Spherical Topic Models for Imaging Phenotype Discovery in Genetic Studies.

Kayhan N Batmanghelich, Michael Cho, Raul San Jose, Polina Golland
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Abstract

In this paper, we use Spherical Topic Models to discover the latent structure of lung disease. This method can be widely employed when a measurement for each subject is provided as a normalized histogram of relevant features. In this paper, the resulting descriptors are used as phenotypes to identify genetic markers associated with the Chronic Obstructive Pulmonary Disease (COPD). Features extracted from images capture the heterogeneity of the disease and therefore promise to improve detection of relevant genetic variants in Genome Wide Association Studies (GWAS). Our generative model is based on normalized histograms of image intensity of each subject and it can be readily extended to other forms of features as long as they are provided as normalized histograms. The resulting algorithm represents the intensity distribution as a combination of meaningful latent factors and mixing co-efficients that can be used for genetic association analysis. This approach is motivated by a clinical hypothesis that COPD symptoms are caused by multiple coexisting disease processes. Our experiments show that the new features enhance the previously detected signal on chromosome 15 with respect to standard respiratory and imaging measurements.

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在遗传研究中发现成像表型的球形主题模型
在本文中,我们使用球形主题模型来发现肺病的潜在结构。如果每个受试者的测量结果都是相关特征的归一化直方图,那么这种方法就能得到广泛应用。在本文中,所得到的描述符被用作表型来识别与慢性阻塞性肺病(COPD)相关的遗传标记。从图像中提取的特征捕捉到了疾病的异质性,因此有望改善全基因组关联研究(GWAS)中相关基因变异的检测。我们的生成模型以每个受试者图像强度的归一化直方图为基础,只要以归一化直方图的形式提供,就能很容易地扩展到其他形式的特征。由此产生的算法将强度分布表示为有意义的潜在因子和混合协系数的组合,可用于遗传关联分析。这种方法的动机来自于一个临床假设,即慢性阻塞性肺病的症状是由多种并存的疾病过程引起的。我们的实验表明,相对于标准的呼吸和成像测量,新特征增强了之前检测到的 15 号染色体上的信号。
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