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Low-Rank Regularization for Learning Gene Expression Programs

机译:用于学习基因表达程序的低排名正则化

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摘要

Learning gene expression programs directly from a set of observations is challenging due to the complexity of gene regulation, high noise of experimental measurements, and insufficient number of experimental measurements. Imposing additional constraints with strong and biologically motivated regularizations is critical in developing reliable and effective algorithms for inferring gene expression programs. Here we propose a new form of regulation that constrains the number of independent connectivity patterns between regulators and targets, motivated by the modular design of gene regulatory programs and the belief that the total number of independent regulatory modules should be small. We formulate a multi-target linear regression framework to incorporate this type of regulation, in which the number of independent connectivity patterns is expressed as the rank of the connectivity matrix between regulators and targets. We then generalize the linear framework to nonlinear cases, and prove that the generalized low-rank regularization model is still convex. Efficient algorithms are derived to solve both the linear and nonlinear low-rank regularized problems. Finally, we test the algorithms on three gene expression datasets, and show that the low-rank regularization improves the accuracy of gene expression prediction in these three datasets.
机译:由于基因调控的复杂性,实验测量值的高噪声和实验测量值的不足,直接从一组观察结果中学习基因表达程序具有挑战性。对具有强力和生物学动机的正则化强加其他约束对于开发可靠且有效的算法以推断基因表达程序至关重要。在这里,我们提出了一种新形式的监管方式,其受基因监管计划的模块化设计以及独立监管模块总数应少的信念的约束,从而限制了监管机构与目标之间独立连接模式的数量。我们制定了一个多目标线性回归框架以纳入这种类型的监管,其中独立连通性模式的数量表示为监管机构与目标之间的连通性矩阵的等级。然后,将线性框架推广到非线性情况,并证明广义的低秩正则化模型仍然是凸的。导出了有效的算法来解决线性和非线性低秩正则化问题。最后,我们在三个基因表达数据集上测试了算法,并表明低秩正则化提高了这三个数据集中基因表达预测的准确性。

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