IN-VIVO LIVER DIFFERENTIATION BY ULTRASOUND USING AN ARTIFICIAL NEURAL-NETWORK

Citation
D. Zatari et al., IN-VIVO LIVER DIFFERENTIATION BY ULTRASOUND USING AN ARTIFICIAL NEURAL-NETWORK, The Journal of the Acoustical Society of America, 96(1), 1994, pp. 376-381
Citations number
20
Categorie Soggetti
Acoustics
ISSN journal
00014966
Volume
96
Issue
1
Year of publication
1994
Pages
376 - 381
Database
ISI
SICI code
0001-4966(1994)96:1<376:ILDBUU>2.0.ZU;2-R
Abstract
A pattern recognition algorithm and instrumentation for in vivo ultras ound human liver differentiation are presented. An available 16-MHz mi croprocessor-based data acquisition and analysis system with 6-bit res olution is used to capture, digitize, and store the backscattered ultr asound signal. The algorithm is based on a multilayer perceptron neura l network using the backpropagation training procedure. The network is implemented to differentiate between normal and abnormal liver. Data earlier obtained from 18 volunteers with normal liver history and from 12 volunteers with liver abnormalities are used to test the algorithm . The power spectra of the backscattered signal from depths of 5, 6.5, and 8 cm in the liver are calculated. The acoustic attenuation coeffi cient is calculated by the log spectral difference technique over the frequency range from 1.5 to 4.5 MHz. The change of speed of sound with frequency (dispersion) is estimated over the 3-MHz bandwidth. The att enuation and velocity dispersion are used as differentiation features. The results show that of the 22 tested cases, the system differentiat ed correctly 19 and 20 cases when using the attenuation and the veloci ty dispersion, respectively. The average magnitude of dispersion of li ver is estimated to be 1.67+/-0.1 m/s/MHz and about 2.3+/-0.18 m/s/MHz in the normal and abnormal cases, respectively. The overall performan ce of the system for liver differentiation is 91% for normal cases, an d 86% for abnormal cases. The data files are also differentiated using the nearest neighbor statistical classifier. The results show that of the 30 tested cases, 23 files are differentiated correctly using the attenuation coefficient.