Department of Biology and Biotechnology, University of Pavia, Pavia, Italy.
Department of Biology and Biotechnology, University of Pavia, Pavia, Italy.
N Biotechnol. 2023 Nov 25;77:1-11. doi: 10.1016/j.nbt.2023.06.002. Epub 2023 Jun 15.
Deep learning has already revolutionised the way a wide range of data is processed in many areas of daily life. The ability to learn abstractions and relationships from heterogeneous data has provided impressively accurate prediction and classification tools to handle increasingly big datasets. This has a significant impact on the growing wealth of omics datasets, with the unprecedented opportunity for a better understanding of the complexity of living organisms. While this revolution is transforming the way these data are analyzed, explainable deep learning is emerging as an additional tool with the potential to change the way biological data is interpreted. Explainability addresses critical issues such as transparency, so important when computational tools are introduced especially in clinical environments. Moreover, it empowers artificial intelligence with the capability to provide new insights into the input data, thus adding an element of discovery to these already powerful resources. In this review, we provide an overview of the transformative effects explainable deep learning is having on multiple sectors, ranging from genome engineering and genomics, from radiomics to drug design and clinical trials. We offer a perspective to life scientists, to better understand the potential of these tools, and a motivation to implement them in their research, by suggesting learning resources they can use to move their first steps in this field.
深度学习已经彻底改变了日常生活中许多领域处理各种数据的方式。从异构数据中学习抽象和关系的能力为处理日益庞大的数据集提供了令人印象深刻的准确预测和分类工具。这对日益丰富的组学数据集产生了重大影响,为更好地理解生物体的复杂性提供了前所未有的机会。虽然这场革命正在改变这些数据的分析方式,但可解释性深度学习作为一种额外的工具正在出现,有可能改变生物数据的解释方式。可解释性解决了一些关键问题,例如透明度,当特别是在临床环境中引入计算工具时,透明度非常重要。此外,它使人工智能有能力为输入数据提供新的见解,从而为这些已经强大的资源增添了发现元素。在这篇综述中,我们概述了可解释性深度学习对多个领域的变革性影响,范围从基因组工程和基因组学到放射组学、药物设计和临床试验。我们为生命科学家提供了一个视角,让他们更好地理解这些工具的潜力,并激励他们在研究中应用这些工具,同时还为他们提供了一些学习资源,帮助他们在这一领域迈出第一步。