An overview of biological data generation using generative adversarial networks

Lin Liu, Yujing Xia, Lin Tang
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Abstract

Due to the high cost of biological data access and the privacy issues, collecting a large amount of biological data for training deep learning model is difficult in the field of biology. Concerning this issue, this article focuses on generative adversarial networks (GANs), which is a special type of deep learning model, and reviews their representative applications for generating biological data. We briefly introduced the working principle of GAN, and numerous applications to the areas of various biological data. In this paper, the types of biological data generated by GAN are categorized into two areas: biological sequences and two-dimensional data. These related studies indicated that GANs are able to explore the space of possible data configurations, and tuning the generated data to have specific target properties. This article will provide valuable insights and serve as a starting point for carrying out further studies for researchers.
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使用生成对抗网络生成生物数据的概述
由于生物数据访问的高成本和隐私问题,收集大量的生物数据用于训练深度学习模型在生物学领域是困难的。针对这一问题,本文重点介绍了一种特殊类型的深度学习模型——生成对抗网络(GANs),并综述了它们在生成生物数据方面的代表性应用。我们简要介绍了氮化镓的工作原理,以及在各种生物数据领域的众多应用。本文将GAN生成的生物数据类型分为生物序列和二维数据两大类。这些相关研究表明,gan能够探索可能的数据配置空间,并调整生成的数据以具有特定的目标属性。本文将为研究人员提供有价值的见解,并作为开展进一步研究的起点。
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