| Literature DB >> 25356194 |
Anuja Sharma1, P Thomas Fletcher1, John H Gilmore2, Maria L Escolar3, Aditya Gupta4, Martin Styner2, Guido Gerig1.
Abstract
Temporal modeling frameworks often operate on scalar variables by summarizing data at initial stages as statistical summaries of the underlying distributions. For instance, DTI analysis often employs summary statistics, like mean, for regions of interest and properties along fiber tracts for population studies and hypothesis testing. This reduction via discarding of variability information may introduce significant errors which propagate through the procedures. We propose a novel framework which uses distribution-valued variables to retain and utilize the local variability information. Classic linear regression is adapted to employ these variables for model estimation. The increased stability and reliability of our proposed method when compared with regression using single-valued statistical summaries, is demonstrated in a validation experiment with synthetic data. Our driving application is the modeling of age-related changes along DTI white matter tracts. Results are shown for the spatiotemporal population trajectory of genu tract estimated from 45 healthy infants and compared with a Krabbe's patient.Entities:
Keywords: DTI; distribution-valued data; early neurodevelopment; linear regression; spatiotemporal growth trajectory
Year: 2014 PMID: 25356194 PMCID: PMC4209698 DOI: 10.1109/ISBI.2014.6867932
Source DB: PubMed Journal: Proc IEEE Int Symp Biomed Imaging ISSN: 1945-7928