# Path Configuration from tools.preprocess import * # Processing context trait = "Autoinflammatory_Disorders" # Input paths tcga_root_dir = "../DATA/TCGA" # Output paths out_data_file = "./output/z1/preprocess/Autoinflammatory_Disorders/TCGA.csv" out_gene_data_file = "./output/z1/preprocess/Autoinflammatory_Disorders/gene_data/TCGA.csv" out_clinical_data_file = "./output/z1/preprocess/Autoinflammatory_Disorders/clinical_data/TCGA.csv" json_path = "./output/z1/preprocess/Autoinflammatory_Disorders/cohort_info.json" # Step 1: Initial Data Loading import os import pandas as pd # Discover available TCGA cohort directories available_dirs = [d for d in os.listdir(tcga_root_dir) if os.path.isdir(os.path.join(tcga_root_dir, d))] # Try to find a TCGA cohort relevant to Autoinflammatory Disorders (unlikely among cancer cohorts) keywords = [ "autoinflammatory", "auto-inflammatory", "autoinflammation", "autoinflamm", "periodic_fever", "periodic-fever", "fmf", "traps", "hids", "caps", "nlrp", "inflam" ] matches = [] for d in available_dirs: name_l = d.lower() score = sum(1 for k in keywords if k in name_l) if score > 0: # Prefer more keyword hits and shorter names (more specific) matches.append((score, -len(d), d)) if not matches: # No suitable TCGA cohort for autoinflammatory disorders; record and skip validate_and_save_cohort_info( is_final=False, cohort="TCGA", info_path=json_path, is_gene_available=False, is_trait_available=False ) selected_dir = None clinical_df = pd.DataFrame() genetic_df = pd.DataFrame() else: # Select the best match matches.sort(reverse=True) selected_dir = matches[0][2] if selected_dir: cohort_dir = os.path.join(tcga_root_dir, selected_dir) clinical_file_path, genetic_file_path = tcga_get_relevant_filepaths(cohort_dir) clinical_df = pd.read_csv(clinical_file_path, sep='\t', index_col=0, compression='infer', low_memory=False) genetic_df = pd.read_csv(genetic_file_path, sep='\t', index_col=0, compression='infer', low_memory=False) print(list(clinical_df.columns)) # Step 2: Initial Data Loading import os import pandas as pd # Use the provided list of subdirectories but ensure they exist on disk provided_subdirs = [ 'TCGA_lower_grade_glioma_and_glioblastoma_(GBMLGG)', 'TCGA_Uterine_Carcinosarcoma_(UCS)', 'TCGA_Thyroid_Cancer_(THCA)', 'TCGA_Thymoma_(THYM)', 'TCGA_Testicular_Cancer_(TGCT)', 'TCGA_Stomach_Cancer_(STAD)', 'TCGA_Sarcoma_(SARC)', 'TCGA_Rectal_Cancer_(READ)', 'TCGA_Prostate_Cancer_(PRAD)', 'TCGA_Pheochromocytoma_Paraganglioma_(PCPG)', 'TCGA_Pancreatic_Cancer_(PAAD)', 'TCGA_Ovarian_Cancer_(OV)', 'TCGA_Ocular_melanomas_(UVM)', 'TCGA_Mesothelioma_(MESO)', 'TCGA_Melanoma_(SKCM)', 'TCGA_Lung_Squamous_Cell_Carcinoma_(LUSC)', 'TCGA_Lung_Cancer_(LUNG)', 'TCGA_Lung_Adenocarcinoma_(LUAD)', 'TCGA_Lower_Grade_Glioma_(LGG)', 'TCGA_Liver_Cancer_(LIHC)', 'TCGA_Large_Bcell_Lymphoma_(DLBC)', 'TCGA_Kidney_Papillary_Cell_Carcinoma_(KIRP)', 'TCGA_Kidney_Clear_Cell_Carcinoma_(KIRC)', 'TCGA_Kidney_Chromophobe_(KICH)', 'TCGA_Head_and_Neck_Cancer_(HNSC)', 'TCGA_Glioblastoma_(GBM)', 'TCGA_Esophageal_Cancer_(ESCA)', 'TCGA_Endometrioid_Cancer_(UCEC)', 'TCGA_Colon_and_Rectal_Cancer_(COADREAD)', 'TCGA_Colon_Cancer_(COAD)', 'TCGA_Cervical_Cancer_(CESC)', 'TCGA_Breast_Cancer_(BRCA)', 'TCGA_Bladder_Cancer_(BLCA)', 'TCGA_Bile_Duct_Cancer_(CHOL)', 'TCGA_Adrenocortical_Cancer_(ACC)', 'TCGA_Acute_Myeloid_Leukemia_(LAML)' ] available_dirs = [d for d in provided_subdirs if os.path.isdir(os.path.join(tcga_root_dir, d))] # Search for directories matching autoinflammatory disorders (unlikely in TCGA cancer cohorts) keywords = [ "autoinflammatory", "auto-inflammatory", "autoinflammation", "autoinflamm", "periodic_fever", "periodic-fever", "fmf", "traps", "hids", "caps", "nlrp", "inflam" ] matches = [] for d in available_dirs: name_l = d.lower() score = sum(1 for k in keywords if k in name_l) if score > 0: matches.append((score, -len(d), d)) if not matches: # No suitable TCGA cohort for Autoinflammatory Disorders; record and skip validate_and_save_cohort_info( is_final=False, cohort="TCGA", info_path=json_path, is_gene_available=False, is_trait_available=False ) selected_dir = None clinical_df = pd.DataFrame() genetic_df = pd.DataFrame() else: # Select the most specific match (more keywords, shorter name) matches.sort(reverse=True) selected_dir = matches[0][2] # If a directory was selected, locate files and load data if selected_dir: cohort_dir = os.path.join(tcga_root_dir, selected_dir) clinical_file_path, genetic_file_path = tcga_get_relevant_filepaths(cohort_dir) clinical_df = pd.read_csv(clinical_file_path, sep='\t', index_col=0, compression='infer', low_memory=False) genetic_df = pd.read_csv(genetic_file_path, sep='\t', index_col=0, compression='infer', low_memory=False) print(list(clinical_df.columns))