Cell reprogramming design by transfer learning of functional transcriptional networks

Thomas P. Wytock, Adilson E. Motter
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Abstract

Recent developments in synthetic biology, next-generation sequencing, and machine learning provide an unprecedented opportunity to rationally design new disease treatments based on measured responses to gene perturbations and drugs to reprogram cells. The main challenges to seizing this opportunity are the incomplete knowledge of the cellular network and the combinatorial explosion of possible interventions, both of which are insurmountable by experiments. To address these challenges, we develop a transfer learning approach to control cell behavior that is pre-trained on transcriptomic data associated with human cell fates, thereby generating a model of the network dynamics that can be transferred to specific reprogramming goals. The approach combines transcriptional responses to gene perturbations to minimize the difference between a given pair of initial and target transcriptional states. We demonstrate our approach's versatility by applying it to a microarray dataset comprising >9,000 microarrays across 54 cell types and 227 unique perturbations, and an RNASeq dataset consisting of >10,000 sequencing runs across 36 cell types and 138 perturbations. Our approach reproduces known reprogramming protocols with an AUROC of 0.91 while innovating over existing methods by pre-training an adaptable model that can be tailored to specific reprogramming transitions. We show that the number of gene perturbations required to steer from one fate to another increases with decreasing developmental relatedness and that fewer genes are needed to progress along developmental paths than to regress. These findings establish a proof-of-concept for our approach to computationally design control strategies and provide insights into how gene regulatory networks govern phenotype.
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通过转移学习功能转录网络进行细胞重编程设计
合成生物学、下一代测序和机器学习的最新发展为我们提供了一个前所未有的机会,可以根据对基因扰动和重编程细胞药物的测量反应,合理地设计新的疾病治疗方法。抓住这一机遇所面临的主要挑战是细胞网络知识的不完整和可能干预措施的组合爆炸,而这两点都是实验无法克服的。为了应对这些挑战,我们开发了一种转移学习方法来控制细胞行为,这种方法在与人体细胞命运相关的转录组数据上进行预训练,从而生成一个可转移到特定重编程目标的网络动力学模型。这种方法结合了转录对基因扰动的反应,以最小化给定的一对初始转录状态和目标转录状态之间的差异。我们将这一方法应用于一个包括 54 种细胞类型和 227 种独特扰动的超过 9000 个微阵列数据集,以及一个包括 36 种细胞类型和 138 种扰动的超过 10000 次测序的 RNASeq 数据集,从而展示了它的多功能性。我们的方法重现了已知的编程协议,AUROC 为 0.91,同时通过预训练一个可适应特定编程转换的适应性模型,对现有方法进行了创新。我们的研究表明,从一种命运转向另一种命运所需的基因扰动数量随着发育相关性的降低而增加,沿着发育路径前进所需的基因数量少于退步所需的基因数量。这些发现为我们计算设计控制策略的方法建立了概念验证,并为了解基因调控网络如何调控表型提供了启示。
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