CVAug 16, 2025

WiseLVAM: A Novel Framework For Left Ventricle Automatic Measurements

arXiv:2508.12023v21 citationsh-index: 40Has CodeASMUS@MICCAI
Originality Incremental advance
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This work addresses the need for reliable automated cardiac measurements in clinical settings, though it appears incremental by building on prior semi-automatic methods.

The paper tackles the problem of automating left ventricle linear measurements in echocardiographic images by introducing WiseLVAM, a fully automated framework that uses contour-aware scanline placement and Anatomical Motion Mode images, achieving enhanced robustness and accuracy for clinical use.

Clinical guidelines recommend performing left ventricular (LV) linear measurements in B-mode echocardiographic images at the basal level -- typically at the mitral valve leaflet tips -- and aligned perpendicular to the LV long axis along a virtual scanline (SL). However, most automated methods estimate landmarks directly from B-mode images for the measurement task, where even small shifts in predicted points along the LV walls can lead to significant measurement errors, reducing their clinical reliability. A recent semi-automatic method, EnLVAM, addresses this limitation by constraining landmark prediction to a clinician-defined SL and training on generated Anatomical Motion Mode (AMM) images to predict LV landmarks along the same. To enable full automation, a contour-aware SL placement approach is proposed in this work, in which the LV contour is estimated using a weakly supervised B-mode landmark detector. SL placement is then performed by inferring the LV long axis and the basal level- mimicking clinical guidelines. Building on this foundation, we introduce \textit{WiseLVAM} -- a novel, fully automated yet manually adaptable framework for automatically placing the SL and then automatically performing the LV linear measurements in the AMM mode. \textit{WiseLVAM} utilizes the structure-awareness from B-mode images and the motion-awareness from AMM mode to enhance robustness and accuracy with the potential to provide a practical solution for the routine clinical application. The source code is publicly available at https://github.com/SFI-Visual-Intelligence/wiselvam.git.

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