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Binary segmentation of medical images using implicit spline representations and deep learning

Oliver J.D. Barrowclough, Georg Muntingh, Varatharajan Nainamalai, Ivar Stangeby

2021Computer Aided Geometric Design19 citationsDOIOpen Access PDF

Abstract

We propose a novel approach to image segmentation based on combining implicit spline representations with deep convolutional neural networks. This is done by predicting the control points of a bivariate spline function whose zero-set represents the segmentation boundary. We adapt several existing neural network architectures and design novel loss functions that are tailored towards providing implicit spline curve approximations. The method is evaluated on a congenital heart disease computed tomography medical imaging dataset. Experiments are carried out by measuring performance in various standard metrics for different networks and loss functions. We determine that splines of bidegree (1,1) with 128×128 coefficient resolution performed optimally for 512×512 resolution CT images. For our best network, we achieve an average volumetric test Dice score of close to 92%, which reaches the state of the art for this congenital heart disease dataset.

Topics & Concepts

Artificial intelligenceSpline (mechanical)Deep learningSegmentationConvolutional neural networkMathematicsThin plate splineComputer scienceImage segmentationPattern recognition (psychology)DiceBinary classificationArtificial neural networkComputer visionSørensen–Dice coefficientSmoothing splineBinary numberAlgorithmB-splineScale-space segmentationMedical imagingImage resolutionBivariate analysisMedical Image Segmentation TechniquesAdvanced Neural Network ApplicationsMedical Imaging and Analysis
Binary segmentation of medical images using implicit spline representations and deep learning | Litcius