Laboratory for Systems Biology and Bio-inspired Engineering, Department of Bio and Brain Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon 34141, Korea.
Laboratory for Systems Biology and Bio-inspired Engineering, Department of Bio and Brain Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon 34141, Korea.
Cell Rep Methods. 2024 May 20;4(5):100773. doi: 10.1016/j.crmeth.2024.100773. Epub 2024 May 13.
Predicting cellular responses to perturbations requires interpretable insights into molecular regulatory dynamics to perform reliable cell fate control, despite the confounding non-linearity of the underlying interactions. There is a growing interest in developing machine learning-based perturbation response prediction models to handle the non-linearity of perturbation data, but their interpretation in terms of molecular regulatory dynamics remains a challenge. Alternatively, for meaningful biological interpretation, logical network models such as Boolean networks are widely used in systems biology to represent intracellular molecular regulation. However, determining the appropriate regulatory logic of large-scale networks remains an obstacle due to the high-dimensional and discontinuous search space. To tackle these challenges, we present a scalable derivative-free optimizer trained by meta-reinforcement learning for Boolean network models. The logical network model optimized by the trained optimizer successfully predicts anti-cancer drug responses of cancer cell lines, while simultaneously providing insight into their underlying molecular regulatory mechanisms.
预测细胞对扰动的反应需要深入了解分子调控动力学,以便进行可靠的细胞命运控制,尽管潜在相互作用的复杂性很高。人们越来越感兴趣的是开发基于机器学习的扰动响应预测模型来处理扰动数据的非线性,但如何从分子调控动力学的角度对其进行解释仍然是一个挑战。另一方面,为了进行有意义的生物学解释,逻辑网络模型(如布尔网络)在系统生物学中被广泛用于表示细胞内的分子调控。然而,由于高维离散搜索空间,确定大规模网络的适当调控逻辑仍然是一个障碍。为了解决这些挑战,我们提出了一种基于元强化学习训练的可扩展无导数优化器,用于布尔网络模型。经过训练的优化器优化的逻辑网络模型成功预测了癌细胞系对抗癌药物的反应,同时深入了解了它们的潜在分子调控机制。