Deep Learning Methods for Predicting Disease Status Using Genomic Data.

Journal of biometrics & biostatistics Pub Date : 2018-01-01 Epub Date: 2018-12-11
Qianfan Wu, Adel Boueiz, Alican Bozkurt, Arya Masoomi, Allan Wang, Dawn L DeMeo, Scott T Weiss, Weiliang Qiu
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Abstract

Predicting disease status for a complex human disease using genomic data is an important, yet challenging, step in personalized medicine. Among many challenges, the so-called curse of dimensionality problem results in unsatisfied performances of many state-of-art machine learning algorithms. A major recent advance in machine learning is the rapid development of deep learning algorithms that can efficiently extract meaningful features from high-dimensional and complex datasets through a stacked and hierarchical learning process. Deep learning has shown breakthrough performance in several areas including image recognition, natural language processing, and speech recognition. However, the performance of deep learning in predicting disease status using genomic datasets is still not well studied. In this article, we performed a review on the four relevant articles that we found through our thorough literature search. All four articles first used auto-encoders to project high-dimensional genomic data to a low dimensional space and then applied the state-of-the-art machine learning algorithms to predict disease status based on the low-dimensional representations. These deep learning approaches outperformed existing prediction methods, such as prediction based on transcript-wise screening and prediction based on principal component analysis. The limitations of the current deep learning approach and possible improvements were also discussed.

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利用基因组数据预测疾病状态的深度学习方法。
利用基因组数据预测复杂人类疾病的疾病状态是个性化医疗的一个重要但具有挑战性的步骤。在众多挑战中,所谓的维数诅咒问题导致许多最先进的机器学习算法的性能不尽如人意。机器学习最近的一个重大进展是深度学习算法的快速发展,它可以通过堆叠和分层学习过程从高维和复杂的数据集中有效地提取有意义的特征。深度学习在图像识别、自然语言处理和语音识别等多个领域显示出突破性的表现。然而,深度学习在使用基因组数据集预测疾病状态方面的表现仍然没有得到很好的研究。在这篇文章中,我们对通过彻底的文献检索找到的四篇相关文章进行了回顾。这四篇文章首先使用自编码器将高维基因组数据投影到低维空间,然后应用最先进的机器学习算法基于低维表示来预测疾病状态。这些深度学习方法优于现有的预测方法,如基于转录筛选的预测和基于主成分分析的预测。讨论了当前深度学习方法的局限性和可能的改进。
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