BMC Research Notes (May 2020)

Predicting breast cancer metastasis from whole-blood transcriptomic measurements

  • Einar Holsbø,
  • Vittorio Perduca,
  • Lars Ailo Bongo,
  • Eiliv Lund,
  • Etienne Birmelé

DOI
https://doi.org/10.1186/s13104-020-05088-0
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 5

Abstract

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Abstract Objective In this exploratory work we investigate whether blood gene expression measurements predict breast cancer metastasis. Early detection of increased metastatic risk could potentially be life-saving. Our data comes from the Norwegian Women and Cancer epidemiological cohort study. The women who contributed to these data provided a blood sample up to a year before receiving a breast cancer diagnosis. We estimate a penalized maximum likelihood logistic regression. We evaluate this in terms of calibration, concordance probability, and stability, all of which we estimate by the bootstrap. Results We identify a set of 108 candidate predictor genes that exhibit a fold change in average metastasized observation where there is none for the average non-metastasized observation.

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