2012
DOI: 10.1007/s10439-012-0544-1
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Heart Rate Variability Dynamics During Low-Dose Propofol and Dexmedetomidine Anesthesia

Abstract: Heart rate variability (HRV) has been observed to decrease during anesthesia, but changes in HRV during loss and recovery of consciousness have not been studied in detail. In this study, HRV dynamics during low-dose propofol (N = 10) and dexmedetomidine (N = 9) anesthesia were estimated by using time-varying methods. Standard time-domain and frequency-domain measures of HRV were included in the analysis. Frequency-domain parameters like low frequency (LF) and high frequency (HF) component powers were extracted… Show more

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Cited by 24 publications
(15 citation statements)
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“…Within a multimodal framework including EEG, cardiovascular and respiratory assessment, we have devised a point process framework able to successfully characterize the variations in heartbeat dynamics when applied to PROP and DMED administration protocols. Previous results from our groups and other authors have stressed the importance of dynamic autonomic monitoring during anesthesia, and particularly during PROP and DMED [13,15,19,20,34,44,[46][47][48]51,53,54,72,73,75]. In this presentation, we provide further evidence that our refined methods for analyzing the heartbeat dynamics during administration of specific anesthetic drugs are able to overcome nonstationary limitations, thus providing new real-time monitoring approaches to patients receiving anesthesia.…”
Section: Discussionsupporting
confidence: 49%
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“…Within a multimodal framework including EEG, cardiovascular and respiratory assessment, we have devised a point process framework able to successfully characterize the variations in heartbeat dynamics when applied to PROP and DMED administration protocols. Previous results from our groups and other authors have stressed the importance of dynamic autonomic monitoring during anesthesia, and particularly during PROP and DMED [13,15,19,20,34,44,[46][47][48]51,53,54,72,73,75]. In this presentation, we provide further evidence that our refined methods for analyzing the heartbeat dynamics during administration of specific anesthetic drugs are able to overcome nonstationary limitations, thus providing new real-time monitoring approaches to patients receiving anesthesia.…”
Section: Discussionsupporting
confidence: 49%
“…A recent review article by Mazzeo and colleagues [34] summarizes some of the most relevant findings and limits of HRV as a diagnostic and prognostic tool in anesthesia and concludes that 'investigation of HRV as a method of monitoring the depth of anesthesia, assessing the response to painful stimuli, did not yield uniform results and needs more extensive investigations.' Several other important studies have considered HRV to quantify anesthesia [35][36][37][38][39][40][41][42][43][44][45][46][47][48][49][50][51], demonstrating the usefulness of HRV measures. In particular, time-varying identification methods have provided successful characterization of PROP and DMED effects on the ANS [19,20,24,28,44,51].…”
mentioning
confidence: 99%
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“…Sevoflurane was studied similarly but subjects in this third group did not participate in the positron emission tomography study. Other results of the project have been reported previously [25][26][27][28]. The study protocol was approved by the Ethical Committee of the Hospital District of Southwest Finland (Turku, Finland) and the National Agency for Medicines.…”
Section: Methodsmentioning
confidence: 99%
“…While the filter algorithm is applicable for real-time processing, smoother algorithm is preferable when all the measurements are available for off-line analysis [32]. Detailed description of the exact algorithm applied here can be found in Georgiadis et al [33], as well as in Tarvainen et al [28], where the selections affecting the adaptation of the algorithm in a changing environment are presented in detail. The adaptation of the derived algorithm is adjusted with one parameter, namely an update coefficient (UC) [28,33].…”
Section: Spectral Estimationmentioning
confidence: 99%