Title :
Using a spatiotemporal neural network on dynamic gadolinium-enhanced MR images for diagnosing recurrent nasal papilloma
Author :
Chang, Chuan-Yu ; Chung, Pau-Choo ; Lai, Ping-Hong
Author_Institution :
Dept. of Electr. Eng., Nat. Cheng Kung Univ., Tainan, Taiwan
fDate :
2/1/2002 12:00:00 AM
Abstract :
Gadolinium (Gd)-enhanced magnetic resonance imaging (MRI) is widely used in the detection of recurrent nasal tumors. We have developed a spatiotemporal neural network (STNN) for identifying the tumor and fibrosis in the nasal regions. A more accurate signal-time curve called relative intensity change (RIC) for dynamic MR images is proposed as representation of gadolinium-enhanced MRI temporal information. The RIC curves of different diseases are embedded into the STNN and stored in the synaptic weights of the input layer through learning. In addition, to enhance the capability of the STNN in discriminating temporal information between tumors and fibrosis, the synaptic weights of its tap delays were obtained through a creative learning scheme, which reinforces the most distinguishable features, between tumor and fibrosis while inhibiting the indistinguishable features. The outputs of proposed STNN were indexed on a colormap in which red represents tumor and green represents fibrosis. The color-coded tumor/fibrosis areas are fused to the original MR image to facilitate visual interpretation. The experimental results show that the proposed method is able to detect abnormal tissues precisely
Keywords :
biomedical MRI; medical image processing; neural nets; tumours; Gd; Gd-enhanced magnetic resonance imaging temporal information; abnormal tissues; color-coded tumor/fibrosis areas; colormap; creative learning scheme; diseases; distinguishable features; dynamic Gd enhanced magnetic resonance images; green; indistinguishable features; input layer; nasal regions; recurrent nasal papilloma; recurrent nasal tumors; red; relative intensity change; relative intensity change curves; signal-time curve; spatiotemporal neural network; synaptic weights; tap delays; visual interpretation; Biological materials; Delay; Diseases; Lesions; Magnetic materials; Magnetic resonance imaging; Mathematical model; Neoplasms; Neural networks; Spatiotemporal phenomena;
Journal_Title :
Nuclear Science, IEEE Transactions on
DOI :
10.1109/TNS.2002.998756