multiple testing correction

valid_pvals

result_df [ 'pvalue' ] . dropna ( ) if len ( valid_pvals )

0 : reject , padj , _ , _ = mt . multipletests ( valid_pvals . values , alpha = alpha , method = correction ) result_df . loc [ valid_pvals . index , 'padj' ] = padj else : result_df [ 'padj' ] = np . nan return result_df def identify_dmps ( dm_results , alpha = 0.05 , delta_beta_threshold = 0.0 ) : """Identify differentially methylated positions (DMPs). Args: dm_results: Output from differential_methylation() alpha: adjusted p-value threshold delta_beta_threshold: minimum absolute beta-value difference Returns: DataFrame of significant DMPs """ dmps = dm_results [ ( dm_results [ 'padj' ] < alpha ) & ( dm_results [ 'delta_beta' ] . abs ( ) = delta_beta_threshold ) ] . copy ( ) dmps [ 'direction' ] = np . where ( dmps [ 'delta_beta' ]

0 , 'hyper' , 'hypo' ) return dmps . sort_values ( 'padj' ) 1.5 Age-Related CpG Analysis def identify_age_related_cpgs ( beta_df , ages , method = 'correlation' , correction = 'fdr_bh' , alpha = 0.05 ) : """Identify CpG sites associated with age. Args: beta_df: Beta-value matrix (probes x samples) ages: Series or array of ages corresponding to samples method: 'correlation' (Pearson/Spearman) or 'regression' correction: multiple testing method alpha: significance threshold Returns: DataFrame with correlation, p-value, adjusted p-value """ results = [ ] for probe in beta_df . index : vals = beta_df . loc [ probe ] . values mask = ~ np . isnan ( vals ) & ~ np . isnan ( ages . values if hasattr ( ages , 'values' ) else ages ) if sum ( mask ) < 5 : results . append ( { 'probe' : probe , 'correlation' : np . nan , 'pvalue' : np . nan } ) continue if method == 'correlation' : corr , pval = stats . pearsonr ( ages [ mask ] if hasattr ( ages , 'getitem' ) else np . array ( ages ) [ mask ] , vals [ mask ] ) elif method == 'spearman' : corr , pval = stats . spearmanr ( ages [ mask ] if hasattr ( ages , 'getitem' ) else np . array ( ages ) [ mask ] , vals [ mask ] ) else : corr , pval = stats . pearsonr ( ages [ mask ] if hasattr ( ages , 'getitem' ) else np . array ( ages ) [ mask ] , vals [ mask ] ) results . append ( { 'probe' : probe , 'correlation' : corr , 'pvalue' : pval } ) result_df = pd . DataFrame ( results ) . set_index ( 'probe' )

Multiple testing correction

valid_pvals

result_df [ 'pvalue' ] . dropna ( ) if len ( valid_pvals )

0 : reject , padj , _ , _ = mt . multipletests ( valid_pvals . values , alpha = alpha , method = correction ) result_df . loc [ valid_pvals . index , 'padj' ] = padj else : result_df [ 'padj' ] = np . nan return result_df 1.6 Chromosome-Level Methylation Statistics def chromosome_cpg_density ( cpg_probes , manifest , genome = 'hg38' ) : """Calculate CpG density per chromosome. Args: cpg_probes: list/Index of CpG probe IDs manifest: probe annotation with chr and position columns genome: genome build for chromosome lengths Returns: DataFrame with chr, n_cpgs, chr_length, density (CpGs per bp) """ chr_lengths = get_chromosome_lengths ( genome )

Map probes to chromosomes

probe_id_col

'probe_id' if 'probe_id' in manifest . columns else manifest . columns [ 0 ] if probe_id_col in manifest . columns : probe_chr = manifest . set_index ( probe_id_col ) else : probe_chr = manifest

Get chromosome for each probe

if 'chr' in probe_chr . columns : chr_col = 'chr' elif 'CHR' in probe_chr . columns : chr_col = 'CHR' else : raise ValueError ( "No chromosome column found in manifest" )

Count probes per chromosome

probe_chrs

probe_chr . loc [ probe_chr . index . isin ( cpg_probes ) , chr_col ] probe_chrs = probe_chrs . apply ( normalize_chromosome ) chr_counts = probe_chrs . value_counts ( ) results = [ ] for chrom , count in chr_counts . items ( ) : if chrom in chr_lengths : length = chr_lengths [ chrom ] density = count / length results . append ( { 'chr' : chrom , 'n_cpgs' : count , 'chr_length' : length , 'density_per_bp' : density , 'density_per_mb' : density * 1e6 , } ) return pd . DataFrame ( results ) . sort_values ( 'chr' , key = lambda x : x . str . replace ( 'chr' , '' ) . replace ( { 'X' : '23' , 'Y' : '24' } ) . astype ( int ) ) def genome_wide_average_density ( density_df ) : """Calculate genome-wide average CpG density across all chromosomes. Args: density_df: Output from chromosome_cpg_density() Returns: float: genome-wide average density (CpGs per bp) """ total_cpgs = density_df [ 'n_cpgs' ] . sum ( ) total_length = density_df [ 'chr_length' ] . sum ( ) return total_cpgs / total_length def chromosome_density_ratio ( density_df , chr1 , chr2 ) : """Calculate density ratio between two chromosomes. Args: density_df: Output from chromosome_cpg_density() chr1, chr2: chromosome names (e.g., 'chr1', 'chr2') Returns: float: density ratio (chr1 / chr2) """ chr1 = normalize_chromosome ( chr1 ) chr2 = normalize_chromosome ( chr2 ) d1 = density_df [ density_df [ 'chr' ] == chr1 ] [ 'density_per_bp' ] . values [ 0 ] d2 = density_df [ density_df [ 'chr' ] == chr2 ] [ 'density_per_bp' ] . values [ 0 ] return d1 / d2 Phase 2: ChIP-seq Peak Analysis 2.1 Load BED/Peak Files def load_bed_file ( file_path , format = 'bed' ) : """Load BED format file (standard BED, narrowPeak, broadPeak). Standard BED: chrom, start, end, name, score, strand narrowPeak: + signalValue, pValue, qValue, peak broadPeak: + signalValue, pValue, qValue """ if format == 'narrowPeak' or file_path . endswith ( '.narrowPeak' ) : names = [ 'chrom' , 'start' , 'end' , 'name' , 'score' , 'strand' , 'signalValue' , 'pValue' , 'qValue' , 'peak' ] elif format == 'broadPeak' or file_path . endswith ( '.broadPeak' ) : names = [ 'chrom' , 'start' , 'end' , 'name' , 'score' , 'strand' , 'signalValue' , 'pValue' , 'qValue' ] else :

Standard BED - detect number of columns

with open ( file_path , 'r' ) as f : first_line = f . readline ( ) . strip ( ) while first_line . startswith ( '#' ) or first_line . startswith ( 'track' ) or first_line . startswith ( 'browser' ) : first_line = f . readline ( ) . strip ( ) n_cols = len ( first_line . split ( '\t' ) ) bed_col_names = [ 'chrom' , 'start' , 'end' , 'name' , 'score' , 'strand' , 'thickStart' , 'thickEnd' , 'itemRgb' , 'blockCount' , 'blockSizes' , 'blockStarts' ] names = bed_col_names [ : n_cols ] df = pd . read_csv ( file_path , sep = '\t' , header = None , names = names , comment = '#' , low_memory = False )

Skip track/browser lines

df

df [ ~ df [ 'chrom' ] . astype ( str ) . str . startswith ( ( 'track' , 'browser' ) ) ]

Normalize chromosomes

df [ 'chrom' ] = df [ 'chrom' ] . apply ( normalize_chromosome )

Ensure numeric types

df [ 'start' ] = pd . to_numeric ( df [ 'start' ] , errors = 'coerce' ) df [ 'end' ] = pd . to_numeric ( df [ 'end' ] , errors = 'coerce' ) return df def peak_statistics ( peaks_df ) : """Calculate basic peak statistics. Args: peaks_df: BED DataFrame from load_bed_file() Returns: dict with peak statistics """ peaks_df = peaks_df . copy ( ) peaks_df [ 'length' ] = peaks_df [ 'end' ] - peaks_df [ 'start' ] stats_dict = { 'total_peaks' : len ( peaks_df ) , 'mean_peak_length' : peaks_df [ 'length' ] . mean ( ) , 'median_peak_length' : peaks_df [ 'length' ] . median ( ) , 'total_coverage_bp' : peaks_df [ 'length' ] . sum ( ) , 'peaks_per_chromosome' : peaks_df [ 'chrom' ] . value_counts ( ) . to_dict ( ) , } if 'signalValue' in peaks_df . columns : stats_dict [ 'mean_signal' ] = peaks_df [ 'signalValue' ] . mean ( ) stats_dict [ 'median_signal' ] = peaks_df [ 'signalValue' ] . median ( ) if 'qValue' in peaks_df . columns : stats_dict [ 'mean_qvalue' ] = peaks_df [ 'qValue' ] . mean ( ) return stats_dict 2.2 Peak Annotation def annotate_peaks_to_genes ( peaks_df , gene_annotation = None , tss_upstream = 2000 , tss_downstream = 500 ) : """Annotate peaks to nearest gene / genomic feature. Args: peaks_df: BED DataFrame gene_annotation: DataFrame with gene coordinates (chr, start, end, gene_name, strand) tss_upstream: bp upstream of TSS to define promoter tss_downstream: bp downstream of TSS to define promoter Returns: DataFrame with peak annotations """ if gene_annotation is None : return peaks_df

No annotation available

annotated

peaks_df . copy ( ) annotations = [ ] for _ , peak in peaks_df . iterrows ( ) : peak_chr = peak [ 'chrom' ] peak_mid = ( peak [ 'start' ] + peak [ 'end' ] ) // 2

Filter genes on same chromosome

chr_genes

gene_annotation [ gene_annotation [ 'chr' ] == peak_chr ] if len ( chr_genes ) == 0 : annotations . append ( { 'nearest_gene' : 'intergenic' , 'distance_to_tss' : np . nan , 'feature' : 'intergenic' } ) continue

Calculate distance to TSS

tss_positions

chr_genes . apply ( lambda g : g [ 'start' ] if g . get ( 'strand' , '+' ) == '+' else g [ 'end' ] , axis = 1 ) distances = ( peak_mid - tss_positions ) . abs ( ) nearest_idx = distances . idxmin ( ) nearest_gene = chr_genes . loc [ nearest_idx ] distance = distances . loc [ nearest_idx ] tss = tss_positions . loc [ nearest_idx ]

Classify feature type

if abs ( peak_mid - tss ) <= tss_upstream : feature = 'promoter' elif peak [ 'start' ]

= nearest_gene [ 'start' ] and peak [ 'end' ] <= nearest_gene [ 'end' ] : feature = 'gene_body' elif abs ( peak_mid - tss ) <= 10000 : feature = 'proximal' else : feature = 'distal' annotations . append ( { 'nearest_gene' : nearest_gene . get ( 'gene_name' , nearest_gene . name ) , 'distance_to_tss' : int ( distance ) , 'feature' : feature } ) ann_df = pd . DataFrame ( annotations , index = peaks_df . index ) return pd . concat ( [ peaks_df , ann_df ] , axis = 1 ) def classify_peak_regions ( annotated_peaks ) : """Classify peaks into genomic regions. Returns: dict with counts per region type """ if 'feature' not in annotated_peaks . columns : return { 'unknown' : len ( annotated_peaks ) } return annotated_peaks [ 'feature' ] . value_counts ( ) . to_dict ( ) 2.3 Peak Overlap Analysis def find_overlaps ( peaks_a , peaks_b , min_overlap = 1 ) : """Find overlapping peaks between two BED DataFrames. Uses a simple interval overlap approach (pure Python, no pybedtools). Args: peaks_a: BED DataFrame (query) peaks_b: BED DataFrame (subject) min_overlap: minimum overlap in bp Returns: DataFrame of overlapping pairs """ overlaps = [ ]

Group by chromosome for efficiency

for chrom in peaks_a [ 'chrom' ] . unique ( ) : a_chr = peaks_a [ peaks_a [ 'chrom' ] == chrom ] . sort_values ( 'start' ) b_chr = peaks_b [ peaks_b [ 'chrom' ] == chrom ] . sort_values ( 'start' ) if len ( b_chr ) == 0 : continue for _ , a_peak in a_chr . iterrows ( ) :

Binary search for potential overlaps

for _ , b_peak in b_chr . iterrows ( ) : if b_peak [ 'start' ]

= a_peak [ 'end' ] : break if b_peak [ 'end' ] <= a_peak [ 'start' ] : continue

Calculate overlap

overlap_start

max ( a_peak [ 'start' ] , b_peak [ 'start' ] ) overlap_end = min ( a_peak [ 'end' ] , b_peak [ 'end' ] ) overlap_bp = overlap_end - overlap_start if overlap_bp

= min_overlap : overlaps . append ( { 'a_chrom' : chrom , 'a_start' : a_peak [ 'start' ] , 'a_end' : a_peak [ 'end' ] , 'b_start' : b_peak [ 'start' ] , 'b_end' : b_peak [ 'end' ] , 'overlap_bp' : overlap_bp , } ) return pd . DataFrame ( overlaps ) if overlaps else pd . DataFrame ( ) def jaccard_similarity ( peaks_a , peaks_b , genome = 'hg38' ) : """Calculate Jaccard similarity between two peak sets. Jaccard = intersection / union of genomic coverage. """ chr_lengths = get_chromosome_lengths ( genome ) total_genome = sum ( chr_lengths . values ( ) )

Simple approximation: total bp covered

coverage_a

( peaks_a [ 'end' ] - peaks_a [ 'start' ] ) . sum ( ) coverage_b = ( peaks_b [ 'end' ] - peaks_b [ 'start' ] ) . sum ( ) overlaps = find_overlaps ( peaks_a , peaks_b ) if len ( overlaps ) == 0 : return 0.0 intersection = overlaps [ 'overlap_bp' ] . sum ( ) union = coverage_a + coverage_b - intersection return intersection / union if union

0 else 0.0 Phase 3: ATAC-seq Analysis 3.1 ATAC-seq Peak Processing def load_atac_peaks ( file_path ) : """Load ATAC-seq peak file (typically narrowPeak format).""" return load_bed_file ( file_path , format = 'narrowPeak' ) def atac_peak_statistics ( peaks_df ) : """ATAC-seq specific statistics. ATAC-seq peaks represent open chromatin regions. """ basic_stats = peak_statistics ( peaks_df )

ATAC-specific: nucleosome-free region (NFR) analysis

NFR peaks typically < 150bp

peaks_df

peaks_df . copy ( ) peaks_df [ 'length' ] = peaks_df [ 'end' ] - peaks_df [ 'start' ] nfr_peaks = peaks_df [ peaks_df [ 'length' ] < 150 ] nucleosome_peaks = peaks_df [ peaks_df [ 'length' ]

= 150 ] basic_stats [ 'nfr_peaks' ] = len ( nfr_peaks ) basic_stats [ 'nucleosome_peaks' ] = len ( nucleosome_peaks ) basic_stats [ 'nfr_fraction' ] = len ( nfr_peaks ) / len ( peaks_df ) if len ( peaks_df )

0 else 0 return basic_stats def chromatin_accessibility_by_region ( peaks_df , gene_annotation = None ) : """Calculate chromatin accessibility distribution across genomic regions.""" annotated = annotate_peaks_to_genes ( peaks_df , gene_annotation ) regions = classify_peak_regions ( annotated ) total = sum ( regions . values ( ) ) region_fractions = { k : v / total for k , v in regions . items ( ) } return { 'counts' : regions , 'fractions' : region_fractions , 'total_peaks' : total , } Phase 4: Multi-Omics Integration 4.1 Expression-Methylation Correlation def correlate_methylation_expression ( beta_df , expression_df , probe_gene_map , method = 'pearson' , correction = 'fdr_bh' ) : """Correlate methylation levels with gene expression. Args: beta_df: Methylation matrix (probes x samples) expression_df: Expression matrix (genes x samples) probe_gene_map: dict or Series mapping probe IDs to gene symbols method: 'pearson' or 'spearman' correction: multiple testing correction Returns: DataFrame with correlation, p-value per probe-gene pair """

Align samples

common_samples

list ( set ( beta_df . columns ) & set ( expression_df . columns ) ) if len ( common_samples ) < 5 : raise ValueError ( f"Not enough common samples: { len ( common_samples ) } " ) beta_aligned = beta_df [ common_samples ] expr_aligned = expression_df [ common_samples ] results = [ ] for probe , gene in probe_gene_map . items ( ) : if probe not in beta_aligned . index or gene not in expr_aligned . index : continue meth_vals = beta_aligned . loc [ probe ] . values expr_vals = expr_aligned . loc [ gene ] . values mask = ~ np . isnan ( meth_vals ) & ~ np . isnan ( expr_vals ) if sum ( mask ) < 5 : continue if method == 'pearson' : corr , pval = stats . pearsonr ( meth_vals [ mask ] , expr_vals [ mask ] ) else : corr , pval = stats . spearmanr ( meth_vals [ mask ] , expr_vals [ mask ] ) results . append ( { 'probe' : probe , 'gene' : gene , 'correlation' : corr , 'pvalue' : pval , 'n_samples' : sum ( mask ) , } ) result_df = pd . DataFrame ( results ) if len ( result_df )

0 : valid_pvals = result_df [ 'pvalue' ] . dropna ( ) if len ( valid_pvals )

0 : reject , padj , _ , _ = mt . multipletests ( valid_pvals . values , method = correction ) result_df . loc [ valid_pvals . index , 'padj' ] = padj return result_df 4.2 ChIP-seq + Expression Integration def integrate_chipseq_expression ( peaks_df , expression_df , gene_annotation , tss_window = 5000 ) : """Integrate ChIP-seq peaks with gene expression. Args: peaks_df: ChIP-seq peaks (BED) expression_df: Gene expression (genes x samples) gene_annotation: Gene coordinates tss_window: window around TSS for promoter peaks Returns: DataFrame with genes having promoter peaks and their expression """ annotated = annotate_peaks_to_genes ( peaks_df , gene_annotation , tss_upstream = tss_window ) promoter_peaks = annotated [ annotated [ 'feature' ] == 'promoter' ]

Get genes with promoter peaks

peak_genes

promoter_peaks [ 'nearest_gene' ] . unique ( )

Get expression for these genes

common_genes

[ g for g in peak_genes if g in expression_df . index ] result = pd . DataFrame ( { 'gene' : common_genes , 'has_promoter_peak' : True , 'mean_expression' : [ expression_df . loc [ g ] . mean ( ) for g in common_genes ] , } ) return result Phase 5: Clinical Data Integration 5.1 Missing Data Analysis def missing_data_analysis ( clinical_df = None , expression_df = None , methylation_df = None , sample_id_col = None ) : """Analyze missing data across multiple omics modalities. For BixBench questions like: "How many patients have no missing data for vital status, gene expression, and methylation?" Args: clinical_df: Clinical data (patients x variables) expression_df: Expression matrix (genes x samples) methylation_df: Methylation matrix (probes x samples) sample_id_col: Column name for sample/patient IDs in clinical data Returns: dict with completeness statistics """ results = { }

Get sample sets from each modality

clinical_samples

set ( ) if clinical_df is not None : if sample_id_col and sample_id_col in clinical_df . columns : clinical_samples = set ( clinical_df [ sample_id_col ] . dropna ( ) ) else : clinical_samples = set ( clinical_df . index ) results [ 'clinical_samples' ] = len ( clinical_samples ) expression_samples = set ( ) if expression_df is not None : expression_samples = set ( expression_df . columns ) results [ 'expression_samples' ] = len ( expression_samples ) methylation_samples = set ( ) if methylation_df is not None : methylation_samples = set ( methylation_df . columns ) results [ 'methylation_samples' ] = len ( methylation_samples )

Intersection: samples with ALL data types

all_sets

[ ] if clinical_samples : all_sets . append ( clinical_samples ) if expression_samples : all_sets . append ( expression_samples ) if methylation_samples : all_sets . append ( methylation_samples ) if len ( all_sets )

0 : complete_samples = set . intersection ( * all_sets ) results [ 'complete_samples' ] = len ( complete_samples ) results [ 'complete_sample_ids' ] = sorted ( complete_samples ) else : results [ 'complete_samples' ] = 0

Additional: check for missing values within clinical data

if clinical_df is not None : for col in clinical_df . columns : n_missing = clinical_df [ col ] . isna ( ) . sum ( ) n_total = len ( clinical_df ) results [ f'clinical_ { col } missing' ] = n_missing results [ f'clinical { col } _complete' ] = n_total - n_missing return results def find_complete_cases ( data_frames , variables = None ) : """Find samples that are complete across specified data frames and variables. Args: data_frames: dict of {name: DataFrame} where columns are samples variables: dict of {df_name: [variable_names]} for clinical variables to check Returns: set of sample IDs with complete data """ sample_sets = [ ] for name , df in data_frames . items ( ) : if df is not None : if variables and name in variables :

Check specific variables for completeness

for var in variables [ name ] : if var in df . columns : complete = set ( df [ df [ var ] . notna ( ) ] . index ) sample_sets . append ( complete ) elif var in df . index : complete = set ( df . columns [ df . loc [ var ] . notna ( ) ] ) sample_sets . append ( complete ) else :

Just check sample presence

sample_sets . append ( set ( df . columns ) ) if not sample_sets : return set ( ) return set . intersection ( * sample_sets ) Phase 6: ToolUniverse Annotation Integration Use ToolUniverse tools for biological annotation of epigenomic findings. 6.1 Gene-Level Annotation from tooluniverse import ToolUniverse tu = ToolUniverse ( ) tu . load_tools ( )

Annotate differentially methylated genes

def annotate_genes_with_tooluniverse ( gene_list , tu ) : """Annotate a list of genes using ToolUniverse tools. Uses: - Ensembl for gene coordinates and cross-references - SCREEN for regulatory elements near gene - ChIPAtlas for ChIP-seq experiments """ annotations = { } for gene in gene_list [ : 20 ] :

Limit for API rate

annotation

{ 'gene' : gene }

Ensembl lookup

try : ens = tu . tools . ensembl_lookup_gene ( id = gene , species = 'homo_sapiens' ) if isinstance ( ens , dict ) : data = ens . get ( 'data' , ens ) annotation [ 'ensembl_id' ] = data . get ( 'id' , 'N/A' ) annotation [ 'chr' ] = data . get ( 'seq_region_name' , 'N/A' ) annotation [ 'start' ] = data . get ( 'start' , 'N/A' ) annotation [ 'end' ] = data . get ( 'end' , 'N/A' ) annotation [ 'biotype' ] = data . get ( 'biotype' , 'N/A' ) except Exception : pass

SCREEN regulatory elements

try : screen = tu . tools . SCREEN_get_regulatory_elements ( gene_name = gene , element_type = "enhancer" , limit = 5 ) if screen is not None : annotation [ 'screen_enhancers' ] = 'available' except Exception : pass annotations [ gene ] = annotation return pd . DataFrame . from_dict ( annotations , orient = 'index' ) 6.2 ChIPAtlas Integration def query_chipatlas_experiments ( antigen , genome = 'hg38' , cell_type = None , tu = None ) : """Query ChIPAtlas for available ChIP-seq experiments. Args: antigen: TF or histone mark name (e.g., 'H3K27ac', 'CTCF') genome: genome build cell_type: optional cell type filter Returns: ChIPAtlas experiment metadata """ if tu is None : from tooluniverse import ToolUniverse tu = ToolUniverse ( ) tu . load_tools ( ) params = { 'operation' : 'get_experiment_list' , 'genome' : genome , 'antigen' : antigen , 'limit' : 50 , } if cell_type : params [ 'cell_type' ] = cell_type return tu . tools . ChIPAtlas_get_experiments ( ** params ) 6.3 Ensembl Regulatory Feature Annotation def annotate_regions_with_ensembl ( regions , species = 'human' , tu = None ) : """Annotate genomic regions with Ensembl regulatory features. Args: regions: list of (chr, start, end) tuples species: Ensembl species name Returns: dict of region -> regulatory features """ if tu is None : from tooluniverse import ToolUniverse tu = ToolUniverse ( ) tu . load_tools ( ) annotations = { } for chrom , start , end in regions [ : 10 ] :

Limit for API rate

Ensembl uses chromosome without 'chr' prefix

ens_chrom

chrom . replace ( 'chr' , '' ) if chrom . startswith ( 'chr' ) else chrom region_str = f" { ens_chrom } : { start } - { end } " try : result = tu . tools . ensembl_get_regulatory_features ( region = region_str , feature = "regulatory" , species = species ) annotations [ ( chrom , start , end ) ] = result except Exception as e : annotations [ ( chrom , start , end ) ] = { 'error' : str ( e ) } return annotations Phase 7: Genome-Wide Statistics 7.1 Comprehensive Genome Statistics def genome_wide_methylation_stats ( beta_df , manifest = None , genome = 'hg38' ) : """Calculate comprehensive genome-wide methylation statistics. Args: beta_df: Methylation matrix (probes x samples) manifest: Probe annotation genome: genome build Returns: dict with genome-wide statistics """ stats_result = { 'total_probes' : len ( beta_df ) , 'total_samples' : beta_df . shape [ 1 ] , 'global_mean_beta' : float ( beta_df . mean ( ) . mean ( ) ) , 'global_median_beta' : float ( beta_df . median ( ) . median ( ) ) , 'global_std_beta' : float ( beta_df . values [ ~ np . isnan ( beta_df . values ) ] . std ( ) ) , 'missing_fraction' : float ( beta_df . isna ( ) . mean ( ) . mean ( ) ) , }

Per-sample statistics

stats_result [ 'sample_means' ] = beta_df . mean ( axis = 0 ) . describe ( ) . to_dict ( )

Per-probe statistics

probe_var

beta_df . var ( axis = 1 , skipna = True ) stats_result [ 'probe_variance' ] = { 'mean' : float ( probe_var . mean ( ) ) , 'median' : float ( probe_var . median ( ) ) , 'max' : float ( probe_var . max ( ) ) , } stats_result [ 'high_variance_probes' ] = int ( ( probe_var

0.01 ) . sum ( ) )

Chromosome-level stats (if manifest available)

if
manifest
is
not
None
:
density_df
=
chromosome_cpg_density
(
beta_df
.
index
.
tolist
(
)
,
manifest
,
genome
)
stats_result
[
'chromosome_density'
]
=
density_df
.
to_dict
(
'records'
)
stats_result
[
'genome_wide_density'
]
=
genome_wide_average_density
(
density_df
)
return
stats_result
def
summarize_differential_methylation
(
dm_results
,
alpha
=
0.05
)
:
"""Summarize differential methylation results.
Args:
dm_results: Output from differential_methylation()
Returns:
dict with summary statistics
"""
sig
=
dm_results
[
dm_results
[
'padj'
]
<
alpha
]
hyper
=
sig
[
sig
[
'delta_beta'
]
>
0
]
hypo
=
sig
[
sig
[
'delta_beta'
]
<
0
]
return
{
'total_tested'
:
len
(
dm_results
)
,
'total_significant'
:
len
(
sig
)
,
'hypermethylated'
:
len
(
hyper
)
,
'hypomethylated'
:
len
(
hypo
)
,
'fraction_significant'
:
len
(
sig
)
/
len
(
dm_results
)
if
len
(
dm_results
)
>
0
else
0
,
'mean_delta_beta_sig'
:
float
(
sig
[
'delta_beta'
]
.
mean
(
)
)
if
len
(
sig
)
>
0
else
0
,
'max_abs_delta_beta'
:
float
(
sig
[
'delta_beta'
]
.
abs
(
)
.
max
(
)
)
if
len
(
sig
)
>
0
else
0
,
}
ToolUniverse Tool Parameter Reference
Regulatory Annotation Tools
Tool
Parameters
Returns
ensembl_lookup_gene
id: str
,
species: str
(REQUIRED)
{status, data: {id, display_name, seq_region_name, start, end, strand, biotype}, url}
ensembl_get_regulatory_features
region: str
(no "chr"),
feature: str
,
species: str
{status, data: [...features...]}
ensembl_get_overlap_features
region: str
,
feature: str
,
species: str
Gene/transcript overlap data
SCREEN_get_regulatory_elements
gene_name: str
,
element_type: str
,
limit: int
cCREs (enhancers, promoters, insulators)
ReMap_get_transcription_factor_binding
gene_name: str
,
cell_type: str
,
limit: int
TF binding sites
RegulomeDB_query_variant
rsid: str
{status, data, url}
regulatory score
jaspar_search_matrices
search: str
,
collection: str
,
species: str
{count, results: [...matrices...]}
ENCODE_search_experiments
assay_title: str
,
target: str
,
organism: str
,
limit: int
Experiment metadata
ChIPAtlas_get_experiments
operation: str
(REQUIRED: "get_experiment_list"),
genome: str
,
antigen: str
,
cell_type: str
,
limit: int
Experiment list
ChIPAtlas_search_datasets
operation
REQUIRED,
antigenList/celltypeList
Dataset search results
ChIPAtlas_enrichment_analysis
Various input types (BED regions, motifs, genes)
Enrichment results
ChIPAtlas_get_peak_data
operation
REQUIRED
Peak data download URLs
FourDN_search_data
operation: str
(REQUIRED: "search_data"),
assay_title: str
,
limit: int
Chromatin conformation data
Gene Annotation Tools
Tool
Parameters
Returns
MyGene_query_genes
query: str
{hits: [{_id, symbol, ensembl, ...}]}
MyGene_batch_query
gene_ids: list[str]
,
fields: str
{results: [{query, symbol, ...}]}
HGNC_get_gene_info
symbol: str
Gene symbol, aliases, IDs
GO_get_annotations_for_gene
gene_id: str
GO annotations
CRITICAL Tool Notes
ensembl_lookup_gene
REQUIRES
species='homo_sapiens'
parameter
ensembl_get_regulatory_features
Region format is "17:start-end" (NO "chr" prefix)
ChIPAtlas tools
ALL require
operation
parameter (SOAP-style)
FourDN tools
ALL require
operation
parameter (SOAP-style)
SCREEN
Returns JSON-LD format with
@context, @graph
keys
Response Format Notes
Methylation data
Typically stored as probes (rows) x samples (columns), beta values 0-1
BED files
Tab-separated, 0-based half-open coordinates
narrowPeak
10-column BED extension with signalValue, pValue, qValue, peak
Illumina manifests
Contains probe ID, chromosome, position, gene annotation
Clinical data
Patient/sample-centric with clinical variables as columns
Fallback Strategies
Scenario
Primary
Fallback
No manifest file
Load from data dir
Build minimal from Ensembl lookup
No pybedtools
Pure Python overlap
pandas-based interval intersection
No pyBigWig
Skip BigWig analysis
Use pre-computed summary tables
Missing clinical data
Report missing
Use available samples only
Low sample count
Parametric test
Use non-parametric (Wilcoxon)
Large dataset (>500K probes)
Full analysis
Sample or chunk-based processing
Common Use Patterns
Pattern 1: Methylation Array Analysis
Input: Beta-value matrix + manifest + clinical data
Question: "How many CpGs are differentially methylated?"
Flow:
1. Load beta matrix, manifest, clinical data
2. Filter CpG probes (cg only, remove sex chr, variance filter)
3. Define groups from clinical data
4. Run differential_methylation()
5. Apply thresholds (padj < 0.05, |delta_beta| > 0.2)
6. Report count and direction (hyper/hypo)
Pattern 2: Age-Related CpG Density
Input: Beta-value matrix + manifest + ages
Question: "What is the density ratio of age-related CpGs between chr1 and chr2?"
Flow:
1. Load beta matrix and ages from clinical data
2. Run identify_age_related_cpgs()
3. Filter significant age-related CpGs
4. Map to chromosomes using manifest
5. Calculate chromosome_cpg_density()
6. Compute ratio between specified chromosomes
Pattern 3: Multi-Omics Missing Data
Input: Clinical + expression + methylation data files
Question: "How many patients have complete data for all modalities?"
Flow:
1. Load all data files
2. Extract sample IDs from each
3. Find intersection (common samples)
4. Check for NaN/missing within clinical variables
5. Report complete cases count
Pattern 4: ChIP-seq Peak Annotation
Input: BED/narrowPeak file
Question: "What fraction of peaks are in promoter regions?"
Flow:
1. Load BED file with load_bed_file()
2. Load or fetch gene annotation (Ensembl)
3. Run annotate_peaks_to_genes()
4. Classify regions with classify_peak_regions()
5. Calculate fraction in promoters
Pattern 5: Methylation-Expression Integration
Input: Beta matrix + expression matrix + probe-gene mapping
Question: "What is the correlation between methylation and expression?"
Flow:
1. Load both matrices
2. Build probe-gene map from manifest
3. Align samples across datasets
4. Run correlate_methylation_expression()
5. Report significant anti-correlations
Edge Cases
Missing Probe Annotation
When no manifest/annotation file is available:
Extract chromosome from probe ID naming patterns if possible
Use ToolUniverse Ensembl tools to build minimal annotation
Report limitation: "chromosome mapping unavailable for X probes"
Mixed Genome Builds
When data uses different builds:
Detect build from context (data README, file names, known coordinates)
Use appropriate chromosome lengths for density calculations
Do NOT mix hg19 and hg38 coordinates
Very Large Datasets
For datasets with >500K CpG sites:
Use chunked processing for differential methylation
Pre-filter by variance before statistical testing
Use vectorized operations (avoid row-by-row loops where possible)
Sample ID Mismatches
Clinical and molecular data may use different ID formats:
TCGA: barcode (TCGA-XX-XXXX-01A) vs patient ID (TCGA-XX-XXXX)
Try truncating or matching partial IDs
Report number of matched/unmatched samples
Limitations
No native pybedtools
Uses pure Python interval operations (slower for very large BED files)
No native pyBigWig
Cannot read BigWig files directly without package
No R bridge
Does not use methylKit, ChIPseeker, or DiffBind
Illumina-centric
Methylation functions designed for 450K/EPIC arrays
Statistical simplicity
Uses t-test/Wilcoxon for differential methylation (not limma/bumphunter)
No peak calling
Assumes peaks are pre-called; does not run MACS2 or similar
API rate limits
ToolUniverse annotation limited to ~20 genes per batch
Summary
Genomics & Epigenomics Data Processing Skill
provides:
Methylation analysis
- Beta-value processing, CpG filtering, differential methylation, age-related CpGs, chromosome density
ChIP-seq analysis
- Peak loading (BED/narrowPeak), peak annotation, overlap analysis, statistics
ATAC-seq analysis
- Chromatin accessibility peaks, NFR detection, region classification
Multi-omics integration
- Methylation-expression correlation, ChIP-seq + expression
Clinical integration
- Missing data analysis across modalities, complete case identification
Genome-wide statistics
- Chromosome-level density, genome-wide averages, density ratios
ToolUniverse annotation
- Ensembl, SCREEN, ChIPAtlas, JASPAR, ENCODE for biological context
Core packages
pandas, numpy, scipy, statsmodels, pysam, gseapy
ToolUniverse tools
25+ tools across Ensembl, SCREEN, ENCODE, ChIPAtlas, JASPAR, ReMap, RegulomeDB, 4DN
Best for
BixBench-style quantitative questions about methylation data, ChIP-seq peaks, chromatin accessibility, and multi-omics integration
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