Literature DB >> 25377664

Avoiding pitfalls in L1-regularised inference of gene networks.

Andreas Tjärnberg1, Torbjörn E M Nordling, Matthew Studham, Sven Nelander, Erik L L Sonnhammer.   

Abstract

Statistical regularisation methods such as LASSO and related L1 regularised regression methods are commonly used to construct models of gene regulatory networks. Although they can theoretically infer the correct network structure, they have been shown in practice to make errors, i.e. leave out existing links and include non-existing links. We show that L1 regularisation methods typically produce a poor network model when the analysed data are ill-conditioned, i.e. the gene expression data matrix has a high condition number, even if it contains enough information for correct network inference. However, the correct structure of network models can be obtained for informative data, data with such a signal to noise ratio that existing links can be proven to exist, when these methods fail, by using least-squares regression and setting small parameters to zero, or by using robust network inference, a recent method taking the intersection of all non-rejectable models. Since available experimental data sets are generally ill-conditioned, we recommend to check the condition number of the data matrix to avoid this pitfall of L1 regularised inference, and to also consider alternative methods.

Mesh:

Year:  2014        PMID: 25377664     DOI: 10.1039/c4mb00419a

Source DB:  PubMed          Journal:  Mol Biosyst        ISSN: 1742-2051


  7 in total

1.  LASSIM-A network inference toolbox for genome-wide mechanistic modeling.

Authors:  Rasmus Magnusson; Guido Pio Mariotti; Mattias Köpsén; William Lövfors; Danuta R Gawel; Rebecka Jörnsten; Jörg Linde; Torbjörn E M Nordling; Elin Nyman; Sylvie Schulze; Colm E Nestor; Huan Zhang; Gunnar Cedersund; Mikael Benson; Andreas Tjärnberg; Mika Gustafsson
Journal:  PLoS Comput Biol       Date:  2017-06-22       Impact factor: 4.475

2.  Uncovering cancer gene regulation by accurate regulatory network inference from uninformative data.

Authors:  Deniz Seçilmiş; Thomas Hillerton; Daniel Morgan; Andreas Tjärnberg; Sven Nelander; Torbjörn E M Nordling; Erik L L Sonnhammer
Journal:  NPJ Syst Biol Appl       Date:  2020-11-09

3.  Fast and accurate gene regulatory network inference by normalized least squares regression.

Authors:  Thomas Hillerton; Deniz Seçilmiş; Sven Nelander; Erik L L Sonnhammer
Journal:  Bioinformatics       Date:  2022-02-17       Impact factor: 6.937

4.  Optimal Sparsity Selection Based on an Information Criterion for Accurate Gene Regulatory Network Inference.

Authors:  Deniz Seçilmiş; Sven Nelander; Erik L L Sonnhammer
Journal:  Front Genet       Date:  2022-07-13       Impact factor: 4.772

5.  Knowledge of the perturbation design is essential for accurate gene regulatory network inference.

Authors:  Deniz Seçilmiş; Thomas Hillerton; Andreas Tjärnberg; Sven Nelander; Torbjörn E M Nordling; Erik L L Sonnhammer
Journal:  Sci Rep       Date:  2022-10-03       Impact factor: 4.996

6.  LiPLike: towards gene regulatory network predictions of high certainty.

Authors:  Rasmus Magnusson; Mika Gustafsson
Journal:  Bioinformatics       Date:  2020-04-15       Impact factor: 6.937

7.  Perturbation-based gene regulatory network inference to unravel oncogenic mechanisms.

Authors:  Daniel Morgan; Matthew Studham; Andreas Tjärnberg; Holger Weishaupt; Fredrik J Swartling; Torbjörn E M Nordling; Erik L L Sonnhammer
Journal:  Sci Rep       Date:  2020-08-25       Impact factor: 4.379

  7 in total

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