Title of article :
A multi-scale probabilistic network model for detection, synthesis and compression in mammographic image analysis
Author/Authors :
Paul Sajda، نويسنده , , Clay Spence، نويسنده , , Lucas Parra، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Abstract :
We develop a probabilistic network model over image spaces and demonstrate its broad utility in mammographic image analysis, particularly with respect to computer-aided diagnosis. The model employs a multi-scale pyramid decomposition to factor images across scale and a network of tree-structured hidden variables to capture long-range spatial dependencies. This factoring makes the computation of the density functions local and tractable. The result is a hierarchical mixture of conditional probabilities, similar to a hidden Markov model on a tree. The model parameters are found with maximum likelihood estimation using the expectation-maximization algorithm. The utility of the model is demonstrated for three applications: (1) detection of mammographic masses for computer-aided diagnosis; (2) qualitative assessment of model structure through mammographic synthesis; and (3) compression of mammographic regions of interest.
Keywords :
Probabilistic network model , Multi-scale pyramid decomposition , Mammographic computer-aided diagnosis , Image synthesis , Imagecompression
Journal title :
Medical Image Analysis
Journal title :
Medical Image Analysis