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首页> 外文期刊>Studies in Health Technology and Informatics >Parametric Optimization of a Model-Based Segmentation Algorithm for Cardiac MR Image Analysis: A Grid-Computing Approach
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Parametric Optimization of a Model-Based Segmentation Algorithm for Cardiac MR Image Analysis: A Grid-Computing Approach

机译:心脏MR图像分析的基于模型的分割算法的参数优化:网格计算方法

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摘要

In this work we present a Grid-based optimization approach performed on a set of parameters that affects both the geometric and grey-level appearance properties of a three-dimensional model-based algorithm for cardiac MRI segmentation. The search for optimal values was assessed by a Monte Carlo procedure using computational Grid technology. A series of segmentation runs were conducted on an evaluation database comprising 30 studies at two phases of the cardiac cycle (60 datasets), using three shape models constructed by different methods. For each of these model-patient combinations, six parameters were optimized in two steps: those which affect the grey-level properties of the algorithm first and those relating to the geometrical properties, secondly. Two post-processing tasks (one for each stage) collected and processed (in total) more than 70000 retrieved result files. Qualitative and quantitative validation of the fitting results indicates that the segmentation performance was greatly improved with the tuning. Based on the experienced benefits with the use of our middleware, and foreseeing the advent of large-scale tests and applications in cardiovascular imaging, we strongly believe that the use of Grid computing technology in medical image analysis constitutes a real necessity.
机译:在这项工作中,我们提出了对一组参数执行的基于网格的优化方法,该方法会影响基于三维模型的心脏MRI分割算法的几何外观和灰度外观属性。通过使用计算网格技术的蒙特卡洛程序评估了最佳值的搜索。使用由不同方法构建的三个形状模型,在评估数据库上进行了一系列分割运行,该数据库包含心动周期两个阶段的30个研究(60个数据集)。对于这些模型-患者组合中的每一个,在两个步骤中优化了六个参数:首先影响算法的灰度属性的参数,其次影响与几何属性有关的参数。收集并处理(总计)超过70000个检索到的结果文件的两个后处理任务(每个阶段一个)。拟合结果的定性和定量验证表明,分段性能随着调整的进行大大提高。基于使用我们的中间件的经验收益,并预见了大规模测试和在心血管成像中的应用的出现,我们坚信在医学图像分析中使用网格计算技术是真正的必要。

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