Statistical Computing in Nuclear Imaging

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A01=Arkadiusz Sitek
advanced Bayesian computing for imaging data
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Annihilation Photons
Author_Arkadiusz Sitek
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Bayes Risk
Bayesian Computing
Bayesian inference methods
Category1=Non-Fiction
Category=MQW
Category=PHVD
Category=PSA
Category=THR
Category=TQ
Category=UY
Category=UYT
Cc
Central Limit Theorem
Compton Scatter
Computing In Medical Imaging
COP=United States
decision theory applications
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Gamma Camera
Gamma Photons
Gamma Prior
Image Reconstruction
Image Visualization
Jeffreys Prior
Kl Divergence
Language_English
Loss Function
Map Estimator
Markov Chain
Markov Moves
MC
medical image reconstruction
MMSE Estimator
Monte Carlo simulation
Nuclear Data Analysis
Nuclear Imaging
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Pet Camera
Pet Scanner
photon counting statistics
Poisson Binomial Distribution
Posterior Standard Errors
Price_€100 and above
probability distributions analysis
PS=Active
Quadratic Loss Function
Radioactive Nuclei
softlaunch
Unobservable Quantities

Product details

  • ISBN 9781439849347
  • Weight: 550g
  • Dimensions: 156 x 234mm
  • Publication Date: 17 Dec 2014
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
  • Language: English
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Statistical Computing in Nuclear Imaging introduces aspects of Bayesian computing in nuclear imaging. The book provides an introduction to Bayesian statistics and concepts and is highly focused on the computational aspects of Bayesian data analysis of photon-limited data acquired in tomographic measurements.

Basic statistical concepts, elements of decision theory, and counting statistics, including models of photon-limited data and Poisson approximations, are discussed in the first chapters. Monte Carlo methods and Markov chains in posterior analysis are discussed next along with an introduction to nuclear imaging and applications such as PET and SPECT.

The final chapter includes illustrative examples of statistical computing, based on Poisson-multinomial statistics. Examples include calculation of Bayes factors and risks as well as Bayesian decision making and hypothesis testing. Appendices cover probability distributions, elements of set theory, multinomial distribution of single-voxel imaging, and derivations of sampling distribution ratios. C++ code used in the final chapter is also provided.

The text can be used as a textbook that provides an introduction to Bayesian statistics and advanced computing in medical imaging for physicists, mathematicians, engineers, and computer scientists. It is also a valuable resource for a wide spectrum of practitioners of nuclear imaging data analysis, including seasoned scientists and researchers who have not been exposed to Bayesian paradigms.

Arkadiusz Sitek is an associate physicist at Massachusetts General Hospital in Boston and an assistant professor at Harvard Medical School. He received his doctorate from the University of British Columbia in Canada and since 2001 has worked as a nuclear imaging scientist in the Lawrence Berkeley National Laboratory, Beth Israel Medical Center, and Brigham and Women’s Hospital before joining Massachusetts General Hospital. He has authored more than 100 scientific journal and proceedings papers, book chapters, and patents, and served as a principal investigator on nuclear imaging research projects. Dr. Sitek is a practitioner of the Bayesian school of thought and a member of the International Society for Bayesian Analysis.

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