Center for Health Sciences
PatternRecog_GAM_SparityRegression license
Yes
SRI International
NITRC
Pattern Recognition based on Joint GAM-Sparsity Regression Model
Kili P
This repository provides MATLAB toolbox for extracting meaningful patterns affected by a certain disease from a large data which are biased to other factors, e.g., age, gender, socioeconomic status, and scanner type. To find the meaningful patterns being able to distinguish group differences while suppressing the impact of other factors, we jointly parameterize a general additive model for desensitizing the image scores and a sparsity-constrained, logistic-regression model for classification by maximizing a likelihood. The software was developed by the Center for Health Sciences, SRI International.
If you use this code, please cite the following publication:
Park SH, Zhang Y, Kwon D, Zhao Q, Zahr N, Pfefferbaum A, Sullivan E, Pohl, KM: Alcohol use effect on adolescent brain development revealed by simultaneously removing confounding factors, identifying morphometric patterns, and classifying individuals, Scientific Reports, In press.
2017-11-06
GAM-Sparsity Constraint Logistic Regression V1.1
Pattern Recognition based on Joint GAM-Sparsity Regression Model
Computational Neuroscience, PatternRecog_GAM_SparityRegression license
http://www.nitrc.org/projects/gam_sparityreg/
pohl.kilian@gmail.com