Bayesian Classifier for Medical Data from Doppler Unit

Authors

  • J. Málek

DOI:

https://doi.org/10.14311/846

Keywords:

medical data recognition, hand-held ultrasonic Doppler unit, peripheral arterial disease

Abstract

Nowadays, hand-held ultrasonic Doppler units (probes) are often used for noninvasive screening of atherosclerosis in the arteries of the lower limbs. The mean velocity of blood flow in time and blood pressures are measured on several positions on each lower limb. By listening to the acoustic signal generated by the device or by reading the signal displayed on screen, a specialist can detect peripheral arterial disease (PAD).This project aims to design software that will be able to analyze data from such a device and classify it into several diagnostic classes. At the Department of Functional Diagnostics at the Regional Hospital in Liberec a database of several hundreds signals was collected. In cooperation with the specialist, the signals were manually classified into four classes. For each class, selected signal features were extracted and then used for training a Bayesian classifier. Another set of signals was used for evaluating and optimizing the parameters of the classifier. Slightly above 84 % of successfully recognized diagnostic states, was recently achieved on the test data. 

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Author Biography

J. Málek

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Published

2006-01-04

How to Cite

Málek, J. (2006). Bayesian Classifier for Medical Data from Doppler Unit. Acta Polytechnica, 46(4). https://doi.org/10.14311/846

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Section

Articles