一种用于成像遗传学的神经影像学特征提取模型及其在阿尔茨海默病中的应用

Chunfei Li, Chen Fang, M. Adjouadi, M. Cabrerizo, A. Barreto, J. Andrian, R. Duara, D. Loewenstein
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引用次数: 4

摘要

神经影像学是一个重要的研究平台,可以非常有用的引出新的认识,复杂的发病机制之间的遗传和疾病表型。由于图像和遗传数据的极高维度,并考虑到遗传变异的潜在联合效应,已经研究了多变量技术来检测通过单核苷酸多态性(SNPs)表达的阿尔茨海默病(AD)相关遗传变异。然而,用于支持这些方法的图像特征与疾病没有直接关系,并且检测到的遗传标记可能与AD无关。在这项研究中,我们提出了一个基于集成模型的框架,首先提取50个基于区域的图像特征,这些特征的值由原始神经成像形态学变量训练的基础学习器预测。随后,对提取的50个AD相关图像特征和预选的1508个snp进行稀疏偏最小二乘回归(sPLS),检测与提取的图像特征相关的显著snp。我们没有建立遗传变异和疾病标签之间的直接联系,而是间接地获取疾病信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neuroimaging Feature Extraction Model for Imaging Genetics with Application to Alzheimer's Disease
Neuroimaging is an important research platform that can be very useful for eliciting new understanding on the complicated pathogenesis between genetics and disease phenotypes. Due to the extremely high dimensionality of image and genetic data, and considering the potential joint effect of genetic variants, multivariate techniques have been examined to detect Alzheimers disease (AD) related genetic variants expressed through single-nucleotide polymorphisms (SNPs). However, the image features used in support of those methods are not immediately related to the disease, and the detected genetic markers may not be related to AD. In this study, we propose an ensemble model based framework for firstly extracting 50 region-based image features whose values are predicted by base learners trained on raw neuroimaging morphological variables. This task is followed by performing sparse Partial Least Squares regression (sPLS) method on the extracted 50 AD related image features and pre-selected 1508 SNPs to detect the significant SNPs associated with the extracted image features. Instead of modeling a direct link between genetic variants and disease label, we captured disease information indirectly.
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