Statistics of Medical Imaging Chapman & Hall/CRC Interdisciplinary Statistics Series
Auteur : Lei Tianhu
Statistical investigation into technology not only provides a better understanding of the intrinsic features of the technology (analysis), but also leads to an improved design of the technology (synthesis). Physical principles and mathematical procedures of medical imaging technologies have been extensively studied during past decades. However, less work has been done on the statistical aspects of these techniques. Statistics of Medical Imaging fills this gap and provides a theoretical framework for statistical investigation into medical imaging technologies.
Features
- Describes physical principles and mathematical procedures of two medical imaging techniques: X-ray CT and MRI
- Presents statistical properties of imaging data (measurements) at each stage in the imaging processes of X-ray CT and MRI
- Demonstrates image reconstruction as a transform from a set of random variables (imaging data) to another set of random variables (image data)
- Presents statistical properties of image data (pixel intensities) at three levels: a single pixel, any two pixels, and a group of pixels (a region)
- Provides two stochastic models for X-ray CT and MR image in terms of their statistics and two model-based statistical image analysis methods
- Evaluates statistical image analysis methods in terms of their detection, estimation, and classification performances
- Indicates that X-ray CT, MRI, PET and SPECT belong to a category of imaging: the non-diffraction computed tomography
Rather than offering detailed descriptions of statistics of basic imaging protocols of X-ray CT and MRI, this book provides a method to conduct similar statistical investigations into more complicated imaging protocols.
Introduction. X-Ray CT Physics and Mathematics. MRI Physics and Mathematics. Non-Diffraction Computed Tomography. Statistics of X-Ray CT Imaging. Statistics of X-Ray CT Image. Statistics of MR Imaging. Statistics of MR Image. Stochastic Image Models. Statistical Image Analysis – I. Statistical Image Analysis – II. Performance Evaluation of Image Analysis Methods.
Tianhu Lei is an associate professor at the University of Pittsburgh. He has previously worked at the University of Maryland, the University of Pennsylvania, and the Children’s Hospital of Philadelphia. He earned a Ph.D. in electric and system engineering from the University of Pennsylvania.
Date de parution : 06-2017
15.6x23.4 cm
Date de parution : 04-2012
Ouvrage de 416 p.
15.6x23.4 cm
Thèmes de Statistics of Medical Imaging :
Mots-clés :
X-ray CT; Image Regions; Tianhu Lei; X-ray CT Image; Imaging Physics; Pixel Intensities; Imaging Statistics; MR Image; Stochastic Image Models; Fourier Slice Theorem; Statistics; Free Induction Decay; Medical Imaging; MR Image Reconstruction; Divergent Projections; Xray CT; Image Reconstruction; Fid Signal; Clique Potentials; Macroscopic Magnetization; MRF; IRT; SPECT; Image Analysis Techniques; HMRF; Ergodic Theorem; Radon Transform; Independent Random Process; Cramer Rao Low Bound; Gaussian Random Processes; RF Pulse