Secondary analysis of large databases for hepatology research

Philip N. Okafor, Maria Chiejina, Nicolo de Pretis, Jayant A. Talwalkar

Research output: Contribution to journalArticle

4 Citations (Scopus)

Abstract

Secondary analysis of large datasets involves the utilization of existing data that has typically been collected for other purposes to advance scientific knowledge. This is an established methodology applied in health services research with the unique advantage of efficiently identifying relationships between predictor and outcome variables but which has been underutilized for hepatology research. Our review of 1431 abstracts published in the 2013 European Association for the Study of Liver (EASL) abstract book showed that less than 0.5% of published abstracts utilized secondary analysis of large database methodologies.This review paper describes existing large datasets that can be exploited for secondary analyses in liver disease research. It also suggests potential questions that could be addressed using these data warehouses and highlights the strengths and limitations of each dataset as described by authors that have previously used them. The overall goal is to bring these datasets to the attention of readers and ultimately encourage the consideration of secondary analysis of large database methodologies for the advancement of hepatology.

Original languageEnglish (US)
JournalJournal of Hepatology
DOIs
StateAccepted/In press - Sep 13 2015

Fingerprint

Gastroenterology
Databases
Research
Health Services Research
Liver Diseases
Datasets
Liver

Keywords

  • Health care delivery research
  • Health services research
  • Liver diseases
  • Outcomes research

ASJC Scopus subject areas

  • Hepatology

Cite this

Okafor, P. N., Chiejina, M., de Pretis, N., & Talwalkar, J. A. (Accepted/In press). Secondary analysis of large databases for hepatology research. Journal of Hepatology. https://doi.org/10.1016/j.jhep.2015.12.019

Secondary analysis of large databases for hepatology research. / Okafor, Philip N.; Chiejina, Maria; de Pretis, Nicolo; Talwalkar, Jayant A.

In: Journal of Hepatology, 13.09.2015.

Research output: Contribution to journalArticle

Okafor, Philip N. ; Chiejina, Maria ; de Pretis, Nicolo ; Talwalkar, Jayant A. / Secondary analysis of large databases for hepatology research. In: Journal of Hepatology. 2015.
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