# Path Configuration from tools.preprocess import * # Processing context trait = "Depression" cohort = "GSE81761" # Input paths in_trait_dir = "../DATA/GEO/Depression" in_cohort_dir = "../DATA/GEO/Depression/GSE81761" # Output paths out_data_file = "./output/z2/preprocess/Depression/GSE81761.csv" out_gene_data_file = "./output/z2/preprocess/Depression/gene_data/GSE81761.csv" out_clinical_data_file = "./output/z2/preprocess/Depression/clinical_data/GSE81761.csv" json_path = "./output/z2/preprocess/Depression/cohort_info.json" # Step 1: Initial Data Loading from tools.preprocess import * # 1. Identify the paths to the SOFT file and the matrix file soft_file, matrix_file = geo_get_relevant_filepaths(in_cohort_dir) # 2. Read the matrix file to obtain background information and sample characteristics data background_prefixes = ['!Series_title', '!Series_summary', '!Series_overall_design'] clinical_prefixes = ['!Sample_geo_accession', '!Sample_characteristics_ch1'] background_info, clinical_data = get_background_and_clinical_data(matrix_file, background_prefixes, clinical_prefixes) # 3. Obtain the sample characteristics dictionary from the clinical dataframe sample_characteristics_dict = get_unique_values_by_row(clinical_data) # 4. Explicitly print out all the background information and the sample characteristics dictionary print("Background Information:") print(background_info) print("Sample Characteristics Dictionary:") print(sample_characteristics_dict) # Step 2: Dataset Analysis and Clinical Feature Extraction # 1) Gene expression availability based on platform description (Affymetrix HG-U133 Plus 2.0 => mRNA expression) is_gene_available = True # 2) Variable availability (rows inferred from provided Sample Characteristics Dictionary) # Keys: # 0: tissue # 1: case/control (PTSD vs No PTSD) # 2: ptsd subgroup # 3: timepoint # 4: Sex # 5: age # 6: race # 7: ethnicity # Trait of interest is Depression, which is not present in this dataset => not available trait_row = None # Age and Gender are available age_row = 5 gender_row = 4 # 2.2 Converters def _after_colon(x): if x is None: return None s = str(x) parts = s.split(":", 1) return parts[1].strip() if len(parts) == 2 else s.strip() def convert_trait(x): # Depression not provided in this PTSD-focused dataset return None def convert_age(x): val = _after_colon(x) if val is None or val == "": return None # Keep only digits and dot import re m = re.search(r"[-+]?\d*\.?\d+", val) if not m: return None try: return float(m.group(0)) except Exception: return None def convert_gender(x): val = _after_colon(x) if val is None: return None v = val.strip().lower() # Map female->0, male->1 if v in {"female", "f", "woman", "women"}: return 0 if v in {"male", "m", "man", "men"}: return 1 return None # 3) Initial filtering and save metadata is_trait_available = trait_row is not None _ = validate_and_save_cohort_info( is_final=False, cohort=cohort, info_path=json_path, is_gene_available=is_gene_available, is_trait_available=is_trait_available ) # 4) Clinical Feature Extraction (skip because trait is not available) # If trait_row becomes available in future adjustments, uncomment below: if trait_row is not None: selected_clinical_df = geo_select_clinical_features( clinical_df=clinical_data, trait=trait, trait_row=trait_row, convert_trait=convert_trait, age_row=age_row, convert_age=convert_age, gender_row=gender_row, convert_gender=convert_gender ) _ = preview_df(selected_clinical_df) # Ensure output directory exists and save import os os.makedirs(os.path.dirname(out_clinical_data_file), exist_ok=True) selected_clinical_df.to_csv(out_clinical_data_file, index=True) # Step 3: Gene Data Extraction # 1. Use the get_genetic_data function from the library to get the gene_data from the matrix_file previously defined. gene_data = get_genetic_data(matrix_file) # 2. Print the first 20 row IDs (gene or probe identifiers) for future observation. print(gene_data.index[:20]) # Step 4: Gene Identifier Review # Affymetrix probe set IDs (e.g., '1007_s_at') are not gene symbols and require mapping. requires_gene_mapping = True print(f"requires_gene_mapping = {requires_gene_mapping}") # Step 5: Gene Annotation # 1. Use the 'get_gene_annotation' function from the library to get gene annotation data from the SOFT file. gene_annotation = get_gene_annotation(soft_file) # 2. Use the 'preview_df' function from the library to preview the data and print out the results. print("Gene annotation preview:") print(preview_df(gene_annotation)) # Step 6: Gene Identifier Mapping # 1-2. Determine the appropriate columns for mapping and construct the mapping dataframe probe_col = 'ID' # Matches probe identifiers in the expression matrix gene_col = 'Gene Symbol' # Column containing gene symbols (may include multiple per probe) mapping_df = get_gene_mapping(gene_annotation, prob_col=probe_col, gene_col=gene_col) # 3. Apply mapping to convert probe-level data to gene-level expression gene_data = apply_gene_mapping(expression_df=gene_data, mapping_df=mapping_df)