Title :
A novel large-memory neural network as an aid in medical diagnosis applications
Author :
Kordylewski, Hubert ; Graupe, Daniel ; Liu, Kai
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Illinois Univ., Chicago, IL, USA
Abstract :
Describes the application of a LAMSTAR (LArge Memory STorage And Retrieval) neural network to medical diagnosis and medical information retrieval problems. The network is based on M.L. Minsky´s (1980) knowledge lines (k-lines) theory of memory storage and retrieval in the central nervous system. It employs arrays of self-organized map modules, such that the k-lines are implemented via link weights (address correlation) that are updated by learning. The network also employs features of forgetting and of interpolation and extrapolation, and is thus able to handle incomplete data sets. It can deal equally well with exact and fuzzy information, thus making it specifically applicable to medical diagnosis where the diagnosis is based on exact data, fuzzy patient interview information, patient histories, observed images and test records. Furthermore, the network can be operated in a closed loop with search engines to intelligently use data from the Internet in a higher learning hierarchy. All of the above features are shown to make the LAMSTAR network suitable for medical diagnosis problems that concern large data sets of many categories that are often incomplete and fuzzy. Applications of the network to three specific medical diagnosis problems are described: two from nephrology and one related to an emergency-room drug identification problem. It is shown that the LAMSTAR network is hundreds, and even thousands, times faster in its training than backpropagation-based networks when used for the same problem with exactly the same information.
Keywords :
Internet; content-addressable storage; extrapolation; information retrieval; interpolation; learning (artificial intelligence); medical diagnostic computing; neurophysiology; search engines; self-organising feature maps; Internet; LAMSTAR neural net; adaptive system; address correlation; central nervous system; closed-loop operation; emergency-room drug identification; exact information; extrapolation; forgetting; fuzzy information; incomplete data sets; intelligent data use; interpolation; k-lines; knowledge lines; large data sets; large memory storage and retrieval; large-memory neural network; learning hierarchy; link weight updating; medical diagnosis applications; medical information retrieval; nephrology; observed images; patient histories; patient interview information; pattern recognition; search engines; self-organized map module arrays; self-organizing feature map; test records; training speed; Biological neural networks; Biomedical imaging; Central nervous system; Extrapolation; History; Information retrieval; Interpolation; Medical diagnosis; Medical diagnostic imaging; Neural networks; Computational Biology; Diagnosis, Computer-Assisted; Humans; Kidney Neoplasms; Neural Networks (Computer); Substance-Related Disorders;
Journal_Title :
Information Technology in Biomedicine, IEEE Transactions on
DOI :
10.1109/4233.945291