Application of Neural Networks for the Classification of Diffuse Liver Disease by Quantitative Echography

1993 ◽  
Vol 15 (3) ◽  
pp. 205-217 ◽  
Author(s):  
M.S. klein Gebbinck ◽  
J.T.M. Verhoeven ◽  
J.M. Thijssen ◽  
T.E. Schouten

Three different methods were investigated to determine their ability to detect and classify various categories of diffuse liver disease. A statistical method, i.e., discriminant analysis, a supervised neural network called backpropagation and a nonsupervised, self-organizing feature map were examined. The investigation was performed on the basis of a previously selected set of acoustic and image texture parameters. The limited number of patients was successfully extended by generating additional but independent data with identical statistical properties. The generated data were used for training and test sets. The final test was made with the original patient data as a validation set. It is concluded that neural networks are an attractive alternative to traditional statistical techniques when dealing with medical detection and classification tasks. Moreover, the use of generated data for training the networks and the discriminant classifier has been shown to be justified and profitable.

1981 ◽  
Vol 27 (8) ◽  
pp. 1392-1396 ◽  
Author(s):  
H F Haugen ◽  
S Ritland ◽  
J P Blomhoff ◽  
H E Solberg ◽  
S Skrede

Abstract Nucleotide pyrophosphatase and phosphodiesterase I activities were determined in sera from 126 patients with different types of liver disease and in two additional groups of patients with intra- and extrahepatic cholestasis, respectively. Both activities probably represent the same enzyme, and were positively correlated with alkaline phosphatase, lipoprotein X, and several other tests reflecting cholestasis. Also, we found by discriminant analysis that tests for cholestasis frequently replaced the results of both enzymes. In some groups of liver disease, nucleotide pyrophosphatase and phosphodiesterase I were correlated with the concentrations of prealbumin and albumin. The sensitivity of phosphodiesterase I (and nucleotide phosphatase) is rather low when compared with alkaline phosphatase, and we do not recommend it for use in the clinical routine. Nevertheless, it appears to be of potential value for studies on classification of liver diseases, adding information to a panel of 20 commonly used "liver tests" by appearing in some of the best four test-sets for distinguishing between groups of liver disease by discriminant analysis.


1997 ◽  
Author(s):  
Dong Hyuk Lee ◽  
JongHyo Kim ◽  
Hee C. Kim ◽  
Yong W. Lee ◽  
Byong Goo Min

2020 ◽  
Vol 10 (1) ◽  
Author(s):  
Shrouq H. Aleithan ◽  
Doaa Mahmoud-Ghoneim

AbstractThe need for a fast and robust method to characterize nanostructure thickness is growing due to the tremendous number of experiments and their associated applications. By automatically analyzing the microscopic image texture of MoS2 and WS2, it was possible to distinguish monolayer from few-layer nanostructures with high accuracy for both materials. Three methods of texture analysis (TA) were used: grey level histogram (GLH), grey levels co-occurrence matrix (GLCOM), and run-length matrix (RLM), which correspond to first, second, and higher-order statistical methods, respectively. The best discriminating features were automatically selected using the Fisher coefficient, for each method, and used as a base for classification. Two classifiers were used: artificial neural networks (ANN), and linear discriminant analysis (LDA). RLM with ANN was found to give high classification accuracy, which was 89% and 95% for MoS2 and WS2, respectively. The result of this work suggests that RLM, as a higher-order TA method, associated with an ANN classifier has a better ability to quantify and characterize the microscopic structure of nanolayers, and, therefore, categorize thickness to the proper class.


1989 ◽  
Vol 24 (3) ◽  
pp. 196-203 ◽  
Author(s):  
BRIAN S. GARRA ◽  
MICHAEL F. INSANA ◽  
THOMAS H. SHAWKER ◽  
ROBERT F. WAGNER ◽  
MARY BRADFORD ◽  
...  

2012 ◽  
Vol 26 (1) ◽  
pp. 81-90 ◽  
Author(s):  
P. Zapotoczny

Application of image texture analysis for varietal classification of barleyThis paper presents the results of a study into the use of the texture parameters of barley kernel images in varietal classification. A total of more than 270 textures have been calculated from the surface of single kernels and bulk grain. The measurements were performed in four channels from a 24 bit image. The results were processed statistically by variable reduction and general discriminant analysis. Classification accuracy was more than 99%.


1981 ◽  
Vol 3 (2) ◽  
pp. 164-172
Author(s):  
R. A. Lerski ◽  
M. J. Smith ◽  
P. Morley ◽  
E. Barnett ◽  
P. R. Mills ◽  
...  

In previous work by our group, it has been shown that the use of texture analysis on digitally recorded radio-frequency ultrasonic signals can provide useful diagnostic information in diffuse liver disease. A rigorous multivariate analysis and the addition of new texture parameters has confirmed the efficacy of the technique. Discriminant functions have been produced to provide excellent accuracies in the detection of diffuse liver disease.


2020 ◽  
Vol 35 (33) ◽  
pp. 2043002 ◽  
Author(s):  
Fedor Sergeev ◽  
Elena Bratkovskaya ◽  
Ivan Kisel ◽  
Iouri Vassiliev

Classification of processes in heavy-ion collisions in the CBM experiment (FAIR/GSI, Darmstadt) using neural networks is investigated. Fully-connected neural networks and a deep convolutional neural network are built to identify quark–gluon plasma simulated within the Parton-Hadron-String Dynamics (PHSD) microscopic off-shell transport approach for central Au+Au collision at a fixed energy. The convolutional neural network outperforms fully-connected networks and reaches 93% accuracy on the validation set, while the remaining only 7% of collisions are incorrectly classified.


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