4.7 Article Data Paper

Quantification of sensitivity and resistance of breast cancer cell lines to anti-cancer drugs using GR metrics

Journal

SCIENTIFIC DATA
Volume 4, Issue -, Pages -

Publisher

NATURE PUBLISHING GROUP
DOI: 10.1038/sdata.2017.166

Keywords

-

Funding

  1. NIH [U54 HG008100]
  2. NCI [U54 CA 112970]
  3. Stand Up To Cancer-AACR Dream Team Translational Cancer Research grant [SU2C-AACR-DT0409]
  4. Susan G. Komen Foundation [SAC110012]
  5. NIH LINCS grant [U54-HL127365]
  6. Prospect Creek Foundation
  7. Jayne Koskinas Ted Giovanis Foundation for Health and Policy
  8. Breast Cancer Research Foundation

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Traditional means for scoring the effects of anti-cancer drugs on the growth and survival of cell lines is based on relative cell number in drug-treated and control samples and is seriously confounded by unequal division rates arising from natural biological variation and differences in culture conditions. This problem can be overcome by computing drug sensitivity on a per-division basis. The normalized growth rate inhibition (GR) approach yields per-division metrics for drug potency (GR(50)) and efficacy (GR(max)) that are analogous to the more familiar IC50 and E-max values. In this work, we report GR-based, proliferation-corrected, drug sensitivity metrics for similar to 4,700 pairs of breast cancer cell lines and perturbagens. Such data are broadly useful in understanding the molecular basis of therapeutic response and resistance. Here, we use them to investigate the relationship between different measures of drug sensitivity and conclude that drug potency and efficacy exhibit high variation that is only weakly correlated. To facilitate further use of these data, computed GR curves and metrics can be browsed interactively at http://www.GRbrowser.org/.

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