# 3D Slicer Medical Imaging GUI Benchmark Dataset (CSV Format) ## Dataset Description This dataset contains **315 end-to-end GUI automation tasks** for 3D Slicer medical imaging software, focusing on MRI brain analysis workflows. ### Dataset Summary - **Total Tasks**: 315 - **Total Images**: 100 unique screenshots (file paths only) - **Application**: 3D Slicer (medical imaging software) - **Domain**: Medical imaging, MRI brain analysis - **Format**: CSV with file paths (ultra memory-efficient) ### Supported Tasks - GUI automation - Medical imaging workflows - Visual grounding - Action prediction - Task planning ## Dataset Structure The dataset is provided as a CSV file with the following columns: - `serial_number`: Task number (1-315) - `task_id`: Unique identifier (e.g., "3dslicer_endtoend_001") - `task`: Natural language task description - `image_sequence`: Screenshot sequence (→ separated) - `json_data`: Complete task data in JSON format - `num_steps`: Number of steps in the trajectory - `num_images`: Number of images for this task - `image_paths`: Pipe-separated file paths to images - `images_dir`: Base directory for images ### JSON Data Structure The `json_data` field contains: ```json { "id": "3dslicer_endtoend_001", "initial_state": { "application": "3D Slicer", "display_resolution": [1920, 1080], "loaded_image": "Import_Akash_Data.png" }, "instruction": "Task description...", "trajectory": [ { "step": 1, "action": "CLICK", "target": "Load Data (Akash)", "screenshot": "Import_Akash_Data.png", "note": "Step 1: Interacting with UI elements", "bbox": [1054, 0, 1089, 35] } ], "outputs": { "final_file": "task_1_output.png", "verification": {...}, "success": true } } ``` ### Action Types - **CLICK**: Button clicks, menu selections (71.1%) - **SEGMENT**: Drawing ROIs, measurements (15.9%) - **COMPLETE**: Task completion (5.8%) - **TEXT**: Text input (3.2%) - **ZOOM**: Zoom operations (2.0%) - **SCROLL**: Navigation (2.0%) ## Usage ```python import pandas as pd import json from PIL import Image import os # Load CSV dataset df = pd.read_csv("3dslicer_benchmark.csv") # Access a task task = df.iloc[0] print(f"Task: {task['task']}") print(f"Steps: {task['num_steps']}") # Parse JSON data task_json = json.loads(task['json_data']) print(f"Trajectory: {len(task_json['trajectory'])} steps") # Load images on-demand image_paths = task['image_paths'].split('|') for i, img_path in enumerate(image_paths): if os.path.exists(img_path): img = Image.open(img_path) print(f"Image {i+1}: {img.size}") ``` ## Memory Efficiency This CSV-based approach provides: - ✅ **Ultra-low memory usage** - no images loaded into memory - ✅ **Fast loading** - CSV loads in seconds - ✅ **Flexible access** - load images only when needed - ✅ **Easy sharing** - single CSV file - ✅ **Scalable** - works with any number of images ## Dataset Creation This dataset was created using: - Manual annotation of 3D Slicer workflows - Automated bounding box extraction (red/orange/yellow highlights) - Robust action inference with strict guardrails - Ultra memory-efficient CSV processing ### Quality Assurance - ✅ 100% consistent actions for same UI elements - ✅ 100% consistent bounding boxes for same screenshots - ✅ Only CLICK actions have bounding boxes - ✅ All bounding boxes extracted from images - ✅ Strict guardrails prevent inconsistencies - ✅ Ultra memory-efficient processing ## Citation ```bibtex @dataset{3dslicer_benchmark_2024, title={3D Slicer Medical Imaging GUI Benchmark Dataset}, author={Rishu Kumar}, year={2024}, url={https://huggingface.co/datasets/rishuKumar404/MedUI_3DSlicer_CSV} } ``` ## License MIT License