基于深度网络的成像遗传学特征选择:在帕金森病生物标志物识别中的应用。

Mansu Kim, Ji Hye Won, Jisu Hong, Junmo Kwon, Hyunjin Park, Li Shen
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引用次数: 3

摘要

成像遗传学是一种发现成像和遗传变量之间关联的方法。许多研究采用稀疏典型相关分析(SCCA)等稀疏模型进行成像遗传学研究。这些方法仅限于线性成像遗传关系的建模,而不能捕获所探索变量之间的非线性高层关系。与在许多其他生物医学领域(如图像分割和疾病分类)取得巨大成功相比,深度学习方法在成像遗传学方面的探索不足。在这项工作中,我们提出了一个深度学习模型来选择能够很好地解释成像特征的遗传特征。我们对模拟和真实数据集的实证研究表明,我们的方法优于广泛使用的SCCA方法,并且能够以稳健的方式选择重要的遗传特征。这些有希望的结果表明,我们的深度学习模型有潜力揭示新的生物标志物,以提高对所研究的大脑疾病的机制理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DEEP NETWORK-BASED FEATURE SELECTION FOR IMAGING GENETICS: APPLICATION TO IDENTIFYING BIOMARKERS FOR PARKINSON'S DISEASE.

Imaging genetics is a methodology for discovering associations between imaging and genetic variables. Many studies adopted sparse models such as sparse canonical correlation analysis (SCCA) for imaging genetics. These methods are limited to modeling the linear imaging genetics relationship and cannot capture the non-linear high-level relationship between the explored variables. Deep learning approaches are underexplored in imaging genetics, compared to their great successes in many other biomedical domains such as image segmentation and disease classification. In this work, we proposed a deep learning model to select genetic features that can explain the imaging features well. Our empirical study on simulated and real datasets demonstrated that our method outperformed the widely used SCCA method and was able to select important genetic features in a robust fashion. These promising results indicate our deep learning model has the potential to reveal new biomarkers to improve mechanistic understanding of the studied brain disorders.

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