# Path Configuration from tools.preprocess import * # Processing context trait = "Angelman_Syndrome" # Input paths tcga_root_dir = "../DATA/TCGA" # Output paths out_data_file = "./output/z1/preprocess/Angelman_Syndrome/TCGA.csv" out_gene_data_file = "./output/z1/preprocess/Angelman_Syndrome/gene_data/TCGA.csv" out_clinical_data_file = "./output/z1/preprocess/Angelman_Syndrome/clinical_data/TCGA.csv" json_path = "./output/z1/preprocess/Angelman_Syndrome/cohort_info.json" # Step 1: Initial Data Loading import os import pandas as pd # Step 1: Identify the most relevant TCGA cohort directory for Angelman Syndrome (none expected) available_dirs = [d for d in os.listdir(tcga_root_dir) if os.path.isdir(os.path.join(tcga_root_dir, d))] search_terms = {"angelman", "ube3a"} matching_dirs = [d for d in available_dirs if any(term in d.lower() for term in search_terms)] selected_dir = None if matching_dirs: # If multiple, choose the most specific (heuristic: longest name) selected_dir = sorted(matching_dirs, key=len, reverse=True)[0] if selected_dir is None: # No suitable TCGA cancer cohort matches Angelman Syndrome; record and stop _ = validate_and_save_cohort_info( is_final=False, cohort="TCGA", info_path=json_path, is_gene_available=False, is_trait_available=False ) else: cohort_dir = os.path.join(tcga_root_dir, selected_dir) # Step 2: Identify clinical and genetic file paths clinical_file_path, genetic_file_path = tcga_get_relevant_filepaths(cohort_dir) # Step 3: Load both files as DataFrames clinical_df = pd.read_csv(clinical_file_path, sep='\t', index_col=0, low_memory=False, compression='infer') genetic_df = pd.read_csv(genetic_file_path, sep='\t', index_col=0, low_memory=False, compression='infer') # Step 4: Print clinical column names print(clinical_df.columns.tolist())