Last updated: 2020-06-24

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Knit directory: rss/

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Welcome to Regression with Summary Statistics (RSS) wiki!

Installation

This page provides instructions for installing RSS software.

Functions

This page outlines functions and scripts associated with RSS methods.

Examples

This page gives end-to-end examples of using RSS methods and software.

FAQs

This page answers frequently ask questions (FAQs) about RSS methods and software.

News

This page lists progress updates related to RSS methods and software.

Citation

RSS is a suite of statistical methods introduced in the following publications:

  1. Xiang Zhu and Matthew Stephens (2017). Bayesian large-scale multiple regression with summary statistics from genome-wide association studies. Annals of Applied Statistics 11(3): 1561-1592. [PDF] [Journal] [bioRxiv]

  2. Xiang Zhu and Matthew Stephens (2018). Large-scale genome-wide enrichment analyses identify new trait-associated genes and pathways across 31 human phenotypes. Nature Communications 9, 4361. [PDF] [Journal] [bioRxiv]

Contact

If you have any question or suggestion, please feel free to create a new issue and/or send an email to xiangzhu[at]uchicago[and/or]stanford.edu.


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