Department of Biomedical Engineering, Duke University, Durham, NC, 27708, USA.
Department of Statistical Science, Duke University, Durham, NC, 27708, USA.
Nat Commun. 2019 Sep 25;10(1):4354. doi: 10.1038/s41467-019-12342-y.
For many biological applications, exploration of the massive parametric space of a mechanism-based model can impose a prohibitive computational demand. To overcome this limitation, we present a framework to improve computational efficiency by orders of magnitude. The key concept is to train a neural network using a limited number of simulations generated by a mechanistic model. This number is small enough such that the simulations can be completed in a short time frame but large enough to enable reliable training. The trained neural network can then be used to explore a much larger parametric space. We demonstrate this notion by training neural networks to predict pattern formation and stochastic gene expression. We further demonstrate that using an ensemble of neural networks enables the self-contained evaluation of the quality of each prediction. Our work can be a platform for fast parametric space screening of biological models with user defined objectives.
对于许多生物应用,探索基于机制模型的海量参数空间可能会带来巨大的计算需求。为了克服这一限制,我们提出了一种通过数量级提高计算效率的框架。关键概念是使用机制模型生成的有限数量的模拟来训练神经网络。这个数量足够小,可以在短时间内完成模拟,但又足够大,可以进行可靠的训练。然后,可以使用训练好的神经网络来探索更大的参数空间。我们通过训练神经网络来预测模式形成和随机基因表达来证明这一概念。我们进一步证明,使用神经网络集合可以独立评估每个预测的质量。我们的工作可以成为具有用户定义目标的生物模型快速参数空间筛选的平台。