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Automated contour detection in cardiac MRI using active appearance models: the effect of the composition of the training set.

机译:使用活动外观模型在心脏MRI中自动进行轮廓检测:训练集的组成效果。

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OBJECTIVE:: Definition of the optimal training set for the automated segmentation of short-axis left ventricular magnetic resonance (MR) imaging studies in clinical practice based on active appearance model (AAM). MATERIALS AND METHODS:: We investigated the segmentation accuracy by varying the size and composition of the training set (ie, the ratio between pathologic and normal ventricle images, and the vendor dependence). The accuracy was assessed using the degree of similarity and the difference in ejection fraction between automatically detected and manually drawn contours. RESULTS:: Including more images in the training set results in a better accuracy of the detected contours, with optimum results achieved when including 180 images in the training set. Using AAM-based contour detection with a mixed model of 80% normal-20% pathologic images does provide good segmentation accuracy in clinical routine. Finally, it is essential to define different AAM models for different vendors of MRI systems. CONCLUSIONS:: A model defined on a sufficient number of images with the correct distribution of image characteristics achieves good matches in clinical routine. It is essential to define different AAM models for different vendors of MRI systems.
机译:目的:定义最佳训练集,用于基于活动外观模型(AAM)的临床实践中的自动分割短轴左心室磁共振(MR)成像研究。材料和方法::我们通过改变训练集的大小和组成(即病理和正常心室图像之间的比率以及供应商依赖性)来研究分割的准确性。使用相似度以及自动检测到的轮廓和手动绘制的轮廓之间的射血分数差异来评估准确性。结果:在训练集中包含更多图像可提高检测到的轮廓的准确性,在训练集中包含180张图像时可获得最佳结果。将基于AAM的轮廓检测与80%正常-20%病理图像的混合模型结合使用,可以在临床常规操作中提供良好的分割精度。最后,必须为不同的MRI系统供应商定义不同的AAM模型。结论:在足够数量的图像上定义的模型具有正确的图像特征分布,可以在临床常规程序中实现良好的匹配。必须为不同的MRI系统供应商定义不同的AAM模型。

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