Detailed Information

Cited 0 time in webofscience Cited 0 time in scopus
Metadata Downloads

Deep sparse multi-task learning for feature selection in Alzheimer's disease diagnosis

Authors
Suk, Heung-IlLee, Seong-WhanShen, Dinggang
Issue Date
Jun-2016
Publisher
SPRINGER HEIDELBERG
Keywords
Alzheimer' s disease (AD); Mild cognitive impairment (MCI); Feature selection; Multi-task learning; Deep architecture; Sparse least squared regression; Magnetic resonance imaging (MRI); Positron emission topography (PET)
Citation
BRAIN STRUCTURE & FUNCTION, v.221, no.5, pp.2569 - 2587
Indexed
SCIE
SCOPUS
Journal Title
BRAIN STRUCTURE & FUNCTION
Volume
221
Number
5
Start Page
2569
End Page
2587
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/88492
DOI
10.1007/s00429-015-1059-y
ISSN
1863-2653
Abstract
Recently, neuroimaging-based Alzheimer's disease (AD) or mild cognitive impairment (MCI) diagnosis has attracted researchers in the field, due to the increasing prevalence of the diseases. Unfortunately, the unfavorable high-dimensional nature of neuroimaging data, but a limited small number of samples available, makes it challenging to build a robust computer-aided diagnosis system. Machine learning techniques have been considered as a useful tool in this respect and, among various methods, sparse regression has shown its validity in the literature. However, to our best knowledge, the existing sparse regression methods mostly try to select features based on the optimal regression coefficients in one step. We argue that since the training feature vectors are composed of both informative and uninformative or less informative features, the resulting optimal regression coefficients are inevidently affected by the uninformative or less informative features. To this end, we first propose a novel deep architecture to recursively discard uninformative features by performing sparse multi-task learning in a hierarchical fashion. We further hypothesize that the optimal regression coefficients reflect the relative importance of features in representing the target response variables. In this regard, we use the optimal regression coefficients learned in one hierarchy as feature weighting factors in the following hierarchy, and formulate a weighted sparse multi-task learning method. Lastly, we also take into account the distributional characteristics of samples per class and use clustering-induced subclass label vectors as target response values in our sparse regression model. In our experiments on the ADNI cohort, we performed both binary and multi-class classification tasks in AD/MCI diagnosis and showed the superiority of the proposed method by comparing with the state-of-the-art methods.
Files in This Item
There are no files associated with this item.
Appears in
Collections
Graduate School > Department of Artificial Intelligence > 1. Journal Articles

qrcode

Items in ScholarWorks are protected by copyright, with all rights reserved, unless otherwise indicated.

Related Researcher

Researcher Lee, Seong Whan photo

Lee, Seong Whan
Department of Artificial Intelligence
Read more

Altmetrics

Total Views & Downloads

BROWSE