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Toward automated detection and segmentation of aortic calcifications from radiographs

机译:致力于从射线照片中自动检测和分割主动脉钙化

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This paper aims at automatically measuring the extent of calcified plaques in the lumbar aorta from standard radiographs. Calcifications in the abdominal aorta are an important predictor for future cardiovascular morbidity and mortality. Accurate and reproducible measurement of the amount of calcified deposit in the aorta is therefore of great value in disease diagnosis and prognosis, treatment planning, and the study of drug effects. We propose a two-step approach in which first the calcifications are detected by an iterative statistical pixel classification scheme combined with aorta shape model optimization. Subsequently, the detected calcified pixels are used as the initialization for an inpainting based segmentation. We present results on synthetic images from the inpainting based segmentation as well as results on several X-ray images based on the two-steps approach.
机译:本文旨在根据标准X光片自动测量腰主动脉钙化斑块的程度。腹主动脉钙化是未来心血管疾病发病率和死亡率的重要预测指标。因此,准确,可重复地测量主动脉中钙化沉积物的量在疾病诊断和预后,治疗计划以及药物作用研究中具有重要价值。我们提出了一种两步方法,其中首先通过迭代统计像素分类方案结合主动脉形状模型优化来检测钙化。随后,将检测到的钙化像素用作基于修补的分割的初始化。我们提出了基于修补的分割合成图像的结果,以及基于两步法的几个X射线图像的结果。

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