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CDEMRIS fibrosis scar challenge dataset

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DataCite Commons2020-09-03 更新2024-07-25 收录
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https://figshare.com/articles/dataset/CDEMRIS_fibrosis_scar_challenge_data_2012/4214532
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The DatasetThe dataset includes Late Gadolinium enhancement (LGE) cardiovascular magnetic resonance (CMR) imaging used to visualise regions of fibrosis and scarring in the left atrium (LA) myocardium. <br>This can be important for treatment stratification of patients with atrial fibrillation (AF) and for assessment of treatment after radio frequency catheter ablation (RFCA). The datasets included are from a segmentation challenge where the aim was to create a benchmarking framework for algorithms classifying fibrosis and scar from LGE CMR images. <br>Dataset contentsThe dataset includes two subsets called <b>pre</b> and <b>post</b>. These refer to the time-points when the images were acquired. The <b>pre </b>data contains pre-ablation imaging of fibrosis. The 'post' data contains the post-ablation imaging data. There are 30 datasets in each <b>pre </b>and <b>post</b> folders. <br>The folders are arranged as pXX, where XX is the case number. Within each folder you will find two images in NRRD format. <br>These images follow a naming convention: de_xx_nnla_seg_xx_nnThe 'xx' can be 'a' or 'b'. The 'a' refers to the pre-scan and the 'b' refers to the post-scan. The 'nn' refers to the case number<br>Note the de_xx_nn refers to the delayed-enhancement (DE) scan. And the la_seg_xx_nn refers to the binary segmentation of the left atrial endocardium. The segmentation is registered to the delayed-enhancement scan. The images will generally be of varying quality. <br>ReferencesKarim et. al. <i>Evaluation of current algorithms for segmentation of scar tissue from late Gadolinium enhancement cardiovascular magnetic resonance of the left atrium</i> in <b>Journal of Cardiovascular Magnetic Resonance</b>, 15(105), 2013. Link<br>
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figshare
创建时间:
2016-11-08
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