Hierarchical clustering with multiple-height branch-cut applied to short time-series gene expression data.


Autoria(s): Vogogias, Athanasios; Kennedy, Jessie; Archambault, Daniel
Data(s)

22/04/2016

Resumo

Rigid adherence to pre-specified thresholds and static graphical representations can lead to incorrect decisions on merging of clusters. As an alternative to existing automated or semi-automated methods, we developed a visual analytics approach for performing hierarchical clustering analysis of short time-series gene expression data. Dynamic sliders control parameters such as the similarity threshold at which clusters are merged and the level of relative intra-cluster distinctiveness, which can be used to identify "weak-edges" within clusters. An expert user can drill down to further explore the dendrogram and detect nested clusters and outliers. This is done by using the sliders and by pointing and clicking on the representation to cut the branches of the tree in multiple-heights. A prototype of this tool has been developed in collaboration with a small group of biologists for analysing their own datasets. Initial feedback on the tool has been positive.

Formato

application/pdf

Identificador

http://researchrepository.napier.ac.uk/10417/1/vogogias2016_eurovis16.pdf

Vogogias, Athanasios, Kennedy, Jessie and Archambault, Daniel (2016) Hierarchical clustering with multiple-height branch-cut applied to short time-series gene expression data. In: EuroVis 2016 - Posters, 06-10 June 2016, Groningen, the Netherlands.

Idioma(s)

en

Publicador

The Eurographics Association

Relação

http://researchrepository.napier.ac.uk/10417/

http://diglib.eg.org/handle/10.2312/eurp20161127

10.2312/eurp.20161127

Palavras-Chave #QA75 Electronic computers. Computer science
Tipo

Conference or Workshop Item

PeerReviewed