An efficient heuristic for geometric analysis of cell deformations
Yaima Paz Soto, Silena Herold Garcia, Ximo Gual-Arnau, Antoni Jaume-i-Cap\'o, Manuel Gonz\'alez-Hidalgo

TL;DR
This paper introduces a fast, shape-based heuristic for classifying sickle cells in blood images, improving efficiency while maintaining high accuracy by aligning cells with templates using a fixed parameterization.
Contribution
The authors propose a novel shape alignment method using fixed parameterization and template alignment, reducing computational costs in erythrocyte classification.
Findings
Achieved 96.03% accuracy in classification and clustering.
Reduced computational costs compared to previous shape space methods.
Maintained or improved accuracy with simplified calculations.
Abstract
Sickle cell disease causes erythrocytes to become sickle-shaped, affecting their movement in the bloodstream and reducing oxygen delivery. It has a high global prevalence and places a significant burden on healthcare systems, especially in resource-limited regions. Automated classification of sickle cells in blood images is crucial, allowing the specialist to reduce the effort required and avoid errors when quantifying the deformed cells and assessing the severity of a crisis. Recent studies have proposed various erythrocyte representation and classification methods. Since classification depends solely on cell shape, a suitable approach models erythrocytes as closed planar curves in shape space. This approach employs elastic distances between shapes, which are invariant under rotations, translations, scaling, and reparameterizations, ensuring consistent distance measurements regardless…
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Taxonomy
TopicsDigital Imaging for Blood Diseases · Blood properties and coagulation · Hemoglobinopathies and Related Disorders
