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KMID : 1812420230560030179
Journal of Chest Surgery
2023 Volume.56 No. 3 p.179 ~ p.185
Using Continuous Flow Data to Predict the Course of Air Leaks After Lung Lobectomy
Yoon Jae-Shin

Hyun Kwan-Yong
Sung Sook-Whan
Abstract
Background : Assessments of air leaks are usually performed subjectively, precluding the use of air leaks as an evaluation factor. We aimed to identify objective parameters as predictive factors for prolonged air leak (PAL) and air leak cessation (ALC) from air flow data produced by a digital drainage system.

Methods : Flow data records of 352 patients who underwent lung lobectomy were reviewed, and flow data at designated intervals (1, 2, and 3 hours postoperatively [POH] and 3 times a day thereafter [06:00, 13:00, 19:00]) were extracted. ALC was defined by flow less than 20 mL/min over 12 hours, and PAL was defined as ALC after 5 days. Cumulative incidence curves were obtained using Kaplan-Meier estimates of time to ALC. Cox regression analysis was performed to determine the effects of variables on the rate of ALC.

Results : The incidence of PAL was 18.2% (64/352). Receiver operating characteristic curve analysis showed cut-off values of 180 mL/min for the flow at 3 POH and 73.3 mL/min for the flow on postoperative day 1; the sensitivity and specificity of these values were 88.9% and 82.5%, respectively. The rates of ALC by Kaplan-Meier analysis were 56.8% at 48 POH and 65.6% at 72 POH. Multivariate Cox regression analysis revealed that the flow at 3 POH (¡Â80 mL/min), operation time (¡Â220 minutes), and right middle lobectomy independently predicted ALC.

Conclusion : Air flow measured by a digital drainage system is a useful predictor of PAL and ALC and may help optimize the hospital course.
KEYWORD
Prolonged air leak, Digital drainage system, Lobectomy
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