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Central Imaging Review Analysis with mint Lesion

Central Imaging Review Analysis with mint Lesion - read-ready in minutes, not weeks

Watch in the video above a demonstration of our central imaging review software featuring a pre-configured, master trial workflow database designed to support your study requirements with read-ready functionality quickly available.

  • Multiple read paradigms: Support for single reads, double reads with adjudication, and eligibility workflows
  • Multi-criteria reads: Apply multiple evaluation frameworks to the same image
  • Flexible templates: Use standard response criteria read templates or custom eCRFs you design
  • Built-in analytics: Volumetrics, SUVs, tumor growth rates, and radiomics capabilities
  • Automated notifications: Alerts configured to align with your review flow
  • Export functionality: One-click exports for images, data (CDISC, radiomics, observations), and structured results

 

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