Seasonal Biorhythms as a Feature of Human Genetic Systems
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چکیده
Genetic systems are of great prevalence in nature. They are characterized by interrelation between three sequential functional statuses of complex biological systems: Past, Present and Future; and differ from occasional processes by an After-effect. Traditionally the models of genetic systems are used in Biology for description of Genetic Heredity and Genetic Variability. At the present work the models of genetic systems are used to describe human phenotypic variability. We also present a comparative analysis of seasonal biorhythms in two groups under study: Ural and Northern, residents of Midlatitudes and immigrants from Midlatitudes, Polar region migrants correspondingly. Discrete statuses of biorhythms pattern, interrelated within the flow of nonrandom sequential events are described. We show, that the biorhythms modification, formed in past, is a stable phenomenon, it can not be cleared by corrective impact in present and determines the stimulation response of human organism in future. The interpretation of the results is made in the models of genetic processes: the complex of seasonal biorhythms is defined as a self-optimizing system having an after-effect; and its discrete statuses are described as a dynamic sequence of events in that system.
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تاریخ انتشار 2010