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Detecting statistically significant common insertion sites in retroviral insertional mutagenesis screens.
File | Description | Size | Format | |
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Detecting statistically significant common insertion sites in retroviral insertional mutagenesis screens.pdf | Published version | 1.67 MB | Adobe PDF | View/Open |
Title: | Detecting statistically significant common insertion sites in retroviral insertional mutagenesis screens. |
Authors: | De Ridder, J Uren, A Kool, J Reinders, M Wessels, L |
Item Type: | Journal Article |
Abstract: | Retroviral insertional mutagenesis screens, which identify genes involved in tumor development in mice, have yielded a substantial number of retroviral integration sites, and this number is expected to grow substantially due to the introduction of high-throughput screening techniques. The data of various retroviral insertional mutagenesis screens are compiled in the publicly available Retroviral Tagged Cancer Gene Database (RTCGD). Integrally analyzing these screens for the presence of common insertion sites (CISs, i.e., regions in the genome that have been hit by viral insertions in multiple independent tumors significantly more than expected by chance) requires an approach that corrects for the increased probability of finding false CISs as the amount of available data increases. Moreover, significance estimates of CISs should be established taking into account both the noise, arising from the random nature of the insertion process, as well as the bias, stemming from preferential insertion sites present in the genome and the data retrieval methodology. We introduce a framework, the kernel convolution (KC) framework, to find CISs in a noisy and biased environment using a predefined significance level while controlling the family-wise error (FWE) (the probability of detecting false CISs). Where previous methods use one, two, or three predetermined fixed scales, our method is capable of operating at any biologically relevant scale. This creates the possibility to analyze the CISs in a scale space by varying the width of the CISs, providing new insights in the behavior of CISs across multiple scales. Our method also features the possibility of including models for background bias. Using simulated data, we evaluate the KC framework using three kernel functions, the Gaussian, triangular, and rectangular kernel function. We applied the Gaussian KC to the data from the combined set of screens in the RTCGD and found that 53% of the CISs do not reach the significance threshold in this combined setting. Still, with the FWE under control, application of our method resulted in the discovery of eight novel CISs, which each have a probability less than 5% of being false detections. |
Issue Date: | 8-Dec-2006 |
Date of Acceptance: | 24-Oct-2006 |
URI: | http://hdl.handle.net/10044/1/56309 |
DOI: | https://dx.doi.org/10.1371/journal.pcbi.0020166 |
Start Page: | e166 |
Journal / Book Title: | PLoS Comput Biol |
Volume: | 2 |
Issue: | 12 |
Copyright Statement: | ©2006 de Ridder et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. |
Keywords: | Chromosome Mapping Computer Simulation DNA Mutational Analysis DNA Transposable Elements Data Interpretation, Statistical Genetic Testing Genome, Viral Models, Genetic Models, Statistical Retroviridae Sequence Alignment Sequence Analysis, DNA 06 Biological Sciences 08 Information And Computing Sciences 01 Mathematical Sciences Bioinformatics |
Publication Status: | Published |
Conference Place: | United States |
Appears in Collections: | Institute of Clinical Sciences |