fused lasso
Recently Published Documents


TOTAL DOCUMENTS

103
(FIVE YEARS 36)

H-INDEX

15
(FIVE YEARS 2)

2022 ◽  
Vol 13 ◽  
Author(s):  
Shuaiqun Wang ◽  
Xinqi Wu ◽  
Kai Wei ◽  
Wei Kong

Brain imaging genetics can demonstrate the complicated relationship between genetic factors and the structure or function of the humankind brain. Therefore, it has become an important research topic and attracted more and more attention from scholars. The structured sparse canonical correlation analysis (SCCA) model has been widely used to identify the association between brain image data and genetic data in imaging genetics. To investigate the intricate genetic basis of cerebrum imaging phenotypes, a great deal of other standard SCCA methods combining different interested structed have now appeared. For example, some models use group lasso penalty, and some use the fused lasso or the graph/network guided fused lasso for feature selection. However, prior knowledge may not be completely available and the group lasso methods have limited capabilities in practical applications. The graph/network guided approaches can use sample correlation to define constraints, thereby overcoming this problem. Unfortunately, this also has certain limitations. The graph/network conducted methods are susceptible to the sign of the sample correlation of the data, which will affect the stability of the model. To improve the efficiency and stability of SCCA, a sparse canonical correlation analysis model with GraphNet regularization (FGLGNSCCA) is proposed in this manuscript. Based on the FGLSCCA model, the GraphNet regularization penalty is imposed in our study and an optimization algorithm is presented to optimize the model. The structural Magnetic Resonance Imaging (sMRI) and gene expression data are used in this study to find the genotype and characteristics of brain regions associated with Alzheimer’s disease (AD). Experiment results shown that the new FGLGNSCCA model proposed in this manuscript is superior or equivalent to traditional methods in both artificially synthesized neuroimaging genetics data or actual neuroimaging genetics data. It can select essential features more powerfully compared with other multivariate methods and identify significant canonical correlation coefficients as well as captures more significant typical weight patterns which demonstrated its excellent ability in finding biologically important imaging genetic relations.


Author(s):  
M. Ohishi ◽  
K. Fukui ◽  
K. Okamura ◽  
Y. Itoh ◽  
H. Yanagihara
Keyword(s):  

2021 ◽  
Vol 68 ◽  
pp. 102728
Author(s):  
Lijun Yang ◽  
Sijia Ding ◽  
Feng Zhou ◽  
Xiaohui Yang ◽  
Yunhai Xiao

2021 ◽  
pp. 108058
Author(s):  
Lixin Cui ◽  
Lu Bai ◽  
Yue Wang ◽  
Philip S. Yu ◽  
Edwin R. Hancock

2021 ◽  
pp. 115-154
Author(s):  
Joe Suzuki
Keyword(s):  

Sign in / Sign up

Export Citation Format

Share Document