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Cell Fate Forecasting: A Data-Assimilation Approach to Predict Epithelial-Mesenchymal Transition

机译:细胞命运预测:预测上皮间充质转换的数据同化方法

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摘要

Epithelial-mesenchymal transition (EMT) is a fundamental biological process that plays a central role in embryonic development, tissue regeneration, and cancer metastasis. Transforming growth factor-β (TGFβ) is a potent inducer of this cellular transition, which is composed of transitions from an epithelial state to intermediate or partial EMT state(s) to a mesenchymal state. Using computational models to predict cell state transitions in a specific experiment is inherently difficult for reasons including model parameter uncertainty and error associated with experimental observations. In this study, we demonstrate that a data-assimilation approach using an ensemble Kalman filter, which combines limited noisy observations with predictions from a computational model of TGFβ-induced EMT, can reconstruct the cell state and predict the timing of state transitions. We used our approach in proof-of-concept “synthetic” in silico experiments, in which experimental observations were produced from a known computational model with the addition of noise. We mimic parameter uncertainty in in vitro experiments by incorporating model error that shifts the TGFβ doses associated with the state transitions and reproduces experimentally observed variability in cell state by either shifting a single parameter or generating “populations” of model parameters. We performed synthetic experiments for a wide range of TGFβ doses, investigating different cell steady-state conditions, and conducted parameter studies varying properties of the data-assimilation approach including the time interval between observations and incorporating multiplicative inflation, a technique to compensate for underestimation of the model uncertainty and mitigate the influence of model error. We find that cell state can be successfully reconstructed and the future cell state predicted in synthetic experiments, even in the setting of model error, when experimental observations are performed at a sufficiently short time interval and incorporate multiplicative inflation. Our study demonstrates the feasibility and utility of a data-assimilation approach to forecasting the fate of cells undergoing EMT.
机译:上皮 - 间充质转换(EMT)是一种基本的生物过程,其在胚胎发育,组织再生和癌症转移中起着核心作用。转化生长因子-β(TGFβ)是这种细胞转变的有效诱导剂,其由从上皮态转变为中间体或部分EMT态到间充质状态组成。使用计算模型预测特定实验中的细胞状态转换本质上是困难的,因为包括模型参数不确定性和与实验观察相关的错误。在这项研究中,我们证明使用集合卡尔曼滤波器的数据同化方法与来自TGFβ诱导的EMT的计算模型的预测结合了与来自TGFβ诱导的EMT的预测相结合的数据同化方法可以重建细胞状态并预测状态转换的定时。我们在硅实验中使用了我们在概念上的验证“合成”的方法,其中从已知的计算模型中添加了实验观察。我们通过结合模型误差来模拟体外实验中的参数不确定度,该模型误差将与状态过渡相关联的TGFβ剂量,并通过移位单个参数或产生模型参数的“填充”来再现细胞状态的实验观察变异性。我们对广泛的TGFβ剂量进行了合成实验,研究了不同的细胞稳态条件,并进行了数据同化方法的参数研究,包括观察之间的时间间隔和包含乘法的通胀,一种补偿低估的技术模型不确定性并减轻模型误差的影响。我们发现可以成功重建单元状态,并且在合成实验中预测的未来单元状态,即使在模型误差的设置时,当以足够短的时间间隔进行实验观察并包含乘法膨胀。我们的研究表明了数据同化方法预测遭受EMT的细胞命运的可行性和效用。

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