Development of multi-agent system of neural network diagnostics and remote monitoring of patient

Authors

DOI:

https://doi.org/10.15587/1729-4061.2016.75690

Keywords:

medical diagnostics, neural network classification, remote monitoring, organizational multi-agent system

Abstract

The system of medical diagnostics and remote monitoring based on the example of skin diseases was developed. The diagnostics is carried out by a group of multilayer perceptrons on the basis of processing the images of the explored object and medical registration data. The application of high-performance computing made it possible to carry out remote control of the state of the observed object by the change of its image in  real time.

For the implementation of the indicated system, a generalized model of the process of neural network diagnostics and monitoring was developed. The distinctive features of this model are the combination of machine training and agent technologies, which allows, firstly, using results of the remote monitoring for making a diagnosis; secondly, using simultaneously the totality of methods and means of collection, storage, processing, analysis and transmission of a video stream or a single image for solving the problems of decision making based on image processing.

The multi-agent organizational structure of the components of the proposed model was designed. The organizational structure is characterized by the formed aggregation levels, as well as by the possibility to dynamically distribute the roles among the agents. Such organization makes it possible to adapt for managing the following incidents: monitoring the state of health, making diagnosis and medical aid.

Author Biography

Natalia Axak, Kharkiv National University of Radio Electronics Nauki ave., 14, Kharkiv, Ukraine, 61166

PhD, Associate Professor

Department of Electronic Computers

References

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Published

2016-08-31

How to Cite

Axak, N. (2016). Development of multi-agent system of neural network diagnostics and remote monitoring of patient. Eastern-European Journal of Enterprise Technologies, 4(9(82), 4–11. https://doi.org/10.15587/1729-4061.2016.75690

Issue

Section

Information and controlling system