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GWAS
GWAS Summary Statistics for Brain Imaging PhenotypesL2RM
BSOINN-old-expired
Bayesian Scalar on Image Regression with Non-ignorable Non-responseTPRM
TPRM: Tensor partition regression models with applications in imaging biomarker detectionMWPCR
MWPCR stands for Multiscale Weighted Principal Component Regression. Please refer to the paper "MWPCR: Multiscale Weighted Principal Component Regression for High-dimensional Prediction" for more details about the methods and models.FSEM
Functional structural equation model for twin functional dataBSOINN
Bayesian Scalar on Image Regression with Non-ignorable Non-responseBCORSIS
SCALNET
RATS
Codes for paper "A robust adaptive two sample test in high dimensions"SVCM
GENV
This is a package for fitting the groupwise envelope modelGEM
Copied from https://github.com/mlzxzhou/GEMGFPLVCM
CODE for paper “Generalized functional partial linear varying-coefficient model for asynchronous longitudinal data”MFSDA_Python
Multivariate Functional Shape Data Analysis in Python (MFSDA_Python) is a Python based package for statistical shape analysis. A multivariate varying coefficient model is introduced to build the association between the multivariate shape measurements and demographic information and other clinical, biological variables. Statistical inference, i.e., hypothesis testing, is also included in this package, which can be used in investigating whether some covariates of interest are significantly associated with the shape information. The hypothesis testing results are further used in clustering based analysis, i.e., significant suregion detection. This MFSDA package is developed by Chao Huang and Hongtu Zhu from the BIG-S2 lab.Love Open Source and this site? Check out how you can help us