Correction for Scatter and Cross-talk Contaminations in Dual Radionuclide 99m Tc and 123 I Images Using Artificial Neural Network

2003 
Artificial neural network (ANN) is shown to be an effective tool in separating scatter and cross-talk from the primary photons in simultaneous dual radionuclide imaging. Generally, a large number of input energy windows are required within the network structure whilst the commercial cameras have only 3-8 energy windows. It is difficult to use two input windows within the ANN structure for the contamination corrections of 99m Tc/ 123 I images acquired using only two photo-peak energy windows. In this work, we designed a new ANN network with 24 inputs, and 32 nodes in the hidden layer and two nodes in the output layer, to correct for scatter and cross-talk contaminations on 99m Tc/ 123 I images acquired using two photo-peak windows. We trained the network using experimentally acquired 99m Tc and 123 I spectrum data using 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 cross-talk corrections. Two sets of image data were tested: one was a human activation images and the other was 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 99m Tc/ 123 I imaging data and apply it to other radionuclide combinations such as 201 Tl / 99m Tc.
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