TY - JOUR
T1 - A fully automated method for late ventricular diastole frame selection in post-dive echocardiography without ECG gating
AU - Markley, Eric
AU - Le, David Q.
AU - Germonpré, Peter
AU - Balestra, Costantino
AU - Tillmans, Frauke
AU - Denoble, Petar J.
AU - Freiberger, John J.
AU - Moon, Richard E.
AU - Dayton, Paul A.
AU - Papadopoulou, Virginie
N1 - Publisher Copyright:
Copyright © 2021 Undersea & Hyperbaric Medical Society, Inc.
PY - 2021
Y1 - 2021
N2 - Venous gas emboli (VGE) are often quantified as a marker of decompression stress on echocardiograms. Bubble-counting has been proposed as an easy to learn method, but remains time-consuming, rendering large dataset analysis impractical. Computer automation of VGE counting following this method has therefore been suggested as a means to eliminate rater bias and save time. A necessary step for this automation relies on the selection of a frame during late ventricular diastole (LVD) for each cardiac cycle of the recording. Since electrocardiograms (ECG) are not always recorded in field experiments, here we propose a fully automated method for LVD frame selection based on regional intensity minimization. The algorithm is tested on 20 previously acquired echocardiography recordings (from the original bubble-counting publication), half of which were acquired at rest (Rest) and the other half after leg flexions (Flex). From the 7,140 frames analyzed, sensitivity was found to be 0.913 [95% CI: 0.875-0.940] and specificity 0.997 [95% CI: 0.996-0.998]. The method’s performance is also compared to that of random chance selection and found to perform significantly better (p<0.0001). No trend in algorithm performance was found with respect to VGE counts, and no significant difference was found between Flex and Rest (p>0.05). In conclusion, full automation of LVD frame selection for the purpose of bubble counting in post-dive echocardiography has been established with excellent accuracy, although we caution that high quality acquisitions remain paramount in retaining high reliability.
AB - Venous gas emboli (VGE) are often quantified as a marker of decompression stress on echocardiograms. Bubble-counting has been proposed as an easy to learn method, but remains time-consuming, rendering large dataset analysis impractical. Computer automation of VGE counting following this method has therefore been suggested as a means to eliminate rater bias and save time. A necessary step for this automation relies on the selection of a frame during late ventricular diastole (LVD) for each cardiac cycle of the recording. Since electrocardiograms (ECG) are not always recorded in field experiments, here we propose a fully automated method for LVD frame selection based on regional intensity minimization. The algorithm is tested on 20 previously acquired echocardiography recordings (from the original bubble-counting publication), half of which were acquired at rest (Rest) and the other half after leg flexions (Flex). From the 7,140 frames analyzed, sensitivity was found to be 0.913 [95% CI: 0.875-0.940] and specificity 0.997 [95% CI: 0.996-0.998]. The method’s performance is also compared to that of random chance selection and found to perform significantly better (p<0.0001). No trend in algorithm performance was found with respect to VGE counts, and no significant difference was found between Flex and Rest (p>0.05). In conclusion, full automation of LVD frame selection for the purpose of bubble counting in post-dive echocardiography has been established with excellent accuracy, although we caution that high quality acquisitions remain paramount in retaining high reliability.
KW - echocardiography
KW - image processing
KW - radiological imaging
KW - scuba diving
UR - http://www.scopus.com/inward/record.url?scp=85102327770&partnerID=8YFLogxK
U2 - 10.22462/01.03.2021.9
DO - 10.22462/01.03.2021.9
M3 - Article
C2 - 33648036
AN - SCOPUS:85102327770
SN - 1066-2936
VL - 48
SP - 73
EP - 80
JO - Undersea and Hyperbaric Medicine
JF - Undersea and Hyperbaric Medicine
IS - 1
ER -