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从数据中深度学习生物模型:应用于 ODE 模型。

Deep Learning of Biological Models from Data: Applications to ODE Models.

机构信息

Department of Mathematics, The Ohio State University, Columbus, OH, 43221, USA.

出版信息

Bull Math Biol. 2021 Jan 16;83(3):19. doi: 10.1007/s11538-020-00851-7.

Abstract

Mathematical equations are often used to model biological processes. However, for many systems, determining analytically the underlying equations is highly challenging due to the complexity and unknown factors involved in the biological processes. In this work, we present a numerical procedure to discover dynamical physical laws behind biological data. The method utilizes deep learning methods based on neural networks, particularly residual networks. It is also based on recently developed mathematical tools of flow-map learning for dynamical systems. We demonstrate that with the proposed method, one can accurately construct numerical biological models for unknown governing equations behind measurement data. Moreover, the deep learning model can also incorporate unknown parameters in the biological process. A successfully trained deep neural network model can then be used as a predictive tool to produce system predictions of different settings and allows one to conduct detailed analysis of the underlying biological process. In this paper, we use three biological models-SEIR model, Morris-Lecar model and the Hodgkin-Huxley model-to show the capability of our proposed method.

摘要

数学方程常用于对生物过程进行建模。然而,对于许多系统,由于生物过程中涉及的复杂性和未知因素,通过解析方法确定其基础方程极具挑战性。在这项工作中,我们提出了一种用于发现生物数据背后的动力学物理规律的数值方法。该方法利用了基于神经网络的深度学习方法,特别是残差网络。它还基于最近发展的用于动力系统的流形学习数学工具。我们证明,通过所提出的方法,人们可以精确地为未知的测量数据背后的控制方程构建数值生物学模型。此外,深度学习模型还可以将生物过程中的未知参数纳入其中。然后,经过训练的深度神经网络模型可以用作预测工具,以对不同设置下的系统进行预测,并允许对潜在的生物过程进行详细分析。在本文中,我们使用了三个生物学模型-SEIR 模型、Morris-Lecar 模型和 Hodgkin-Huxley 模型-来展示我们所提出的方法的能力。

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