DocumentCode :
1139551
Title :
Correction for crosstalk contaminations in dual radionuclide 99mTc and 123I images using artificial neural network
Author :
Zheng, Xiao Ming ; Zubal, I.G. ; Seibyl, J.P. ; King, M.A.
Author_Institution :
Sch. of Clinical Sci., Charles Sturt Univ., Wagga Wagga, NSW, Australia
Volume :
51
Issue :
5
fYear :
2004
Firstpage :
2649
Lastpage :
2653
Abstract :
Use of an artificial neural network (ANN) has been previously shown to be an effective tool in compensating scatter and crosstalk from the primary photons in simultaneous dual radionuclide imaging. Generally, a large number of input energy windows are required within the network structure while the commercial cameras have only 3-8 energy windows. It is difficult to use two input windows within the ANN structure for the crosstalk contamination corrections of 99mTc/123I images acquired using only two photopeak energy windows. In this paper, we designed an ANN network with 24 inputs, 32 nodes in the hidden layer and two nodes in the output layer, to correct for crosstalk contamination in 99mTc/123I images acquired using two photopeak windows. We trained the network using experimentally acquired 99mTc and 123I spectrum data using the RSD brain phantom. The neural network package Stuttgart Neural Network Simulator (SNNSv4.2), from the University of Stuttgart, was used for the neural network training and the crosstalk corrections. Two sets of image data were tested. The first was a human activation study and the other used a cylindrical striatal phantom. Our results show a great improvement on both the human activation and the cylindrical striatal phantom images. Further work is to test our new approach on more 99mTc/123I imaging data and apply it to other radionuclide combinations such as 201Tl/99mTc.
Keywords :
brain; crosstalk; iodine; learning (artificial intelligence); neural nets; neurophysiology; phantoms; radioisotope imaging; technetium; 201Tl/99Tcm radionuclide combinations; 99Tcm/123I images; ANN structure; I; RSD brain phantom; Tc; Tl; artificial neural network; commercial cameras; crosstalk contamination corrections; cylindrical striatal phantom; hidden layer; human activation study; input energy windows; neural network package Stuttgart Neural Network Simulator; neural network training; nodes; output layer; photopeak energy windows; primary photons; scatter; simultaneous dual radionuclide imaging; Artificial neural networks; Biological neural networks; Cameras; Contamination; Crosstalk; Electromagnetic scattering; Humans; Imaging phantoms; Particle scattering; Testing; ANN; Artificial neural network; crosstalk contamination; dual radionuclide imaging;
fLanguage :
English
Journal_Title :
Nuclear Science, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9499
Type :
jour
DOI :
10.1109/TNS.2004.834826
Filename :
1344389
Link To Document :
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