基因表达和蛋白质功能:深度学习方法综述

Saket K. Sathe, Sayani Aggarwal, Jiliang Tang
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引用次数: 3

摘要

近年来,深度学习方法因其在图像识别、自然语言处理和语音识别等众多学科的预测和推理方面的广泛适用性而受到越来越多的关注。计算生物学是一个数据密集型领域,其中的数据类型可以非常多样化。这些不同类型的结构化数据需要不同的神经结构。基因表达和蛋白质功能预测的问题是计算生物学的相关领域(因为基因控制蛋白质的产生)。本调查概述了该领域的各种类型的问题以及为这些数据集工作的神经结构。由于与传统机器学习相比,深度学习是一个新的领域,因此该领域的大部分工作对应于传统机器学习而不是深度学习。然而,随着蛋白质和基因表达数据集的规模不断增长,使用数据饥渴型深度学习方法的可能性也在不断增加。事实上,在过去的五年里,深度学习模型突飞猛进,尽管蛋白质分析和基因表达的一些领域仍然相对未被探索。因此,除了对与这些问题直接相关的深度学习工作进行调查外,我们还指出了其他领域的现有深度学习工作,这些工作具有应用于这些领域的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gene Expression and Protein Function: A Survey of Deep Learning Methods
Deep learning methods have found increasing interest in recent years because of their wide applicability for prediction and inference in numerous disciplines such as image recognition, natural language processing, and speech recognition. Computational biology is a data-intensive field in which the types of data can be very diverse. These different types of structured data require different neural architectures. The problems of gene expression and protein function prediction are related areas in computational biology (since genes control the production of proteins). This survey provides an overview of the various types of problems in this domain and the neural architectures that work for these data sets. Since deep learning is a new field compared to traditional machine learning, much of the work in this area corresponds to traditional machine learning rather than deep learning. However, as the sizes of protein and gene expression data sets continue to grow, the possibility of using data-hungry deep learning methods continues to increase. Indeed, the previous five years have seen a sudden increase in deep learning models, although some areas of protein analytics and gene expression still remain relatively unexplored. Therefore, aside from the survey on the deep learning work directly related to these problems, we also point out existing deep learning work from other domains that has the potential to be applied to these domains.
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