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A Case Study of Dotmatics Luma Flow Cytometry Workflow at a Major US Pharma Organization
Challenge
Manual process to prepare and analyze flow cytometry instrument data was slow, subjective, and error-prone.
Solution
The Luma Flow Cytometry Workflow provides automated instrument data uploads with intelligent tagging, plus centralized file storage, sharing, and accessibility within OMIQ for advanced analysis, including automated gating, deeper contextualization, and auditable analysis pipelines.
Results
- Fast deployment:
- Less than 10 hours to establish parsing environment
- 1 week to connect and onboard 5 instruments and 20 users
- Time savings:
- Multiple hours per scientist per week saved with automated transfer of files from instruments to analysis platform
- Improved data access and insights:
- Centralized data storage and access
- Seamless sharing across sites
- Automated tagging and metadata capture
- Ready access in cloud analysis platform
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