Comparative Analysis of CNV Calling Algorithms: Literature Survey and a Case Study Using Bovine High-Density SNP Data

  • Xu L
  • Hou Y
  • Bickhart D
  • et al.
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Abstract

Copy number variations (CNVs) are gains and losses of genomic sequence between two individuals of a species when compared to a reference genome. The data from single nucleotide polymorphism (SNP) microarrays are now routinely used for genotyping, but they also can be utilized for copy number detection. Substantial progress has been made in array design and CNV calling algorithms and at least 10 comparison studies in humans have been published to assess them. In this review, we first survey the literature on existing microarray platforms and CNV calling algorithms. We then examine a number of CNV calling tools to evaluate their impacts using bovine high-density SNP data. Large incongruities in the results from different CNV calling tools highlight the need for standardizing array data collection, quality assessment and experimental validation. Only after careful experimental design and rigorous data filtering can the impacts of CNVs on both normal phenotypic variability and disease susceptibility be fully revealed.

Figures

  • Table 1. Survey of recent comparison studies of copy number variation (CNV) detection.
  • Table 1. Cont.
  • Table 2. CNVs and CNVRs identified using PennCNV, cnvPartition, SVS, and DNAcopy.
  • Figure 1. Comparisons of CNVR results identified by PennCNV, cnvPartition, SVS, and DNAcopy based on genomic location in UMD3.1. The overlap lengths of CNVRs were indicated in Mb.
  • Table 3. Overlaps among CNVRs across 4 CNV detection tools.

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APA

Xu, L., Hou, Y., Bickhart, D., Song, J., & Liu, G. (2013). Comparative Analysis of CNV Calling Algorithms: Literature Survey and a Case Study Using Bovine High-Density SNP Data. Microarrays, 2(3), 171–185. https://doi.org/10.3390/microarrays2030171

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