2020
DOI: 10.1016/j.softx.2020.100570
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CemrgApp: An interactive medical imaging application with image processing, computer vision, and machine learning toolkits for cardiovascular research

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Cited by 51 publications
(44 citation statements)
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“…First, 86 scans were obtained from the 2018 STACOM segmentation challenge ( Xiong et al, 2021 ), with resolution of 0.625×0.625×0.625mm 3 , and corresponding segmentations of the LA, and the second dataset was acquired from St Thomas’ Hospital ( Chubb et al, 2018 ) from 18 AF patients, comprising of an additional 36 LGE-MRI images with a resolution of 1.3×1.3×4.0mm 3 , reconstructed to 0.94×0.94×2.0mm 3 . The patient images were processed in CemrgApp ( Razeghi et al, 2020 ) using the scar quantification pipeline to first produce patient-specific 3D LA geometries with raw LGE intensity distributions. Then, the image intensity ratio thresholding technique was applied to clearly differentiate between fibrotic regions and healthy tissue ( Roy et al, 2018 ).…”
Section: Methodsmentioning
confidence: 99%
“…First, 86 scans were obtained from the 2018 STACOM segmentation challenge ( Xiong et al, 2021 ), with resolution of 0.625×0.625×0.625mm 3 , and corresponding segmentations of the LA, and the second dataset was acquired from St Thomas’ Hospital ( Chubb et al, 2018 ) from 18 AF patients, comprising of an additional 36 LGE-MRI images with a resolution of 1.3×1.3×4.0mm 3 , reconstructed to 0.94×0.94×2.0mm 3 . The patient images were processed in CemrgApp ( Razeghi et al, 2020 ) using the scar quantification pipeline to first produce patient-specific 3D LA geometries with raw LGE intensity distributions. Then, the image intensity ratio thresholding technique was applied to clearly differentiate between fibrotic regions and healthy tissue ( Roy et al, 2018 ).…”
Section: Methodsmentioning
confidence: 99%
“…The Cardio Electro-Mechanics Research Group Application (CemrgApp) [6] is an open source software platform providing an integrated custom environment for developing computer vision tools. CemrgApp was used as a platform to develop the tools and to process the input data.…”
Section: Methodsmentioning
confidence: 99%
“…Scans from six patients were assessed, as a proof of concept, where patients had undergone pre-and postablation scans. The procedure for acquiring each patient's scans is thoroughly documented in [5], and [6]. The volumes generated are loaded into CemrgApp and resampled to be isometric [6].…”
Section: Input Data and Scar Map Generationmentioning
confidence: 99%
“…For example, [8] proposed a CNN-based double-branched model wherein one branch was utilized for feature extraction, the other for segmentation for multiple abnormality detection from medical images. [9] proposed the CemrgApp, a CNN model, to classify cardiovascular properties from cardiovascular magnetic imaging (CMRI) scans of different cardiac patients, for e cient diagnosis and treatment. A multi-label CNN was used to segment out the atria and atrial structures from the CMRI scans.…”
Section: Literature Reviewmentioning
confidence: 99%