IRIS-5D

The platform

The platform we are developing is an AI-driven, fully automated system for high-throughput 5D fluorescence imaging and data analysis. It is designed to overcome the major limitations of current microscopy approaches:

  • Low throughput (typically one cell at a time).
  • Heavy user dependence (manual training and oversight required).
  • Insufficient data volume for advanced ML/AI applications.

By integrating cutting-edge optics, robotics, and artificial intelligence, the platform will autonomously acquire, process, and analyse very large datasets of living cells (>10,000 cells/condition) in 5D (x, y, z, time, and multiple spectral channels) with high spatiotemporal resolution

Core components

1. Optical Imaging System

  • Microscope design: A custom single-objective light-sheet system, based on an improved oblique plane microscopy (OPM) concept.
  • Capabilities:
    • Simultaneous multichannel volumetric imaging of large fields of view (300 × 300 × 20 μm³).
    • Spatial resolution of ~300 nm (xy) and ~800 nm (z), with acquisition speeds of 100–500 ms per cell volume.
    • Parallel acquisition of ≥60 cells with ≤30 s time resolution.
  • Features under development:
    • OP-SLIM (Oblique Plane Scattered Light-Sheet Imaging): A novel approach to generate high-contrast volumetric reference images in parallel with fluorescence imaging, useful for ML-based label-free inference.
    • Structured Illumination Microscopy (SIM): Integrated with OPM to achieve ~150 nm lateral resolution while maintaining throughput.

2. Automation and Robotics

  • Automated sample handling:
    • Robotic arm with gripper for moving multiwell plates (96-well or higher).
    • Barcode readers for sample tracking.
    • Automated pipetting and drug application systems.
    • Temperature-controlled microplate storage (“hotels”).
  • Live-cell environment:
    • Automated stage-top incubator with CO₂ and temperature control.
    • Silicone-oil dispenser for long-term, stable imaging.
  • Continuous operation: 24/7 autonomous imaging, enabling collection of 4,000–10,000 cells per day.

3. Software Framework

  • FPGA and Python-based control for all hardware components.
  • User interface:
    • Graphical User Interface (GUI) for experiment setup and data visualization.
    • Python API for extensibility and integration of custom hardware/software.
  • AI integration:
    • Automated cell search and selection based on user-defined criteria.
    • Adaptive imaging parameter optimisation (laser power, exposure, sampling strategy).
    • Natural language interface (in development) allowing users to interact with the system using written instructions.

Data Output and Integration

  • 5D datasets: Large-scale single-cell volumes in multiple fluorescent channels, aligned with reference label-free imaging.
  • Metadata: Complete acquisition parameters, environmental conditions, and experimental annotations.
  • Analysis-ready: Data streamed directly into ML pipelines for segmentation, generative modelling, and population-level statistical analysis.
  • Throughput: Orders of magnitude higher than current high-resolution microscopy approaches, providing the scale required for AI/ML-driven biological discovery.

Applications

The platform is designed to be modular and generalisable, making it suitable for a wide range of biological applications. Our platform will provide a powerful tool for any research area requiring large-scale, high-resolution live-cell imaging, including cell signalling, developmental biology, and systems pharmacology.