Kvik: three-tier data exploration tools for flexible analysis of genomic data in epidemiological studies

F1000Res. 2015 Mar 30:4:81. doi: 10.12688/f1000research.6238.2. eCollection 2015.

Abstract

Kvik is an open-source framework that we developed for explorative analysis of functional genomics data from large epidemiological studies. Creating such studies requires a significant amount of time and resources. It is therefore usual to reuse the data from one study for several research projects. Often each project requires implementing new analysis code, integration with specific knowledge bases, and specific visualizations. Although existing data exploration tools are available for single study data exploration, no tool provides all the required functionality for multistudy data exploration. We have therefore used the Kvik framework to develop Kvik Pathways, an application for exploring gene expression data in the context of biological pathways. We have used Kvik Pathways to explore data from both a cross-sectional study design and a case-control study within the Norwegian Women and Cancer (NOWAC) cohort. Kvik Pathways follows the three-tier architecture in web applications using a powerful back-end for statistical analyses and retrieval of metadata.In this note, we describe how we used the Kvik framework to develop the Kvik Pathways application. Kvik Pathways was used by our team of epidemiologists toexplore gene expression data from healthy women with high and low plasma ratios of essential fatty acids.

Keywords: Data exploration; Epidemiological studies; Functional genomics; Kvik; On-demand data analysis; Open-source software.

Grants and funding

This work was supported by a grant from the European Research Council, under the title “Transcriptomics in cancer epidemiology - TICE”.