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Nonparametric empirical Bayesian framework for fluorescence-lifetime imaging microscopy
Shulei Wang
, Jenu V. Chacko
, Abdul K. Sagar
, Kevin W. Eliceiri
, Ming Yuan
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Keyphrases
Bayesian Framework
100%
Nonparametric
100%
Fluorescence Lifetime Imaging
100%
Empirical Bayesian
100%
Computation Time
33%
Microscopy Data
33%
Biological Datasets
16%
Fluorophore
16%
Existing Techniques
16%
Computationally Efficient
16%
Molecular Environment
16%
Imaging Tools
16%
Fitting Data
16%
Integral Properties
16%
Prior Distribution
16%
Nonparametric Maximum Likelihood Estimator (NPMLE)
16%
Flurophore
16%
Pixel-wise
16%
Lifetime Estimation
16%
Property Inference
16%
Hierarchical Statistical Model
16%
Exponential Distribution Function
16%
Mathematics
Bayesian
100%
Maximum Likelihood Estimator
50%
Classical Method
50%
Statistical Model
50%
Time Domain
50%
Data Fitting
50%
Exponential Distribution Function
50%