Paper
2 March 1994 Diagnosis of hepatitis by use of neural network learning
Hong-Qing Fan, Qy-zi Zhang
Author Affiliations +
Abstract
An attempt is made to find a new way for better diagnosis of hepatisis through application of artificial neural network theory. Learning from a given sample set, the neural network is used to establish a nonlinear mapping between various factors, such as symptoms, signs, and laboratorial experiments, and diagnosis of hepatisis. It is proved that the used network and values of weight after learning are available to the identification of equivalent class of a new pattern of hepatisis. In this paper, the knowledge learning and learning algorithms used in diagnosis are mainly discussed, an optimal generalization algorithm based on the error decrease algorithm and used to train multilayer feedforward is presented; meanwhile, the application results and their effectiveness are introduced.
© (1994) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Hong-Qing Fan and Qy-zi Zhang "Diagnosis of hepatitis by use of neural network learning", Proc. SPIE 2243, Applications of Artificial Neural Networks V, (2 March 1994); https://doi.org/10.1117/12.170002
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KEYWORDS
Neural networks

Neurons

Detection and tracking algorithms

Error analysis

Rule based systems

Artificial neural networks

Computing systems

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