On non-linear characterization of tissue abnormality by constructing disease manifolds

N. Batmanghelich, R. Verma
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引用次数: 2

Abstract

Tissue deterioration as induced by disease can be viewed as a continuous change of tissue from healthy to diseased and hence can be modeled as a non-linear manifold with completely healthy tissue at one end of the spectrum and fully abnormal tissue such as lesions, being on the other end. The ability to quantify this tissue deterioration as a continuous score of tissue abnormality will help determine the degree of disease progression and treatment effects. We propose a semi-supervised method for determining such an abnormality manifold, using multi-parametric magnetic resonance features incorporated into a support vector machine framework in combination with manifold regularization. The position of a tissue voxel on this spatially and temporally smooth manifold, determines its degree of abnormality. We apply the framework towards the characterization of tissue abnormality in brains of multiple sclerosis patients followed longitudinally, to obtain a voxel-wise score of abnormality called the tissue abnormality map, thereby obtaining a voxel-wise measure of disease progression.
构建疾病流形对组织异常的非线性表征
由疾病引起的组织恶化可以看作是组织从健康到患病的连续变化,因此可以建模为一个非线性流形,在光谱的一端是完全健康的组织,在另一端是完全异常的组织,如病变。将这种组织恶化量化为组织异常的连续评分的能力将有助于确定疾病进展的程度和治疗效果。我们提出了一种半监督的方法来确定这种异常流形,使用多参数磁共振特征结合流形正则化的支持向量机框架。组织体素在这个空间和时间光滑流形上的位置决定了它的异常程度。我们将该框架应用于多发性硬化症患者脑部组织异常特征的纵向跟踪,以获得称为组织异常图的异常体素评分,从而获得疾病进展的体素测量。
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