Machine Learning Algorithm Detection of Confluent B-Lines

Cristiana Baloescu, Agnieszka A. Rucki, Alvin Chen, Mohsen Zahiri, Goutam Ghoshal, Jing Wang, Rita Chew, David Kessler, Daniela K.I. Chan, Bryson Hicks, Nikolai Schnittke, Jeffrey Shupp, Kenton Gregory, Balasundar Raju, Christopher Moore

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

Objective: B-lines are a ring-down artifact of lung ultrasound that arise with increased alveolar water in conditions such as pulmonary edema and infectious pneumonitis. Confluent B-line presence may signify a different level of pathology compared with single B-lines. Existing algorithms aimed at B-line counting do not distinguish between single and confluent B-lines. The objective of this study was to test a machine learning algorithm for confluent B-line identification. Methods: This study used a subset of 416 clips from 157 subjects, previously acquired in a prospective study enrolling adults with shortness of breath at two academic medical centers, using a hand-held tablet and a 14-zone protocol. After exclusions, random sampling generated a total of 416 clips (146 curvilinear, 150 sector and 120 linear) for review. A group of five experts in point-of-care ultrasound blindly evaluated the clips for presence/absence of confluent B-lines. Ground truth was defined as majority agreement among the experts and used for comparison with the algorithm. Results: Confluent B-lines were present in 206 of 416 clips (49.5%). Sensitivity and specificity of confluent B-line detection by algorithm compared with expert determination were 83% (95% confidence interval [CI]: 0.77–0.88) and 92% (95% CI: 0.88–0.96). Sensitivity and specificity did not statistically differ between transducers. Agreement between algorithm and expert for confluent B-lines measured by unweighted κ was 0.75 (95% CI: 0.69–0.81) for the overall set. Conclusion: The confluent B-line detection algorithm had high sensitivity and specificity for detection of confluent B-lines in lung ultrasound point-of-care clips, compared with expert determination.

Original languageEnglish (US)
Pages (from-to)2095-2102
Number of pages8
JournalUltrasound in Medicine and Biology
Volume49
Issue number9
DOIs
StatePublished - Sep 2023

Keywords

  • Artificial intelligence
  • B-line
  • Lung ultrasound
  • Machine learning
  • Point-of-care ultrasound

ASJC Scopus subject areas

  • Radiological and Ultrasound Technology
  • Biophysics
  • Acoustics and Ultrasonics

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