Affiliation:
1. Optical Cell Biology Instituto Gulbenkian de Ciência Oeiras Portugal
2. Abbelight Cachan France
3. UCL‐Laboratory for Molecular Cell Biology University College London London UK
Abstract
AbstractOptical microscopy is an indispensable tool in life sciences research, but conventional techniques require compromises between imaging parameters like speed, resolution, field of view and phototoxicity. To overcome these limitations, data‐driven microscopes incorporate feedback loops between data acquisition and analysis. This review overviews how machine learning enables automated image analysis to optimise microscopy in real time. We first introduce key data‐driven microscopy concepts and machine learning methods relevant to microscopy image analysis. Subsequently, we highlight pioneering works and recent advances in integrating machine learning into microscopy acquisition workflows, including optimising illumination, switching modalities and acquisition rates, and triggering targeted experiments. We then discuss the remaining challenges and future outlook. Overall, intelligent microscopes that can sense, analyse and adapt promise to transform optical imaging by opening new experimental possibilities.
Funder
European Commission
Fundação para a Ciência e a Tecnologia
European Molecular Biology Organization
Chan Zuckerberg Initiative
European Research Council
Calouste Gulbenkian Foundation
Cited by
1 articles.
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