Parenclitic and Synolytic Networks Revisited

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 sho...

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Published inFrontiers in genetics Vol. 12; p. 733783
Main Authors Nazarenko, Tatiana, Whitwell, Harry J, Blyuss, Oleg, Zaikin, Alexey
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Media S.A 20.10.2021
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Summary: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 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 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.
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Reviewed by: Yuehua Cui, Michigan State University, United States
Edited by: Alessio Martino, National Research Council (CNR), Italy
This article was submitted to Statistical Genetics and Methodology, a section of the journal Frontiers in Genetics
Shaoyu Li, University of North Carolina at Charlotte, United States
ISSN:1664-8021
1664-8021
DOI:10.3389/fgene.2021.733783