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Cited 48 time in webofscience Cited 53 time in scopus
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Classification of focal liver lesions on ultrasound images by extracting hybrid textural features and using an artificial neural networkopen access

Authors
Hwang, Yoo NaLee, Ju HwanKim, Ga YoungJiang, Yuan YuanKim, Sung Min
Issue Date
2015
Publisher
IOS PRESS
Keywords
Ultrasound; focal liver lesions; classification; artificial neural network
Citation
BIO-MEDICAL MATERIALS AND ENGINEERING, v.26, pp S1599 - S1611
Indexed
SCIE
SCOPUS
Journal Title
BIO-MEDICAL MATERIALS AND ENGINEERING
Volume
26
Start Page
S1599
End Page
S1611
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/19173
DOI
10.3233/BME-151459
ISSN
0959-2989
1878-3619
Abstract
This paper focuses on the improvement of the diagnostic accuracy of focal liver lesions by quantifying the key features of cysts, hemangiomas, and malignant lesions on ultrasound images. The focal liver lesions were divided into 29 cysts, 37 hemangiomas, and 33 malignancies. A total of 42 hybrid textural features that composed of 5 first order statistics, 18 gray level co-occurrence matrices, 18 Law's, and echogenicity were extracted. A total of 29 key features that were selected by principal component analysis were used as a set of inputs for a feed-forward neural network. For each lesion, the performance of the diagnosis was evaluated by using the positive predictive value, negative predictive value, sensitivity, specificity, and accuracy. The results of the experiment indicate that the proposed method exhibits great performance, a high diagnosis accuracy of over 96% among all focal liver lesion groups (cyst vs. hemangioma, cyst vs. malignant, and hemangioma vs. malignant) on ultrasound images. The accuracy was slightly increased when echogenicity was included in the optimal feature set. These results indicate that it is possible for the proposed method to be applied clinically.
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