scholarly journals Tests for covariance structures with high-dimensional repeated measurements

2017 ◽  
Vol 45 (3) ◽  
pp. 1185-1213 ◽  
Author(s):  
Ping-Shou Zhong ◽  
Wei Lan ◽  
Peter X. K. Song ◽  
Chih-Ling Tsai
2020 ◽  
Author(s):  
Naser Oda Jassim ◽  
Abdul Hussein Saber Al-Mouel

Technometrics ◽  
1997 ◽  
Vol 39 (1) ◽  
pp. 101
Author(s):  
Ramalingam Shanmugam ◽  
W. J. Krzanowski ◽  
F. H. C. Marriott

Biometrika ◽  
2019 ◽  
Vol 106 (3) ◽  
pp. 619-634 ◽  
Author(s):  
Ping-Shou Zhong ◽  
Runze Li ◽  
Shawn Santo

Summary This paper deals with the detection and identification of changepoints among covariances of high-dimensional longitudinal data, where the number of features is greater than both the sample size and the number of repeated measurements. The proposed methods are applicable under general temporal-spatial dependence. A new test statistic is introduced for changepoint detection, and its asymptotic distribution is established. If a changepoint is detected, an estimate of the location is provided. The rate of convergence of the estimator is shown to depend on the data dimension, sample size, and signal-to-noise ratio. Binary segmentation is used to estimate the locations of possibly multiple changepoints, and the corresponding estimator is shown to be consistent under mild conditions. Simulation studies provide the empirical size and power of the proposed test and the accuracy of the changepoint estimator. An application to a time-course microarray dataset identifies gene sets with significant gene interaction changes over time.


2020 ◽  
pp. 096228022094608
Author(s):  
Louis Capitaine ◽  
Robin Genuer ◽  
Rodolphe Thiébaut

Random forests are one of the state-of-the-art supervised machine learning methods and achieve good performance in high-dimensional settings where p, the number of predictors, is much larger than n, the number of observations. Repeated measurements provide, in general, additional information, hence they are worth accounted especially when analyzing high-dimensional data. Tree-based methods have already been adapted to clustered and longitudinal data by using a semi-parametric mixed effects model, in which the non-parametric part is estimated using regression trees or random forests. We propose a general approach of random forests for high-dimensional longitudinal data. It includes a flexible stochastic model which allows the covariance structure to vary over time. Furthermore, we introduce a new method which takes intra-individual covariance into consideration to build random forests. Through simulation experiments, we then study the behavior of different estimation methods, especially in the context of high-dimensional data. Finally, the proposed method has been applied to an HIV vaccine trial including 17 HIV-infected patients with 10 repeated measurements of 20,000 gene transcripts and blood concentration of human immunodeficiency virus RNA. The approach selected 21 gene transcripts for which the association with HIV viral load was fully relevant and consistent with results observed during primary infection.


Author(s):  
Jiayi Hou ◽  
Kellie J. Archer

AbstractAn ordinal scale is commonly used to measure health status and disease related outcomes in hospital settings as well as in translational medical research. In addition, repeated measurements are common in clinical practice for tracking and monitoring the progression of complex diseases. Classical methodology based on statistical inference, in particular, ordinal modeling has contributed to the analysis of data in which the response categories are ordered and the number of covariates (


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