4.4 Article

Fast maximum-likelihood image-restoration algorithms for three-dimensional fluorescence microscopy

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OPTICAL SOC AMER
DOI: 10.1364/JOSAA.18.001062

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  1. NCRR NIH HHS [BTA-S10-RR10412] Funding Source: Medline
  2. NIGMS NIH HHS [R01 GM55708, R01 GM49798] Funding Source: Medline

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We have evaluated three constrained, iterative restoration algorithms to find a fast, reliable algorithm for maximum-likelihood estimation of fluorescence microscopic images. Two algorithms used a Gaussian approximation to Poisson statistics, with variances computed assuming Poisson noise far the images. The third method used Csiszar's information-divergence. II-divergence! discrepancy measure. Each method included a nonnegativity constraint and a penalty term for regularization; optimization was performed with a conjugate gradient method. Performance of the methods was analyzed with simulated as well as biological images and the results compared with those obtained with the expectation-maximization-maximum-likelihood (EM-ML) algorithm. The I-divergence-based algorithm converged fastest and produced images similar to those restored by EM-ML as measured by several metrics. For a noiseless simulated specimen, the number of iterations required for the EM-X;IL method to reach a given log-likelihood value was approximately the square of the number required for the I-divergence-based method to reach the same value. (C) 2001 Optical Society of America.

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