van der Geest Rob J, Lelieveldt Boudewijn P F, Angelié Emmanuelle, Danilouchkine Mikhail, Swingen Cory, Sonka M, Reiber Johan H C
Department of Radiology, Leiden University Medical Center, Leiden, The Netherlands.
J Cardiovasc Magn Reson. 2004;6(3):609-17. doi: 10.1081/jcmr-120038082.
The purpose of this study was the evaluation of a computer algorithm for the automated detection of endocardial and epicardial boundaries of the left ventricle in time series of short-axis magnetic resonance images based on an Active Appearance Motion Model (AAMM). In 20 short-axis MR examinations, manual contours were defined in multiple temporal frames (from end-diastole to end-systole) in multiple slices from base to apex. Using a leave-one-out procedure, the image data and contours were used to build 20 different AAMMs giving a statistical description of the ventricular shape, gray value appearance, and cardiac motion patterns in the training set. Automated contour detection was performed by iteratively deforming the AAMM within statistically allowed limits until an optimal match was found between the deformed AAMM and the underlying image data of the left-out subject. Global ventricular function results derived from automatically detected contours were compared with results obtained from manually traced boundaries. The AAMM contour detection method was successful in 17 of 20 studies. The three failures were excluded from further statistical analysis. Automated contour detection resulted in small, but statistically nonsignificant, underestimations of ventricular volumes and mass: differences for end-diastolic volume were 0.3%+/-12.0%, for end-systolic volume 2.0%+/-23.4% and for left ventricular myocardial mass 0.73%+/-14.9% (mean+/-SD). An excellent agreement was observed in the ejection fraction: difference of 0.1%+/-6.7%. In conclusion, the presented fully automated contour detection method provides assessment of quantitative global function that is comparable to manual analysis.
本研究的目的是评估一种基于主动外观运动模型(AAMM)的计算机算法,用于在短轴磁共振图像的时间序列中自动检测左心室的心内膜和心外膜边界。在20次短轴磁共振检查中,在从心底到心尖的多个切片的多个时间帧(从舒张末期到收缩末期)中定义了手动轮廓。采用留一法,使用图像数据和轮廓构建20个不同的AAMM,以对训练集中心室的形状、灰度值外观和心脏运动模式进行统计描述。通过在统计允许的范围内迭代地使AAMM变形,直到在变形的AAMM与留出受试者的基础图像数据之间找到最佳匹配,从而进行自动轮廓检测。将自动检测轮廓得出的整体心室功能结果与手动追踪边界获得的结果进行比较。在20项研究中的17项中,AAMM轮廓检测方法取得了成功。排除了三项失败的研究,未进行进一步的统计分析。自动轮廓检测导致心室容积和质量的低估,幅度较小但在统计学上无显著意义:舒张末期容积差异为0.3%±12.0%,收缩末期容积差异为2.0%±23.4%,左心室心肌质量差异为0.73%±14.9%(平均值±标准差)。在射血分数方面观察到极好的一致性:差异为0.1%±6.7%。总之,所提出的全自动轮廓检测方法提供的定量整体功能评估与手动分析相当。