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期刊名:Journal of the american statistical association

缩写:J AM STAT ASSOC

ISSN:0162-1459

e-ISSN:1537-274X

IF/分区:3.0/Q1

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共收录本刊相关文章索引16
Clinical Trial Case Reports Meta-Analysis RCT Review Systematic Review
Classical Article Case Reports Clinical Study Clinical Trial Clinical Trial Protocol Comment Comparative Study Editorial Guideline Letter Meta-Analysis Multicenter Study Observational Study Randomized Controlled Trial Review Systematic Review
Zhiling Gu,Shan Yu,Guannan Wang et al. Zhiling Gu et al.
Generative artificial intelligence (AI) has transformed the biomedical imaging field through image synthesis, addressing challenges of data availability, privacy, and diversity in biomedical research. This paper proposes a novel nonparametr...
Xu Guo,Runze Li,Zhe Zhang et al. Xu Guo et al.
This paper aims to develop an effective model-free inference procedure for high-dimensional data. We first reformulate the hypothesis testing problem via sufficient dimension reduction framework. With the aid of new reformulation, we propos...
Biao Cai,Emma Jingfei Zhang,Hongyu Li et al. Biao Cai et al.
There is a growing interest in cell-type-specific analysis from bulk samples with a mixture of different cell types. A critical first step in such analyses is the accurate estimation of cell-type proportions in a bulk sample. Although many ...
Xueqin Wang,Jin Zhu,Wenliang Pan et al. Xueqin Wang et al.
The distribution function is essential in statistical inference and connected with samples to form a directed closed loop by the correspondence theorem in measure theory and the Glivenko-Cantelli and Donsker properties. This connection crea...
Zijian Guo Zijian Guo
Integrative analysis of data from multiple sources is critical to making generalizable discoveries. Associations consistently observed across multiple source populations are more likely to be generalized to target populations with possible ...
Jinyuan Chang,Jing He,Jian Kang et al. Jinyuan Chang et al.
Statistical analysis of multimodal imaging data is a challenging task, since the data involves high-dimensionality, strong spatial correlations and complex data structures. In this paper, we propose rigorous statistical testing procedures f...
T Tony Cai,Zijian Guo,Rong Ma T Tony Cai
This paper develops a unified statistical inference framework for high-dimensional binary generalized linear models (GLMs) with general link functions. Both unknown and known design distribution settings are considered. A two-step weighted ...
Zhe Fei,Qi Zheng,Hyokyoung G Hong et al. Zhe Fei et al.
With the availability of high dimensional genetic biomarkers, it is of interest to identify heterogeneous effects of these predictors on patients' survival, along with proper statistical inference. Censored quantile regression has emerged a...
Yuval Benjamini,Jonathan Taylor,Rafael A Irizarry Yuval Benjamini
Scientists use high-dimensional measurement assays to detect and prioritize regions of strong signal in spatially organized domain. Examples include finding methylation enriched genomic regions using microarrays, and active cortical areas u...
Chengchun Shi,Rui Song,Wenbin Lu et al. Chengchun Shi et al.
In this paper, we develop a new estimation and valid inference method for single or low-dimensional regression coefficients in high-dimensional generalized linear models. The number of the predictors is allowed to grow exponentially fast wi...