AI-Enabled Label-Free Detection for Advanced Cell Analysis

Smarter Imaging Without Fluorescent Labels

Traditional fluorescence-based imaging workflows can increase complexity, cost, and processing time. Discover how AI-powered label-free detection with IN Carta® Image Analysis Software enables accurate, scalable, and non-invasive cell analysis using transmitted light imaging alone.

The ImageXpress® HCS.ai High-Content Screening System delivers exceptional imaging performance and intelligent analysis capabilities designed specifically for complex 3D workflows.

Key Benefits

  • Achieve over 97% nuclei detection accuracy using transmitted light images
  • Eliminate the need for fluorescent or chemical labels
  • Preserve live cells for real-time monitoring and kinetic studies
  • Reduce reagent costs and streamline imaging workflows 
  • Train customizable AI models across multiple cell lines
  • Generate accurate dose-response data with strong correlation to traditional methods

Why Researchers Are Interested

This application note demonstrates how AI-enabled segmentation models within IN Carta® Image Analysis Software accurately detect nuclei and cells using label-free transmitted light images.

Researchers successfully:

  • Built customizable AI segmentation models using SINAP
  • Achieved high detection accuracy across multiple cell lines
  • Compared label-free results against DAPI-based ground truth
  • Generated reliable dose-response curves for anti-cancer compounds
  • Reduced workflow complexity while maintaining analytical accuracy

The result is a faster, scalable, and more efficient approach to high-throughput cell analysis and phenotypic screening.

Download the Application Note

Learn how AI-driven label-free imaging can improve cell analysis workflows, accelerate screening applications, and enable deeper biological insights.

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