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mritc: A package for MRI tissue classification
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نویسنده
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feng d. ,tierney l.
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منبع
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journal of statistical software - 2011 - دوره : 44 - - کد همایش: - صفحه:1 -20
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چکیده
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This paper presents an r package for magnetic resonance imaging (mri) tissue classification. the methods include using normal mixture models,hidden markov normal mixture models,and a higher resolution hidden markov normal mixture model fitted by various optimization algorithms and by a bayesian markov chain monte carlo (mcmc) method. functions to obtain initial values of parameters of normal mixture models and spatial parameters are provided. supported input formats are analyze,nifti,and a raw byte format. the function slices3d in misc3d is used for visualizing data and results. various performance evaluation indices are provided to evaluate classification results. to improve performance,table lookup methods are used in several places,and vectorized computation taking advantage of conditional independence properties are used. some computations are performed by c code,and openmp is used to parallelize key loops in the c code.
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کلیدواژه
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Bayesian Markov chain Monte Carlo; Conditional independence; Higher resolution hidden Markov normal mixture model; OpenMP; Table lookup
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آدرس
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merck research laboratories,biometrics research department,merck and co.,inc,ry 33-300 p.o. box 2000,rahway,nj 07065, United States, university of iowa,department of statistics and actuarial science,iowa city,ia 52242, United States
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Authors
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