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Gene Regulatory Network Inference Using Time-Stamped Cross-Sectional Single Cell Expression Data

机译:基因监管网络推论使用时间戳的横截面单细胞表达数据

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In this paper we presented a novel method for inferring gene regulatory network (GRN) from time-stamped cross-sectional single cell data. Our strategy, called SNIFS (Sparse Network Inference For Single cell data) seeks to recover the causal relationships among genes by analyzing the evolution of the distribution of gene expression levels over time, more specifically using Kolmogorov-Smirnov (KS) distance. In the proposed method, we formulated the GRN inference as a linear regression problem, where we used Lasso regularization to obtain the optimal sparse solution. We tested SNIFS using in silico single cell data from 10- and 20-gene GRNs, and compared the performance of our method with Time Series Network Inference (TSNI), GEne Network Inference with Ensemble of trees (GENIE3), and an extension of GENIE3 for time series data called JUMP3. The results showed that SNIFS outperformed existing algorithms based on the Area Under the Receiver Operating Characteristic (AUROC) and Area Under the Precision-Recall (AUPR) curves.
机译:在本文中,我们提出了从时间标记的横截面的单细胞数据推断基因调控网络(GRN)的新方法。我们的策略,叫做SNIFS(稀疏网络推理适用于单节数据)旨在通过分析基因表达水平的分布随着时间的演变,更具体使用柯尔莫哥洛夫 - 斯米尔诺夫(KS)距离恢复基因之间的因果关系。在所提出的方法,我们制定了GRN推论为线性回归问题,在这里我们使用套索正规化以获得最佳稀疏溶液。我们测试使用SNIFS从10和20基因的GRNs硅片单细胞数据,比较了我们的时间序列网络推理(TSNI),基因网络推理的树木合奏(GENIE3)方法的性能,并GENIE3的延伸时间称为JUMP3序列数据。结果表明,SNIFS优于基于下面积接受者操作特征(AUROC)和下面积精密召回(AUPR)曲线现有算法。

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