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Patient-Specific Conditional Joint Models of Shape, Image Features and Clinical Indicators

机译:特定于患者的形状,图像特征和临床指标的条件联合模型

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We propose and demonstrate a joint model of anatomical shapes, image features and clinical indicators for statistical shape modeling and medical image analysis. The key idea is to employ a copula model to separate the joint dependency structure from the marginal distributions of variables of interest. This separation provides flexibility on the assumptions made during the modeling process. The proposed method can handle binary, discrete, ordinal and continuous variables. We demonstrate a simple and efficient way to include binary, discrete and ordinal variables into the modeling. We build Bayesian conditional models based on observed partial clinical indicators, features or shape based on Gaussian processes capturing the dependency structure. We apply the proposed method on a stroke dataset to jointly model the shape of the lateral ventricles, the spatial distribution of the white matter hyperintensity associated with periventricular white matter disease, and clinical indicators. The proposed method yields interpretable joint models for data exploration and patient-specific statistical shape models for medical image analysis.
机译:我们提出并演示了用于统计形状建模和医学图像分析的解剖形状,图像特征和临床指标的联合模型。关键思想是采用copula模型将联合依赖结构与目标变量的边际分布分开。这种分离为建模过程中所做的假设提供了灵活性。所提出的方法可以处理二进制,离散,有序和连续变量。我们演示了一种简单有效的方法,可以将二进制,离散和有序变量包含到建模中。我们基于捕获的依赖结构的高斯过程,基于观察到的部分临床指标,特征或形状建立贝叶斯条件模型。我们将提出的方法应用到卒中数据集上,以联合建模侧脑室的形状,与室周白质疾病相关的白质高信号的空间分布以及临床指标。所提出的方法产生用于数据探索的可解释的联合模型和用于医学图像分析的针对患者的统计形状模型。

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