Litcius/Paper detail

Machine learning for faster and smarter fluorescence lifetime imaging microscopy

Varun Mannam, Yide Zhang, Xiao–Tong Yuan, Cara Ravasio, Scott S. Howard

2020Journal of Physics Photonics50 citationsDOIOpen Access PDF

Abstract

Abstract Fluorescence lifetime imaging microscopy (FLIM) is a powerful technique in biomedical research that uses the fluorophore decay rate to provide additional contrast in fluorescence microscopy. However, at present, the calculation, analysis, and interpretation of FLIM is a complex, slow, and computationally expensive process. Machine learning (ML) techniques are well suited to extract and interpret measurements from multi-dimensional FLIM data sets with substantial improvement in speed over conventional methods. In this topical review, we first discuss the basics of FILM and ML. Second, we provide a summary of lifetime extraction strategies using ML and its applications in classifying and segmenting FILM images with higher accuracy compared to conventional methods. Finally, we discuss two potential directions to improve FLIM with ML with proof of concept demonstrations.

Topics & Concepts

MicroscopyFluorescence-lifetime imaging microscopyFluorescence microscopeFluorescenceNanotechnologyComputer scienceMaterials scienceArtificial intelligenceOpticsPhysicsAdvanced Fluorescence Microscopy TechniquesCell Image Analysis TechniquesSpectroscopy Techniques in Biomedical and Chemical Research