Rachel Zilinskas, Chunlin Li, Xiaotong Shen, Wei Pan, Tianzhong Yang
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Inferring a directed acyclic graph of phenotypes from GWAS summary statistics.
Estimating phenotype networks is a growing field in computational biology. It deepens the understanding of disease etiology and is useful in many applications. In this study, we present a method that constructs a phenotype network by assuming a Gaussian linear structure model embedding a directed acyclic graph (DAG). We utilize genetic variants as instrumental variables and show how our method only requires access to summary statistics from a genome-wide association study (GWAS) and a reference panel of genotype data. Besides estimation, a distinct feature of the method is its summary statistics-based likelihood ratio test on directed edges. We applied our method to estimate a causal network of 29 cardiovascular-related proteins and linked the estimated network to Alzheimer's disease (AD). A simulation study was conducted to demonstrate the effectiveness of this method. An R package sumdag implementing the proposed method, all relevant code, and a Shiny application are available at https://github.com/chunlinli/sumdag.
期刊介绍:
Founded under the editorship of the antiquary W J Thoms, the primary intention of Notes and Queries was, and still remains, the asking and answering of readers" questions. It is devoted principally to English language and literature, lexicography, history, and scholarly antiquarianism. Each issue focuses on the works of a particular period, with an emphasis on the factual rather than the speculative. The journal comprises notes, book reviews, readers" queries and replies.