Abstract
We propose a methodological framework for exploring complex multimodal imaging data from a neuroscience study with the aim of identifying a data-driven group structure in the patients sample, possibly connected with the presence/absence of lifetime mental disorder. The functional covariances of fMRI signals are first considered as data objects. Appropriate clustering procedures and low dimensional representations are proposed. For inference, a Frechet estimator of both the covariance operator itself and the average covariance operator is used. A permutation procedure to test the equality of the covariance operators between two groups is also considered. We finally propose a method to incorporate spatial dependencies between different brain regions, merging the information from both the Structural Networks and the Dynamic functional activity.
| Lingua originale | Inglese |
|---|---|
| Titolo della pubblicazione ospite | Studies in Neural Data Science |
| Editore | Springer |
| Pagine | 57-73 |
| Numero di pagine | 17 |
| Volume | 257 |
| ISBN (stampa) | 978-3-030-00039-4 |
| DOI | |
| Stato di pubblicazione | Pubblicato - 2018 |
OSS delle Nazioni Unite
Questo processo contribuisce al raggiungimento dei seguenti obiettivi di sviluppo sostenibile
-
SDG 3 Salute e benessere
All Science Journal Classification (ASJC) codes
- Matematica generale
Keywords
- Data objects
- Functional data analysis
- Multimodal Imaging
- Neuroscience
- Principal components
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