Abstract

The replicability of research results has been a cause of increasing concern to the scientific community. The long-held belief that experimental standardization begets replicability has also been recently challenged, with the observation that the reduction of variability within studies can lead to idiosyncratic, lab-specific results that cannot be replicated. An alternative approach is to, instead, deliberately introduce heterogeneity, known as "heterogenization" of experimental design. Here, we explore a novel perspective in the heterogenization program in a meta-analysis of variability in observed phenotypic outcomes in both control and experimental animal models of ischemic stroke. First, by quantifying interindividual variability across control groups, we illustrate that the amount of heterogeneity in disease state (infarct volume) differs according to methodological approach, for example, in disease induction methods and disease models. We argue that such methods may improve replicability by creating diverse and representative distribution of baseline disease state in the reference group, against which treatment efficacy is assessed. Second, we illustrate how meta-analysis can be used to simultaneously assess efficacy and stability (i.e., mean effect and among-individual variability). We identify treatments that have efficacy and are generalizable to the population level (i.e., low interindividual variability), as well as those where there is high interindividual variability in response; for these, latter treatments translation to a clinical setting may require nuance. We argue that by embracing rather than seeking to minimize variability in phenotypic outcomes, we can motivate the shift toward heterogenization and improve both the replicability and generalizability of preclinical research.

Highlights

  • Replicability of research findings—“obtaining the same results from the conduct of an independent study whose procedures are as closely matched to the original experiment as possidiscovery-early-career-researcher-award-decra), and formally by a Coffey Fellowship from the University of Sydney

  • We find that the stroke treatments in our dataset are usually effective, reducing infarct volume on average by 33.1% compared with controls

  • We have demonstrated how researchers can quantitatively embrace heterogeneity in phenotypic outcomes with the aim of improving both the replicability and generalizability of animal models

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Summary

Introduction

Replicability of research findings—“obtaining the same results from the conduct of an independent study whose procedures are as closely matched to the original experiment as possidiscovery-early-career-researcher-award-decra), and formally by a Coffey Fellowship from the University of Sydney. Compelling evidence, suggests that non-replicability pervades basic and preclinical research [1,2,3,4,5]. The funders had no role in study design, design has been to minimize heterogeneity in experimental conditions within studies to reduce data collection and analysis, decision to publish, or the variability between animals in the observed outcomes [8]. Such rigorous standardization preparation of the manuscript

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