Reconceptualizing Smart Microscopy: From Data Collection to Knowledge Creation by Multi-Agent Integration
Journal:
arXiv
Published Date:
May 26, 2025
Abstract
Smart microscopy represents a paradigm shift in biological imaging, moving
from passive observation tools to active collaborators in scientific inquiry.
Enabled by advances in automation, computational power, and artificial
intelligence, these systems are now capable of adaptive decision-making and
real-time experimental control. Here, we introduce a theoretical framework that
reconceptualizes smart microscopy as a partner in scientific investigation.
Central to our framework is the concept of the 'epistemic-empirical divide' in
cellular investigation-the gap between what is observable (empirical domain)
and what must be understood (epistemic domain). We propose six core design
principles: epistemic-empirical awareness, hierarchical context integration, an
evolution from detection to perception, adaptive measurement frameworks,
narrative synthesis capabilities, and cross-contextual reasoning. Together,
these principles guide a multi-agent architecture designed to align empirical
observation with the goals of scientific understanding. Our framework provides
a roadmap for building microscopy systems that go beyond automation to actively
support hypothesis generation, insight discovery, and theory development,
redefining the role of scientific instruments in the process of knowledge
creation.