Javascript must be enabled to continue!
Dissertation R.C.M. van Aert
View through CrossRef
More and more scientific research gets published nowadays, asking for statistical methods that enable researchers to get an overview of the literature in a particular research field. For that purpose, meta-analysis methods were developed that can be used for statistically combining the effect sizes from independent primary studies on the same topic. My dissertation focuses on two issues that are crucial when conducting a meta-analysis: publication bias and heterogeneity in primary studies’ true effect sizes. Accurate estimation of both the meta-analytic effect size as well as the between-study variance in true effect size is crucial since the results of meta-analyses are often used for policy making. Publication bias distorts the results of a meta-analysis since it refers to situations where publication of a primary study depends on its results. We developed new meta-analysis methods, p-uniform and p-uniform*, which estimate effect sizes corrected for publication bias and also test for publication bias. Although the methods perform well in many conditions, these and the other existing methods are shown not to perform well when researchers use questionable research practices. Additionally, when publication bias is absent or limited, traditional methods that do not correct for publication bias outperform p¬-uniform and p-uniform*. Surprisingly, we found no strong evidence for the presence of publication bias in our pre-registered study on the presence of publication bias in a large-scale data set consisting of 83 meta-analyses and 499 systematic reviews published in the fields of psychology and medicine. We also developed two methods for meta-analyzing a statistically significant published original study and a replication of that study, which reflects a situation often encountered by researchers. One method is a frequentist whereas the other method is a Bayesian statistical method. Both methods are shown to perform better than traditional meta-analytic methods that do not take the statistical significance of the original study into account. Analytical studies of both methods also show that sometimes the original study is better discarded for optimal estimation of the true effect size. Finally, we developed a program for determining the required sample size in a replication analogous to power analysis in null hypothesis testing. Computing the required sample size with the method revealed that large sample sizes (approximately 650 participants) are required to be able to distinguish a zero from a small true effect.Finally, in the last two chapters we derived a new multi-step estimator for the between-study variance in primary studies’ true effect sizes, and examined the statistical properties of two methods (Q-profile and generalized Q-statistic method) to compute the confidence interval of the between-study variance in true effect size. We proved that the multi-step estimator converges to the Paule-Mandel estimator which is nowadays one of the recommended methods to estimate the between-study variance in true effect sizes. Two Monte-Carlo simulation studies showed that the coverage probabilities of Q-profile and generalized Q-statistic method can be substantially below the nominal coverage rate if the assumptions underlying the random-effects meta-analysis model were violated.
Title: Dissertation R.C.M. van Aert
Description:
More and more scientific research gets published nowadays, asking for statistical methods that enable researchers to get an overview of the literature in a particular research field.
For that purpose, meta-analysis methods were developed that can be used for statistically combining the effect sizes from independent primary studies on the same topic.
My dissertation focuses on two issues that are crucial when conducting a meta-analysis: publication bias and heterogeneity in primary studies’ true effect sizes.
Accurate estimation of both the meta-analytic effect size as well as the between-study variance in true effect size is crucial since the results of meta-analyses are often used for policy making.
Publication bias distorts the results of a meta-analysis since it refers to situations where publication of a primary study depends on its results.
We developed new meta-analysis methods, p-uniform and p-uniform*, which estimate effect sizes corrected for publication bias and also test for publication bias.
Although the methods perform well in many conditions, these and the other existing methods are shown not to perform well when researchers use questionable research practices.
Additionally, when publication bias is absent or limited, traditional methods that do not correct for publication bias outperform p¬-uniform and p-uniform*.
Surprisingly, we found no strong evidence for the presence of publication bias in our pre-registered study on the presence of publication bias in a large-scale data set consisting of 83 meta-analyses and 499 systematic reviews published in the fields of psychology and medicine.
We also developed two methods for meta-analyzing a statistically significant published original study and a replication of that study, which reflects a situation often encountered by researchers.
One method is a frequentist whereas the other method is a Bayesian statistical method.
Both methods are shown to perform better than traditional meta-analytic methods that do not take the statistical significance of the original study into account.
Analytical studies of both methods also show that sometimes the original study is better discarded for optimal estimation of the true effect size.
Finally, we developed a program for determining the required sample size in a replication analogous to power analysis in null hypothesis testing.
Computing the required sample size with the method revealed that large sample sizes (approximately 650 participants) are required to be able to distinguish a zero from a small true effect.
Finally, in the last two chapters we derived a new multi-step estimator for the between-study variance in primary studies’ true effect sizes, and examined the statistical properties of two methods (Q-profile and generalized Q-statistic method) to compute the confidence interval of the between-study variance in true effect size.
We proved that the multi-step estimator converges to the Paule-Mandel estimator which is nowadays one of the recommended methods to estimate the between-study variance in true effect sizes.
Two Monte-Carlo simulation studies showed that the coverage probabilities of Q-profile and generalized Q-statistic method can be substantially below the nominal coverage rate if the assumptions underlying the random-effects meta-analysis model were violated.
Related Results
Numéro 85 (nl) - février 2011
Numéro 85 (nl) - février 2011
Op initiatief van de federale overheid heeft het Belgische stelsel van werkloosheidsverze-kering sinds 2004 belangrijke veranderingen ondergaan. Het principe van de toekenning van ...
De Russische inspiratie van Joris Van Severen. Deel 2
De Russische inspiratie van Joris Van Severen. Deel 2
In de oorlogsdagboeken van Joris Van Severen valt zijn belangstelling op voor bepaalde aspecten van de Russische cultuur, die weinig met elkaar gemeen hebben, met name Dostojevski ...
Impact of the COVID-19 pandemic on surgical care in the Netherlands
Impact of the COVID-19 pandemic on surgical care in the Netherlands
Abstract
Background
The COVID-19 pandemic caused disruption of regular healthcare leading to reduced hospital attendances, repur...
Boja kao izlagački aspekt narativnoga filma
Boja kao izlagački aspekt narativnoga filma
The dissertation, titled Colour as an Expository Aspect of the Narrative Film, explores how color shapes the narrative, aesthetic, and emotional dimensions of film. Analyzing the h...
Racial Realities: Exploring the Experiences of Black Male Doctoral Candidates in “All But Dissertation” Status
Racial Realities: Exploring the Experiences of Black Male Doctoral Candidates in “All But Dissertation” Status
Aim/Purpose: This qualitative study investigated the educational experiences of Black male doctoral students that contributed to prolonged “All But Dissertation” (ABD) status.
Ba...
Hieronymus van der Mij als historie- en genreschilder
Hieronymus van der Mij als historie- en genreschilder
AbstractThe Leiden artist Hieronymus van der Mij is only known today as a portrait painter, e.g. from the twelve portraits in the Lakenhal in Leiden, one in the Rijksmuseum and the...
Het slechte geweten van Vlaanderen: Over het racisme van Hendrik Conscience (1812-1883). Deel 2
Het slechte geweten van Vlaanderen: Over het racisme van Hendrik Conscience (1812-1883). Deel 2
Deze tweedelige bijdrage vertrekt van de vaststelling dat Hendrik Conscience (1812-1883) de voorbije decennia met een erg kwalijke reputatie werd opgezadeld. De oorzaak wordt uitge...
Evolutie van daghospitalisatie
Evolutie van daghospitalisatie
VOORWOORD 1 -- SYNTHESE 2 -- 1. ACHTERGROND 4 -- 2. FINANCIERING VAN DAGHOSPITALISATIE IN BELGIË 5 -- 2.1. WELKE VERSCHILLENDE ZORGOMGEVINGEN BESTAAN ER? .. 5 -- 2.2. ALGEMENE PRIN...

