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Hierarchical eigenmodes to characterize bladder motion and deformation in prostate cancer radiotherapy

机译:分层特征模式表征前列腺癌放射治疗中的膀胱运动和变形

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In radiotherapy for prostate cancer the bladder presents the largest inter-fraction shape variations during treatment resulting in random geometric uncertainties that may increase the risk of developing side-effects. In this setting, our interest is thus to propose a hierarchical population model, based on longitudinal data, to characterize bladder motion and deformation between fractions. This method is based on a principal component analysis (PCA) of bladder shapes to obtain the dominant eigenmodes that describe bladder geometric variations between fractions. However, PCA may not properly capture the latent structure of complex data like longitudinal data of organs with large inter and intra-patient shape variations. With this, we propose hierarchical modes to separate intra- and inter-patient bladder variability of the longitudinal data following a dimensionality reduction by means of spherical harmonics (SPHARM). The training data base was used to derive a top-level PCA model that describes the entire structure of the bladder surface space. This space was subsequently divided into subspaces by lower-level PCA models that describe their internal structures. The model was evaluated using a reconstruction error and compared with a conventional PCA model following leave-one-out cross validation.
机译:在前列腺癌的放射治疗中,膀胱在治疗过程中呈现最大的中间部位形状变化,导致随机的几何不确定性,这可能会增加产生副作用的风险。因此,在这种情况下,我们的兴趣是根据纵向数据提出一个层次化的种群模型,以表征膀胱运动和各部分之间的变形。此方法基于膀胱形状的主成分分析(PCA),以获得描述各部分之间的膀胱几何变化的主要本征模式。但是,PCA可能无法正确捕获复杂数据的潜在结构,例如患者之间和患者内部形状变化较大的器官的纵向数据。以此为基础,我们提出了分层模式,以通过球谐函数(SPHARM)降维后,分离纵向数据的患者内部和患者之间的膀胱变异性。训练数据库用于导出描述膀胱表面空间整体结构的顶级PCA模型。随后,通过描述其内部结构的较低级PCA模型将该空间划分为子空间。使用重构误差对模型进行评估,并在留一法交叉验证后与常规PCA模型进行比较。

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