omero-integration
About
This skill enables developers to programmatically access and manage microscopy data through the OMERO Python API. It provides capabilities for retrieving images and datasets, analyzing pixel data, and handling ROIs and annotations. Use it for automating high-content screening workflows and batch processing within the OMERO platform.
Quick Install
Claude Code
Recommendednpx skills add K-Dense-AI/claude-scientific-skills -a claude-code/plugin add https://github.com/K-Dense-AI/claude-scientific-skillsgit clone https://github.com/K-Dense-AI/claude-scientific-skills.git ~/.claude/skills/omero-integrationCopy and paste this command in Claude Code to install this skill
Documentation
OMERO Integration
Overview
OMERO is an open-source platform for managing, visualizing, and analyzing microscopy images and metadata. Access images via Python API, retrieve datasets, analyze pixels, manage ROIs and annotations, for high-content screening and microscopy workflows.
When to Use This Skill
This skill should be used when:
- Working with OMERO Python API (omero-py) to access microscopy data
- Retrieving images, datasets, projects, or screening data programmatically
- Analyzing pixel data and creating derived images
- Creating or managing ROIs (regions of interest) on microscopy images
- Adding annotations, tags, or metadata to OMERO objects
- Storing measurement results in OMERO tables
- Creating server-side scripts for batch processing
- Performing high-content screening analysis
Core Capabilities
This skill covers eight major capability areas. Each is documented in detail in the references/ directory:
1. Connection & Session Management
File: references/connection.md
Establish secure connections to OMERO servers, manage sessions, handle authentication, and work with group contexts. Use this for initial setup and connection patterns.
Common scenarios:
- Connect to OMERO server with credentials
- Use existing session IDs
- Switch between group contexts
- Manage connection lifecycle with context managers
2. Data Access & Retrieval
File: references/data_access.md
Navigate OMERO's hierarchical data structure (Projects → Datasets → Images) and screening data (Screens → Plates → Wells). Retrieve objects, query by attributes, and access metadata.
Common scenarios:
- List all projects and datasets for a user
- Retrieve images by ID or dataset
- Access screening plate data
- Query objects with filters
3. Metadata & Annotations
File: references/metadata.md
Create and manage annotations including tags, key-value pairs, file attachments, and comments. Link annotations to images, datasets, or other objects.
Common scenarios:
- Add tags to images
- Attach analysis results as files
- Create custom key-value metadata
- Query annotations by namespace
4. Image Processing & Rendering
File: references/image_processing.md
Access raw pixel data as NumPy arrays, manipulate rendering settings, create derived images, and manage physical dimensions.
Common scenarios:
- Extract pixel data for computational analysis
- Generate thumbnail images
- Create maximum intensity projections
- Modify channel rendering settings
5. Regions of Interest (ROIs)
File: references/rois.md
Create, retrieve, and analyze ROIs with various shapes (rectangles, ellipses, polygons, masks, points, lines). Extract intensity statistics from ROI regions.
Common scenarios:
- Draw rectangular ROIs on images
- Create polygon masks for segmentation
- Analyze pixel intensities within ROIs
- Export ROI coordinates
6. OMERO Tables
File: references/tables.md
Store and query structured tabular data associated with OMERO objects. Useful for analysis results, measurements, and metadata.
Common scenarios:
- Store quantitative measurements for images
- Create tables with multiple column types
- Query table data with conditions
- Link tables to specific images or datasets
7. Scripts & Batch Operations
File: references/scripts.md
Create OMERO.scripts that run server-side for batch processing, automated workflows, and integration with OMERO clients.
Common scenarios:
- Process multiple images in batch
- Create automated analysis pipelines
- Generate summary statistics across datasets
- Export data in custom formats
8. Advanced Features
File: references/advanced.md
Covers permissions, filesets, cross-group queries, delete operations, and other advanced functionality.
Common scenarios:
- Handle group permissions
- Access original imported files
- Perform cross-group queries
- Delete objects with callbacks
Installation
uv pip install omero-py
Requirements:
- Python 3.7+
- Zeroc Ice 3.6+
- Access to an OMERO server (host, port, credentials)
Quick Start
Basic connection pattern:
from omero.gateway import BlitzGateway
# Connect to OMERO server
conn = BlitzGateway(username, password, host=host, port=port)
connected = conn.connect()
if connected:
# Perform operations
for project in conn.listProjects():
print(project.getName())
# Always close connection
conn.close()
else:
print("Connection failed")
Recommended pattern with context manager:
from omero.gateway import BlitzGateway
with BlitzGateway(username, password, host=host, port=port) as conn:
# Connection automatically managed
for project in conn.listProjects():
print(project.getName())
# Automatically closed on exit
Selecting the Right Capability
For data exploration:
- Start with
references/connection.mdto establish connection - Use
references/data_access.mdto navigate hierarchy - Check
references/metadata.mdfor annotation details
For image analysis:
- Use
references/image_processing.mdfor pixel data access - Use
references/rois.mdfor region-based analysis - Use
references/tables.mdto store results
For automation:
- Use
references/scripts.mdfor server-side processing - Use
references/data_access.mdfor batch data retrieval
For advanced operations:
- Use
references/advanced.mdfor permissions and deletion - Check
references/connection.mdfor cross-group queries
Common Workflows
Workflow 1: Retrieve and Analyze Images
- Connect to OMERO server (
references/connection.md) - Navigate to dataset (
references/data_access.md) - Retrieve images from dataset (
references/data_access.md) - Access pixel data as NumPy array (
references/image_processing.md) - Perform analysis
- Store results as table or file annotation (
references/tables.mdorreferences/metadata.md)
Workflow 2: Batch ROI Analysis
- Connect to OMERO server
- Retrieve images with existing ROIs (
references/rois.md) - For each image, get ROI shapes
- Extract pixel intensities within ROIs (
references/rois.md) - Store measurements in OMERO table (
references/tables.md)
Workflow 3: Create Analysis Script
- Design analysis workflow
- Use OMERO.scripts framework (
references/scripts.md) - Access data through script parameters
- Process images in batch
- Generate outputs (new images, tables, files)
Error Handling
Always wrap OMERO operations in try-except blocks and ensure connections are properly closed:
from omero.gateway import BlitzGateway
import traceback
try:
conn = BlitzGateway(username, password, host=host, port=port)
if not conn.connect():
raise Exception("Connection failed")
# Perform operations
except Exception as e:
print(f"Error: {e}")
traceback.print_exc()
finally:
if conn:
conn.close()
Additional Resources
- Official Documentation: https://omero.readthedocs.io/en/stable/developers/Python.html
- BlitzGateway API: https://omero.readthedocs.io/en/stable/developers/Python.html#omero-blitzgateway
- OMERO Model: https://omero.readthedocs.io/en/stable/developers/Model.html
- Community Forum: https://forum.image.sc/tag/omero
Notes
- OMERO uses group-based permissions (READ-ONLY, READ-ANNOTATE, READ-WRITE)
- Images in OMERO are organized hierarchically: Project > Dataset > Image
- Screening data uses: Screen > Plate > Well > WellSample > Image
- Always close connections to free server resources
- Use context managers for automatic resource management
- Pixel data is returned as NumPy arrays for analysis
GitHub Repository
Related Skills
llamaguard
OtherLlamaGuard is Meta's 7-8B parameter model for moderating LLM inputs and outputs across six safety categories like violence and hate speech. It offers 94-95% accuracy and can be deployed using vLLM, Hugging Face, or Amazon SageMaker. Use this skill to easily integrate content filtering and safety guardrails into your AI applications.
cost-optimization
OtherThis Claude Skill helps developers optimize cloud costs through resource rightsizing, tagging strategies, and spending analysis. It provides a framework for reducing cloud expenses and implementing cost governance across AWS, Azure, and GCP. Use it when you need to analyze infrastructure costs, right-size resources, or meet budget constraints.
quantizing-models-bitsandbytes
OtherThis skill quantizes LLMs to 8-bit or 4-bit precision using bitsandbytes, achieving 50-75% memory reduction with minimal accuracy loss. It's ideal for running larger models on limited GPU memory or accelerating inference, supporting formats like INT8, NF4, and FP4. The skill integrates with HuggingFace Transformers and enables QLoRA training and 8-bit optimizers.
dispatching-parallel-agents
OtherThis Claude Skill dispatches multiple agents to investigate and fix 3+ independent problems concurrently. It is designed for scenarios involving unrelated failures that can be resolved without shared state or dependencies. The core capability is parallel problem-solving, assigning one agent per independent problem domain to maximize efficiency.
