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288 pp. per issue, 6 x 9,
illustrated
Founded: 1989
ISSN 0899-7667
E-ISSN 1530-888X
2008 ISI Impact Factor: 2.378

Neural Computation

May 1993, Vol. 5, No. 3, Pages 492-502
Posted Online April 4, 2008.
(doi:10.1162/neco.1993.5.3.492)
© 1993 Massachusetts Institute of Technology
A Neural Network That Learns to Interpret Myocardial Planar Thallium Scintigrams

Charles Rosenberg

Geriatrics, Research, Education and Clinical Center, VA Medical Center, Salt Lake City, UT 84148 USA

Jacob Erel

Department of Cardiology, Sapir Medical Center–Meir General Hospital, Kfar Saba, Israel

Henri Atlan

Department of Biophysics and Nuclear Medicine, Hadassah Medical Center, Jerusalem, Israel

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The planar thallium-201 (201Tl) myocardial perfusion scintigram is a widely used diagnostic technique for detecting and estimating the risk of coronary artery disease. Interpretation is currently based on visual scoring of myocardial defects combined with image quantitation and is known to have a significant subjective component. Neural networks learned to interpret thallium scintigrams as determined by both individual and multiple (consensus) expert ratings. Four different types of networks were explored: single-layer, two-layer backpropagation (BP), BP with weight smoothing, and two-layer radial basis function (RBF). The RBF network was found to yield the best performance (94.8% generalization by region) and compares favorably with human experts. We conclude that this network is a valuable clinical tool that can be used as a reference "diagnostic support system" to help reduce inter- and intraobserver variability. This system is now being further developed to include other variables that are expected to improve the final clinical diagnosis.

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