{ "cells": [ { "cell_type": "code", "execution_count": 1, "id": "0e103e36", "metadata": { "execution": { "iopub.execute_input": "2025-03-25T05:12:26.920652Z", "iopub.status.busy": "2025-03-25T05:12:26.920411Z", "iopub.status.idle": "2025-03-25T05:12:27.084862Z", "shell.execute_reply": "2025-03-25T05:12:27.084427Z" } }, "outputs": [], "source": [ "import sys\n", "import os\n", "sys.path.append(os.path.abspath(os.path.join(os.getcwd(), '../..')))\n", "\n", "# Path Configuration\n", "from tools.preprocess import *\n", "\n", "# Processing context\n", "trait = \"Esophageal_Cancer\"\n", "cohort = \"GSE131027\"\n", "\n", "# Input paths\n", "in_trait_dir = \"../../input/GEO/Esophageal_Cancer\"\n", "in_cohort_dir = \"../../input/GEO/Esophageal_Cancer/GSE131027\"\n", "\n", "# Output paths\n", "out_data_file = \"../../output/preprocess/Esophageal_Cancer/GSE131027.csv\"\n", "out_gene_data_file = \"../../output/preprocess/Esophageal_Cancer/gene_data/GSE131027.csv\"\n", "out_clinical_data_file = \"../../output/preprocess/Esophageal_Cancer/clinical_data/GSE131027.csv\"\n", "json_path = \"../../output/preprocess/Esophageal_Cancer/cohort_info.json\"\n" ] }, { "cell_type": "markdown", "id": "792d41fc", "metadata": {}, "source": [ "### Step 1: Initial Data Loading" ] }, { "cell_type": "code", "execution_count": 2, "id": "388d2f91", "metadata": { "execution": { "iopub.execute_input": "2025-03-25T05:12:27.086325Z", "iopub.status.busy": "2025-03-25T05:12:27.086182Z", "iopub.status.idle": "2025-03-25T05:12:27.395545Z", "shell.execute_reply": "2025-03-25T05:12:27.395025Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Background Information:\n", "!Series_title\t\"High frequency of pathogenic germline variants in genes associated with homologous recombination repair in patients with advanced solid cancers\"\n", "!Series_summary\t\"We identified pathogenic and likely pathogenic variants in 17.8% of the patients within a wide range of cancer types. In particular, mesothelioma, ovarian cancer, cervical cancer, urothelial cancer, and cancer of unknown primary origin displayed high frequencies of pathogenic variants. In total, 22 BRCA1 and BRCA2 germline variant were identified in 12 different cancer types, of which 10 (45%) variants were not previously identified in these patients. Pathogenic germline variants were predominantly found in DNA repair pathways; approximately half of the variants were within genes involved in homologous recombination repair. Loss of heterozygosity and somatic second hits were identified in several of these genes, supporting possible causality for cancer development. A potential treatment target based on pathogenic germline variant could be suggested in 25 patients (4%).\"\n", "!Series_overall_design\t\"investigation of expression features related to Class 4 and 5 germline mutations in cancer patients\"\n", "Sample Characteristics Dictionary:\n", "{0: ['tissue: tumor biopsy'], 1: ['cancer: Breast cancer', 'cancer: Colorectal cancer', 'cancer: Bile duct cancer', 'cancer: Mesothelioma', 'cancer: Urothelial cancer', 'cancer: Pancreatic cancer', 'cancer: Melanoma', 'cancer: Hepatocellular carcinoma', 'cancer: Ovarian cancer', 'cancer: Cervical cancer', 'cancer: Head and Neck cancer', 'cancer: Sarcoma', 'cancer: Prostate cancer', 'cancer: Adenoid cystic carcinoma', 'cancer: NSCLC', 'cancer: Oesophageal cancer', 'cancer: Thymoma', 'cancer: Others', 'cancer: CUP', 'cancer: Renal cell carcinoma', 'cancer: Gastric cancer', 'cancer: Neuroendocrine cancer', 'cancer: vulvovaginal'], 2: ['mutated gene: ATR', 'mutated gene: FAN1', 'mutated gene: ERCC3', 'mutated gene: FANCD2', 'mutated gene: BAP1', 'mutated gene: DDB2', 'mutated gene: TP53', 'mutated gene: ATM', 'mutated gene: CHEK1', 'mutated gene: BRCA1', 'mutated gene: WRN', 'mutated gene: CHEK2', 'mutated gene: BRCA2', 'mutated gene: XPC', 'mutated gene: PALB2', 'mutated gene: ABRAXAS1', 'mutated gene: NBN', 'mutated gene: BLM', 'mutated gene: FAM111B', 'mutated gene: FANCA', 'mutated gene: MLH1', 'mutated gene: BRIP1', 'mutated gene: IPMK', 'mutated gene: RECQL', 'mutated gene: RAD50', 'mutated gene: FANCM', 'mutated gene: GALNT12', 'mutated gene: SMAD9', 'mutated gene: ERCC2', 'mutated gene: FANCC'], 3: ['predicted: HRDEXP: HRD', 'predicted: HRDEXP: NO_HRD'], 4: ['parp predicted: kmeans-2: PARP sensitive', 'parp predicted: kmeans-2: PARP insensitive']}\n" ] } ], "source": [ "from tools.preprocess import *\n", "# 1. Identify the paths to the SOFT file and the matrix file\n", "soft_file, matrix_file = geo_get_relevant_filepaths(in_cohort_dir)\n", "\n", "# 2. Read the matrix file to obtain background information and sample characteristics data\n", "background_prefixes = ['!Series_title', '!Series_summary', '!Series_overall_design']\n", "clinical_prefixes = ['!Sample_geo_accession', '!Sample_characteristics_ch1']\n", "background_info, clinical_data = get_background_and_clinical_data(matrix_file, background_prefixes, clinical_prefixes)\n", "\n", "# 3. Obtain the sample characteristics dictionary from the clinical dataframe\n", "sample_characteristics_dict = get_unique_values_by_row(clinical_data)\n", "\n", "# 4. Explicitly print out all the background information and the sample characteristics dictionary\n", "print(\"Background Information:\")\n", "print(background_info)\n", "print(\"Sample Characteristics Dictionary:\")\n", "print(sample_characteristics_dict)\n" ] }, { "cell_type": "markdown", "id": "1483a821", "metadata": {}, "source": [ "### Step 2: Dataset Analysis and Clinical Feature Extraction" ] }, { "cell_type": "code", "execution_count": 3, "id": "07a8bd21", "metadata": { "execution": { "iopub.execute_input": "2025-03-25T05:12:27.397293Z", "iopub.status.busy": "2025-03-25T05:12:27.397181Z", "iopub.status.idle": "2025-03-25T05:12:27.402773Z", "shell.execute_reply": "2025-03-25T05:12:27.402396Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Clinical data file not found at ../../input/GEO/Esophageal_Cancer/GSE131027/clinical_data.csv\n" ] } ], "source": [ "import os\n", "import pandas as pd\n", "import json\n", "from typing import Dict, Any, Callable, Optional\n", "\n", "# 1. Gene Expression Data Availability\n", "# Based on the background information, the dataset contains germline variants and expression features\n", "# related to mutations in cancer patients, so it likely contains gene expression data\n", "is_gene_available = True\n", "\n", "# 2. Variable Availability and Data Type Conversion\n", "# 2.1 Looking at the Sample Characteristics Dictionary\n", "# For trait (Esophageal_Cancer):\n", "# Key 1 contains 'cancer: Oesophageal cancer', which indicates presence of trait data\n", "trait_row = 1 # This contains cancer types including esophageal cancer\n", "\n", "# For age:\n", "# Age data is not available in the sample characteristics\n", "age_row = None\n", "\n", "# For gender:\n", "# Gender data is not available in the sample characteristics\n", "gender_row = None\n", "\n", "# 2.2 Data Type Conversion Functions\n", "def convert_trait(value):\n", " \"\"\"Convert cancer type to binary (1 for Esophageal Cancer, 0 for other types)\"\"\"\n", " if pd.isna(value) or value is None:\n", " return None\n", " \n", " # Extract value after colon if present\n", " if \":\" in value:\n", " cancer_type = value.split(\":\", 1)[1].strip().lower()\n", " else:\n", " cancer_type = value.strip().lower()\n", " \n", " # Look for esophageal cancer with variation in spelling\n", " if \"oesophageal\" in cancer_type or \"esophageal\" in cancer_type:\n", " return 1\n", " else:\n", " return 0\n", "\n", "def convert_age(value):\n", " \"\"\"Convert age to continuous numeric value\"\"\"\n", " # Not used as age data is not available\n", " return None\n", "\n", "def convert_gender(value):\n", " \"\"\"Convert gender to binary (0 for female, 1 for male)\"\"\"\n", " # Not used as gender data is not available\n", " return None\n", "\n", "# 3. Save Metadata\n", "# Determine trait data availability\n", "is_trait_available = trait_row is not None\n", "\n", "# Save initial filtering metadata\n", "validate_and_save_cohort_info(\n", " is_final=False, \n", " cohort=cohort, \n", " info_path=json_path, \n", " is_gene_available=is_gene_available, \n", " is_trait_available=is_trait_available\n", ")\n", "\n", "# 4. Clinical Feature Extraction\n", "# Only proceed if trait_row is not None\n", "if trait_row is not None:\n", " # Load the clinical data\n", " clinical_data_path = os.path.join(in_cohort_dir, \"clinical_data.csv\")\n", " if os.path.exists(clinical_data_path):\n", " clinical_data = pd.read_csv(clinical_data_path)\n", " \n", " # Extract clinical features\n", " selected_clinical_df = geo_select_clinical_features(\n", " clinical_df=clinical_data,\n", " trait=trait,\n", " trait_row=trait_row,\n", " convert_trait=convert_trait,\n", " age_row=age_row,\n", " convert_age=convert_age,\n", " gender_row=gender_row,\n", " convert_gender=convert_gender\n", " )\n", " \n", " # Preview the extracted clinical features\n", " preview = preview_df(selected_clinical_df)\n", " print(\"Clinical Features Preview:\")\n", " print(preview)\n", " \n", " # Create directory if it doesn't exist\n", " os.makedirs(os.path.dirname(out_clinical_data_file), exist_ok=True)\n", " \n", " # Save the clinical data\n", " selected_clinical_df.to_csv(out_clinical_data_file, index=False)\n", " print(f\"Clinical data saved to {out_clinical_data_file}\")\n", " else:\n", " print(f\"Clinical data file not found at {clinical_data_path}\")\n" ] }, { "cell_type": "markdown", "id": "225ad104", "metadata": {}, "source": [ "### Step 3: Gene Data Extraction" ] }, { "cell_type": "code", "execution_count": 4, "id": "9158d23a", "metadata": { "execution": { "iopub.execute_input": "2025-03-25T05:12:27.404188Z", "iopub.status.busy": "2025-03-25T05:12:27.403902Z", "iopub.status.idle": "2025-03-25T05:12:27.919558Z", "shell.execute_reply": "2025-03-25T05:12:27.919096Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Found data marker at line 69\n", "Header line: \"ID_REF\"\t\"GSM3759992\"\t\"GSM3759993\"\t\"GSM3759994\"\t\"GSM3759995\"\t\"GSM3759996\"\t\"GSM3759997\"\t\"GSM3759998\"\t\"GSM3759999\"\t\"GSM3760000\"\t\"GSM3760001\"\t\"GSM3760002\"\t\"GSM3760003\"\t\"GSM3760004\"\t\"GSM3760005\"\t\"GSM3760006\"\t\"GSM3760007\"\t\"GSM3760008\"\t\"GSM3760009\"\t\"GSM3760010\"\t\"GSM3760011\"\t\"GSM3760012\"\t\"GSM3760013\"\t\"GSM3760014\"\t\"GSM3760015\"\t\"GSM3760016\"\t\"GSM3760017\"\t\"GSM3760018\"\t\"GSM3760019\"\t\"GSM3760020\"\t\"GSM3760021\"\t\"GSM3760022\"\t\"GSM3760023\"\t\"GSM3760024\"\t\"GSM3760025\"\t\"GSM3760026\"\t\"GSM3760027\"\t\"GSM3760028\"\t\"GSM3760029\"\t\"GSM3760030\"\t\"GSM3760031\"\t\"GSM3760032\"\t\"GSM3760033\"\t\"GSM3760034\"\t\"GSM3760035\"\t\"GSM3760036\"\t\"GSM3760037\"\t\"GSM3760038\"\t\"GSM3760039\"\t\"GSM3760040\"\t\"GSM3760041\"\t\"GSM3760042\"\t\"GSM3760043\"\t\"GSM3760044\"\t\"GSM3760045\"\t\"GSM3760046\"\t\"GSM3760047\"\t\"GSM3760048\"\t\"GSM3760049\"\t\"GSM3760050\"\t\"GSM3760051\"\t\"GSM3760052\"\t\"GSM3760053\"\t\"GSM3760054\"\t\"GSM3760055\"\t\"GSM3760056\"\t\"GSM3760057\"\t\"GSM3760058\"\t\"GSM3760059\"\t\"GSM3760060\"\t\"GSM3760061\"\t\"GSM3760062\"\t\"GSM3760063\"\t\"GSM3760064\"\t\"GSM3760065\"\t\"GSM3760066\"\t\"GSM3760067\"\t\"GSM3760068\"\t\"GSM3760069\"\t\"GSM3760070\"\t\"GSM3760071\"\t\"GSM3760072\"\t\"GSM3760073\"\t\"GSM3760074\"\t\"GSM3760075\"\t\"GSM3760076\"\t\"GSM3760077\"\t\"GSM3760078\"\t\"GSM3760079\"\t\"GSM3760080\"\t\"GSM3760081\"\t\"GSM3760082\"\t\"GSM3760083\"\n", "First data line: \"1007_s_at\"\t9.907521312\t10.49957082\t10.15786523\t11.73078116\t10.99041259\t11.47155961\t9.075234854\t9.426022001\t10.80648571\t10.8021999\t9.307217583\t9.561166101\t10.68509641\t7.789041475\t10.70893444\t9.708008931\t11.39598623\t11.1877585\t11.11923736\t10.08020112\t9.994698285\t10.37474375\t10.54969273\t11.5129438\t11.2127116\t10.44178271\t10.7089245\t10.86105566\t10.5197942\t7.998895221\t11.78368241\t11.23308756\t10.6139526\t11.00161993\t9.4882817\t10.17243209\t7.916533344\t10.49116501\t11.37255314\t9.136352671\t11.29877012\t7.732368898\t10.4651446\t11.17744146\t9.845371473\t11.14967978\t9.577702199\t10.97932378\t10.71411034\t9.999935375\t10.67345385\t10.55891483\t10.83287585\t11.41958281\t10.65617422\t11.81287224\t9.304202269\t10.55858229\t10.50366683\t7.328185702\t10.30220208\t9.772542081\t8.973706256\t10.96108778\t10.57681704\t11.34611784\t10.56494853\t9.914202493\t11.77927632\t7.720394825\t10.0863023\t10.9465517\t9.651114074\t11.31073487\t10.29864165\t10.44270107\t9.990860961\t10.72373446\t10.78918965\t10.22033557\t8.599279159\t9.608252161\t10.77798585\t9.939579658\t10.39861457\t11.52680071\t10.83559906\t10.25361434\t9.355990852\t10.480336\t10.99542344\t11.65725091\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Index(['1007_s_at', '1053_at', '117_at', '121_at', '1255_g_at', '1294_at',\n", " '1316_at', '1320_at', '1405_i_at', '1431_at', '1438_at', '1487_at',\n", " '1494_f_at', '1552256_a_at', '1552257_a_at', '1552258_at', '1552261_at',\n", " '1552263_at', '1552264_a_at', '1552266_at'],\n", " dtype='object', name='ID')\n" ] } ], "source": [ "# 1. Get the file paths for the SOFT file and matrix file\n", "soft_file, matrix_file = geo_get_relevant_filepaths(in_cohort_dir)\n", "\n", "# 2. First, let's examine the structure of the matrix file to understand its format\n", "import gzip\n", "\n", "# Peek at the first few lines of the file to understand its structure\n", "with gzip.open(matrix_file, 'rt') as file:\n", " # Read first 100 lines to find the header structure\n", " for i, line in enumerate(file):\n", " if '!series_matrix_table_begin' in line:\n", " print(f\"Found data marker at line {i}\")\n", " # Read the next line which should be the header\n", " header_line = next(file)\n", " print(f\"Header line: {header_line.strip()}\")\n", " # And the first data line\n", " first_data_line = next(file)\n", " print(f\"First data line: {first_data_line.strip()}\")\n", " break\n", " if i > 100: # Limit search to first 100 lines\n", " print(\"Matrix table marker not found in first 100 lines\")\n", " break\n", "\n", "# 3. Now try to get the genetic data with better error handling\n", "try:\n", " gene_data = get_genetic_data(matrix_file)\n", " print(gene_data.index[:20])\n", "except KeyError as e:\n", " print(f\"KeyError: {e}\")\n", " \n", " # Alternative approach: manually extract the data\n", " print(\"\\nTrying alternative approach to read the gene data:\")\n", " with gzip.open(matrix_file, 'rt') as file:\n", " # Find the start of the data\n", " for line in file:\n", " if '!series_matrix_table_begin' in line:\n", " break\n", " \n", " # Read the headers and data\n", " import pandas as pd\n", " df = pd.read_csv(file, sep='\\t', index_col=0)\n", " print(f\"Column names: {df.columns[:5]}\")\n", " print(f\"First 20 row IDs: {df.index[:20]}\")\n", " gene_data = df\n" ] }, { "cell_type": "markdown", "id": "16f80714", "metadata": {}, "source": [ "### Step 4: Gene Identifier Review" ] }, { "cell_type": "code", "execution_count": 5, "id": "6ab67591", "metadata": { "execution": { "iopub.execute_input": "2025-03-25T05:12:27.920958Z", "iopub.status.busy": "2025-03-25T05:12:27.920848Z", "iopub.status.idle": "2025-03-25T05:12:27.922886Z", "shell.execute_reply": "2025-03-25T05:12:27.922555Z" } }, "outputs": [], "source": [ "# Examining the gene identifiers in the dataset\n", "# The identifiers like \"1007_s_at\", \"1053_at\", etc. appear to be Affymetrix probe IDs\n", "# from a microarray platform, not standard human gene symbols.\n", "# These probe IDs will need to be mapped to human gene symbols for analysis.\n", "\n", "requires_gene_mapping = True\n" ] }, { "cell_type": "markdown", "id": "a3593a0a", "metadata": {}, "source": [ "### Step 5: Gene Annotation" ] }, { "cell_type": "code", "execution_count": 6, "id": "5324f04f", "metadata": { "execution": { "iopub.execute_input": "2025-03-25T05:12:27.923809Z", "iopub.status.busy": "2025-03-25T05:12:27.923704Z", "iopub.status.idle": "2025-03-25T05:12:28.841868Z", "shell.execute_reply": "2025-03-25T05:12:28.841343Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Examining SOFT file structure:\n", "Line 0: ^DATABASE = GeoMiame\n", "Line 1: !Database_name = Gene Expression Omnibus (GEO)\n", "Line 2: !Database_institute = NCBI NLM NIH\n", "Line 3: !Database_web_link = http://www.ncbi.nlm.nih.gov/geo\n", "Line 4: !Database_email = geo@ncbi.nlm.nih.gov\n", "Line 5: ^SERIES = GSE131027\n", "Line 6: !Series_title = High frequency of pathogenic germline variants in genes associated with homologous recombination repair in patients with advanced solid cancers\n", "Line 7: !Series_geo_accession = GSE131027\n", "Line 8: !Series_status = Public on May 11 2019\n", "Line 9: !Series_submission_date = May 10 2019\n", "Line 10: !Series_last_update_date = Jul 09 2019\n", "Line 11: !Series_pubmed_id = 31263571\n", "Line 12: !Series_summary = We identified pathogenic and likely pathogenic variants in 17.8% of the patients within a wide range of cancer types. In particular, mesothelioma, ovarian cancer, cervical cancer, urothelial cancer, and cancer of unknown primary origin displayed high frequencies of pathogenic variants. In total, 22 BRCA1 and BRCA2 germline variant were identified in 12 different cancer types, of which 10 (45%) variants were not previously identified in these patients. Pathogenic germline variants were predominantly found in DNA repair pathways; approximately half of the variants were within genes involved in homologous recombination repair. Loss of heterozygosity and somatic second hits were identified in several of these genes, supporting possible causality for cancer development. A potential treatment target based on pathogenic germline variant could be suggested in 25 patients (4%).\n", "Line 13: !Series_overall_design = investigation of expression features related to Class 4 and 5 germline mutations in cancer patients\n", "Line 14: !Series_type = Expression profiling by array\n", "Line 15: !Series_contributor = Ida,V,Tuxen\n", "Line 16: !Series_contributor = Birgitte,,Bertelsen\n", "Line 17: !Series_contributor = Christina,W,Yde\n", "Line 18: !Series_contributor = Migle,,Survilaite\n", "Line 19: !Series_contributor = Mathias,H,Torp\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "\n", "Gene annotation preview:\n", "{'ID': ['1007_s_at', '1053_at', '117_at', '121_at', '1255_g_at'], 'GB_ACC': ['U48705', 'M87338', 'X51757', 'X69699', 'L36861'], 'SPOT_ID': [nan, nan, nan, nan, nan], 'Species Scientific Name': ['Homo sapiens', 'Homo sapiens', 'Homo sapiens', 'Homo sapiens', 'Homo sapiens'], 'Annotation Date': ['Oct 6, 2014', 'Oct 6, 2014', 'Oct 6, 2014', 'Oct 6, 2014', 'Oct 6, 2014'], 'Sequence Type': ['Exemplar sequence', 'Exemplar sequence', 'Exemplar sequence', 'Exemplar sequence', 'Exemplar sequence'], 'Sequence Source': ['Affymetrix Proprietary Database', 'GenBank', 'Affymetrix Proprietary Database', 'GenBank', 'Affymetrix Proprietary Database'], 'Target Description': ['U48705 /FEATURE=mRNA /DEFINITION=HSU48705 Human receptor tyrosine kinase DDR gene, complete cds', 'M87338 /FEATURE= /DEFINITION=HUMA1SBU Human replication factor C, 40-kDa subunit (A1) mRNA, complete cds', \"X51757 /FEATURE=cds /DEFINITION=HSP70B Human heat-shock protein HSP70B' gene\", 'X69699 /FEATURE= /DEFINITION=HSPAX8A H.sapiens Pax8 mRNA', 'L36861 /FEATURE=expanded_cds /DEFINITION=HUMGCAPB Homo sapiens guanylate cyclase activating protein (GCAP) gene exons 1-4, complete cds'], 'Representative Public ID': ['U48705', 'M87338', 'X51757', 'X69699', 'L36861'], 'Gene Title': ['discoidin domain receptor tyrosine kinase 1 /// microRNA 4640', 'replication factor C (activator 1) 2, 40kDa', \"heat shock 70kDa protein 6 (HSP70B')\", 'paired box 8', 'guanylate cyclase activator 1A (retina)'], 'Gene Symbol': ['DDR1 /// MIR4640', 'RFC2', 'HSPA6', 'PAX8', 'GUCA1A'], 'ENTREZ_GENE_ID': ['780 /// 100616237', '5982', '3310', '7849', '2978'], 'RefSeq Transcript ID': ['NM_001202521 /// NM_001202522 /// NM_001202523 /// NM_001954 /// NM_013993 /// NM_013994 /// NR_039783 /// XM_005249385 /// XM_005249386 /// XM_005249387 /// XM_005249389 /// XM_005272873 /// XM_005272874 /// XM_005272875 /// XM_005272877 /// XM_005275027 /// XM_005275028 /// XM_005275030 /// XM_005275031 /// XM_005275162 /// XM_005275163 /// XM_005275164 /// XM_005275166 /// XM_005275457 /// XM_005275458 /// XM_005275459 /// XM_005275461 /// XM_006715185 /// XM_006715186 /// XM_006715187 /// XM_006715188 /// XM_006715189 /// XM_006715190 /// XM_006725501 /// XM_006725502 /// XM_006725503 /// XM_006725504 /// XM_006725505 /// XM_006725506 /// XM_006725714 /// XM_006725715 /// XM_006725716 /// XM_006725717 /// XM_006725718 /// XM_006725719 /// XM_006725720 /// XM_006725721 /// XM_006725722 /// XM_006725827 /// XM_006725828 /// XM_006725829 /// XM_006725830 /// XM_006725831 /// XM_006725832 /// XM_006726017 /// XM_006726018 /// XM_006726019 /// XM_006726020 /// XM_006726021 /// XM_006726022 /// XR_427836 /// XR_430858 /// XR_430938 /// XR_430974 /// XR_431015', 'NM_001278791 /// NM_001278792 /// NM_001278793 /// NM_002914 /// NM_181471 /// XM_006716080', 'NM_002155', 'NM_003466 /// NM_013951 /// NM_013952 /// NM_013953 /// NM_013992', 'NM_000409 /// XM_006715073'], 'Gene Ontology Biological Process': ['0001558 // regulation of cell growth // inferred from electronic annotation /// 0001952 // regulation of cell-matrix adhesion // inferred from electronic annotation /// 0006468 // protein phosphorylation // inferred from electronic annotation /// 0007155 // cell adhesion // traceable author statement /// 0007169 // transmembrane receptor protein tyrosine kinase signaling pathway // inferred from electronic annotation /// 0007565 // female pregnancy // inferred from electronic annotation /// 0007566 // embryo implantation // inferred from electronic annotation /// 0007595 // lactation // inferred from electronic annotation /// 0008285 // negative regulation of cell proliferation // inferred from electronic annotation /// 0010715 // regulation of extracellular matrix disassembly // inferred from mutant phenotype /// 0014909 // smooth muscle cell migration // inferred from mutant phenotype /// 0016310 // phosphorylation // inferred from electronic annotation /// 0018108 // peptidyl-tyrosine phosphorylation // inferred from electronic annotation /// 0030198 // extracellular matrix organization // traceable author statement /// 0038063 // collagen-activated tyrosine kinase receptor signaling pathway // inferred from direct assay /// 0038063 // collagen-activated tyrosine kinase receptor signaling pathway // inferred from mutant phenotype /// 0038083 // peptidyl-tyrosine autophosphorylation // inferred from direct assay /// 0043583 // ear development // inferred from electronic annotation /// 0044319 // wound healing, spreading of cells // inferred from mutant phenotype /// 0046777 // protein autophosphorylation // inferred from direct assay /// 0060444 // branching involved in mammary gland duct morphogenesis // inferred from electronic annotation /// 0060749 // mammary gland alveolus development // inferred from electronic annotation /// 0061302 // smooth muscle cell-matrix adhesion // inferred from mutant phenotype', '0000278 // mitotic cell cycle // traceable author statement /// 0000722 // telomere maintenance via recombination // traceable author statement /// 0000723 // telomere maintenance // traceable author statement /// 0006260 // DNA replication // traceable author statement /// 0006271 // DNA strand elongation involved in DNA replication // traceable author statement /// 0006281 // DNA repair // traceable author statement /// 0006283 // transcription-coupled nucleotide-excision repair // traceable author statement /// 0006289 // nucleotide-excision repair // traceable author statement /// 0006297 // nucleotide-excision repair, DNA gap filling // traceable author statement /// 0015979 // photosynthesis // inferred from electronic annotation /// 0015995 // chlorophyll biosynthetic process // inferred from electronic annotation /// 0032201 // telomere maintenance via semi-conservative replication // traceable author statement', '0000902 // cell morphogenesis // inferred from electronic annotation /// 0006200 // ATP catabolic process // inferred from direct assay /// 0006950 // response to stress // inferred from electronic annotation /// 0006986 // response to unfolded protein // traceable author statement /// 0034605 // cellular response to heat // inferred from direct assay /// 0042026 // protein refolding // inferred from direct assay /// 0070370 // cellular heat acclimation // inferred from mutant phenotype', '0001655 // urogenital system development // inferred from sequence or structural similarity /// 0001656 // metanephros development // inferred from electronic annotation /// 0001658 // branching involved in ureteric bud morphogenesis // inferred from expression pattern /// 0001822 // kidney development // inferred from expression pattern /// 0001823 // mesonephros development // inferred from sequence or structural similarity /// 0003337 // mesenchymal to epithelial transition involved in metanephros morphogenesis // inferred from expression pattern /// 0006351 // transcription, DNA-templated // inferred from direct assay /// 0006355 // regulation of transcription, DNA-templated // inferred from electronic annotation /// 0007275 // multicellular organismal development // inferred from electronic annotation /// 0007417 // central nervous system development // inferred from expression pattern /// 0009653 // anatomical structure morphogenesis // traceable author statement /// 0030154 // cell differentiation // inferred from electronic annotation /// 0030878 // thyroid gland development // inferred from expression pattern /// 0030878 // thyroid gland development // inferred from mutant phenotype /// 0038194 // thyroid-stimulating hormone signaling pathway // traceable author statement /// 0039003 // pronephric field specification // inferred from sequence or structural similarity /// 0042472 // inner ear morphogenesis // inferred from sequence or structural similarity /// 0042981 // regulation of apoptotic process // inferred from sequence or structural similarity /// 0045893 // positive regulation of transcription, DNA-templated // inferred from direct assay /// 0045893 // positive regulation of transcription, DNA-templated // inferred from sequence or structural similarity /// 0045944 // positive regulation of transcription from RNA polymerase II promoter // inferred from direct assay /// 0048793 // pronephros development // inferred from sequence or structural similarity /// 0071371 // cellular response to gonadotropin stimulus // inferred from direct assay /// 0071599 // otic vesicle development // inferred from expression pattern /// 0072050 // S-shaped body morphogenesis // inferred from electronic annotation /// 0072073 // kidney epithelium development // inferred from electronic annotation /// 0072108 // positive regulation of mesenchymal to epithelial transition involved in metanephros morphogenesis // inferred from sequence or structural similarity /// 0072164 // mesonephric tubule development // inferred from electronic annotation /// 0072207 // metanephric epithelium development // inferred from expression pattern /// 0072221 // metanephric distal convoluted tubule development // inferred from sequence or structural similarity /// 0072278 // metanephric comma-shaped body morphogenesis // inferred from expression pattern /// 0072284 // metanephric S-shaped body morphogenesis // inferred from expression pattern /// 0072289 // metanephric nephron tubule formation // inferred from sequence or structural similarity /// 0072305 // negative regulation of mesenchymal cell apoptotic process involved in metanephric nephron morphogenesis // inferred from sequence or structural similarity /// 0072307 // regulation of metanephric nephron tubule epithelial cell differentiation // inferred from sequence or structural similarity /// 0090190 // positive regulation of branching involved in ureteric bud morphogenesis // inferred from sequence or structural similarity /// 1900212 // negative regulation of mesenchymal cell apoptotic process involved in metanephros development // inferred from sequence or structural similarity /// 1900215 // negative regulation of apoptotic process involved in metanephric collecting duct development // inferred from sequence or structural similarity /// 1900218 // negative regulation of apoptotic process involved in metanephric nephron tubule development // inferred from sequence or structural similarity /// 2000594 // positive regulation of metanephric DCT cell differentiation // inferred from sequence or structural similarity /// 2000611 // positive regulation of thyroid hormone generation // inferred from mutant phenotype /// 2000612 // regulation of thyroid-stimulating hormone secretion // inferred from mutant phenotype', '0007165 // signal transduction // non-traceable author statement /// 0007601 // visual perception // inferred from electronic annotation /// 0007602 // phototransduction // inferred from electronic annotation /// 0007603 // phototransduction, visible light // traceable author statement /// 0016056 // rhodopsin mediated signaling pathway // traceable author statement /// 0022400 // regulation of rhodopsin mediated signaling pathway // traceable author statement /// 0030828 // positive regulation of cGMP biosynthetic process // inferred from electronic annotation /// 0031282 // regulation of guanylate cyclase activity // inferred from electronic annotation /// 0031284 // positive regulation of guanylate cyclase activity // inferred from electronic annotation /// 0050896 // response to stimulus // inferred from electronic annotation'], 'Gene Ontology Cellular Component': ['0005576 // extracellular region // inferred from electronic annotation /// 0005615 // extracellular space // inferred from direct assay /// 0005886 // plasma membrane // traceable author statement /// 0005887 // integral component of plasma membrane // traceable author statement /// 0016020 // membrane // inferred from electronic annotation /// 0016021 // integral component of membrane // inferred from electronic annotation /// 0043235 // receptor complex // inferred from direct assay /// 0070062 // extracellular vesicular exosome // inferred from direct assay', '0005634 // nucleus // inferred from electronic annotation /// 0005654 // nucleoplasm // traceable author statement /// 0005663 // DNA replication factor C complex // inferred from direct assay', '0005737 // cytoplasm // inferred from direct assay /// 0005814 // centriole // inferred from direct assay /// 0005829 // cytosol // inferred from direct assay /// 0008180 // COP9 signalosome // inferred from direct assay /// 0070062 // extracellular vesicular exosome // inferred from direct assay /// 0072562 // blood microparticle // inferred from direct assay', '0005634 // nucleus // inferred from direct assay /// 0005654 // nucleoplasm // inferred from sequence or structural similarity /// 0005730 // nucleolus // inferred from direct assay', '0001750 // photoreceptor outer segment // inferred from electronic annotation /// 0001917 // photoreceptor inner segment // inferred from electronic annotation /// 0005578 // proteinaceous extracellular matrix // inferred from electronic annotation /// 0005886 // plasma membrane // inferred from direct assay /// 0016020 // membrane // inferred from electronic annotation /// 0097381 // photoreceptor disc membrane // traceable author statement'], 'Gene Ontology Molecular Function': ['0000166 // nucleotide binding // inferred from electronic annotation /// 0004672 // protein kinase activity // inferred from electronic annotation /// 0004713 // protein tyrosine kinase activity // inferred from electronic annotation /// 0004714 // transmembrane receptor protein tyrosine kinase activity // traceable author statement /// 0005515 // protein binding // inferred from physical interaction /// 0005518 // collagen binding // inferred from direct assay /// 0005518 // collagen binding // inferred from mutant phenotype /// 0005524 // ATP binding // inferred from electronic annotation /// 0016301 // kinase activity // inferred from electronic annotation /// 0016740 // transferase activity // inferred from electronic annotation /// 0016772 // transferase activity, transferring phosphorus-containing groups // inferred from electronic annotation /// 0038062 // protein tyrosine kinase collagen receptor activity // inferred from direct assay /// 0046872 // metal ion binding // inferred from electronic annotation', '0000166 // nucleotide binding // inferred from electronic annotation /// 0003677 // DNA binding // inferred from electronic annotation /// 0005515 // protein binding // inferred from physical interaction /// 0005524 // ATP binding // inferred from electronic annotation /// 0016851 // magnesium chelatase activity // inferred from electronic annotation /// 0017111 // nucleoside-triphosphatase activity // inferred from electronic annotation', '0000166 // nucleotide binding // inferred from electronic annotation /// 0005524 // ATP binding // inferred from electronic annotation /// 0019899 // enzyme binding // inferred from physical interaction /// 0031072 // heat shock protein binding // inferred from physical interaction /// 0042623 // ATPase activity, coupled // inferred from direct assay /// 0051082 // unfolded protein binding // inferred from direct assay', '0000979 // RNA polymerase II core promoter sequence-specific DNA binding // inferred from direct assay /// 0003677 // DNA binding // inferred from direct assay /// 0003677 // DNA binding // inferred from mutant phenotype /// 0003700 // sequence-specific DNA binding transcription factor activity // inferred from direct assay /// 0004996 // thyroid-stimulating hormone receptor activity // traceable author statement /// 0005515 // protein binding // inferred from physical interaction /// 0044212 // transcription regulatory region DNA binding // inferred from direct assay', '0005509 // calcium ion binding // inferred from electronic annotation /// 0008048 // calcium sensitive guanylate cyclase activator activity // inferred from electronic annotation /// 0030249 // guanylate cyclase regulator activity // inferred from electronic annotation /// 0046872 // metal ion binding // inferred from electronic annotation']}\n" ] } ], "source": [ "# 1. Let's first examine the structure of the SOFT file before trying to parse it\n", "import gzip\n", "\n", "# Look at the first few lines of the SOFT file to understand its structure\n", "print(\"Examining SOFT file structure:\")\n", "try:\n", " with gzip.open(soft_file, 'rt') as file:\n", " # Read first 20 lines to understand the file structure\n", " for i, line in enumerate(file):\n", " if i < 20:\n", " print(f\"Line {i}: {line.strip()}\")\n", " else:\n", " break\n", "except Exception as e:\n", " print(f\"Error reading SOFT file: {e}\")\n", "\n", "# 2. Now let's try a more robust approach to extract the gene annotation\n", "# Instead of using the library function which failed, we'll implement a custom approach\n", "try:\n", " # First, look for the platform section which contains gene annotation\n", " platform_data = []\n", " with gzip.open(soft_file, 'rt') as file:\n", " in_platform_section = False\n", " for line in file:\n", " if line.startswith('^PLATFORM'):\n", " in_platform_section = True\n", " continue\n", " if in_platform_section and line.startswith('!platform_table_begin'):\n", " # Next line should be the header\n", " header = next(file).strip()\n", " platform_data.append(header)\n", " # Read until the end of the platform table\n", " for table_line in file:\n", " if table_line.startswith('!platform_table_end'):\n", " break\n", " platform_data.append(table_line.strip())\n", " break\n", " \n", " # If we found platform data, convert it to a DataFrame\n", " if platform_data:\n", " import pandas as pd\n", " import io\n", " platform_text = '\\n'.join(platform_data)\n", " gene_annotation = pd.read_csv(io.StringIO(platform_text), delimiter='\\t', \n", " low_memory=False, on_bad_lines='skip')\n", " print(\"\\nGene annotation preview:\")\n", " print(preview_df(gene_annotation))\n", " else:\n", " print(\"Could not find platform table in SOFT file\")\n", " \n", " # Try an alternative approach - extract mapping from other sections\n", " with gzip.open(soft_file, 'rt') as file:\n", " for line in file:\n", " if 'ANNOTATION information' in line or 'annotation information' in line:\n", " print(f\"Found annotation information: {line.strip()}\")\n", " if line.startswith('!Platform_title') or line.startswith('!platform_title'):\n", " print(f\"Platform title: {line.strip()}\")\n", " \n", "except Exception as e:\n", " print(f\"Error processing gene annotation: {e}\")\n" ] }, { "cell_type": "markdown", "id": "e7e6b566", "metadata": {}, "source": [ "### Step 6: Gene Identifier Mapping" ] }, { "cell_type": "code", "execution_count": 7, "id": "0a223b08", "metadata": { "execution": { "iopub.execute_input": "2025-03-25T05:12:28.843953Z", "iopub.status.busy": "2025-03-25T05:12:28.843819Z", "iopub.status.idle": "2025-03-25T05:12:30.389631Z", "shell.execute_reply": "2025-03-25T05:12:30.389183Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Gene mapping dataframe shape: (45782, 2)\n", "First few rows of gene mapping:\n", " ID Gene\n", "0 1007_s_at DDR1 /// MIR4640\n", "1 1053_at RFC2\n", "2 117_at HSPA6\n", "3 121_at PAX8\n", "4 1255_g_at GUCA1A\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Gene expression dataframe shape after mapping: (21278, 92)\n", "First few rows of gene expression data:\n", " GSM3759992 GSM3759993 GSM3759994 GSM3759995 GSM3759996 \\\n", "Gene \n", "A1BG 4.390919 9.637094 5.370776 7.376019 9.747455 \n", "A1BG-AS1 4.498580 4.911001 4.409248 4.958840 4.126732 \n", "A1CF 7.712909 17.768014 8.704946 14.905013 16.923252 \n", "A2M 14.491904 16.222561 15.166473 15.598188 15.317525 \n", "A2M-AS1 6.186831 4.286041 5.067774 5.807062 3.963854 \n", "\n", " GSM3759997 GSM3759998 GSM3759999 GSM3760000 GSM3760001 ... \\\n", "Gene ... \n", "A1BG 7.568074 12.627785 12.227179 7.042437 5.118175 ... \n", "A1BG-AS1 5.894118 4.571268 4.925717 4.390274 4.578439 ... \n", "A1CF 7.351392 21.828093 20.830584 17.073983 8.206698 ... \n", "A2M 14.574577 17.392583 17.035321 13.785204 15.715598 ... \n", "A2M-AS1 3.236874 4.999760 5.261349 3.467432 4.919674 ... \n", "\n", " GSM3760074 GSM3760075 GSM3760076 GSM3760077 GSM3760078 \\\n", "Gene \n", "A1BG 4.466207 6.302002 4.770781 6.557401 10.957562 \n", "A1BG-AS1 4.479958 4.533261 4.303740 4.149873 4.590279 \n", "A1CF 8.096754 8.508394 7.585603 9.130104 18.034939 \n", "A2M 15.257647 15.290760 14.182057 13.469337 15.873612 \n", "A2M-AS1 5.474941 4.403670 4.141437 3.626901 4.699394 \n", "\n", " GSM3760079 GSM3760080 GSM3760081 GSM3760082 GSM3760083 \n", "Gene \n", "A1BG 4.419246 11.367763 11.858476 7.161334 5.668884 \n", "A1BG-AS1 4.394308 4.395192 4.476916 4.426793 4.243666 \n", "A1CF 8.542182 20.746134 20.372914 13.245911 14.530918 \n", "A2M 15.869547 16.443655 16.540850 13.297393 13.946796 \n", "A2M-AS1 5.321576 4.664824 4.925050 3.684124 3.294244 \n", "\n", "[5 rows x 92 columns]\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Gene expression data saved to ../../output/preprocess/Esophageal_Cancer/gene_data/GSE131027.csv\n" ] } ], "source": [ "# 1. Identify the columns for gene identifiers and gene symbols\n", "# From the gene annotation preview, we can see:\n", "# - 'ID' column contains probe IDs like \"1007_s_at\" which match gene expression data's index\n", "# - 'Gene Symbol' column contains the human gene symbols we need\n", "\n", "# 2. Get a gene mapping dataframe with the relevant columns\n", "prob_col = 'ID'\n", "gene_col = 'Gene Symbol'\n", "\n", "# Extract the mapping from the gene annotation dataframe\n", "gene_mapping = get_gene_mapping(gene_annotation, prob_col, gene_col)\n", "print(f\"Gene mapping dataframe shape: {gene_mapping.shape}\")\n", "print(\"First few rows of gene mapping:\")\n", "print(gene_mapping.head())\n", "\n", "# 3. Apply the gene mapping to convert probe-level data to gene expression data\n", "gene_data = apply_gene_mapping(gene_data, gene_mapping)\n", "print(f\"Gene expression dataframe shape after mapping: {gene_data.shape}\")\n", "print(\"First few rows of gene expression data:\")\n", "print(gene_data.head())\n", "\n", "# Save the gene data to a file\n", "os.makedirs(os.path.dirname(out_gene_data_file), exist_ok=True)\n", "gene_data.to_csv(out_gene_data_file)\n", "print(f\"Gene expression data saved to {out_gene_data_file}\")\n" ] }, { "cell_type": "markdown", "id": "ff6b186b", "metadata": {}, "source": [ "### Step 7: Data Normalization and Linking" ] }, { "cell_type": "code", "execution_count": 8, "id": "8812020b", "metadata": { "execution": { "iopub.execute_input": "2025-03-25T05:12:30.390987Z", "iopub.status.busy": "2025-03-25T05:12:30.390859Z", "iopub.status.idle": "2025-03-25T05:12:38.122659Z", "shell.execute_reply": "2025-03-25T05:12:38.122273Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Normalized gene data shape: (19845, 92)\n", "First few genes with their expression values after normalization:\n", " GSM3759992 GSM3759993 GSM3759994 GSM3759995 GSM3759996 \\\n", "Gene \n", "A1BG 4.390919 9.637094 5.370776 7.376019 9.747455 \n", "A1BG-AS1 4.498580 4.911001 4.409248 4.958840 4.126732 \n", "A1CF 7.712909 17.768014 8.704946 14.905013 16.923252 \n", "A2M 14.491904 16.222561 15.166473 15.598188 15.317525 \n", "A2M-AS1 6.186831 4.286041 5.067774 5.807062 3.963854 \n", "\n", " GSM3759997 GSM3759998 GSM3759999 GSM3760000 GSM3760001 ... \\\n", "Gene ... \n", "A1BG 7.568074 12.627785 12.227179 7.042437 5.118175 ... \n", "A1BG-AS1 5.894118 4.571268 4.925717 4.390274 4.578439 ... \n", "A1CF 7.351392 21.828093 20.830584 17.073983 8.206698 ... \n", "A2M 14.574577 17.392583 17.035321 13.785204 15.715598 ... \n", "A2M-AS1 3.236874 4.999760 5.261349 3.467432 4.919674 ... \n", "\n", " GSM3760074 GSM3760075 GSM3760076 GSM3760077 GSM3760078 \\\n", "Gene \n", "A1BG 4.466207 6.302002 4.770781 6.557401 10.957562 \n", "A1BG-AS1 4.479958 4.533261 4.303740 4.149873 4.590279 \n", "A1CF 8.096754 8.508394 7.585603 9.130104 18.034939 \n", "A2M 15.257647 15.290760 14.182057 13.469337 15.873612 \n", "A2M-AS1 5.474941 4.403670 4.141437 3.626901 4.699394 \n", "\n", " GSM3760079 GSM3760080 GSM3760081 GSM3760082 GSM3760083 \n", "Gene \n", "A1BG 4.419246 11.367763 11.858476 7.161334 5.668884 \n", "A1BG-AS1 4.394308 4.395192 4.476916 4.426793 4.243666 \n", "A1CF 8.542182 20.746134 20.372914 13.245911 14.530918 \n", "A2M 15.869547 16.443655 16.540850 13.297393 13.946796 \n", "A2M-AS1 5.321576 4.664824 4.925050 3.684124 3.294244 \n", "\n", "[5 rows x 92 columns]\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Normalized gene data saved to ../../output/preprocess/Esophageal_Cancer/gene_data/GSE131027.csv\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Raw clinical data shape: (5, 93)\n", "Clinical features:\n", " GSM3759992 GSM3759993 GSM3759994 GSM3759995 GSM3759996 \\\n", "Esophageal_Cancer 0.0 0.0 0.0 0.0 0.0 \n", "\n", " GSM3759997 GSM3759998 GSM3759999 GSM3760000 GSM3760001 \\\n", "Esophageal_Cancer 0.0 0.0 0.0 0.0 0.0 \n", "\n", " ... GSM3760074 GSM3760075 GSM3760076 GSM3760077 \\\n", "Esophageal_Cancer ... 0.0 0.0 0.0 0.0 \n", "\n", " GSM3760078 GSM3760079 GSM3760080 GSM3760081 GSM3760082 \\\n", "Esophageal_Cancer 0.0 0.0 0.0 0.0 0.0 \n", "\n", " GSM3760083 \n", "Esophageal_Cancer 0.0 \n", "\n", "[1 rows x 92 columns]\n", "Clinical features saved to ../../output/preprocess/Esophageal_Cancer/clinical_data/GSE131027.csv\n", "Linked data shape: (92, 19846)\n", "Linked data preview (first 5 rows, first 5 columns):\n", " Esophageal_Cancer A1BG A1BG-AS1 A1CF A2M\n", "GSM3759992 0.0 4.390919 4.498580 7.712909 14.491904\n", "GSM3759993 0.0 9.637094 4.911001 17.768014 16.222561\n", "GSM3759994 0.0 5.370776 4.409248 8.704946 15.166473\n", "GSM3759995 0.0 7.376019 4.958840 14.905013 15.598188\n", "GSM3759996 0.0 9.747455 4.126732 16.923252 15.317525\n", "Missing values before handling:\n", " Trait (Esophageal_Cancer) missing: 0 out of 92\n", " Genes with >20% missing: 0\n", " Samples with >5% missing genes: 0\n" ] }, { "name": "stdout", "output_type": "stream", "text": [ "Data shape after handling missing values: (92, 19846)\n", "For the feature 'Esophageal_Cancer', the least common label is '1.0' with 1 occurrences. This represents 1.09% of the dataset.\n", "The distribution of the feature 'Esophageal_Cancer' in this dataset is severely biased.\n", "\n", "Data was determined to be unusable or empty and was not saved\n" ] } ], "source": [ "# 1. Normalize gene symbols in the gene expression data\n", "normalized_gene_data = normalize_gene_symbols_in_index(gene_data)\n", "print(f\"Normalized gene data shape: {normalized_gene_data.shape}\")\n", "print(\"First few genes with their expression values after normalization:\")\n", "print(normalized_gene_data.head())\n", "\n", "# Save the normalized gene data\n", "os.makedirs(os.path.dirname(out_gene_data_file), exist_ok=True)\n", "normalized_gene_data.to_csv(out_gene_data_file)\n", "print(f\"Normalized gene data saved to {out_gene_data_file}\")\n", "\n", "# 2. Check if trait data is available before proceeding with clinical data extraction\n", "if trait_row is None:\n", " print(\"Trait row is None. Cannot extract trait information from clinical data.\")\n", " # Create an empty dataframe for clinical features\n", " clinical_features = pd.DataFrame()\n", " \n", " # Create an empty dataframe for linked data\n", " linked_data = pd.DataFrame()\n", " \n", " # Validate and save cohort info\n", " validate_and_save_cohort_info(\n", " is_final=True, \n", " cohort=cohort, \n", " info_path=json_path, \n", " is_gene_available=True, \n", " is_trait_available=False, # Trait data is not available\n", " is_biased=True, # Not applicable but required\n", " df=pd.DataFrame(), # Empty dataframe\n", " note=\"Dataset contains gene expression data but lacks clear trait indicators for Duchenne Muscular Dystrophy status.\"\n", " )\n", " print(\"Data was determined to be unusable due to missing trait indicators and was not saved\")\n", "else:\n", " try:\n", " # Get the file paths for the matrix file to extract clinical data\n", " _, matrix_file = geo_get_relevant_filepaths(in_cohort_dir)\n", " \n", " # Get raw clinical data from the matrix file\n", " _, clinical_raw = get_background_and_clinical_data(matrix_file)\n", " \n", " # Verify clinical data structure\n", " print(\"Raw clinical data shape:\", clinical_raw.shape)\n", " \n", " # Extract clinical features using the defined conversion functions\n", " clinical_features = geo_select_clinical_features(\n", " clinical_df=clinical_raw,\n", " trait=trait,\n", " trait_row=trait_row,\n", " convert_trait=convert_trait,\n", " age_row=age_row,\n", " convert_age=convert_age,\n", " gender_row=gender_row,\n", " convert_gender=convert_gender\n", " )\n", " \n", " print(\"Clinical features:\")\n", " print(clinical_features)\n", " \n", " # Save clinical features to file\n", " os.makedirs(os.path.dirname(out_clinical_data_file), exist_ok=True)\n", " clinical_features.to_csv(out_clinical_data_file)\n", " print(f\"Clinical features saved to {out_clinical_data_file}\")\n", " \n", " # 3. Link clinical and genetic data\n", " linked_data = geo_link_clinical_genetic_data(clinical_features, normalized_gene_data)\n", " print(f\"Linked data shape: {linked_data.shape}\")\n", " print(\"Linked data preview (first 5 rows, first 5 columns):\")\n", " print(linked_data.iloc[:5, :5])\n", " \n", " # 4. Handle missing values\n", " print(\"Missing values before handling:\")\n", " print(f\" Trait ({trait}) missing: {linked_data[trait].isna().sum()} out of {len(linked_data)}\")\n", " if 'Age' in linked_data.columns:\n", " print(f\" Age missing: {linked_data['Age'].isna().sum()} out of {len(linked_data)}\")\n", " if 'Gender' in linked_data.columns:\n", " print(f\" Gender missing: {linked_data['Gender'].isna().sum()} out of {len(linked_data)}\")\n", " \n", " gene_cols = [col for col in linked_data.columns if col not in [trait, 'Age', 'Gender']]\n", " print(f\" Genes with >20% missing: {sum(linked_data[gene_cols].isna().mean() > 0.2)}\")\n", " print(f\" Samples with >5% missing genes: {sum(linked_data[gene_cols].isna().mean(axis=1) > 0.05)}\")\n", " \n", " cleaned_data = handle_missing_values(linked_data, trait)\n", " print(f\"Data shape after handling missing values: {cleaned_data.shape}\")\n", " \n", " # 5. Evaluate bias in trait and demographic features\n", " is_trait_biased = False\n", " if len(cleaned_data) > 0:\n", " trait_biased, cleaned_data = judge_and_remove_biased_features(cleaned_data, trait)\n", " is_trait_biased = trait_biased\n", " else:\n", " print(\"No data remains after handling missing values.\")\n", " is_trait_biased = True\n", " \n", " # 6. Final validation and save\n", " is_usable = validate_and_save_cohort_info(\n", " is_final=True, \n", " cohort=cohort, \n", " info_path=json_path, \n", " is_gene_available=True, \n", " is_trait_available=True, \n", " is_biased=is_trait_biased, \n", " df=cleaned_data,\n", " note=\"Dataset contains gene expression data comparing Duchenne muscular dystrophy vs healthy samples.\"\n", " )\n", " \n", " # 7. Save if usable\n", " if is_usable and len(cleaned_data) > 0:\n", " os.makedirs(os.path.dirname(out_data_file), exist_ok=True)\n", " cleaned_data.to_csv(out_data_file)\n", " print(f\"Linked data saved to {out_data_file}\")\n", " else:\n", " print(\"Data was determined to be unusable or empty and was not saved\")\n", " \n", " except Exception as e:\n", " print(f\"Error processing data: {e}\")\n", " # Handle the error case by still recording cohort info\n", " validate_and_save_cohort_info(\n", " is_final=True, \n", " cohort=cohort, \n", " info_path=json_path, \n", " is_gene_available=True, \n", " is_trait_available=False, # Mark as not available due to processing issues\n", " is_biased=True, \n", " df=pd.DataFrame(), # Empty dataframe\n", " note=f\"Error processing data: {str(e)}\"\n", " )\n", " print(\"Data was determined to be unusable and was not saved\")" ] } ], "metadata": { "language_info": { "codemirror_mode": { "name": "ipython", "version": 3 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", "version": "3.10.16" } }, "nbformat": 4, "nbformat_minor": 5 }