Literature DB >> 34745212

Parenclitic and Synolytic Networks Revisited.

Tatiana Nazarenko1, Harry J Whitwell2,3,4,5, Oleg Blyuss1,4,6,7, Alexey Zaikin1,4,5.   

Abstract

Parenclitic networks provide a powerful and relatively new way to coerce multidimensional data into a graph form, enabling the application of graph theory to evaluate features. Different algorithms have been published for constructing parenclitic networks, leading to the question-which algorithm should be chosen? Initially, it was suggested to calculate the weight of an edge between two nodes of the network as a deviation from a linear regression, calculated for a dependence of one of these features on the other. This method works well, but not when features do not have a linear relationship. To overcome this, it was suggested to calculate edge weights as the distance from the area of most probable values by using a kernel density estimation. In these two approaches only one class (typically controls or healthy population) is used to construct a model. To take account of a second class, we have introduced synolytic networks, using a boundary between two classes on the feature-feature plane to estimate the weight of the edge between these features. Common to all these approaches is that topological indices can be used to evaluate the structure represented by the graphs. To compare these network approaches alongside more traditional machine-learning algorithms, we performed a substantial analysis using both synthetic data with a priori known structure and publicly available datasets used for the benchmarking of ML-algorithms. Such a comparison has shown that the main advantage of parenclitic and synolytic networks is their resistance to over-fitting (occurring when the number of features is greater than the number of subjects) compared to other ML approaches. Secondly, the capability to visualise data in a structured form, even when this structure is not a priori available allows for visual inspection and the application of well-established graph theory to their interpretation/application, eliminating the "black-box" nature of other ML approaches.
Copyright © 2021 Nazarenko, Whitwell, Blyuss and Zaikin.

Entities:  

Keywords:  complexity; graphs; networks; parenclitic; synolytic

Year:  2021        PMID: 34745212      PMCID: PMC8564045          DOI: 10.3389/fgene.2021.733783

Source DB:  PubMed          Journal:  Front Genet        ISSN: 1664-8021            Impact factor:   4.599


  10 in total

1.  Complex networks analysis of obstructive nephropathy data.

Authors:  M Zanin; S Boccaletti
Journal:  Chaos       Date:  2011-09       Impact factor: 3.642

2.  Comparison of Longitudinal CA125 Algorithms as a First-Line Screen for Ovarian Cancer in the General Population.

Authors:  Oleg Blyuss; Matthew Burnell; Andy Ryan; Aleksandra Gentry-Maharaj; Inés P Mariño; Jatinderpal Kalsi; Ranjit Manchanda; John F Timms; Mahesh Parmar; Steven J Skates; Ian Jacobs; Alexey Zaikin; Usha Menon
Journal:  Clin Cancer Res       Date:  2018-07-03       Impact factor: 12.531

Review 3.  Dynamic and thermodynamic models of adaptation.

Authors:  A N Gorban; T A Tyukina; L I Pokidysheva; E V Smirnova
Journal:  Phys Life Rev       Date:  2021-03-17       Impact factor: 11.025

4.  Feature selection in the reconstruction of complex network representations of spectral data.

Authors:  Massimiliano Zanin; Ernestina Menasalvas; Stefano Boccaletti; Pedro Sousa
Journal:  PLoS One       Date:  2013-08-26       Impact factor: 3.240

5.  Knowledge discovery in spectral data by means of complex networks.

Authors:  Massimiliano Zanin; David Papo; José Luis González Solís; Juan Carlos Martínez Espinosa; Claudio Frausto-Reyes; Pascual Palomares Anda; Ricardo Sevilla-Escoboza; Rider Jaimes-Reategui; Stefano Boccaletti; Ernestina Menasalvas; Pedro Sousa
Journal:  Metabolites       Date:  2013-03-11

6.  A DNA methylation network interaction measure, and detection of network oncomarkers.

Authors:  Thomas E Bartlett; Sofia C Olhede; Alexey Zaikin
Journal:  PLoS One       Date:  2014-01-06       Impact factor: 3.240

7.  Parenclitic Network Analysis of Methylation Data for Cancer Identification.

Authors:  Alexander Karsakov; Thomas Bartlett; Artem Ryblov; Iosif Meyerov; Mikhail Ivanchenko; Alexey Zaikin
Journal:  PLoS One       Date:  2017-01-20       Impact factor: 3.240

8.  Parenclitic networks for predicting ovarian cancer.

Authors:  Harry J Whitwell; Oleg Blyuss; Usha Menon; John F Timms; Alexey Zaikin
Journal:  Oncotarget       Date:  2018-04-27

9.  Improved early detection of ovarian cancer using longitudinal multimarker models.

Authors:  Harry J Whitwell; Jenny Worthington; Oleg Blyuss; Aleksandra Gentry-Maharaj; Andy Ryan; Richard Gunu; Jatinderpal Kalsi; Usha Menon; Ian Jacobs; Alexey Zaikin; John F Timms
Journal:  Br J Cancer       Date:  2020-01-15       Impact factor: 7.640

10.  Comparative performance of MRI-derived PRECISE scores and delta-radiomics models for the prediction of prostate cancer progression in patients on active surveillance.

Authors:  Nikita Sushentsev; Leonardo Rundo; Oleg Blyuss; Tatiana Nazarenko; Aleksandr Suvorov; Vincent J Gnanapragasam; Evis Sala; Tristan Barrett
Journal:  Eur Radiol       Date:  2021-07-13       Impact factor: 5.315

  10 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.