Reviewing and assessing existing meta-analysis models and tools

Author:

Makinde Funmilayo L1,Tchamga Milaine S S2,Jafali James3,Fatumo Segun4,Chimusa Emile R5,Mulder Nicola6,Mazandu Gaston K7ORCID

Affiliation:

1. Computational Biology Division at University of Cape Town in collaboration with the African Institute for Mathematical Sciences (AIMS), South Africa

2. Division of Human Genetics at University of Cape in collaboration with the African Institute for Mathematical Sciences (AIMS), South Africa

3. Pathogen Biology Research Group, Malawi-Liverpool-Wellcome Trust Clinical Research Programme, Malawi

4. London School of Hygiene and Tropical Medicine, University of London, UK

5. Division of Human Genetics, Department of Pathology, University of Cape Town, South Africa

6. Computational Biology Division at University of Cape Town, South Africa

7. Division of Human Genetics, Department of Pathology at University of Cape Town, and Associate Researcher at the African Institute for Mathematical Sciences (AIMS), South Africa

Abstract

Abstract Over the past few years, meta-analysis has become popular among biomedical researchers for detecting biomarkers across multiple cohort studies with increased predictive power. Combining datasets from different sources increases sample size, thus overcoming the issue related to limited sample size from each individual study and boosting the predictive power. This leads to an increased likelihood of more accurately predicting differentially expressed genes/proteins or significant biomarkers underlying the biological condition of interest. Currently, several meta-analysis methods and tools exist, each having its own strengths and limitations. In this paper, we survey existing meta-analysis methods, and assess the performance of different methods based on results from different datasets as well as assessment from prior knowledge of each method. This provides a reference summary of meta-analysis models and tools, which helps to guide end-users on the choice of appropriate models or tools for given types of datasets and enables developers to consider current advances when planning the development of new meta-analysis models and more practical integrative tools.

Funder

German Academic Exchange Service

National Institutes of Health

SADaCC

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

Reference64 articles.

1. IHP-PING—generating integrated human protein–protein interaction networks on-the-fly;Mazandu;Brief Bioinform,2021

2. From big data to precision medicine;Hulsen;Front Med,2019

3. Generation and analysis of large-scale data-driven mycobacterium tuberculosis functional networks for drug target identification;Mazandu;Advances in Bioinfor-matics,2011

4. Adjusting batch effects in microarray expression data using empirical Bayes methods;Johnson;Biostatistics,2007

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