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首页> 外文期刊>Acta oncologica. >The use of an active appearance model for automated prostate segmentation in magnetic resonance
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The use of an active appearance model for automated prostate segmentation in magnetic resonance

机译:主动出现模型在磁共振中自动进行前列腺分割的应用

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Background. The prostate gland is delineated as the clinical target volume (CTV) in treatment planning of prostate cancer. Therefore, an accurate delineation is a prerequisite for efficient treatment. Accurate automated prostate segmentation methods facilitate the delineation of the CTV without inter-observer variation. The purpose of this study is to present an automated three-dimensional (3D) segmentation of the prostate using an active appearance model. Material and methods. Axial T2-weighted magnetic resonance (MR) scans were used to build the active appearance model. The model was based on a principal component analysis of shape and texture features with a level-set representation of the prostate shape instead of the selection of landmarks in the traditional active appearance model. To achieve a better fit of the model to the target image, prior knowledge to predict how to correct the model and pose parameters was incorporated. The segmentation was performed as an iterative algorithm to minimize the squared difference between the target and the model image. Results. The model was trained using manual delineations from 30 patients and was validated using leave-one-out cross validation where the automated segmentations were compared with the manual reference delineations. The mean and median dice similarity coefficient was 0.84 and 0.86, respectively. Conclusion. This study demonstrated the feasibility for an automated prostate segmentation using an active appearance with results comparable to other studies.
机译:背景。在前列腺癌的治疗计划中,将前列腺描述为临床目标体积(CTV)。因此,准确的勾画是有效治疗的先决条件。准确的自动前列腺分割方法可方便地描绘CTV,而无观察者之间的差异。这项研究的目的是提出使用主动外观模型对前列腺进行自动三维(3D)分割的方法。材料与方法。轴向T2加权磁共振(MR)扫描用于建立活动外观模型。该模型基于对形状和纹理特征的主成分分析,并具有前列腺形状的水平集表示,而不是传统活动外观模型中的地标选择。为了使模型更好地适合目标图像,结合了预测如何校正模型和姿势参数的先验知识。分割作为迭代算法执行,以最小化目标和模型图像之间的平方差。结果。使用来自30位患者的手动轮廓训练了该模型,并使用留一法交叉验证对模型进行了验证,在此方法中,自动分割与手动参考轮廓进行了比较。骰子的均值和中位数相似度系数分别为0.84和0.86。结论。这项研究证明了使用主动外观进行自动前列腺分割的可行性,其结果可与其他研究媲美。

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