DocumentCode :
1154447
Title :
Computer-aided diagnostic scheme for distinction between benign and malignant nodules in thoracic low-dose CT by use of massive training artificial neural network
Author :
Suzuki, Kenji ; Li, Feng ; Sone, Shusuke ; Doi, Kunio
Author_Institution :
Dept. of Radiol., Univ. of Chicago, IL, USA
Volume :
24
Issue :
9
fYear :
2005
Firstpage :
1138
Lastpage :
1150
Abstract :
Low-dose helical computed tomography (LDCT) is being applied as a modality for lung cancer screening. It may be difficult, however, for radiologists to distinguish malignant from benign nodules in LDCT. Our purpose in this study was to develop a computer-aided diagnostic (CAD) scheme for distinction between benign and malignant nodules in LDCT scans by use of a massive training artificial neural network (MTANN). The MTANN is a trainable, highly nonlinear filter based on an artificial neural network. To distinguish malignant nodules from six different types of benign nodules, we developed multiple MTANNs (multi-MTANN) consisting of six expert MTANNs that are arranged in parallel. Each of the MTANNs was trained by use of input CT images and teaching images containing the estimate of the distribution for the "likelihood of being a malignant nodule", i.e., the teaching image for a malignant nodule contains a two-dimensional Gaussian distribution and that for a benign nodule contains zero. Each MTANN was trained independently with ten typical malignant nodules and ten benign nodules from each of the six types. The outputs of the six MTANNs were combined by use of an integration ANN such that the six types of benign nodules could be distinguished from malignant nodules. After training of the integration ANN, our scheme provided a value related to the "likelihood of malignancy" of a nodule, i.e., a higher value indicates a malignant nodule, and a lower value indicates a benign nodule. Our database consisted of 76 primary lung cancers in 73 patients and 413 benign nodules in 342 patients, which were obtained from a lung cancer screening program on 7847 screenees with LDCT for three years in Nagano, Japan. The performance of our scheme for distinction between benign and malignant nodules was evaluated by use of receiver operating characteristic (ROC) analysis. Our scheme achieved an Az (area under the ROC curve) value of 0.882 in a round-robin test. Our scheme correctly iden- - tified 100% (76/76) of malignant nodules as malignant, whereas 48% (200/413) of benign nodules were identified correctly as benign. Therefore, our scheme may be useful in assisting radiologists in the diagnosis of lung nodules in LDCT.
Keywords :
Gaussian distribution; artificial intelligence; cancer; computerised tomography; dosimetry; lung; medical computing; neural nets; patient diagnosis; artificial neural network; benign nodules; computer-aided diagnostic scheme; helical computed tomography; likelihood pf malignancy; low-dose CT; low-dose computed tomography; lung cancer screening; lung nodules; malignant modules; massive training neural network; nonlinear filter; receiver operating characteristic analysis; round-robin test; thoracic CT; two-dimensional Gaussian distribution; Artificial neural networks; Cancer; Computed tomography; Computer networks; Databases; Education; Gaussian distribution; Lungs; Nonlinear filters; Performance analysis; Artificial neural network; computer-aided diagnosis (CAD); likelihood of malignancy; low-dose CT; lung nodule; Algorithms; Artificial Intelligence; Coin Lesion, Pulmonary; Humans; Lung Neoplasms; Neural Networks (Computer); Pattern Recognition, Automated; Radiation Dosage; Radiographic Image Enhancement; Radiographic Image Interpretation, Computer-Assisted; Radiography, Thoracic; Reproducibility of Results; Retrospective Studies; Sensitivity and Specificity; Tomography, Spiral Computed;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2005.852048
Filename :
1501920
Link To Document :
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