| Literature DB >> 32809088 |
Christoph Maier1,2, Christoph Schramm3, Tobias R Rau4, Konstanze Plaschke3, Markus A Weigand3.
Abstract
Neurological surgery in the semi-sitting position is linked with a pronounced incidence of venous air embolism (VAE) which can be fatal and therefore requires continuous monitoring. Transesophageal echocardiography (TEE) provides a high sensitivity for the intraoperative detection of VAE; however, continuous monitoring with TEE requires constant vigilance by the anaesthesiologist, which cannot be ensured during the entire surgical procedure. We implemented a fully automatic VAE detection system for TEE based on a statistical model of the TEE images. In the sequence of images, the cyclic heart activity is regarded as a quasi-periodic process, and air bubbles are detected as statistical outliers. The VAE detection system was evaluated by means of receiver operating characteristic (ROC) curves using a data set consisting of 155.14 h of intraoperatively recorded TEE video and a manual classification of periods with visible VAE. Our automatic detection system accomplished an area under the curve (AUC) of 0.945 if all frames with visible VAE were considered as detection target, and an AUC of 0.990 if frames with the least severe optical grade of VAE were excluded from the analysis. Offline-review of the recorded TEE videos showed that short embolic events (≤ 2 min) may be overseen when monitoring TEE video manually. Automatic detection of VAE is feasible and could provide significant support to anaesthesiologists in clinical practice. Our proposed algorithm might possibly even offer a higher sensitivity compared to manual detection. The specificity, however, requires improvement to be acceptable for practical application. Trial Registration: German Clinical Trials Register (DRKS00011607).Entities:
Keywords: Automatic detection of venous air embolism; Neuroanaesthesia; Sitting position; Transesophageal echocardiography; Venous air embolism
Mesh:
Year: 2020 PMID: 32809088 PMCID: PMC8497308 DOI: 10.1007/s10877-020-00568-x
Source DB: PubMed Journal: J Clin Monit Comput ISSN: 1387-1307 Impact factor: 2.502
Tübingen scale of VAE detection [8]
| Grade | Definition |
|---|---|
| 0 | No air bubbles visible on TEE |
| I | Air bubbles visible on TEE |
| II | Air bubbles visible on TEE with decrease of end-tidal carbon dioxide ≤ 3 mmHg |
| III | Air bubbles visible on TEE with decrease of end-tidal carbon dioxide > 3 mmHg |
| IV | Air bubbles visible on TEE with decrease of end-tidal carbon dioxide > 3 mmHg and decrease of mean arterial pressure ≥ 20% or increase of heart rate ≥ 40% (or both) |
| V | Same as grade IV causing hemodynamic instability requiring cardiopulmonary resuscitation |
Surgical and demographic characteristics
| Mean (min – max) | |
|---|---|
| Age [years] | 50.7 (19 – 81) |
| Gender | m = 19, f = 20 |
| Weight [kg] | 84.6 (43 – 170) |
| Height [cm] | 171.8 (153 – 195) |
| ASA 1/2/3/4 | 1/22/16/0 |
| Surgery duration [h] | 4.2 (2,1 – 7.6) |
m male, f female, ASA classification of physical status according to the american society of anesthesiologists
Air embolic events detected by Tübingen VAE grading scale
| Tübingen VAE grading scale | Number of events |
|---|---|
| Sum of all gradings | 105 |
| I | 31 |
| II | 13 |
| III | 2 |
| IV | 2 |
| V | 0 |
| No grading available* | 57 |
*If VAE was detected during a second offline review process, the Tübingen VAE grading scale could not be determined. Clinical grading was also not available for one additional event, which was created by splitting an intraoperatively detected event
Fig. 1ROC curves for the detection of frames with observable VAE for different values of k
Fig. 2ROC curves for the detection of frames with observable VAE. For the analysis of frames with at least optical grade 2, all frames with optical grade 1 were excluded. Requiring a detection of 90% of phases with visible air within 3 s where false positive frames with a distance of maximum 38 frames (i.e. 1 s) are considered as a single alarm event, the detection algorithm would lead to a false alarm rate of 1.5 alarms per minute. Requiring a detection of 90% of the phases with at least optical grade 2 the algorithm results in a false alarm rate of 0.1 alarms per minute