Molecular Biosciences and Bioengineering Graduate Program, University of Hawaii at Manoa, Honolulu, HI, USA.
Department of Systems Pharmacology and Translational Therapeutics, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA.
J R Soc Interface. 2018 Apr;15(141). doi: 10.1098/rsif.2017.0387.
Deep learning describes a class of machine learning algorithms that are capable of combining raw inputs into layers of intermediate features. These algorithms have recently shown impressive results across a variety of domains. Biology and medicine are data-rich disciplines, but the data are complex and often ill-understood. Hence, deep learning techniques may be particularly well suited to solve problems of these fields. We examine applications of deep learning to a variety of biomedical problems-patient classification, fundamental biological processes and treatment of patients-and discuss whether deep learning will be able to transform these tasks or if the biomedical sphere poses unique challenges. Following from an extensive literature review, we find that deep learning has yet to revolutionize biomedicine or definitively resolve any of the most pressing challenges in the field, but promising advances have been made on the prior state of the art. Even though improvements over previous baselines have been modest in general, the recent progress indicates that deep learning methods will provide valuable means for speeding up or aiding human investigation. Though progress has been made linking a specific neural network's prediction to input features, understanding how users should interpret these models to make testable hypotheses about the system under study remains an open challenge. Furthermore, the limited amount of labelled data for training presents problems in some domains, as do legal and privacy constraints on work with sensitive health records. Nonetheless, we foresee deep learning enabling changes at both bench and bedside with the potential to transform several areas of biology and medicine.
深度学习描述了一类机器学习算法,这些算法能够将原始输入组合成中间特征的层。这些算法最近在各种领域都取得了令人瞩目的成果。生物学和医学是数据丰富的学科,但数据复杂,往往难以理解。因此,深度学习技术可能特别适合解决这些领域的问题。我们考察了深度学习在各种生物医学问题中的应用——患者分类、基本生物过程和患者治疗——并讨论深度学习是否能够改变这些任务,或者生物医学领域是否存在独特的挑战。通过广泛的文献回顾,我们发现深度学习尚未彻底改变生物医学,也没有明确解决该领域最紧迫的任何挑战,但在先前的技术水平上取得了有希望的进展。尽管总体而言,与以前的基线相比,改进是适度的,但最近的进展表明,深度学习方法将为加速或辅助人类研究提供有价值的手段。尽管已经取得了将特定神经网络的预测与输入特征联系起来的进展,但如何让用户解释这些模型,以便对所研究的系统提出可检验的假设,仍然是一个开放的挑战。此外,在一些领域,用于训练的标记数据量有限,以及对处理敏感健康记录的工作的法律和隐私限制,也带来了问题。尽管如此,我们预计深度学习将在实验室和临床都能带来变革,有可能改变生物学和医学的几个领域。