PLoS ONE (Jan 2022)

Associations between fully-automated, 3D-based functional analysis of the left atrium and classification schemes in atrial fibrillation.

  • Maurice Pradella,
  • Constantin Anastasopoulos,
  • Shan Yang,
  • Manuela Moor,
  • Patrick Badertscher,
  • Julian E Gehweiler,
  • Florian Spies,
  • Philip Haaf,
  • Michael Zellweger,
  • Gregor Sommer,
  • Bram Stieltjes,
  • Jens Bremerich,
  • Stefan Osswald,
  • Michael Kühne,
  • Christian Sticherling,
  • Sven Knecht

DOI
https://doi.org/10.1371/journal.pone.0272011
Journal volume & issue
Vol. 17, no. 8
p. e0272011

Abstract

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BackgroundAtrial fibrillation (AF) has been linked to left atrial (LA) enlargement. Whereas most studies focused on 2D-based estimation of static LA volume (LAV), we used a fully-automatic convolutional neural network (CNN) for time-resolved (CINE) volumetry of the whole LA on cardiac MRI (cMRI). Aim was to investigate associations between functional parameters from fully-automated, 3D-based analysis of the LA and current classification schemes in AF.MethodsWe retrospectively analyzed consecutive AF patients who underwent cMRI on 1.5T systems including a stack of oblique-axial CINE series covering the whole LA. The LA was automatically segmented by a validated CNN. In the resulting volume-time curves, maximum, minimum and LAV before atrial contraction were automatically identified. Active, passive and total LA emptying fractions (LAEF) were calculated and compared to clinical classifications (AF Burden score (AFBS), increased stroke risk (CHA2DS2VASc≥2), AF type (paroxysmal/persistent), EHRA score, and AF risk factors). Moreover, multivariable linear regression models (mLRM) were used to identify associations with AF risk factors.ResultsOverall, 102 patients (age 61±9 years, 17% female) were analyzed. Active LAEF (LAEF_active) decreased significantly with an increase of AFBS (minimal: 44.0%, mild: 36.2%, moderate: 31.7%, severe: 20.8%, pConclusionsFully-automatic morphometry of the whole LA derived from cMRI showed significant relationships between LAEF_active with increased stroke risk and severity of AFBS. Furthermore, higher age, higher AFBS and presence of heart failure were independent predictors of reduced LAEF_active, indicating its potential usefulness as an imaging biomarker.