Literature DB >> 11352149

Invited review: Integrating quantitative findings from multiple studies using mixed model methodology.

N R St-Pierre1.   

Abstract

In animal agriculture, the need to understand complex biological, environmental, and management relationships is increasing. In addition, as knowledge increases and profit margins shrink, our ability and desire to predict responses to various management decisions also increases. Therefore, the purpose of this review is to help show how improved mathematical and statistical tools and computer technology can help us gain more accurate information from published studies and improve future research. Researchers, in several recent reviews, have gathered data from multiple published studies and attempted to formulate a quantitative model that best explains the observations. In statistics, this process has been labeled meta-analysis. Generally, there are large differences between studies: e. g., different physiological status of the experimental units, different experimental design, different measurement methods, and laboratory technicians. From a statistical standpoint, studies are blocks and their effects must be considered random because the inference being sought is to future, unknown studies. Meta-analyses in the animal sciences have generally ignored the Study effect. Because data gathered across studies are unbalanced with respect to predictor variables, ignoring the Study effect has as a consequence that the estimation of parameters (slopes and intercept) of regression models can be severely biased. Additionally, variance estimates are biased upward, resulting in large type II errors when testing the effect of independent variables. Historically, the Study effect has been considered a fixed effect not because of a strong argument that such effect is indeed fixed but because of our prior inability to efficiently solve even modest-sized mixed models (those containing both fixed and random effects). Modern statistical software has, however, overcome this limitation. Consequently, meta-analyses should now incorporate the Study effect and its interaction effects as random components of a mixed model. This would result in better prediction equations of biological systems and a more accurate description of their prediction errors.

Mesh:

Year:  2001        PMID: 11352149     DOI: 10.3168/jds.S0022-0302(01)74530-4

Source DB:  PubMed          Journal:  J Dairy Sci        ISSN: 0022-0302            Impact factor:   4.034


  54 in total

1.  Reducing BW loss during lactation in sows: a meta-analysis on the use of a nonstarch polysaccharide-hydrolyzing enzyme supplement.

Authors:  Pierre Cozannet; Peadar G Lawlor; Pascal Leterme; Estelle Devillard; Pierre-Andre Geraert; Friedrich Rouffineau; Aurélie Preynat
Journal:  J Anim Sci       Date:  2018-06-29       Impact factor: 3.159

2.  Effects of hormonal growth promotants on beef quality: a meta-analysis.

Authors:  Ian J Lean; Helen M Golder; Natasha M Lees; Peter McGilchrist; Jose E P Santos
Journal:  J Anim Sci       Date:  2018-06-29       Impact factor: 3.159

3.  Meta-analysis of endophyte-infected tall fescue effects on cattle growth rates.

Authors:  Douglas M Liebe; Robin R White
Journal:  J Anim Sci       Date:  2018-04-14       Impact factor: 3.159

4.  Intake and digestion of wethers fed with dwarf elephant grass hay with or without the inclusion of peanut hay.

Authors:  Maria Alice Schnaider; Henrique Mendonça Nunes Ribeiro-Filho; Gilberto Vilmar Kozloski; Tatiana Reiter; Aline Cristina Dall Orsoletta; Ademar Luiz Dallabrida
Journal:  Trop Anim Health Prod       Date:  2014-05-02       Impact factor: 1.559

5.  Meta-analytic study of organic acids as an alternative performance-enhancing feed additive to antibiotics for broiler chickens.

Authors:  G V Polycarpo; I Andretta; M Kipper; V C Cruz-Polycarpo; J C Dadalt; P H M Rodrigues; R Albuquerque
Journal:  Poult Sci       Date:  2017-10-01       Impact factor: 3.352

6.  Meta-regression analysis to predict the influence of branched-chain and large neutral amino acids on growth performance of pigs1.

Authors:  Henrique S Cemin; Mike D Tokach; Steve S Dritz; Jason C Woodworth; Joel M DeRouchey; Robert D Goodband
Journal:  J Anim Sci       Date:  2019-05-30       Impact factor: 3.159

7.  Does supplementation of beef calves by creep feeding systems influence milk production and body condition of the dams?

Authors:  Sidnei Antônio Lopes; Mário Fonseca Paulino; Edenio Detmann; Ériton Egídio Lisboa Valente; Lívia Vieira de Barros; Luciana Navajas Rennó; Sebastião de Campos Valadares Filho; Leandro Soares Martins
Journal:  Trop Anim Health Prod       Date:  2016-05-19       Impact factor: 1.559

8.  Use of n-alkanes to estimate feed intake in ruminants: a meta-analysis.

Authors:  Jose Herilalao Andriarimalala; Jose Carlos B Dubeux; Nicolas DiLorenzo; David Mirabedini Jaramillo; Jean de Neupomuscène Rakotozandriny; Paulo Salgado
Journal:  J Anim Sci       Date:  2020-10-01       Impact factor: 3.159

9.  Metabolizable Protein: 1. Predicting Equations to Estimate Microbial Crude Protein Synthesis in Small Ruminants.

Authors:  Stefanie Alvarenga Santos; Gleidson Giordano Pinto de Carvalho; José Augusto Gomes Azevêdo; Diego Zanetti; Edson Mauro Santos; Mara Lucia Albuquerque Pereira; Elzania Sales Pereira; Aureliano José Vieira Pires; Sebastião de Campos Valadares Filho; Izabelle Auxiliadora Molina de Almeida Teixeira; Manuela Silva Libânio Tosto; Laudi Cunha Leite; Lays Débora Silva Mariz
Journal:  Front Vet Sci       Date:  2021-06-10

10.  Lactobacillus-Based Probiotics Reduce the Adverse Effects of Stress in Rodents: A Meta-analysis.

Authors:  Claire Mindus; Jennifer Ellis; Nienke van Staaveren; Alexandra Harlander-Matauschek
Journal:  Front Behav Neurosci       Date:  2021-06-16       Impact factor: 3.558

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