PLoS ONE (Jan 2012)

High accuracy mutation detection in leukemia on a selected panel of cancer genes.

  • Zeynep Kalender Atak,
  • Kim De Keersmaecker,
  • Valentina Gianfelici,
  • Ellen Geerdens,
  • Roel Vandepoel,
  • Daphnie Pauwels,
  • Michaël Porcu,
  • Idoya Lahortiga,
  • Vanessa Brys,
  • Willy G Dirks,
  • Hilmar Quentmeier,
  • Jacqueline Cloos,
  • Harry Cuppens,
  • Anne Uyttebroeck,
  • Peter Vandenberghe,
  • Jan Cools,
  • Stein Aerts

DOI
https://doi.org/10.1371/journal.pone.0038463
Journal volume & issue
Vol. 7, no. 6
p. e38463

Abstract

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With the advent of whole-genome and whole-exome sequencing, high-quality catalogs of recurrently mutated cancer genes are becoming available for many cancer types. Increasing access to sequencing technology, including bench-top sequencers, provide the opportunity to re-sequence a limited set of cancer genes across a patient cohort with limited processing time. Here, we re-sequenced a set of cancer genes in T-cell acute lymphoblastic leukemia (T-ALL) using Nimblegen sequence capture coupled with Roche/454 technology. First, we investigated how a maximal sensitivity and specificity of mutation detection can be achieved through a benchmark study. We tested nine combinations of different mapping and variant-calling methods, varied the variant calling parameters, and compared the predicted mutations with a large independent validation set obtained by capillary re-sequencing. We found that the combination of two mapping algorithms, namely BWA-SW and SSAHA2, coupled with the variant calling algorithm Atlas-SNP2 yields the highest sensitivity (95%) and the highest specificity (93%). Next, we applied this analysis pipeline to identify mutations in a set of 58 cancer genes, in a panel of 18 T-ALL cell lines and 15 T-ALL patient samples. We confirmed mutations in known T-ALL drivers, including PHF6, NF1, FBXW7, NOTCH1, KRAS, NRAS, PIK3CA, and PTEN. Interestingly, we also found mutations in several cancer genes that had not been linked to T-ALL before, including JAK3. Finally, we re-sequenced a small set of 39 candidate genes and identified recurrent mutations in TET1, SPRY3 and SPRY4. In conclusion, we established an optimized analysis pipeline for Roche/454 data that can be applied to accurately detect gene mutations in cancer, which led to the identification of several new candidate T-ALL driver mutations.