Abstract

BackgroundHigh-content, high-throughput RNA interference (RNAi) offers unprecedented possibilities to elucidate gene function and involvement in biological processes. Microscopy based screening allows phenotypic observations at the level of individual cells. It was recently shown that a cell's population context significantly influences results. However, standard analysis methods for cellular screens do not currently take individual cell data into account unless this is important for the phenotype of interest, i.e. when studying cell morphology.ResultsWe present a method that normalizes and statistically scores microscopy based RNAi screens, exploiting individual cell information of hundreds of cells per knockdown. Each cell's individual population context is employed in normalization. We present results on two infection screens for hepatitis C and dengue virus, both showing considerable effects on observed phenotypes due to population context. In addition, we show on a non-virus screen that these effects can be found also in RNAi data in the absence of any virus. Using our approach to normalize against these effects we achieve improved performance in comparison to an analysis without this normalization and hit scoring strategy. Furthermore, our approach results in the identification of considerably more significantly enriched pathways in hepatitis C virus replication than using a standard analysis approach.ConclusionsUsing a cell-based analysis and normalization for population context, we achieve improved sensitivity and specificity not only on a individual protein level, but especially also on a pathway level. This leads to the identification of new host dependency factors of the hepatitis C and dengue viruses and higher reproducibility of results.

Highlights

  • High-content, high-throughput RNA interference (RNAi) offers unprecedented possibilities to elucidate gene function and involvement in biological processes

  • The first screen aimed to identify host cell factors involved in hepatitis C virus (HCV) infection, the second screen focused on dengue virus (DENV)

  • Results of the HCV screen have previously been published using an analysis based on average intensities per spot [17], and the screen has been re-analyzed using a clustering approach on the raw microscopy data [19]

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Summary

Introduction

High-content, high-throughput RNA interference (RNAi) offers unprecedented possibilities to elucidate gene function and involvement in biological processes. Using short interfering RNAs (siRNAs), the technique allows sequence-specific gene silencing in a high-throughput fashion. This has successfully been used in several largescale screens, for example, focusing on genes involved in mitosis [1], immune response [2] or viral infection [3,4]. The platform can be combined with automated microscopy, which allows the acquisition of multi-parametric phenotypes of hundreds of cells per knockdown in a high-throughput fashion, yielding large data sets and unprecedented opportunities for functional genomics [5,6]. Their work studies population effects in the absence of siRNA knockdowns, the results strongly advocate the use of high-content microscopy and appropriate cell-based data analysis methods for RNAi screens

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