Alzheimer biomarkers esteem by sampling Kantorovich algorithm
Danilo Costarellı, Marco Seracini, Arianna Travaglini, Gianluca Vıntı
Abstract
In this paper, we take advantage of the reconstruction properties of the sampling Kantorovich (SK) algorithm to estimate the volume of the human brain for the quantification of Alzheimer's biomarkers. At first, the goodness of the reconstructions is evaluated, comparing it to different interpolation methods by means of the Peak Signal to Noise Ratio (PSNR) index; then the stereological Cavalieri/Point‐counting technique is used to infer volumetric data starting from the knowledge of the planar sections. The comparison of the achieved results with synthetic references confirms the good performances of the new methodology.
Topics & Concepts
MathematicsSampling (signal processing)Interpolation (computer graphics)AlgorithmNoise (video)Point (geometry)Goodness of fitStatisticsArtificial intelligenceComputer scienceComputer visionFilter (signal processing)GeometryImage (mathematics)Motion (physics)Point processes and geometric inequalitiesDigital Image Processing TechniquesMorphological variations and asymmetry