» Articles » PMID: 27956675

Linear and Non-linear Heart Rate Metrics for the Assessment of Anaesthetists' Workload During General Anaesthesia

Overview
Journal Br J Anaesth
Publisher Elsevier
Specialty Anesthesiology
Date 2016 Dec 14
PMID 27956675
Citations 7
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Excessive workload may impact the anaesthetists' ability to adequately process information during clinical practice in the operation room and may result in inaccurate situational awareness and performance. This exploratory study investigated heart rate (HR), linear and non-linear heart rate variability (HRV) metrics and subjective ratings scales for the assessment of workload associated with the anaesthesia stages induction, maintenance and emergence.

Methods: HR and HRV metrics were calculated based on five min segments from each of the three anaesthesia stages. The area under the receiver operating characteristics curve (AUC) of the investigated metrics was calculated to assess their ability to discriminate between the stages of anaesthesia. Additionally, a multiparametric approach based on logistic regression models was performed to further evaluate whether linear or non-linear heart rate metrics are suitable for the assessment of workload.

Results: Mean HR and several linear and non-linear HRV metrics including subjective workload ratings differed significantly between stages of anaesthesia. Permutation Entropy (PeEn, AUC=0.828) and mean HR (AUC=0.826) discriminated best between the anaesthesia stages induction and maintenance. In the multiparametric approach using logistic regression models, the model based on non-linear heart rate metrics provided a higher AUC compared with the models based on linear metrics.

Conclusions: In this exploratory study based on short ECG segment analysis, PeEn and HR seem to be promising to separate workload levels between different stages of anaesthesia. The multiparametric analysis of the regression models favours non-linear heart rate metrics over linear metrics.

Citing Articles

Differences in beginner and expert neurointerventionalists" heart rate variability during simulated neuroangiographies.

Hinzmann D, Singer M, Schmelter V, Kreiser K, Gehling K, Strober L Interv Neuroradiol. 2022; 30(2):195-201.

PMID: 36124385 PMC: 11095349. DOI: 10.1177/15910199221128439.


Reduction of Cardiac Autonomic Modulation and Increased Sympathetic Activity by Heart Rate Variability in Patients With Long COVID.

Marques K, Silva C, Trindade S, Santos M, Rocha R, da Costa Vasconcelos P Front Cardiovasc Med. 2022; 9:862001.

PMID: 35571200 PMC: 9098798. DOI: 10.3389/fcvm.2022.862001.


Anaesthesia workload measurement devices: qualitative systematic review.

Almghairbi D, Marufu T, Moppett I BMJ Simul Technol Enhanc Learn. 2022; 4(3):112-116.

PMID: 35520470 PMC: 8990182. DOI: 10.1136/bmjstel-2017-000263.


Application of Permutation Entropy and Permutation Min-Entropy in Multiple Emotional States Analysis of RRI Time Series.

Xia Y, Yang L, Zunino L, Shi H, Zhuang Y, Liu C Entropy (Basel). 2020; 20(3).

PMID: 33265239 PMC: 7512665. DOI: 10.3390/e20030148.


Simulation Training in Neuroangiography-Validation and Effectiveness.

Kreiser K, Strober L, Gehling K, Schneider F, Kohlbecher S, Schulz C Clin Neuroradiol. 2020; 31(2):465-473.

PMID: 32303789 PMC: 8211587. DOI: 10.1007/s00062-020-00902-5.