Comparison between instrumental variable and mediation-based methods for reconstructing causal gene networks in yeast

被引:2
作者
Ludl, Adriaan-Alexander [1 ]
Michoel, Tom [1 ]
机构
[1] Univ Bergen, Dept Informat, Computat Biol Unit, POB 7803, N-5020 Bergen, Norway
基金
英国生物技术与生命科学研究理事会;
关键词
MENDELIAN RANDOMIZATION; COMPLEX TRAITS; INFERENCE; IDENTIFICATION; EXPRESSION; GENOMICS; GTPASE;
D O I
10.1039/d0mo00140f
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Causal gene networks model the flow of information within a cell. Reconstructing causal networks from omics data is challenging because correlation does not imply causation. When genomics and transcriptomics data from a segregating population are combined, genomic variants can be used to orient the direction of causality between gene expression traits. Instrumental variable methods use a local expression quantitative trait locus (eQTL) as a randomized instrument for a gene's expression level, and assign target genes based on distal eQTL associations. Mediation-based methods additionally require that distal eQTL associations are mediated by the source gene. A detailed comparison between these methods has not yet been conducted, due to the lack of a standardized implementation of different methods, the limited sample size of most multi-omics datasets, and the absence of ground-truth networks for most organisms. Here we used Findr, a software package providing uniform implementations of instrumental variable, mediation, and coexpression-based methods, a recent dataset of 1012 segregants from a cross between two budding yeast strains, and the YEASTRACT database of known transcriptional interactions to compare causal gene network inference methods. We found that causal inference methods result in a significant overlap with the ground-truth, whereas coexpression did not perform better than random. A subsampling analysis revealed that the performance of mediation saturates at large sample sizes, due to a loss of sensitivity when residual correlations become significant. Instrumental variable methods on the other hand contain false positive predictions, due to genomic linkage between eQTL instruments. Instrumental variable and mediation-based methods also have complementary roles for identifying causal genes underlying transcriptional hotspots. Instrumental variable methods correctly predicted STB5 targets for a hotspot centred on the transcription factor STB5, whereas mediation failed due to Stb5p auto-regulating its own expression. Mediation suggests a new candidate gene, DNM1, for a hotspot on Chr XII, whereas instrumental variable methods could not distinguish between multiple genes located within the hotspot. In conclusion, causal inference from genomics and transcriptomics data is a powerful approach for reconstructing causal gene networks, which could be further improved by the development of methods to control for residual correlations in mediation analyses, and for genomic linkage and pleiotropic effects from transcriptional hotspots in instrumental variable analyses.
引用
收藏
页码:241 / 251
页数:11
相关论文
共 38 条
  • [1] Biophysically Motivated Regulatory Network Inference: Progress and Prospects
    Aeijoe, Tarmo
    Bonneau, Richard
    [J]. HUMAN HEREDITY, 2016, 81 (02) : 62 - 77
  • [2] The role of regulatory variation in complex traits and disease
    Albert, Frank W.
    Kruglyak, Leonid
    [J]. NATURE REVIEWS GENETICS, 2015, 16 (04) : 197 - 212
  • [3] Genetics of trans-regulatory variation in gene expression
    Albert, Frank Wolfgang
    Bloom, Joshua S.
    Siegel, Jake
    Day, Laura
    Kruglyak, Leonid
    [J]. ELIFE, 2018, 7
  • [4] Learning Causal Biological Networks With the Principle of Mendelian Randomization
    Badsha, Md Bahadur
    Fu, Audrey Qiuyan
    [J]. FRONTIERS IN GENETICS, 2019, 10
  • [5] An Expanded View of Complex Traits: From Polygenic to Omnigenic
    Boyle, Evan A.
    Li, Yang I.
    Pritchard, Jonathan K.
    [J]. CELL, 2017, 169 (07) : 1177 - 1186
  • [6] Predictive modeling of genome-wide mRNA expression: From modules to molecules
    Bussemaker, Harmen J.
    Foat, Barrett C.
    Ward, Lucas D.
    [J]. ANNUAL REVIEW OF BIOPHYSICS AND BIOMOLECULAR STRUCTURE, 2007, 36 : 329 - 347
  • [7] Harnessing naturally randomized transcription to infer regulatory relationships among genes
    Chen, Lin S.
    Emmert-Streib, Frank
    Storey, John D.
    [J]. GENOME BIOLOGY, 2007, 8 (10)
  • [8] The Functional Consequences of Variation in Transcription Factor Binding
    Cusanovich, Darren A.
    Pavlovic, Bryan
    Pritchard, Jonathan K.
    Gilad, Yoav
    [J]. PLOS GENETICS, 2014, 10 (03)
  • [9] Mendelian randomization: genetic anchors for causal inference in epidemiological studies
    Davey Smith, George
    Hemani, Gibran
    [J]. HUMAN MOLECULAR GENETICS, 2014, 23 : R89 - R98
  • [10] Orienting the causal relationship between imprecisely measured traits using GWAS summary data
    Hemani, Gibran
    Tilling, Kate
    Smith, George Davey
    [J]. PLOS GENETICS, 2017, 13 (11):