Cargando…

FLIM data analysis based on Laguerre polynomial decomposition and machine-learning

Significance: The potential of fluorescence lifetime imaging microscopy (FLIM) is recently being recognized, especially in biological studies. However, FLIM does not directly measure the lifetimes, rather it records the fluorescence decay traces. The lifetimes and/or abundances have to be estimated...

Descripción completa

Detalles Bibliográficos
Autores principales: Guo, Shuxia, Silge, Anja, Bae, Hyeonsoo, Tolstik, Tatiana, Meyer, Tobias, Matziolis, Georg, Schmitt, Michael, Popp, Jürgen, Bocklitz, Thomas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Society of Photo-Optical Instrumentation Engineers 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7790506/
https://www.ncbi.nlm.nih.gov/pubmed/33415850
http://dx.doi.org/10.1117/1.JBO.26.2.022909
_version_ 1783633438097539072
author Guo, Shuxia
Silge, Anja
Bae, Hyeonsoo
Tolstik, Tatiana
Meyer, Tobias
Matziolis, Georg
Schmitt, Michael
Popp, Jürgen
Bocklitz, Thomas
author_facet Guo, Shuxia
Silge, Anja
Bae, Hyeonsoo
Tolstik, Tatiana
Meyer, Tobias
Matziolis, Georg
Schmitt, Michael
Popp, Jürgen
Bocklitz, Thomas
author_sort Guo, Shuxia
collection PubMed
description Significance: The potential of fluorescence lifetime imaging microscopy (FLIM) is recently being recognized, especially in biological studies. However, FLIM does not directly measure the lifetimes, rather it records the fluorescence decay traces. The lifetimes and/or abundances have to be estimated from these traces during the phase of data processing. To precisely estimate these parameters is challenging and requires a well-designed computer program. Conventionally employed methods, which are based on curve fitting, are computationally expensive and limited in performance especially for highly noisy FLIM data. The graphical analysis, while free of fit, requires calibration samples for a quantitative analysis. Aim: We propose to extract the lifetimes and abundances directly from the decay traces through machine learning (ML). Approach: The ML-based approach was verified with simulated testing data in which the lifetimes and abundances were known exactly. Thereafter, we compared its performance with the commercial software SPCImage based on datasets measured from biological samples on a time-correlated single photon counting system. We reconstructed the decay traces using the lifetime and abundance values estimated by ML and SPCImage methods and utilized the root-mean-squared-error (RMSE) as marker. Results: The RMSE, which represents the difference between the reconstructed and measured decay traces, was observed to be lower for ML than for SPCImage. In addition, we could demonstrate with a three-component analysis the high potential and flexibility of the ML method to deal with more than two lifetime components. Conclusions: The ML-based approach shows great performance in FLIM data analysis.
format Online
Article
Text
id pubmed-7790506
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Society of Photo-Optical Instrumentation Engineers
record_format MEDLINE/PubMed
spelling pubmed-77905062021-01-12 FLIM data analysis based on Laguerre polynomial decomposition and machine-learning Guo, Shuxia Silge, Anja Bae, Hyeonsoo Tolstik, Tatiana Meyer, Tobias Matziolis, Georg Schmitt, Michael Popp, Jürgen Bocklitz, Thomas J Biomed Opt Special Series on Artificial Intelligence and Machine Learning in Biomedical Optics Significance: The potential of fluorescence lifetime imaging microscopy (FLIM) is recently being recognized, especially in biological studies. However, FLIM does not directly measure the lifetimes, rather it records the fluorescence decay traces. The lifetimes and/or abundances have to be estimated from these traces during the phase of data processing. To precisely estimate these parameters is challenging and requires a well-designed computer program. Conventionally employed methods, which are based on curve fitting, are computationally expensive and limited in performance especially for highly noisy FLIM data. The graphical analysis, while free of fit, requires calibration samples for a quantitative analysis. Aim: We propose to extract the lifetimes and abundances directly from the decay traces through machine learning (ML). Approach: The ML-based approach was verified with simulated testing data in which the lifetimes and abundances were known exactly. Thereafter, we compared its performance with the commercial software SPCImage based on datasets measured from biological samples on a time-correlated single photon counting system. We reconstructed the decay traces using the lifetime and abundance values estimated by ML and SPCImage methods and utilized the root-mean-squared-error (RMSE) as marker. Results: The RMSE, which represents the difference between the reconstructed and measured decay traces, was observed to be lower for ML than for SPCImage. In addition, we could demonstrate with a three-component analysis the high potential and flexibility of the ML method to deal with more than two lifetime components. Conclusions: The ML-based approach shows great performance in FLIM data analysis. Society of Photo-Optical Instrumentation Engineers 2021-01-07 2021-02 /pmc/articles/PMC7790506/ /pubmed/33415850 http://dx.doi.org/10.1117/1.JBO.26.2.022909 Text en © 2021 The Authors https://creativecommons.org/licenses/by/4.0/ Published by SPIE under a Creative Commons Attribution 4.0 Unported License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
spellingShingle Special Series on Artificial Intelligence and Machine Learning in Biomedical Optics
Guo, Shuxia
Silge, Anja
Bae, Hyeonsoo
Tolstik, Tatiana
Meyer, Tobias
Matziolis, Georg
Schmitt, Michael
Popp, Jürgen
Bocklitz, Thomas
FLIM data analysis based on Laguerre polynomial decomposition and machine-learning
title FLIM data analysis based on Laguerre polynomial decomposition and machine-learning
title_full FLIM data analysis based on Laguerre polynomial decomposition and machine-learning
title_fullStr FLIM data analysis based on Laguerre polynomial decomposition and machine-learning
title_full_unstemmed FLIM data analysis based on Laguerre polynomial decomposition and machine-learning
title_short FLIM data analysis based on Laguerre polynomial decomposition and machine-learning
title_sort flim data analysis based on laguerre polynomial decomposition and machine-learning
topic Special Series on Artificial Intelligence and Machine Learning in Biomedical Optics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7790506/
https://www.ncbi.nlm.nih.gov/pubmed/33415850
http://dx.doi.org/10.1117/1.JBO.26.2.022909
work_keys_str_mv AT guoshuxia flimdataanalysisbasedonlaguerrepolynomialdecompositionandmachinelearning
AT silgeanja flimdataanalysisbasedonlaguerrepolynomialdecompositionandmachinelearning
AT baehyeonsoo flimdataanalysisbasedonlaguerrepolynomialdecompositionandmachinelearning
AT tolstiktatiana flimdataanalysisbasedonlaguerrepolynomialdecompositionandmachinelearning
AT meyertobias flimdataanalysisbasedonlaguerrepolynomialdecompositionandmachinelearning
AT matziolisgeorg flimdataanalysisbasedonlaguerrepolynomialdecompositionandmachinelearning
AT schmittmichael flimdataanalysisbasedonlaguerrepolynomialdecompositionandmachinelearning
AT poppjurgen flimdataanalysisbasedonlaguerrepolynomialdecompositionandmachinelearning
AT bocklitzthomas flimdataanalysisbasedonlaguerrepolynomialdecompositionandmachinelearning