Abstract

BackgroundRecently, copy number variations (CNV) impacting genes involved in oncogenic pathways have attracted an increasing attention to manage disease susceptibility. CNV is one of the most important somatic aberrations in the genome of tumor cells. Oncogene activation and tumor suppressor gene inactivation are often attributed to copy number gain/amplification or deletion, respectively, in many cancer types and stages. Recent advances in next generation sequencing protocols allow for the addition of unique molecular identifiers (UMI) to each read. Each targeted DNA fragment is labeled with a unique random nucleotide sequence added to sequencing primers. UMI are especially useful for CNV detection by making each DNA molecule in a population of reads distinct.ResultsHere, we present molecular Copy Number Alteration (mCNA), a new methodology allowing the detection of copy number changes using UMI. The algorithm is composed of four main steps: the construction of UMI count matrices, the use of control samples to construct a pseudo-reference, the computation of log-ratios, the segmentation and finally the statistical inference of abnormal segmented breaks. We demonstrate the success of mCNA on a dataset of patients suffering from Diffuse Large B-cell Lymphoma and we highlight that mCNA results have a strong correlation with comparative genomic hybridization.ConclusionWe provide mCNA, a new approach for CNV detection, freely available at https://gitlab.com/pierrejulien.viailly/mcna/ under MIT license. mCNA can significantly improve detection accuracy of CNV changes by using UMI.

Highlights

  • Copy number variations (CNV) impacting genes involved in oncogenic pathways have attracted an increasing attention to manage disease suscep‐ tibility

  • We provide molecular Copy Number Alteration (mCNA), a new approach for copy number variations (CNV) detection, freely available at https://gitlab.com/pierrejulien.viailly/mcna/ under MIT license. mCNA can significantly improve detection accuracy of CNV changes by using unique molecular identifiers (UMI)

  • Recently, copy number variations (CNV) impacting genes involved in oncogenic pathways have attracted an increasing attention to manage disease susceptibility [1, 2]

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Summary

Introduction

Copy number variations (CNV) impacting genes involved in oncogenic pathways have attracted an increasing attention to manage disease suscep‐ tibility. The resolution limit of conventional cytogenetics (approximately 5 Mb) has been improved by molecular cytogenetics using comparative genomic hybridization (CGH) and more recently array comparative genomic hybridization (aCGH) These technologies make it possible to detect genomic imbalances of < 100 kb, whereas more specialized array designs increase the resolution to ≤ 200 bp for specific targeted regions. Despite these performances, aCGH requires the purchase of a specific platform for data acquisition and its resolution is limited to the detection of tumoral clones that differ substantially in DNA content from a reference

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