Buder Thomas, Deutsch Andreas, Seifert Michael, Voss-Böhme Anja
Fakultät Informatik/Mathematik, Hochschule für Technik und Wirtschaft Dresden, Dresden, Germany.
Zentrum für Informationsdienste und Hochleistungsrechnen (ZIH), Technische Universität Dresden, Dresden, Germany.
Bioinform Biol Insights. 2017 Jun 16;11:1177932217712241. doi: 10.1177/1177932217712241. eCollection 2017.
Many normal and cancerous cell lines exhibit a stable composition of cells in distinct states which can, e.g., be defined on the basis of cell surface markers. There is evidence that such an equilibrium is associated with stochastic transitions between distinct states. Quantifying these transitions has the potential to better understand cell lineage compositions. We introduce CellTrans, an R package to quantify stochastic cell state transitions from cell state proportion data from fluorescence-activated cell sorting and flow cytometry experiments. The R package is based on a mathematical model in which cell state alterations occur due to stochastic transitions between distinct cell states whose rates only depend on the current state of a cell. CellTrans is an automated tool for estimating the underlying transition probabilities from appropriately prepared data. We point out potential analytical challenges in the quantification of these cell transitions and explain how CellTrans handles them. The applicability of CellTrans is demonstrated on publicly available data on the evolution of cell state compositions in cancer cell lines. We show that CellTrans can be used to (1) infer the transition probabilities between different cell states, (2) predict cell line compositions at a certain time, (3) predict equilibrium cell state compositions, and (4) estimate the time needed to reach this equilibrium. We provide an implementation of CellTrans in R, freely available via GitHub (https://github.com/tbuder/CellTrans).
许多正常和癌细胞系表现出处于不同状态的细胞的稳定组成,例如,可以根据细胞表面标志物来定义这些状态。有证据表明,这种平衡与不同状态之间的随机转变有关。对这些转变进行量化有可能更好地理解细胞谱系组成。我们引入了CellTrans,这是一个R包,用于根据荧光激活细胞分选和流式细胞术实验的细胞状态比例数据来量化随机细胞状态转变。该R包基于一个数学模型,其中细胞状态的改变是由于不同细胞状态之间的随机转变引起的,其速率仅取决于细胞的当前状态。CellTrans是一个用于从适当准备的数据中估计潜在转变概率的自动化工具。我们指出了在量化这些细胞转变过程中潜在的分析挑战,并解释了CellTrans如何处理这些挑战。在公开可用的癌细胞系细胞状态组成演变数据上展示了CellTrans的适用性。我们表明,CellTrans可用于(1)推断不同细胞状态之间的转变概率,(2)预测特定时间的细胞系组成,(3)预测平衡细胞状态组成,以及(4)估计达到这种平衡所需的时间。我们在R中提供了CellTrans的实现,可通过GitHub(https://github.com/tbuder/CellTrans)免费获取。