350 rub
Journal Biomedical Radioelectronics №3 for 2016 г.
Article in number:
The features in the form of differential sphygmograms at the functional deviation of the regulating systems of a human organism
Authors:
I.V. Naguslaeva Research Scientist, Laboratory of Wave Diagnostics of Living Systems, Institute of Physical Material Science of the Siberian Branch of the RAS E-mail: ira.lebedi@gmail.com V.V. Boronoyev Dr. Sc. (Eng.), Professor, Laboratory of Wave Diagnostics of Living Systems, Institute of Physical Material Science of the Siberian Branch of the RAS E-mail: vboronojev2001@mail.ru
Abstract:
The shapes of differential pulse signals in cases of functional disorders of a human organism have been studied. It is shown that the imbalance in the regulatory systems of the human organism influences the shape of the differential sphygmogram and the amplitudes of characteristic points. To investigate the diagnostic value of the parameters of the pulse signals derivative, 76 people of both sexes at the age from 18 to 35 were examined. The investigation included the diagnostics of the regulatory systems by Tibetan doctors and the registration of sphygmograms on the radial artery. After that, an analysis of characteristic points of differential curves of the sphygmograms was carried out. The features of the shapes of the differential sphygmograms of healthy people and people with functional disorders in the regulatory systems of their organisms have been found. In case of functional disorders in regulatory system I, significantly increases the values of the differential sphygmogram considerably increases, actually, in characteristics points d and g as compared to the norm. In case of functional disorders in regulatory system II, conversely, the value of the differential sphygmogram at characteristics points d and g significantly reduces as compared to the norm. In case at functional disorders of regulatory system III, the sphygmogram differential amplitude at point f increases as compared to the norm; the relative amplitudes at points u, g are close to the normal.
Pages: 45-52
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