Literature DB >> 20799038

Optimising experimental design for high-throughput phenotyping in mice: a case study.

Natasha A Karp1, Lauren A Baker, Anna-Karin B Gerdin, Niels C Adams, Ramiro Ramírez-Solis, Jacqueline K White.   

Abstract

To further the functional annotation of the mammalian genome, the Sanger Mouse Genetics Programme aims to generate and characterise knockout mice in a high-throughput manner. Annually, approximately 200 lines of knockout mice will be characterised using a standardised battery of phenotyping tests covering key disease indications ranging from obesity to sensory acuity. From these findings secondary centres will select putative mutants of interest for more in-depth, confirmatory experiments. Optimising experimental design and data analysis is essential to maximise output using the resources with greatest efficiency, thereby attaining our biological objective of understanding the role of genes in normal development and disease. This study uses the example of the noninvasive blood pressure test to demonstrate how statistical investigation is important for generating meaningful, reliable results and assessing the design for the defined research objectives. The analysis adjusts for the multiple-testing problem by applying the false discovery rate, which controls the number of false calls within those highlighted as significant. A variance analysis finds that the variation between mice dominates this assay. These variance measures were used to examine the interplay between days, readings, and number of mice on power, the ability to detect change. If an experiment is underpowered, we cannot conclude whether failure to detect a biological difference arises from low power or lack of a distinct phenotype, hence the mice are subjected to testing without gain. Consequently, in confirmatory studies, a power analysis along with the 3Rs can provide justification to increase the number of mice used.

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Year:  2010        PMID: 20799038      PMCID: PMC2974211          DOI: 10.1007/s00335-010-9279-1

Source DB:  PubMed          Journal:  Mamm Genome        ISSN: 0938-8990            Impact factor:   2.957


  23 in total

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2.  Principles: the need for better experimental design.

Authors:  Michael F W Festing
Journal:  Trends Pharmacol Sci       Date:  2003-07       Impact factor: 14.819

3.  Recommendations for blood pressure measurement in humans and experimental animals. Part 2: Blood pressure measurement in experimental animals: a statement for professionals from the subcommittee of professional and public education of the American Heart Association council on high blood pressure research.

Authors:  Theodore W Kurtz; Karen A Griffin; Anil K Bidani; Robin L Davisson; John E Hall
Journal:  Hypertension       Date:  2004-12-20       Impact factor: 10.190

4.  Removing the cloak of invisibility: phenotyping the mouse.

Authors:  Monica J Justice
Journal:  Dis Model Mech       Date:  2008 Sep-Oct       Impact factor: 5.758

5.  Validation of volume-pressure recording tail-cuff blood pressure measurements.

Authors:  Minjie Feng; Steven Whitesall; Yunyu Zhang; Martin Beibel; Louis D'Alecy; Keith DiPetrillo
Journal:  Am J Hypertens       Date:  2008-10-09       Impact factor: 2.689

Review 6.  Experimental design and husbandry.

Authors:  M F Festing
Journal:  Exp Gerontol       Date:  1997 Jan-Apr       Impact factor: 4.032

7.  Power matters in closing the phenotyping gap.

Authors:  Carola W Meyer; Ralf Elvert; André Scherag; Nicole Ehrhardt; Valerie Gailus-Durner; Helmut Fuchs; Helmut Schäfer; Martin Hrabé de Angelis; Gerhard Heldmaier; Martin Klingenspor
Journal:  Naturwissenschaften       Date:  2007-01-10

Review 8.  Reduction of animal use: experimental design and quality of experiments.

Authors:  M F Festing
Journal:  Lab Anim       Date:  1994-07       Impact factor: 2.471

9.  Survey of the quality of experimental design, statistical analysis and reporting of research using animals.

Authors:  Carol Kilkenny; Nick Parsons; Ed Kadyszewski; Michael F W Festing; Innes C Cuthill; Derek Fry; Jane Hutton; Douglas G Altman
Journal:  PLoS One       Date:  2009-11-30       Impact factor: 3.240

10.  Agouti C57BL/6N embryonic stem cells for mouse genetic resources.

Authors:  Stephen J Pettitt; Qi Liang; Xin Y Rairdan; Jennifer L Moran; Haydn M Prosser; David R Beier; Kent C Lloyd; Allan Bradley; William C Skarnes
Journal:  Nat Methods       Date:  2009-06-14       Impact factor: 28.547

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  8 in total

1.  Rapid-throughput skeletal phenotyping of 100 knockout mice identifies 9 new genes that determine bone strength.

Authors:  J H Duncan Bassett; Apostolos Gogakos; Jacqueline K White; Holly Evans; Richard M Jacques; Anne H van der Spek; Ramiro Ramirez-Solis; Edward Ryder; David Sunter; Alan Boyde; Michael J Campbell; Peter I Croucher; Graham R Williams
Journal:  PLoS Genet       Date:  2012-08-02       Impact factor: 5.917

2.  Applying the ARRIVE Guidelines to an In Vivo Database.

Authors:  Natasha A Karp; Terry F Meehan; Hugh Morgan; Jeremy C Mason; Andrew Blake; Natalja Kurbatova; Damian Smedley; Julius Jacobsen; Richard F Mott; Vivek Iyer; Peter Matthews; David G Melvin; Sara Wells; Ann M Flenniken; Hiroshi Masuya; Shigeharu Wakana; Jacqueline K White; K C Kent Lloyd; Corey L Reynolds; Richard Paylor; David B West; Karen L Svenson; Elissa J Chesler; Martin Hrabě de Angelis; Glauco P Tocchini-Valentini; Tania Sorg; Yann Herault; Helen Parkinson; Ann-Marie Mallon; Steve D M Brown
Journal:  PLoS Biol       Date:  2015-05-20       Impact factor: 8.029

Review 3.  Predicting human disease mutations and identifying drug targets from mouse gene knockout phenotyping campaigns.

Authors:  Robert Brommage; David R Powell; Peter Vogel
Journal:  Dis Model Mech       Date:  2019-05-07       Impact factor: 5.758

4.  High-Throughput Screening of Mouse Gene Knockouts Identifies Established and Novel High Body Fat Phenotypes.

Authors:  David R Powell; Jean-Pierre Revelli; Deon D Doree; Christopher M DaCosta; Urvi Desai; Melanie K Shadoan; Lawrence Rodriguez; Michael Mullens; Qi M Yang; Zhi-Ming Ding; Laura L Kirkpatrick; Peter Vogel; Brian Zambrowicz; Arthur T Sands; Kenneth A Platt; Gwenn M Hansen; Robert Brommage
Journal:  Diabetes Metab Syndr Obes       Date:  2021-08-28       Impact factor: 3.168

5.  New susceptible locus, rs9428555, is associated with pediatric-onset immunoglobulin A nephropathy and immunoglobulin A vasculitis in Koreans.

Authors:  Minho Lee; Gunhee Lee; Hee Gyung Kang; Jin-Soon Suh
Journal:  Genes Genomics       Date:  2021-06-19       Impact factor: 1.839

Review 6.  Mouse large-scale phenotyping initiatives: overview of the European Mouse Disease Clinic (EUMODIC) and of the Wellcome Trust Sanger Institute Mouse Genetics Project.

Authors:  Abdel Ayadi; Marie-Christine Birling; Joanna Bottomley; James Bussell; Helmut Fuchs; Martin Fray; Valérie Gailus-Durner; Simon Greenaway; Richard Houghton; Natasha Karp; Sophie Leblanc; Christoph Lengger; Holger Maier; Ann-Marie Mallon; Susan Marschall; David Melvin; Hugh Morgan; Guillaume Pavlovic; Ed Ryder; William C Skarnes; Mohammed Selloum; Ramiro Ramirez-Solis; Tania Sorg; Lydia Teboul; Laurent Vasseur; Alison Walling; Tom Weaver; Sara Wells; Jacqui K White; Allan Bradley; David J Adams; Karen P Steel; Martin Hrabě de Angelis; Steve D Brown; Yann Herault
Journal:  Mamm Genome       Date:  2012-09-09       Impact factor: 2.957

Review 7.  What is the optimum design for my animal experiment?

Authors:  Natasha A Karp; Derek Fry
Journal:  BMJ Open Sci       Date:  2021-03-15

8.  The International Mouse Phenotyping Consortium Web Portal, a unified point of access for knockout mice and related phenotyping data.

Authors:  Gautier Koscielny; Gagarine Yaikhom; Vivek Iyer; Terrence F Meehan; Hugh Morgan; Julian Atienza-Herrero; Andrew Blake; Chao-Kung Chen; Richard Easty; Armida Di Fenza; Tanja Fiegel; Mark Grifiths; Alan Horne; Natasha A Karp; Natalja Kurbatova; Jeremy C Mason; Peter Matthews; Darren J Oakley; Asfand Qazi; Jack Regnart; Ahmad Retha; Luis A Santos; Duncan J Sneddon; Jonathan Warren; Henrik Westerberg; Robert J Wilson; David G Melvin; Damian Smedley; Steve D M Brown; Paul Flicek; William C Skarnes; Ann-Marie Mallon; Helen Parkinson
Journal:  Nucleic Acids Res       Date:  2013-11-04       Impact factor: 16.971

  8 in total

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