Literature DB >> 34791577

From complex data to biological insight: 'DEKER' feature selection and network inference.

Sean M S Hayes1, Jeffrey R Sachs2, Carolyn R Cho2.   

Abstract

Network inference is a valuable approach for gaining mechanistic insight from high-dimensional biological data. Existing methods for network inference focus on ranking all possible relations (edges) among all measured quantities such as genes, proteins, metabolites (features) observed, which yields a dense network that is challenging to interpret. Identifying a sparse, interpretable network using these methods thus requires an error-prone thresholding step which compromises their performance. In this article we propose a new method, DEKER-NET, that addresses this limitation by directly identifying a sparse, interpretable network without thresholding, improving real-world performance. DEKER-NET uses a novel machine learning method for feature selection in an iterative framework for network inference. DEKER-NET is extremely flexible, handling linear and nonlinear relations while making no assumptions about the underlying distribution of data, and is suitable for categorical or continuous variables. We test our method on the Dialogue for Reverse Engineering Assessments and Methods (DREAM) challenge data, demonstrating that it can directly identify sparse, interpretable networks without thresholding while maintaining performance comparable to the hypothetical best-case thresholded network of other methods.
© 2021. Merck Sharp & Dohme Corp., a subsidiary of Merck & Co., Inc., Kenilworth, N.J., U.S.A., under exclusive licence to Springer Science+Business Media.

Entities:  

Keywords:  Feature selection; Machine learning; Multiomics; Network inference; Systems biology

Mesh:

Substances:

Year:  2021        PMID: 34791577      PMCID: PMC8837529          DOI: 10.1007/s10928-021-09792-7

Source DB:  PubMed          Journal:  J Pharmacokinet Pharmacodyn        ISSN: 1567-567X            Impact factor:   2.745


  12 in total

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3.  Statistical challenges of high-dimensional data.

Authors:  Iain M Johnstone; D Michael Titterington
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4.  GeneNetWeaver: in silico benchmark generation and performance profiling of network inference methods.

Authors:  Thomas Schaffter; Daniel Marbach; Dario Floreano
Journal:  Bioinformatics       Date:  2011-06-22       Impact factor: 6.937

5.  The transcriptional landscape of polyploid wheat.

Authors:  R H Ramírez-González; P Borrill; D Lang; S A Harrington; J Brinton; L Venturini; M Davey; J Jacobs; F van Ex; A Pasha; Y Khedikar; S J Robinson; A T Cory; T Florio; L Concia; C Juery; H Schoonbeek; B Steuernagel; D Xiang; C J Ridout; B Chalhoub; K F X Mayer; M Benhamed; D Latrasse; A Bendahmane; B B H Wulff; R Appels; V Tiwari; R Datla; F Choulet; C J Pozniak; N J Provart; A G Sharpe; E Paux; M Spannagl; A Bräutigam; C Uauy
Journal:  Science       Date:  2018-08-17       Impact factor: 47.728

6.  Integration of omic networks in a developmental atlas of maize.

Authors:  Justin W Walley; Ryan C Sartor; Zhouxin Shen; Robert J Schmitz; Kevin J Wu; Mark A Urich; Joseph R Nery; Laurie G Smith; James C Schnable; Joseph R Ecker; Steven P Briggs
Journal:  Science       Date:  2016-08-19       Impact factor: 47.728

7.  Distinct tissue-specific transcriptional regulation revealed by gene regulatory networks in maize.

Authors:  Ji Huang; Juefei Zheng; Hui Yuan; Karen McGinnis
Journal:  BMC Plant Biol       Date:  2018-06-07       Impact factor: 4.215

8.  TIGRESS: Trustful Inference of Gene REgulation using Stability Selection.

Authors:  Anne-Claire Haury; Fantine Mordelet; Paola Vera-Licona; Jean-Philippe Vert
Journal:  BMC Syst Biol       Date:  2012-11-22

9.  Wisdom of crowds for robust gene network inference.

Authors:  Daniel Marbach; James C Costello; Robert Küffner; Nicole M Vega; Robert J Prill; Diogo M Camacho; Kyle R Allison; Manolis Kellis; James J Collins; Gustavo Stolovitzky
Journal:  Nat Methods       Date:  2012-07-15       Impact factor: 28.547

10.  The Wheat GENIE3 Network Provides Biologically-Relevant Information in Polyploid Wheat.

Authors:  Sophie A Harrington; Anna E Backhaus; Ajit Singh; Keywan Hassani-Pak; Cristobal Uauy
Journal:  G3 (Bethesda)       Date:  2020-10-05       Impact factor: 3.154

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  1 in total

Review 1.  Two heads are better than one: current landscape of integrating QSP and machine learning : An ISoP QSP SIG white paper by the working group on the integration of quantitative systems pharmacology and machine learning.

Authors:  Tongli Zhang; Ioannis P Androulakis; Peter Bonate; Limei Cheng; Tomáš Helikar; Jaimit Parikh; Christopher Rackauckas; Kalyanasundaram Subramanian; Carolyn R Cho
Journal:  J Pharmacokinet Pharmacodyn       Date:  2022-02-01       Impact factor: 2.745

  1 in total

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