Persistent Homology Analysis of Brain Artery Trees.


Autoria(s): Bendich, P; Marron, JS; Miller, E; Pieloch, A; Skwerer, S
Resumo

New representations of tree-structured data objects, using ideas from topological data analysis, enable improved statistical analyses of a population of brain artery trees. A number of representations of each data tree arise from persistence diagrams that quantify branching and looping of vessels at multiple scales. Novel approaches to the statistical analysis, through various summaries of the persistence diagrams, lead to heightened correlations with covariates such as age and sex, relative to earlier analyses of this data set. The correlation with age continues to be significant even after controlling for correlations from earlier significant summaries.

Formato

198 - 218

Identificador

http://www.ncbi.nlm.nih.gov/pubmed/27642379

Ann Appl Stat, 10 (1), pp. 198 - 218

1932-6157

http://hdl.handle.net/10161/11157

Relação

Ann Appl Stat

10.1214/15-AOAS886

Palavras-Chave #Persistent homology #angiography #statistics #topological data analysis #tree-structured data
Tipo

Journal Article

Cobertura

United States

Idioma(s)

ENG