Abstract
Structural changes to the wall of the left atrium are known to occur with conditions that predispose to Atrial fibrillation. Imaging studies have demonstrated that these changes may be detected non-invasively. An important indicator of this structural change is the wall's thickness. Present studies have commonly measured the wall thickness at few discrete locations. Dense measurements with computer algorithms may be possible on cardiac scans of Computed Tomography (CT) and Magnetic Resonance Imaging (MRI). The task is challenging as the atrial wall is a thin tissue and the imaging resolution is a limiting factor. It is unclear how accurate algorithms may get and how they compare in this new emerging area. We approached this problem of comparability with the Segmentation of Left Atrial Wall for Thickness (SLAWT) challenge organised in conjunction with MICCAI 2016 conference. This manuscript presents the algorithms that had participated and evaluation strategies for comparing them on the challenge image database that is now open-source. The image database consisted of cardiac CT (n=10) and MRI (n=10) of healthy and diseased subjects. A total of 6 algorithms were evaluated with different metrics, with 3 algorithms in each modality. Segmentation of the wall with algorithms was found to be feasible in both modalities. There was generally a lack of accuracy in the algorithms and inter-rater differences showed that algorithms could do better. Benchmarks were determined and algorithms were ranked to allow future algorithms to be ranked alongside the state-of-the-art techniques presented in this work. A mean atlas was also constructed from both modalities to illustrate the variation in thickness within this small cohort.
Highlights
In the past decade, algorithms for medical image analysis have grown rapidly with the availability of several open-source image processing and visualisation libraries
In this paper we propose a benchmark for future algorithms for segmenting and measuring left atrial wall thickness (LAWT) from cardiac Computed Tomography (CT) and Magnetic Resonance Imaging (MRI) images
A sample of the segmentations obtained from the algorithms are illustrated in Fig. 6 for CT and Fig. 7 for MRI
Summary
Algorithms for medical image analysis have grown rapidly with the availability of several open-source image processing and visualisation libraries. Within the medical image processing community, several data segmentation challenges have been organised at conferences and meetings, each with its own unique theme These have provided open source medical image datasets to the research community on which algorithms can be benchmarked. Some previous studies (Knowles et al, 2010; Karim et al, 2014a) for detecting scar in myocardium have exploited the surface mesh of the blood pool for obtaining the maximum intensity along the mesh’s vertex normals. In this method, the blood pool mesh was obtained and a traversal of the mesh vertex normal was undertaken for computing the extent of the myocardial wall. A low intensity threshold between the blood pool and surrounding tissue is calculated as two standard deviations below the mean myocardium intensity
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