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Enhancing scientific discoveries in molecular biology with deep generative models

机译:用深发电模型提高分子生物学中的科学发现

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摘要

Generative models provide a well‐established statistical framework for evaluating uncertainty and deriving conclusions from large data sets especially in the presence of noise, sparsity, and bias. Initially developed for computer vision and natural language processing, these models have been shown to effectively summarize the complexity that underlies many types of data and enable a range of applications including supervised learning tasks, such as assigning labels to images; unsupervised learning tasks, such as dimensionality reduction; and out‐of‐sample generation, such as de novo image synthesis. With this early success, the power of generative models is now being increasingly leveraged in molecular biology, with applications ranging from designing new molecules with properties of interest to identifying deleterious mutations in our genomes and to dissecting transcriptional variability between single cells. In this review, we provide a brief overview of the technical notions behind generative models and their implementation with deep learning techniques. We then describe several different ways in which these models can be utilized in practice, using several recent applications in molecular biology as examples.
机译:生成模型提供了一种良好的统计框架,用于评估不确定性和从大型数据集得出的结论,特别是在存在噪声,稀疏性和偏置。最初为计算机视觉和自然语言处理开发,这些模型已被证明有效地总结了利用许多类型的数据的复杂性,并使一系列应用程序包括监督学习任务,例如将标签分配给图像;无监督的学习任务,例如减少维度;和采样外生成,如de novo图像合成。通过这种早期成功,生成模​​型的力量现在正在越来越多地利用分子生物学,其应用范围从设计具有感兴趣的性质的新分子来识别我们的基因组中的有害突变以及对单细胞之间的转录变异性进行抑制。在本次审查中,我们简要概述了生成模型背后的技术概念及其深层学习技术的实现。然后,我们描述了几种不同的方式,其中可以在实践中使用这些模型,以分子生物学中的几个应用程序作为示例。

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