Literature DB >> 30107524

Conceptual framework for investigating causal effects from observational data in livestock.

Nora M Bello1,2,3, Vera C Ferreira1, Daniel Gianola1,4,5, Guilherme J M Rosa1,5.   

Abstract

Understanding causal mechanisms among variables is critical to efficient management of complex biological systems such as animal agriculture production. The increasing availability of data from commercial livestock operations offers unique opportunities for attaining causal insight, despite the inherently observational nature of these data. Causal claims based on observational data are substantiated by recent theoretical and methodological developments in the rapidly evolving field of causal inference. Thus, the objectives of this review are as follows: 1) to introduce a unifying conceptual framework for investigating causal effects from observational data in livestock, 2) to illustrate its implementation in the context of the animal sciences, and 3) to discuss opportunities and challenges associated with this framework. Foundational to the proposed conceptual framework are graphical objects known as directed acyclic graphs (DAGs). As mathematical constructs and practical tools, DAGs encode putative structural mechanisms underlying causal models together with their probabilistic implications. The process of DAG elicitation and causal identification is central to any causal claims based on observational data. We further discuss necessary causal assumptions and associated limitations to causal inference. Last, we provide practical recommendations to facilitate implementation of causal inference from observational data in the context of the animal sciences.

Entities:  

Mesh:

Year:  2018        PMID: 30107524      PMCID: PMC6162585          DOI: 10.1093/jas/sky277

Source DB:  PubMed          Journal:  J Anim Sci        ISSN: 0021-8812            Impact factor:   3.159


  25 in total

1.  How scientists fool themselves - and how they can stop.

Authors:  Regina Nuzzo
Journal:  Nature       Date:  2015-10-08       Impact factor: 49.962

Review 2.  Bayesian structural equation models for inferring relationships between phenotypes: a review of methodology, identifiability, and applications.

Authors:  Xiao-Lin Wu; Bjørg Heringstad; Daniel Gianola
Journal:  J Anim Breed Genet       Date:  2010-02       Impact factor: 2.380

3.  The Causal Meaning of Genomic Predictors and How It Affects Construction and Comparison of Genome-Enabled Selection Models.

Authors:  Bruno D Valente; Gota Morota; Francisco Peñagaricano; Daniel Gianola; Kent Weigel; Guilherme J M Rosa
Journal:  Genetics       Date:  2015-04-23       Impact factor: 4.562

4.  Inferring phenotypic causal structures among meat quality traits and the application of a structural equation model in Japanese Black cattle.

Authors:  K Inoue; B D Valente; N Shoji; T Honda; K Oyama; G J M Rosa
Journal:  J Anim Sci       Date:  2016-10       Impact factor: 3.159

5.  Endogenous Selection Bias: The Problem of Conditioning on a Collider Variable.

Authors:  Felix Elwert; Christopher Winship
Journal:  Annu Rev Sociol       Date:  2014-06-02

Review 6.  Breeding and Genetics Symposium: inferring causal effects from observational data in livestock.

Authors:  G J M Rosa; B D Valente
Journal:  J Anim Sci       Date:  2012-12-10       Impact factor: 3.159

7.  Short communication: On recognizing the proper experimental unit in animal studies in the dairy sciences.

Authors:  Nora M Bello; Matthew Kramer; Robert J Tempelman; Walter W Stroup; Normand R St-Pierre; Bruce A Craig; Linda J Young; Edward E Gbur
Journal:  J Dairy Sci       Date:  2016-09-07       Impact factor: 4.034

8.  Searching for causal networks involving latent variables in complex traits: Application to growth, carcass, and meat quality traits in pigs.

Authors:  F Peñagaricano; B D Valente; J P Steibel; R O Bates; C W Ernst; H Khatib; G J M Rosa
Journal:  J Anim Sci       Date:  2015-10       Impact factor: 3.159

9.  Searching for phenotypic causal networks involving complex traits: an application to European quail.

Authors:  Bruno D Valente; Guilherme J M Rosa; Martinho A Silva; Rafael B Teixeira; Robledo A Torres
Journal:  Genet Sel Evol       Date:  2011-11-02       Impact factor: 4.297

10.  Inferring causal phenotype networks using structural equation models.

Authors:  Guilherme J M Rosa; Bruno D Valente; Gustavo de los Campos; Xiao-Lin Wu; Daniel Gianola; Martinho A Silva
Journal:  Genet Sel Evol       Date:  2011-02-10       Impact factor: 4.297

View more
  4 in total

1.  Investigating causal biological relationships between reproductive performance traits in high-performing gilts and sows1.

Authors:  Kessinee Chitakasempornkul; Mariana B Meneget; Guilherme J M Rosa; Fernando B Lopes; Abigail Jager; Márcio A D Gonçalves; Steve S Dritz; Mike D Tokach; Robert D Goodband; Nora M Bello
Journal:  J Anim Sci       Date:  2019-05-30       Impact factor: 3.159

2.  Forecasting beef production and quality using large-scale integrated data from Brazil.

Authors:  Vera Cardoso Ferreira Aiken; Arthur Francisco Araújo Fernandes; Tiago Luciano Passafaro; Juliano Sabella Acedo; Fábio Guerra Dias; João Ricardo Rebouças Dórea; Guilherme Jordão de Magalhães Rosa
Journal:  J Anim Sci       Date:  2020-04-01       Impact factor: 3.159

3.  Generalized additive mixed model on the analysis of total transport losses of market-weight pigs1.

Authors:  Tiago L Passafaro; Denise Van de Stroet; Nora M Bello; Noel H Williams; Guilherme J M Rosa
Journal:  J Anim Sci       Date:  2019-04-29       Impact factor: 3.159

4.  Translating insights from the seed metabolome into improved prediction for lipid-composition traits in oat (Avena sativa L.).

Authors:  Malachy T Campbell; Haixiao Hu; Trevor H Yeats; Melanie Caffe-Treml; Lucía Gutiérrez; Kevin P Smith; Mark E Sorrells; Michael A Gore; Jean-Luc Jannink
Journal:  Genetics       Date:  2021-03-31       Impact factor: 4.562

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.