An easy-to-use microscopy image stitching and processing tool
Project description
EZStitcher
Powerful Microscopy Image Processing Made Simple
EZStitcher is a high-performance Python library that transforms complex microscopy image processing into simple, intuitive workflows. Built on top of the robust Ashlar stitching engine, it provides a flexible pipeline architecture that makes processing large microscopy datasets effortless.
🚀 Key Features
-
Intelligent Z-Stack Processing
- Advanced focus detection and quality metrics
- Multiple projection methods (max, mean, best-focus)
- Per-plane 3D stitching support
-
Multi-Channel Excellence
- Process multiple fluorescence channels independently
- Create channel-specific processing pipelines
- Generate composite images with custom weighting
-
Automated Workflow Management
- Smart microscope format detection
- Automatic directory management
- Built-in multithreading support
-
Research-Ready Architecture
- Clean, object-oriented API
- Extensible pipeline system
- Seamless integration with other Python tools
- Comprehensive testing suite
🎯 Supported Microscopes
- ImageXpress
- Opera Phenix
- Extensible architecture for adding new microscope types
⚡ Quick Start
# Install with pyenv (recommended)
pyenv install 3.11
pyenv global 3.11
# Create and activate virtual environment
python -m venv .venv
source .venv/bin/activate
# Install EZStitcher
pip install ezstitcher
📊 Basic Usage
from ezstitcher.core.config import PipelineConfig
from ezstitcher.core.pipeline_orchestrator import PipelineOrchestrator
from ezstitcher.core.pipeline import Pipeline
from ezstitcher.core.steps import Step, PositionGenerationStep, ImageStitchingStep
from ezstitcher.core.image_processor import ImageProcessor as IP
from pathlib import Path
# Initialize configuration and orchestrator
config = PipelineConfig(num_workers=2) # Use 2 worker threads
orchestrator = PipelineOrchestrator(
config=config,
plate_path=Path("/path/to/plate")
)
# Define a complete processing pipeline
pipeline = Pipeline(
input_dir=orchestrator.workspace_path,
steps=[
Step(
name="Normalize Images",
func=IP.stack_percentile_normalize
),
PositionGenerationStep(),
ImageStitchingStep()
],
name="Basic Processing Pipeline"
)
# Execute with automatic directory management
success = orchestrator.run(pipelines=[pipeline])
📊 Advanced Usage Example
from ezstitcher.core.config import PipelineConfig
from ezstitcher.core.pipeline_orchestrator import PipelineOrchestrator
from ezstitcher.core.pipeline import Pipeline
from ezstitcher.core.steps import Step, PositionGenerationStep, ImageStitchingStep
from ezstitcher.core.image_processor import ImageProcessor as IP
from ezstitcher.core.utils import stack
from n2v.models import N2V
from basicpy import BaSiC
from pathlib import Path
import numpy as np
# Custom processing functions
def n2v_process(images, model_path):
"""Apply Noise2Void denoising to images"""
model = N2V(None, model_path, 'N2V')
return [model.predict(img, 'N2V') for img in images]
def basic_process(images):
"""Apply BaSiC illumination correction"""
basic = BaSiC()
basic.fit(np.stack(images))
return list(basic.transform(np.stack(images)))
def generate_position_pipeline(orchestrator, n2v_model_path):
"""Generate pipeline for position file creation"""
return Pipeline(
steps=[
Step(func=IP.stack_percentile_normalize,
input_dir=orchestrator.workspace_path),
Step(func=(IP.create_projection, {'method': 'max_projection'}),
variable_components=['z_index']),
Step(func=IP.create_composite,
variable_components=['channel']),
PositionGenerationStep()
])
def generate_stitching_pipeline(orchestrator, n2v_model_path):
"""Generate pipeline for image stitching"""
return Pipeline(
steps=[
Step(func=(stack(n2v_process), {'model_path': n2v_model_path}),
input_dir=orchestrator.workspace_path),
Step(func=stack(basic_process)),
Step(func=IP.stack_percentile_normalize),
Step(func=IP.stack_histogram_match),
ImageStitchingStep(positions_file='positions.json')
])
# Process a plate with both pipelines
orchestrator.run(pipelines=[
generate_position_pipeline(orchestrator, n2v_model_path),
generate_stitching_pipeline(orchestrator, n2v_model_path)
])
📚 Documentation
Comprehensive documentation is available at Read the Docs, including:
- Detailed tutorials and examples
- Advanced usage patterns
- API reference
- Best practices
- Performance optimization guides
🤝 Contributing
We welcome contributions! Check out our Contributing Guide to get started.
📄 License
EZStitcher is released under the MIT License. See the LICENSE file for details.
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