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Поље DC-а ВредностЈезик
dc.contributor.advisorBajić Dragana-
dc.contributor.authorLončar-Turukalo Tatjana-
dc.contributor.otherTrpovski Željen-
dc.contributor.otherJapundžić Žigon Nina-
dc.contributor.otherDelić Vlado-
dc.contributor.otherCrnojević Vladimir-
dc.contributor.otherMitsis Georgius-
dc.contributor.otherBajić Dragana-
dc.date.accessioned2020-12-14T15:10:13Z-
dc.date.available2020-12-14T15:10:13Z-
dc.date.issued2011-11-25-
dc.identifier.urihttps://open.uns.ac.rs/handle/123456789/28313-
dc.description.abstract<p>The short-term cardiovascular oscillations are primarily governed by the baroreceptor<br />reflex (BRR) feedback loop and respiration. Their analysis presents important issue<br />for assessment of cardiovascular health, as baroreflex impairment is associated with<br />major cardiovascular disease. Technological advances made noninvasive real-time<br />measurements of cardiovascular variabilities (CVV) possible and inexpensive. The<br />commercial devices for electrocardiogram (ECG) and blood pressure (BP) acquisition<br />usually have integrated modules for consequent signal analysis, thus providing the<br />basic indexes related to CVVs.<br />Besides the physiological role of BRR in cardiovascular homeostasis,there is a<br />growing evidence that changes in baroreflex function reflect the changes in cardio-<br />vascular regulation and underlying regulatory mechanisms governed by autonomic<br />nervous system (ANS). Therefore, measuring baroreflex function provides insight<br />into ANS functioning, which is otherwise unavailable in nonivasive manner. Actu-<br />ally, the major breakthrough in the investigation of CVVs is primarily driven by this<br />fact.<br />Despite the abundance of methods reported in the literature, there is still no<br />gold standard for assessment of dynamic baroreflex gain (BRS - baroreflex sensitiv-<br />ity). The most widely used method for BRS assessment integrated in most of the<br />commercial platforms is the sequence technique, which offers BRS estimate implying<br />linear relationship between systolic (S)BP and the RR intervals, the intervals between<br />two consecutive heart beats. There is a number of implementations of this method,<br />adjusted to specific species requirements, thus further broadening methodological<br />diversity.<br />The sequence method is based on the computerized scanning of beat-to-beat series<br />of SBP and RR interval values in search of spontaneous SBP monotonic pressure<br />changes (SBP ramps) over at least three or more consecutive heart beats followed<br />iiiby unidirectional RR monotonic changes (RR ramp) thus forming the barorelfex<br />sequence. Monotonic pressure changes are thus buffered via BRR feedback loop<br />resulting in the adequate reaction on heart rate to oppose the unwanted monotonic<br />SBP change.<br />Besides the BRS estimate, the sequence method yields a number of parameters<br />characterizing SBP and RR series and effectiveness of baroreflex. In this thesis the<br />sequence coverage area (SCA)[ms&middot;mmHg] is introduced as the new parameter which<br />enables quantitative assessment of the BRR operating range. SCAadditionally im-<br />proved the visual representation of the re-setting phenomena. Further refinement<br />of SCA with more precise contour plots offers improvement in the operating area<br />assessment at the same time reflecting the density of the sequence points. The thor-<br />ough analysis of the BRS changes during and after exposure to acute and chronic<br />stress is provided with novel parameters incorporated into analysis to contribute to<br />the elucidating the effects of stress on cardiovascular regulation.<br />Most of commercially available medical devices for monitoring cardiovascular<br />function use the sequence technique mainly for its simplicity: ease of implemen-<br />tation and interpretation. Yet, the series of requiring engineering tasks precedes the<br />proper implementation of this seemingly easy procedure. The precondition for valid<br />BRS assessment is the correct delineation of the ECG and BP waveforms to extract<br />the SBP and RR interval series. The problems encountered mainly stem from the<br />measurement artifacts, inter-subject waveform variabilities andcharacteristic changes<br />caused by pathology which are very often indistinguishable from noise. The lack of<br />delineation performance has to be compensated by the preprocessing of the SBP and<br />RR interval series to ensure their consistent phase relationship. In this thesis the se-<br />ries of encountered problems and solutions are presented, to draw attention to these<br />important methodological issues.<br />Another important issue regarding sequence technique is the non-selective in-<br />clusion of all the sequences meeting the imposed criteria in BRS estimation. The<br />question is whether these sequences reflect true physiological RRand SBP (barore-<br />flex or non barorefex) interactions or accidental, random occurrences. To overcome<br />this problem more rigid criteria for sequence validation can be imposed, but this will<br />further deepen the problem of absence of baroreflex sequences in cases of autonomic<br />dysfunction, which would render the sequence method unusable.<br />To test the hypothesis whether the found baroreflex sequencespresent physio-<br />logical responses the method of surrogate data is used. The method of surrogate<br />data stems from the family of powerful resampling procedures andso far has been<br />successfully used to explore the underlying patterns within data. Different types of<br />surrogate data can be used to investigate the type of SBP-RR interactions, but the<br />thesis focuses on isodistributional (ID) surrogate data which arethe random shuffleof the original series preserving the mean, variance and histogramof original data,<br />thus representing the constrained realizations.<br />The number of baroreflex sequences in original and ID surrogate data are com-<br />pared to rule out the possibility of their random origination. For these purposes for<br />each original series SBP-RR pair a number of surrogate data pairs has to be gener-<br />ated. The number of produced surrogates determines the powerof the test, thus it<br />is dependent on the set significance level. The time averages of BRR parameters are<br />calculated for the ensemble of surrogate realizations to be compared to the values<br />calculated from original series.<br />Even though the increased computational power fosters the bootstrap like proce-<br />dures, in some cases it is possible to yield analytic solution which renderthe surrogate<br />generation and analysis excessive. Having in mind the frequent usage of the sequence<br />technique and the following exhausting surrogate testing, the main contribution of<br />this thesis is the model developed to derive the formulae for the temporal sequence<br />parameters (distribution, length, and number of sequences) in IDsurrogate data.<br />The obtained expressions present the ensemble averages of these sequence method<br />parameters i.e. their expected numbers as functions of the minimalsequence length,<br />the amplitude threshold and the length Nof the observed SBP-RR time series. The<br />model is in a form of a discrete, homogeneous, and ergodic Markov chain describing<br />successive increases and decreases of SBP-RR amplitudes in ID surrogate data.<br />The derived formulae eliminated the need for surrogate data generation and anal-<br />ysis, presenting fast and easy plug-in tool for measuring the degree of randomness in<br />sequences estimated from the original SBP-RR time series.</p>en
dc.format.mimetypeapplication/pdf-
dc.language.isoen-
dc.publisherUniverzitet u Novom Sadu, Fakultet tehničkih nauka u Novom Sadusr
dc.publisherUniversity of Novi Sad, Faculty of Technical Sciences at Novi Saden
dc.sourceCRIS UNS-
dc.source.urihttp://cris.uns.ac.rs-
dc.subjectMarkov models, surrogate data, sequence methoden
dc.subjectMarkovljevi modeli, surogat podaci, metod sekvencisr
dc.titleModeling the Temporal Sequence Parametersin surrogate data of cardiovascular oscillationsen
dc.titleModelovanje parametara barorefleksnih sekvenciu surogat podacima kardiovaskularnih oscilacijasr
dc.typeThesisen
dc.identifier.urlhttps://www.cris.uns.ac.rs/record.jsf?recordId=83268&source=BEOPEN&language=enen
dc.identifier.externalcrisreference(BISIS)83268-
dc.source.institutionFakultet tehničkih nauka u Novom Sadusr
item.fulltextNo Fulltext-
item.grantfulltextnone-
crisitem.author.deptDepartman za energetiku, elektroniku i telekomunikacije-
crisitem.author.parentorgFakultet tehničkih nauka-
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