Publication:
SMN1 copy-number and sequence variant analysis from next-generation sequencing data.

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Date

2020-10-14

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Lopez-Lopez, Daniel
Loucera, Carlos
Carmona, Rosario
Aquino, Virginia
Salgado, Josefa
Pasalodos, Sara
Miranda, María
Alonso, Ángel
Dopazo, Joaquín

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Abstract

Spinal muscular atrophy (SMA) is a severe neuromuscular autosomal recessive disorder affecting 1/10,000 live births. Most SMA patients present homozygous deletion of SMN1, while the vast majority of SMA carriers present only a single SMN1 copy. The sequence similarity between SMN1 and SMN2, and the complexity of the SMN locus makes the estimation of the SMN1 copy-number by next-generation sequencing (NGS) very difficult. Here, we present SMAca, the first python tool to detect SMA carriers and estimate the absolute SMN1 copy-number using NGS data. Moreover, SMAca takes advantage of the knowledge of certain variants specific to SMN1 duplication to also identify silent carriers. This tool has been validated with a cohort of 326 samples from the Navarra 1000 Genomes Project (NAGEN1000). SMAca was developed with a focus on execution speed and easy installation. This combination makes it especially suitable to be integrated into production NGS pipelines. Source code and documentation are available at https://www.github.com/babelomics/SMAca.

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MeSH Terms

Base Sequence
DNA Copy Number Variations
High-Throughput Nucleotide Sequencing
Humans
Reproducibility of Results
Software
Survival of Motor Neuron 1 Protein

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Keywords

SMA, next generation sequencing, pipeline

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