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Fully automated assessment of left ventricular volumes, function and mass from cardiac MRI

机译:通过心脏MRI全自动评估左心室容积,功能和质量

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The importance of quantification of left ventricular (LV) size, function and mass is increasingly recognized through growing evidence about the prognostic value of these indices and their diagnostic role in patient follow-up during therapy. However, quantitative evaluation from cardiac magnetic resonance (CMR) images relies on manual tracing of LV endo- and epicardial boundaries, which is subjective and time-consuming. Our goal was to develop a fully automated technique for the detection of these boundaries to assess LV volumes, ejection fraction (EF) and mass. Our automated approach consists of: 1) identification of the LV cavity based on detection of moving and circular structures in short-axis views; 2) endocardial detection using a region-based probabilistic level set model to allow volume measurements throughout the cardiac cycle; 3) epicardium detection at end-diastole based on an edge-based level set model to allow LV mass measurement. This approach was tested in 10 patients by comparing automatically derived LV volumes, EF and mass using manual tracing as a reference. Automated detection of the endo- and epicardial boundaries took <;5 minutes per patient on a standard PC. The detected boundaries were in good agreement with manual tracing. As a result, LV volumes, EF and mass showed good inter-technique concordance, reflected by minimal biases and narrow limits of agreement. The proposed technique allows fully automated, fast and accurate measurements of LV volumes, EF and mass from CMR images, which may address the growing clinical need for quantitative assessment.
机译:越来越多的证据表明,量化这些指标的预后价值及其在治疗过程中对患者随访的诊断作用,越来越使人们认识到量化左心室(LV)大小,功能和质量的重要性。但是,从心脏磁共振(CMR)图像进行定量评估依赖于对LV内膜和心外膜边界的手动追踪,这是主观且耗时的。我们的目标是开发一种检测这些边界的全自动技术,以评估左室容积,射血分数(EF)和质量。我们的自动化方法包括:1)基于对短轴视图中的移动和圆形结构的检测来识别LV腔; 2)使用基于区域的概率水平集模型进行心内膜检测,以允许在整个心动周期进行体积测量; 3)基于基于边缘的水平集模型在舒张末期的心外膜检测,以允许进行LV质量测量。通过比较以手动追踪为参考的自动得出的左室容积,EF和质量,对10名患者进行了这种方法的测试。在标准PC上,每位患者自动检测心内膜和心外膜边界的时间少于5分钟。检测到的边界与手动跟踪非常吻合。结果,左心室体积,EF和质量显示出良好的技术间一致性,这反映在最小的偏见和狭窄的协议范围内。所提出的技术允许从CMR图像全自动,快速,准确地测量LV体积,EF和质量,这可能满足了对定量评估日益增长的临床需求。

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