| Literature DB >> 22865953 |
Roman Filipovych1, Ying Wang, Christos Davatzikos.
Abstract
One of the many advantages of multivariate pattern recognition approaches over conventional mass-univariate group analysis using voxel-wise statistical tests is their potential to provide highly sensitive and specific markers of diseases on an individual basis. However, a vast majority of imaging problems addressed by pattern recognition are viewed from the perspective of a two-class classification. In this article, we provide a summary of selected works that propose solutions to biomedical problems where the widely-accepted classification paradigm is not appropriate. These pattern recognition approaches address common challenges in many imaging studies: high heterogeneity of populations and continuous progression of diseases. We focus on diseases associated with aging and propose that clustering-based approaches may be more suitable for disentanglement of the underlying heterogeneity, while high-dimensional pattern regression methodology is appropriate for prediction of continuous and gradual clinical progression from magnetic resonance brain images.Entities:
Year: 2011 PMID: 22865953 PMCID: PMC3409581 DOI: 10.1002/ima.20280
Source DB: PubMed Journal: Int J Imaging Syst Technol ISSN: 0899-9457 Impact factor: 2.000