WiseLVAM: A Novel Framework For Left Ventricle Automatic Measurements
Durgesh Kumar Singh, Qing Cao, Sarina Thomas, Ahc\`ene Boubekki, Robert Jenssen, Michael Kampffmeyer

TL;DR
WiseLVAM is a fully automated framework for precise left ventricle measurements in echocardiography, combining contour-aware landmark detection and motion-guided scanline placement to improve clinical reliability.
Contribution
It introduces WiseLVAM, a novel, fully automated, and adaptable method that integrates contour and motion information for LV measurement in echocardiography.
Findings
Enhanced measurement accuracy and robustness.
Automated scanline placement aligned with clinical guidelines.
Potential for routine clinical application.
Abstract
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…
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