Statistical Computing In Nuclear Imaging

Thảo luận trong 'Học tập' bởi boklibg, 21/5/2024.

  1. boklibg

    boklibg

    Tham gia:
    20/5/2024
    Bài viết:
    13,671
    Đã được thích:
    0
    Điểm thành tích:
    86
    Click Here to Download: https://ouo.io/xcVrBij
    [​IMG]
    Statistical Computing in Nuclear Imaging
    By: Arkadiusz Sitek
    Publisher:
    routledge
    Print ISBN: 9781439849347, 143984934X
    eText ISBN: 9781439849361, 1439849366
    Edition: 1st
    Copyright year: 2014
    Format: EPUB
    Available from $ 23.18 USD
    SKU 9781439849361R90
    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.
    Additional ISBNs
    9781439849361, 9781498729307, 1439849366, 1498729304
     

    Xem thêm các chủ đề tạo bởi boklibg
    Đang tải...


Chia sẻ trang này