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Neural Network Technologies in Medical Diagnosis (Review). P. 284–294

Версия для печати

Section: Medical and biological sciences

UDC

616+004.67

Authors

Mariya V. Vyucheyskaya*, Irina N. Kraynova*, Anatoliy V. Gribanov*
*Northern (Arctic) Federal University named after M.V. Lomonosov (Arkhangelsk, Russian Federation)
Corresponding author: Mariya Vyucheyskaya, address: proezd Badigina 3, Arkhangelsk, 163045, Russian Federation; e-mail: m.viuchejskaya@narfu.ru

Abstract

This review analysed the use of neural network technologies in diagnosis of various diseases within cardiology, oncology, pulmonology, gastroenterology, neurology, psychology, etc. The aim was to identify the areas of medicine applying neural network technologies in the most effective way. We considered the structures, learning algorithms and the accuracy of artificial neural networks. The analysis of literature showed that the best model of artificial neural networks for medical diagnosis and prediction is the multilayer perceptron, which is a feedforward network wherein each neuron in one layer has directed connections to the neurons of the subsequent layer, without forming any backward or recurrent connections. We also revealed that the best learning algorithms for a multilayer perceptron are the algorithm of backward propagation of errors and the genetic algorithm. The high accuracy of neural network diagnostic models, described in literature, implies their considerable potential for diagnosis and prediction of various diseases in different areas of medicine. Introducing neural network diagnostic models into clinical practice can provide substantial assistance in medical decision-making, improve the quality and accuracy of diagnosis and reduce the time for patient examination. It is also noteworthy that artificial neural networks can be used in medicine as mathematical models. By changing the input parameters of a neural network model and observing the behaviour of the output signals, one can explore the relevant area, identify and study the medical patterns that the artificial neural network has found in the course of training. The obtained data will contribute to theoretical knowledge in various spheres of medicine.

Keywords

artificial neural networks, medical diagnosis, mathematical modelling
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