Title :
Identifying multiple abdominal organs from CT image series using a multimodule contextual neural network and spatial fuzzy rules
Author :
Lee, Chien-Cheng ; Chung, Pau-Choo ; Tsai, Hong-Ming
Author_Institution :
Dept. of Electr. Eng., Nat. Cheng-Kung Univ., Tainan, Taiwan
Abstract :
Identifying abdominal organs is one of the essential steps in visualizing organ structure to assist in teaching, clinical training, diagnosis, and medical image retrieval. However, due to partial volume effects, gray-level similarities of adjacent organs, contrast media affect, and the relatively high variations of organ position and shape, automatically identifying abdominal organs has always been a high challenging task. To conquer these difficulties, this paper proposes combining a multimodule contextual neural network and spatial fuzzy rules and fuzzy descriptors for automatically identifying abdominal organs from a series of CT image slices. The multimodule contextual neural network segments each image slice through a divide-and-conquer concept, embedded within multiple neural network modules, where the results obtained from each module are forwarded to other modules for integration, in which contextual constraints are enforced. With this approach, the difficulties arising from partial volume effects, gray-level similarities of adjacent organs, and contrast media affect can be reduced to the extreme. To address the issue of high variations in organ position and shape, spatial fuzzy rules and fuzzy descriptors are adopted, along with a contour modification scheme implementing consecutive organ region overlap constraints. This approach has been tested on 40 sets of abdominal CT images, where each set consists of about 40 image slices. We have found that 99% of the organ regions in the test images are correctly identified as its belonging organs, implying the high promise of the proposed method.
Keywords :
biological organs; computerised tomography; divide and conquer methods; fuzzy logic; image segmentation; medical image processing; neural nets; CT image series; clinical training; contour modification scheme; divide-and-conquer; fuzzy descriptors; image segmentation; medical image retrieval; multimodule contextual neural network; multiple abdominal organ identification; spatial fuzzy rules; teaching; Abdomen; Biomedical imaging; Computed tomography; Education; Fuzzy neural networks; Medical diagnostic imaging; Neural networks; Shape; Testing; Visualization; Algorithms; Anatomy, Cross-Sectional; Digestive System; Fuzzy Logic; Humans; Image Interpretation, Computer-Assisted; Imaging, Three-Dimensional; Kidney; Liver; Neural Networks (Computer); Organ Specificity; Pattern Recognition, Automated; Radiography, Abdominal; Rectum; Spleen; Urinary Bladder; Urography;
Journal_Title :
Information Technology in Biomedicine, IEEE Transactions on
DOI :
10.1109/TITB.2003.813795