Medical image analysis by probabilistic modular neural networks

A probabilistic neural network based technique is presented for unsupervised quantification and segmentation of the brain tissues from magnetic resonance image. The problem is formulated as distribution learning and relaxation labeling that may be particularly useful in quantifying and segmenting abnormal brain tissues where the distribution of each tissue type heavily overlaps. The new technique utilizes suitable statistical models for both the pixel and context images. The quantification is achieved by model-histogram fitting of probabilistic self-organizing mixtures and the segmentation by global consistency labeling through a probabilistic constraint relaxation network. Experimental results show the efficient and robust performance of the new algorithm.

[1]  James C. Bezdek,et al.  A comparison of neural network and fuzzy clustering techniques in segmenting magnetic resonance images of the brain , 1992, IEEE Trans. Neural Networks.

[2]  Leonid I. Perlovsky,et al.  Maximum likelihood neural networks for sensor fusion and adaptive classification , 1991, Neural Networks.

[3]  S. Hyakin,et al.  Neural Networks: A Comprehensive Foundation , 1994 .

[4]  Chin-Tu Chen,et al.  Constraint satisfaction neural networks for image segmentation , 1992, Pattern Recognit..

[5]  Chin-Tu Chen,et al.  Constraint satisfaction neural networks for image recognition , 1993, Pattern Recognit..

[6]  Yianni Attikiouzel,et al.  A probabilistic neural network based image segmentation network for magnetic resonance images , 1992, [Proceedings 1992] IJCNN International Joint Conference on Neural Networks.

[7]  Xiao Liu,et al.  Conditional distribution learning with neural networks and its application to channel equalization , 1997, IEEE Trans. Signal Process..

[8]  David N. Kennedy,et al.  Segmentation of Magnetic Resonance Brain Images using Analog Constraint Satisfaction Neural Networks , 1993, DAGM-Symposium.

[9]  A P Dhawan,et al.  Segmentation of medical images through competitive learning , 1993, IEEE International Conference on Neural Networks.

[10]  Jzau-Sheng Lin,et al.  The application of competitive Hopfield neural network to medical image segmentation , 1996, IEEE Trans. Medical Imaging.

[11]  P. Santago,et al.  Quantification of MR brain images by mixture density and partial volume modeling , 1993, IEEE Trans. Medical Imaging.