Computer aided diagnosis system for lung cancer based on helical CT images

In this paper we describe a computer assisted automatic diagnosis system for lung cancer that detects tumor candidates at an early stage from helical computerised tomographic (CT) images. This automation of the process reduces the time complexity and increases the diagnosis confidence. Our algorithm consists of an analysis part and a diagnosis part. In the analysis part, we extract the lung and pulmonary blood vessel regions and analyze the features of these regions using image processing techniques. In the diagnosis part, we define diagnosis rules based on these features, and detect tumor candidates using these rules. We have applied our algorithm to 450 patient's data for mass screening. The results show that our algorithm detected lung cancer candidates successfully.

[1]  T Iinuma,et al.  [Preliminary specification of X-ray CT for lung cancer screening (LSCT) and its evaluation on risk-cost-effectiveness]. , 1992, Nihon Igaku Hoshasen Gakkai zasshi. Nippon acta radiologica.

[2]  Kensaku Mori,et al.  Automated extraction of lung cancer lesions from multislice chest CT images by using three-dimensional image processing , 1994, Systems and Computers in Japan.

[3]  Noboru Niki,et al.  Computer Assisted Lung Cancer Diagnosis Based on Helical Images , 1995, ICSC.

[4]  Noboru Niki,et al.  Computer assisted diagnosis of lung cancer using helical X-ray CT , 1994, Proceedings of IEEE Workshop on Biomedical Image Analysis.

[5]  Ramesh C. Jain,et al.  Invariant surface characteristics for 3D object recognition in range images , 1985, Comput. Vis. Graph. Image Process..

[6]  Noboru Niki,et al.  Computer Aided Screening System for Lung Cancer Based on Helical CT Images , 1996, VBC.

[7]  Alexis Gourdon,et al.  Computing the Differential Characteristics of Isointensity Surfaces , 1995, Comput. Vis. Image Underst..

[8]  Ramesh Jain,et al.  Symbolic Surface Descriptors For 3-Dimensional Object Recognition , 1987, Photonics West - Lasers and Applications in Science and Engineering.

[9]  M. Giger,et al.  Computerized Detection of Pulmonary Nodules in Computed Tomography Images , 1994, Investigative radiology.

[10]  Mohan M. Trivedi,et al.  Low-Level Segmentation of Aerial Images with Fuzzy Clustering , 1986, IEEE Transactions on Systems, Man, and Cybernetics.